mineral-exploration-machine-learning icon indicating copy to clipboard operation
mineral-exploration-machine-learning copied to clipboard

List of resources for mineral exploration and machine learning, generally with useful code and examples.

mineral-exploration-machine-learning

This page lists resources for mineral exploration and machine learning, generally with useful code and examples. ML and Data Science is a huge field, these are resources I have found useful and/or interesting to me in practice. Links currently to a fork of a repository are because I have changed something to use and put in a list for reference. Resources are also given for data analysis, transformation and visualisation as that is most of the work.

Suggestions welcome: open a discussion, issue or pull request.

Table of Contents

Map

Frameworks

Pipelines

  • geotargts -> Extension of targts to terra and stars

Prospectivity

Australia

Explorer Challenge

South Australia

Explore SA - South Australian Department of Energy and Mining Competition

South America

Brazil

China

Sudan

Norway

Geology

Training Data

Lithology

Drilling

  • Heterogenous Drilling - Nicta/Data61 project report for looking at modelling using drillholes that don't go far enough
  • corel -> smart computer vision model that identifies facies and performs rock typing on core images

Paleovalleys

Stratigraphy

  • Predicatops -> Stratigraphic predication designed for hydrocarbon

Geophysics

Foundation Models

Australia

Regolith Depth

AEM Interpolation

Electromagnetics

Inversion

Structure

  • Lineament Learning -> Fault prediction and mapping via potential field deep learning and clustering

Euler deconvolution

  • https://legacy.fatiando.org/gallery/gravmag/euler_moving_window.html
    • Harmonica version eventually? https://hackmd.io/@fatiando/development-calls-2024?utm_source=preview-mode&utm_medium=rec
  • https://notebook.community/joferkington/tutorials/1404_Euler_deconvolution/euler-deconvolution-examples
  • https://github.com/ffigura/Euler-deconvolution-plateau

Gravity

Magnetics

Petrophysics

Tectonics

Geochemistry

Kriging

Natural Language Processing

Word Embeddings

Named Entity Recognition

Ontology

  • Ontology CWS
  • GAKG -> A Multimodal Geoscience Academic Knowledge Graph (Chinese)
  • GeoERE-Net -> Understanding geological reports based on knowledge graphs using a deep learning approach
  • [paper] https://www.researchgate.net/publication/363408251_Understanding_geological_reports_based_on_knowledge_graphs_using_a_deep_learning_approach
  • Stratigraphic Knowledge Graph (StraKG)
  • paper

Large Language Models

Chatbots

  • GeoGPT -> Deep Time Digital Earth Research Group from China project

Remote Sensing

Processing

  • ASTER Conversion -> Conversion from ASTER hd5 to geotiff NASA github
  • HLS Data Resources -> Harmonized Landsat Sentinel wrangling
  • sarsen -> xarray based SAR image processing and correction
  • openEO -> openEO develops an open API to connect R, Python, JavaScript and other clients to EO cloud back-ends

Spectral Unmixing

Hyperspectral

Visualisation

Texture

Simulation

Geometry

  • Deep Angle -> Fast calculation of contact angles in tomography images using deep learning

Other

Platforms

Guides

Data Quality

Machine Learning

  • Geospatial-ml -> Install multiple common packages at once
  • Dask-ml -> Distributed versions of some common ML algorithms

Probabilistic

Clustering

Self Organising Maps

Bayesian

  • Bayseg -> Spatial segmentation

Explainability

Deep Learning

Data

  • Xbatcher -> Xarray based data reading for deep learning
  • zen3geo -> Xbatcher style data science with pytorch

Explainability

Self-supervised learning

Hyperparameters

Coding Environments

Community

Cloud Providers

AWS

Overviews

Domains

Web Services

If listed it is assumed they are generally data, if just pictures like WMS it will say so.

Australia

Geology

Geophysics

Other

New South Wales

Queensland

South Australia

Northern Territory

  • NTGS -> Northern Territory Geological Survey

Tasmania

Victoria

Western Australia

New Zealand

  • GNS -> List of web services

South America

Brazil

Peru

Mexico

Argentina

Colombia

Uruguay

Other

Europe

EGDI -> EGDI Minerals

Sweden

Finland

Denmark

  • deus -> Greenland WMS/WFS

Portugal

Spain

Ukraine

Ireland

Britain

  • BGS -> British Geological Survey
  • Geoindex -> mineral occurrence example
  • Rest -> BGS Rest services

Germany

Czech Republic

Slovakia

Hungary

Romania

Poland

North America

Canada

USA

Asia

Africa

General

Other

APIs

Data Portals

World

  • Earth Model Collaboration -> access to various Earth models, visualization tools for model preview, facilities to extract model data/metadata and access to the contributed processing software and scripts.

Australia

Geoscience Australia

CSIRO

AuScope

TERN

Bureau of Meteorology

Foundational Spatial Data

South Australia

Northern Territory

Queensland

Western Australia

NSW

  • MINVIEW -> New South Wales Geological Survey
  • DiGS -> Publications and Geotechnical collections

Tasmania

Victoria

New Zealand

South America

Brazil

  • CPRM -> Brazil Geological Survey
  • Downloads -> Brazil Geological Survey Downloads
  • Rigeo -> Institutional Repository of Geosciences

Peru

Mexico

Argentina

Colombia

Uruguay

Chile

Europe

Denmark

Finland

Sweden

  • SGU -> Swedish Geological Survey

Spain

  • IGME -> Spanish Geological Survey

Portugal

Ireland

  • GSI -> Geological Survey of Ireland
  • GSI - Map viewer
  • Goldmine -> Map and document search
  • data.gov.ie -> National portal view
  • isde -> Irish Spatial Data Exchange

Norway

Britain

Ukraine

Russia

Germany

France

Croatia

Czech Republic

  • GS -> Czech Geological Survey

Slovenia

Slovakia

Hungary

Romania

Poland

United Kingdom

  • [UK Onshore Geophysical Library] (https://ukogl.org.uk/)

North America

Canada

USA

Africa

Asia

China

India

  • Bhukosh -> India Geological Survey
  • Note Rajasthan geology doesn't work except piecemeal which is painful - if you want it, let me know

Other

Geology

General

Reports

Australia

Canada

USA

Other

Tools

GIS

  • QGIS -> GIS Data Visualisation and Analysis Open Source desktop application, has some ML tools : Indispensible for some quick and easy viewing
  • GRASS
  • saga -> mirror of sourceforge

3D

Geospatial General

Vector Data

Python

R

  • SF
  • terra -> terra provides methods to manipulate geographic (spatial) data in "raster" and "vector" form.

Raster Data

C

R

  • Raster -> R library
  • terra -> terra provides methods to manipulate geographic (spatial) data in "raster" and "vector" form.
  • stars -> stars: spatiotemporal Arrays: Raster and Vector Datacubes

Python

  • Rasterio -> python base library for raster data handling
  • Rasterstats -> summarising geospatial raster datasets based on vector geometries
  • Xarray -> Multidimensional Labelled array handling and analysis
    • Rioxarray -> Fabulous high level api for xarray handling of raster data
    • Geocube -> Rasterisation of vector data api
    • ODC-GEO -> Tools for remote sensing based raster handling with many extremely tools like colorisation, grid workflows
    • COG Validator -> checking format of cloud optimised geotiffs
    • serverless-datacube-demo -> xarray via lithops / Coiled / Modal
    • Xarray Spatial -> Statistical analysis of raster data such as classification like natural breaks
    • xdggs -> Other types of grids
    • xgcm -> Histograms with labels
    • xrft -> Xarray based Fourier Transforms
    • xvec -> Vector data cubes for Xarray
    • xarray-einstats -> Stats, linear algebra and einops for xarray

Benchmarks

Gui

  • Whitebox Tools -> python api, gui, etc. have used for topographical wetness index calculation

Data Collection

  • PiAutoStage -> 'An Open-Source 3D Printed Tool for the Automatic Collection of High-Resolution Microscope Imagery;' designed for mineral samples.

Data Conversion

Geochemistry

Geostatistics

Geochronology

Geology

Geophysics

Electromagnetic

Gravity and Magnetics

Seismic

Magnetotellurics

Gridding

Inversion

Geochemistry

Drilling

  • dh2loop -> Drilling Interval assistance
  • paper
  • drilldown -> Drilling visualisation in notebooks via geoh5py -> note desurveying
  • PyGSLib -> Downhole surveying and interval normalising
  • pyborehole -> Processing and visualizing borehole data
  • dhcomp -> composites geophysical data to a set of intervals

Remote Sensing

Serverless

  • Kerchunk -> Serverless access to cloud based data via Zarr
  • Kerchunk geoh5 -> Access to Geoscient Analyst/geoh5 projects serverlessly via kerchunk

Stac catalogues

Statistics

Visualisation

Mineral Potential

Mining Economics

  • Bluecap -> Framework from Monash University for assessing mine viability
  • Zipfs Law -> Curve fitting the distribution of Mineral Depositions
  • PyASX -> ASX Data Feed scraping
  • Metal Price API -> Containerised Microservice

Visualisation

Colormaps

Geospatial

Technology Stacks

C

  • GDAL -> Absolutely crucial data transformation and analysis framework
    • Tools -> Note has many command line tools that are very useful as well

Julia

Python - PyData

Rust - GeoRust

  • GeoRust -> Collection of geospatial utilities in rust

Databases

  • DuckDB -> In process OLAP DB at speed - has some geospatial and array capabilities

Data Science

Science

Docker

Ontologies

Books

Python

Other

Other

  • GXPy -> Geosoft Python API
  • EarthArxiv -> Download papers from the preprint archive
  • Essoar -> Preprint paper archive

Datasets

World

Geology

  • Bedrock -> Generalised geology of the world
  • Sedimentary Layers -> Global 1-km Gridded Thickness of Soil, Regolith, and Sedimentary Deposit Layers
  • Paleogeology An Atlas of Phanerozoic Paleogeographic Maps

Geophysics

Gravity

Magnetics

  • EAMG2V3 _> Earth Magnetic Anomaly Grid
  • WDMAM -> World Digital Magnetic Anomaly Map
  • EMC -> global 3D inverse model of electrical conductivity

Seismic

Thermal

General

Australia

Geochemistry

Geology

Geophysics

  • Gravity -> 2019 Australian National Gravity Grids

Magnetics

  • TMI -> Magnetic Anomaly Map of Australia, Seventh Edition, 2019 TMI
  • 40m -> 40m version
  • VRTP -> Total Magnetic Intensity (TMI) Grid of Australia with Variable Reduction to Pole (VRTP) 2019
  • 1VD -> Total Magnetic Intensity Grid of Australia 2019 - First Vertical Derivative (1VD)

Radiometrics

  • Radiometrics -> Complete Radiometric Grid of Australia (Radmap) v4 2019 with modelled infill
  • K -> Radiometric Grid of Australia (Radmap) v4 2019 filtered pct potassium grid
  • U -> Radiometric Grid of Australia (Radmap) v4 2019 filtered ppm uranium
  • Th -> Radiometric Grid of Australia (Radmap) v4 2019 filtered ppm thorium
  • Th/K -> Radiometric Grid of Australia (Radmap) v4 2019 ratio thorium over potassium
  • U/K -> Radiometric Grid of Australia (Radmap) v4 2019 ratio uranium over potassium
  • U/Th -> Radiometric Grid of Australia (Radmap) v4 2019 ratio uranium over thorium
  • U squared/Th -> Radiometric Grid of Australia (Radmap) v4 2019 ratio uranium squared over thorium
  • Dose Rate-> Radiometric Grid of Australia (Radmap) v4 2019 filtered terrestrial dose rate
  • Ternary Picture -> Radiometric grid of Australia (Radmap) v4 2019 - Ternary image (K, Th, U)

AusAEM

  • AusAEM 1 -> AusAEM Year 1 NT/QLD Airborne Electromagnetic Survey; GA Layered Earth Inversion Products
  • AusAEM 1 -> AusAEM Year 1 NT/QLD: TEMPEST® airborne electromagnetic data and Em Flow® conductivity estimates
  • AusAEM 1 -> AusAEM1 Interpretation Data Package
  • AusAEM 2 -> AusAEM 02 WA/NT 2019-20 Airborne Electromagnetic Survey
  • AusAEM–WA -> AusAEM–WA, Murchison Airborne Electromagnetic Survey Blocks
  • AusAEM–WA -> AusAEM-WA, Southwest-Albany Airborne Electromagnetic Survey Blocks
  • AusAEM–WA -> AusAEM WA 2020-21, Eastern Goldfields & East Yilgarn Airborne
  • AusAEM–WA -> AusAEM (WA) 2020-21, Earaheedy & Desert Strip
  • AusAEM ERC -> AusAEM Eastern Resources Corridor
  • AusAEM WRC -> AusAEM Western Resources Corridor
  • interp overview
  • National surface and near-surface conductivity grids -> National ML interpolation for AusEM in similar fashion to Northern Australia

AusLAMP

Moho

Mineral Deposits

Mineral Potential

Mine Waste

Native Title

Remote Sensing

Topography

Northern

South Australia

Geology

Geophysics

Gawler
  • Gawler MPP -> Gawler Mineral Promotion Project - Data

Queensland

Cloncurry

  • Toolkit -> Multielement toolkit and laboratory

Northern Territory

  • Arunta IOCG -> Iron oxide-copper-gold potential of the southern Arunta Region
  • South Uranium -> Southern Northern Territory uranium and geothermal energy systems assessment digil data package
  • Tennant Creek -> Conductivity Model Derived from Magnetotelluric Data in the East Tennant Region, Northern Territory

New South Wales

Geology

  • Seamless Geology -> NSW Seamless Geology Data Package (older version also on this page)

Mineral Potential Data Packages

Western Australia

Geochemistry

Geology

Mineral Potential

Prospectivity

  • Capricorn-> Prospectivity analysis using a mineral systems approach - Capricorn case study project
  • King Leopold -> Mineral prospectivity of the King Leopold Orogen and Lennard Shelf: analysis of potential field data in the west Kimberley region
  • Yilgarn Gold
  • Yilgarn 2 -> Predictive mineral discovery in the eastern Yilgarn Craton: an example of district-scale targeting of an orogenic gold mineral system
  • [Shop note] -> WA has a few prospectivity packages available to purchase on USB drive for 50-60AU type prices - see in geospaital maps section

Tasmania

Geology

Victoria

New Zealand

North Americia

Canada

Geology

  • Map
  • Geology -> Updated Bedrock geology map
  • Geology -> Bedrock geology compilation and regional synthesis of south Rae and parts of Hearne domains, Churchill Province, Northwest Territories, Saskatchewan, Nunavut, Manitoba and Alberta
  • Moho -> National database of Moho depth estimates estimates from seismic refraction and teleseismic surveys

Geophysics

  • Dap Search -> Geoportal search - note annoyingly these are in Geosoft grids - see elsewere for conversion possibilties
  • [Gravity, Magnetics, Radiometrics] -> Mostly country scale

Europe

Finland

  • FODD -> Fennoscandian Mineral Deposits

Ireland

  • MPM -> Mineral Potentinal Mapping project

Papers with Code

NLP

  • https://www.sciencedirect.com/science/article/pii/S2590197422000064?via%3Dihub#bib20- -> Geoscience language models and their intrinsic evaluation -> NRCan code above [includes model]
  • https://www.researchgate.net/publication/334507958_Word_embeddings_for_application_in_geosciences_development_evaluation_and_examples_of_soil-related_concepts -> GeoVec [includes model]
  • https://www.researchgate.net/publication/347902344_Portuguese_word_embeddings_for_the_oil_and_gas_industry_Development_and_evaluation -> PetroVec [includes model]
  • A resource for automated search and collation of geochemical datasets from journal supplements

Geochemistry

  • https://www.researchgate.net/publication/365758387_A_resource_for_automated_search_and_collation_of_geochemical_datasets_from_journal_supplements
    • https://github.com/erinlmartin/figshare_geoscrape?s=09

Geology

  • https://github.com/sydney-machine-learning/autoencoders_remotesensing -> Stacked Autoencoders for Lithological Mapping

Mineral

  • https://www.researchgate.net/publication/318839364_Network_analysis_of_mineralogical_systems

Papers with Features Data

  • These you can reproduce the output geospatially from the data given.

Mineral Prospectivity

  • https://www.sciencedirect.com/science/article/pii/S016913682100010X#s0135 -> Prospectivity modelling of Canadian magmatic Ni (±Cu ± Co ± PGE) sulphide mineral systems [well worth reading]
  • https://www.sciencedirect.com/science/article/pii/S0169136821006612#b0510 -> Data–driven prospectivity modelling of sediment–hosted Zn–Pb mineral systems and their critical raw materials [well worth reading]
  • https://www.researchgate.net/publication/358956673_Towards_a_fully_data-driven_prospectivity_mapping_methodology_A_case_study_of_the_Southeastern_Churchill_Province_Quebec_and_Labrador

England

  • https://www.researchgate.net/publication/358083076_Machine_learning_for_geochemical_exploration_classifying_metallogenic_fertility_in_arc_magmas_and_insights_into_porphyry_copper_deposit_formation

Geochemistry

  • https://www.researchgate.net/publication/361076789_Automated_machine_learning_pipeline_for_geochemical_analysis

Geology

  • https://eprints.utas.edu.au/32368/ -> Machine-assisted modelling of lithology and metasomatism

Geophysics

  • https://github.com/TomasNaprstek/Aeromagnetic_CNN - Aeromagnetic CNN
  • Paper https://www.researchgate.net/publication/354772176_Convolution_Neural_Networks_Applied_to_the_Interpretation_of_Lineaments_in_Aeromagnetic_Data
  • PhD -> New Methods for the Interpolation and Interpretation of Lineaments in Aeromagnetic Data
  • Paper https://www.researchgate.net/publication/354772176_Convolution_Neural_Networks_Applied_to_the_Interpretation_of_Lineaments_in_Aeromagnetic_Data -> Convolution Neural Networks Applied to the Interpretation of Lineaments in Aeromagnetic Data

Geospatial Output - No Code

  • https://geoscience.data.qld.gov.au/report/cr113697 -> NWMP Data-Driven Mineral Exploration And Geological Mapping [CSIRO too]

Journals

  • https://www.sciencedirect.com/journal/artificial-intelligence-in-geosciences -> Artificial Intelligence in Geosciences

Papers

  • Generally Not ML, or no Code/Data and sometimes no availability at all
  • Eventually will separate out into things that have data packages or not like NSW Zone studies.
  • However, if interested in an area you can often georeference a picture if nothing else as a rough guide.
  • Generally these are not reproducible - a few like the NSW prospectivity zone studies and NWQMP are with some work.
  • The occasional paper in this section may be listed above

New to File

General

  • https://www.researchgate.net/publication/337650865_A_combinative_knowledge-driven_integration_method_for_integrating_geophysical_layers_with_geological_and_geochemical_datasets

  • https://link.springer.com/article/10.1007/s11053-023-10237-w - A New Generation of Artificial Intelligence Algorithms for Mineral Prospectivity Mapping

  • https://www.researchgate.net/publication/235443297_Addressing_challenges_with_exploration_datasets_to_generate_usable_mineral_potential_maps

  • https://www.researchgate.net/publication/330077321_An_Improved_Data-Driven_Multiple_Criteria_Decision-Making_Procedure_for_Spatial_Modeling_of_Mineral_Prospectivity_Adaption_of_Prediction-Area_Plot_and_Logistic_Functions

  • https://www.researchgate.net/project/Bayesian-Machine-Learning-for-Geological-Modeling-and-Geophysical-Segmentation

  • https://www.researchgate.net/publication/229714681_Classifiers_for_Modeling_of_Mineral_Potential

  • https://www.researchgate.net/publication/352251078_Data_Analysis_Methods_for_Prospectivity_Modelling_as_applied_to_Mineral_Exploration_Targeting_State-of-the-Art_and_Outlook

  • https://www.researchgate.net/publication/267927728_Data-Driven_Evidential_Belief_Modeling_of_Mineral_Potential_Using_Few_Prospects_and_Evidence_with_Missing_Values

  • https://www.researchgate.net/publication/368489689_Discrimination_of_Pb-Zn_deposit_types_using_sphalerite_geochemistry_New_insights_from_machine_learning_algorithm

  • https://www.researchgate.net/publication/229792860_From_Predictive_Mapping_of_Mineral_Prospectivity_to_Quantitative_Estimation_of_Number_of_Undiscovered_Prospects

  • https://www.researchgate.net/publication/339997675_Fully_reversible_neural_networks_for_large-scale_surface_and_sub-surface_characterization_via_remote_sensing

  • https://www.researchgate.net/publication/220164488_Geocomputation_of_mineral_exploration_targets

  • https://www.researchgate.net/publication/272494576_Geological_knowledge_discovery_and_minerals_targeting_from_regolith_using_a_machine_learning_approach

  • https://www.researchgate.net/publication/280013864_Geometric_average_of_spatial_evidence_data_layers_A_GIS-based_multi-criteria_decision-making_approach_to_mineral_prospectivity_mapping

  • https://www.researchgate.net/publication/355467413_Harnessing_the_Power_of_Artificial_Intelligence_and_Machine_Learning_in_Mineral_Exploration-Opportunities_and_Cautionary_Notes

  • https://www.researchgate.net/publication/335819474_Importance_of_spatial_predictor_variable_selection_in_machine_learning_applications_-Moving_from_data_reproduction_to_spatial_prediction

  • https://www.researchgate.net/publication/337003268_Improved_supervised_classification_of_bedrock_in_areas_of_transported_overburden_Applying_domain_expertise_at_Kerkasha_Eritrea - Gazley/Hood

  • https://api.research-repository.uwa.edu.au/portalfiles/portal/5263287/Lysytsyn_Volodymyr_2015.pdf (PhD thesis) GIS-based epithermal copper prospectivity mapping of the Mt Isa Inlier, Australia: Implications for exploration targeting

  • https://www.researchgate.net/publication/374972769_Knowledge_and_technology_transfer_in_and_beyond_mineral_exploration -> Knowledge and technology transfer in and beyond mineral exploration

  • https://www.researchgate.net/publication/331946100_Machine_learning_for_data-driven_discovery_in_solid_Earth_geoscience

  • https://theses.hal.science/tel-04107211/document - Machine Learning Approaches for Sub-surface Geological Heterogeneous Sources

  • https://www.researchgate.net/publication/309715081_Magmato-hydrothermal_space_A_new_metric_for_geochemical_characterisation_of_metallic_ore_deposits - Magmato-hydrothermal space: A new metric for geochemical characterisation of metallic ore deposits

  • https://www.researchgate.net/publication/220164234_Mapping_complexity_of_spatial_distribution_of_faults_using_fractal_and_multifractal_models_Vectoring_towards_exploration_targets

  • https://www.researchgate.net/publication/220163838_Objective_selection_of_suitable_unit_cell_size_in_data-driven_modeling_of_mineral_prospectivity

  • https://www.researchgate.net/publication/273500012_Prediction-area_P-A_plot_and_C-A_fractal_analysis_to_classify_and_evaluate_evidential_maps_for_mineral_prospectivity_modeling

  • https://www.researchgate.net/publication/354925136_Soil-sample_geochemistry_normalised_by_class_membership_from_machine-learnt_clusters_of_satellite_and_geophysics_data [Gazley/Hood]

  • https://www.researchgate.net/publication/235443294_The_effect_of_map-scale_on_geological_complexity

  • https://www.researchgate.net/publication/235443305_The_effect_of_map_scale_on_geological_complexity_for_computer-aided_exploration_targeting

  • https://www.researchgate.net/publication/360660467_Lithospheric_conductors_reveal_source_regions_of_convergent_margin_mineral_systems

Mineral Prospectivity

Australia

  • https://www.mdpi.com/2072-4292/15/16/4074 -> A Spatial Data-Driven Approach for Mineral Prospectivity Mapping
  • https://www.researchgate.net/publication/353253570_A_Truly_Spatial_Random_Forests_Algorithm_for_Geoscience_Data_Analysis_and_Modelling
  • https://www.researchgate.net/publication/253217016_Advanced_methodologies_for_the_analysis_of_databases_of_mineral_deposits_and_major_faults
  • https://www.researchgate.net/publication/362260616_Assessing_the_impact_of_conceptual_mineral_systems_uncertainty_on_prospectivity_predictions
  • https://www.researchgate.net/publication/352310314_Central_Lachlan_Mineral_Potential_Study
  • https://www.tandfonline.com/doi/pdf/10.1080/22020586.2019.12073159?needAccess=true - > Integrating a Minerals Systems Approach with Machine Learning: A Case Study of ‘Modern Minerals Exploration’ in the Mt Woods Inlier – northern Gawler Craton, South Australia
  • https://www.researchgate.net/publication/365697240_Mineral_potential_modelling_of_orogenic_gold_systems_in_the_Granites-Tanami_Orogen_Northern_Territory_Australia_A_multi-technique_approach
  • https://publications.csiro.au/publications/publication/PIcsiro:EP2022-0483 -> Signatures of Key Mineral Systems in the Eastern Mount Isa Province, Queensland: New Perspectives from Data Analytics
  • https://link.springer.com/article/10.1007/s11004-021-09989-z -> Stochastic Modelling of Mineral Exploration Targets
  • https://www.researchgate.net/publication/276171631_Supervised_Neural_Network_Targeting_and_Classification_Analysis_of_Airborne_EM_Magnetic_and_Gamma-ray_Spectrometry_Data_for_Mineral_Exploration
  • https://www.researchgate.net/publication/353058758_Using_Machine_Learning_to_Map_Western_Australian_Landscapes_for_Mineral_Exploration
  • https://www.researchgate.net/publication/264535019_Weights-of-evidence_and_logistic_regression_modeling_of_magmatic_nickel_sulfide_prospectivity_in_the_Yilgarn_Craton_Western_Australia

Argentina

  • https://www.researchgate.net/publication/263542691_ANALYSIS_OF_SPATIAL_DISTRIBUTION_OF_EPITHERMAL_GOLD_DEPOSITS_IN_THE_DESEADO_MASSIF_SANTA_CRUZ_PROVINCE
  • https://www.researchgate.net/publication/263542560_EVIDENTIAL_BELIEF_MAPPING_OF_EPITHERMAL_GOLD_POTENTIAL_IN_THE_DESEADO_MASSIF_SANTA_CRUZ_PROVINCE_ARGENTINA
  • https://www.researchgate.net/publication/277940917_Porphyry_epithermal_and_orogenic_gold_prospectivity_of_Argentina
  • https://www.researchgate.net/publication/269518805_Prospectivity_for_epithermal_gold-silver_deposits_in_the_Deseado_Massif_Argentina
  • https://www.researchgate.net/publication/235443303_Prospectivity_mapping_for_multi-stage_epithermal_gold_mineralization_in_Argentina

Brazil

  • https://www.researchgate.net/publication/362263694_Machine_Learning_Methods_for_Quantifying_Uncertainty_in_Prospectivity_Mapping_of_Magmatic-Hydrothermal_Gold_Deposits_A_Case_Study_from_Juruena_Mineral_Province_Northern_Mato_Grosso_Brazil
  • https://www.researchgate.net/publication/360055592_Predicting_mineralization_and_targeting_exploration_criteria_based_on_machine-learning_in_the_Serra_de_Jacobina_quartz-pebble-metaconglomerate_Au-U_deposits_Sao_Francisco_Craton_Brazil
Fuzzy
  • https://www.researchgate.net/publication/272170968_A_Comparative_Analysis_of_Weights_of_Evidence_Evidential_Belief_Functions_and_Fuzzy_Logic_for_Mineral_Potential_Mapping_Using_Incomplete_Data_at_the_Scale_of_Investigation A Comparative Analysis of Weights of Evidence, Evidential Belief Functions, and Fuzzy Logic for Mineral Potential Mapping Using Incomplete Data at the Scale of Investigation
  • https://www.researchgate.net/publication/360386350_Application_of_Fuzzy_Gamma_Operator_to_Generate_Mineral_Prospectivity_Mapping_for_Cu-Mo_Porphyry_Deposits_Case_Study_Kighal-Bourmolk_Area_Northwestern_Iran
  • https://www.researchgate.net/publication/348823482_Combining_fuzzy_analytic_hierarchy_process_with_concentration-area_fractal_for_mineral_prospectivity_mapping_A_case_study_involving_Qinling_orogenic_belt_in_central_China
  • https://tupa.gtk.fi/raportti/arkisto/m60_2003_1.pdf -> Conceptual Fuzzy Logic Prospectivity Analysis of the Kuusamo Area
  • https://www.researchgate.net/publication/356508827_Geophysical-spatial_Data_Modeling_using_Fuzzy_Logic_Applied_to_Nova_Aurora_Iron_District_Northern_Minas_Gerais_State_Southeastern_Brazil
  • https://www.researchgate.net/publication/356937528_Mineral_prospectivity_mapping_a_potential_technique_for_sustainable_mineral_exploration_and_mining_activities_-_a_case_study_using_the_copper_deposits_of_the_Tagmout_basin_Morocco

Canada

  • http://www.geosciencebc.com/i/pdf/SummaryofActivities2015/SoA2015_Granek.pdf -> Advanced Geoscience Targeting via Focused Machine Learning Applied to the QUEST Project Dataset, British Columbia
  • https://open.library.ubc.ca/soa/cIRcle/collections/ubctheses/24/items/1.0340340 -> Application of machine learning algorithms to mineral prospectivity mapping
  • https://www.researchgate.net/publication/369599705_A_study_of_faults_in_the_Superior_province_of_Ontario_and_Quebec_using_the_random_forest_machine_learning_algorithm_spatial_relationship_to_gold_mines
  • https://www.researchgate.net/publication/273176257_Data-_and_Knowledge_driven_mineral_prospectivity_maps_for_Canada's_North
  • https://www.researchgate.net/publication/300153215_Data_mining_for_real_mining_A_robust_algorithm_for_prospectivity_mapping_with_uncertainties
  • https://www.sciencedirect.com/science/article/pii/S1674987123002268 -> Development and application of feature engineered geological layers for ranking magmatic, volcanogenic, and orogenic system components in Archean greenstone belts
  • https://qspace.library.queensu.ca/bitstream/handle/1974/28138/Cevik_Ilkay_S_202009_MASc.pdf?sequence=3&isAllowed=y -> MACHINE LEARNING ENHANCEMENTS FOR KNOWLEDGE DISCOVERY IN MINERAL EXPLORATION AND IMPROVED MINERAL RESOURCE CLASSIFICATION
  • https://www.researchgate.net/publication/343511849_Identification_of_intrusive_lithologies_in_volcanic_terrains_in_British_Columbia_by_machine_learning_using_Random_Forests_the_value_of_using_a_soft_classifier
  • https://www.researchgate.net/publication/365782501_Improving_Mineral_Prospectivity_Model_Generalization_An_Example_from_Orogenic_Gold_Mineralization_of_the_Sturgeon_Lake_Transect_Ontario_Canada
  • https://www.researchgate.net/publication/348983384_Mineral_prospectivity_mapping_using_a_VNet_convolutional_neural_network
  • corporate link
  • https://www.researchgate.net/publication/369048379_Mineral_Prospectivity_Mapping_Using_Machine_Learning_Techniques_for_Gold_Exploration_in_the_Larder_Lake_Area_Ontario_Canada
  • https://www.researchgate.net/publication/337167506_Orogenic_gold_prospectivity_mapping_using_machine_learning
  • https://www.researchgate.net/publication/290509352_Precursors_predicted_by_artificial_neural_networks_for_mass_balance_calculations_Quantifying_hydrothermal_alteration_in_volcanic_rocks
  • https://www.sciencedirect.com/science/article/pii/S0098300422001406 -> Preliminary geological mapping with convolution neural network using statistical data augmentation on a 3D model
  • https://www.researchgate.net/publication/352046255_Study_of_the_Influence_of_Non-Deposit_Locations_in_Data-Driven_Mineral_Prospectivity_Mapping_A_Case_Study_on_the_Iskut_Project_in_Northwestern_British_Columbia_Canada
  • https://www.researchgate.net/publication/220164155_Support_vector_machine_A_tool_for_mapping_mineral_prospectivity
  • https://www.researchgate.net/publication/348111963_Support_Vector_Machine_and_Artificial_Neural_Network_Modelling_of_Orogenic_Gold_Prospectivity_Mapping_in_the_Swayze_greenstone_belt_Ontario_Canada
  • PhD thesis -> https://zone.biblio.laurentian.ca/bitstream/10219/3736/1/PhD%20Thesis%20Maepa_20210603.%281%29.pdf -> Exploration targeting for gold deposits using spatial data analytics, machine learning and deep transfer learning in the Swayze and Matheson greenstone belts, Ontario, Canada
  • https://data.geology.gov.yk.ca/Reference/95936#InfoTab -> Updates to the Yukon Geological Survey’s mineral potential mapping methodology
  • http://www.geosciencebc.com/i/pdf/SummaryofActivities2015/SoA2015_Granek.pdf -> Advanced Geoscience Targeting via Focused Machine Learning Applied to the QUEST Project Dataset, British Columbia

Central Africa

  • https://www.researchgate.net/publication/323452014_The_Utility_of_Machine_Learning_in_Identification_of_Key_Geophysical_and_Geochemical_Datasets_A_Case_Study_in_Lithological_Mapping_in_the_Central_African_Copper_Belt
  • https://www.researchgate.net/publication/334436808_Lithological_Mapping_in_the_Central_African_Copper_Belt_using_Random_Forests_and_Clustering_Strategies_for_Optimised_Results

Chile

  • https://www.researchgate.net/publication/341485750_Evaluation_of_random_forest-based_analysis_for_the_gypsum_distribution_in_the_Atacama_desert

China

  • https://www.researchgate.net/publication/374968979_3D_cooperative_inversion_of_airborne_magnetic_and_gravity_gradient_data_using_deep_learning_techniques - 3D cooperative inversion of airborne magnetic and gravity gradient data using deep learning techniques [UNSEEN]
  • https://www.researchgate.net/publication/369919958_3D_mineral_exploration_Cu-Zn_targeting_with_multi-source_geoscience_datasets_in_the_Weilasituo-bairendaba_district_Inner_Mongolia_China
  • https://www.researchgate.net/publication/350817136_3D_Mineral_Prospectivity_Mapping_Based_on_Deep_Metallogenic_Prediction_Theory_A_Case_Study_of_the_Lala_Copper_Mine_Sichuan_China
  • https://www.researchgate.net/publication/336771580_3D_Mineral_Prospectivity_Mapping_with_Random_Forests_A_Case_Study_of_Tongling_Anhui_China
  • https://www.sciencedirect.com/science/article/pii/S0169136823005772 -> 3D mineral prospectivity modeling in the Sanshandao goldfield, China using the convolutional neural network with attention mechanism
  • https://www.sciencedirect.com/science/article/pii/S0009281924000497 -> 3D mineral prospectivity modeling using multi-scale 3D convolution neural network and spatial attention approaches
  • https://www.researchgate.net/publication/366201930_3D_Quantitative_Metallogenic_Prediction_of_Indium-Rich_Ore_Bodies_in_the_Dulong_Sn-Zn_Polymetallic_Deposit_Yunnan_Province_SW_China
  • https://www.researchgate.net/publication/329600793_A_combined_approach_using_spatially-weighted_principal_components_analysis_and_wavelet_transformation_for_geochemical_anomaly_mapping_in_the_Dashui_ore-concentration_district_Central_China
  • https://www.researchgate.net/publication/349034539_A_Comparative_Study_of_Machine_Learning_Models_with_Hyperparameter_Optimization_Algorithm_for_Mapping_Mineral_Prospectivity
  • https://www.researchgate.net/publication/354132594_A_Convolutional_Neural_Network_of_GoogLeNet_Applied_in_Mineral_Prospectivity_Prediction_Based_on_Multi-source_Geoinformation
  • https://www.researchgate.net/publication/369865076_A_deep-learning-based_mineral_prospectivity_modeling_framework_and_workflow_in_prediction_of_porphyry-epithermal_mineralization_in_the_Duolong_Ore_District_Tibet
  • https://www.researchgate.net/publication/374982967_A_Framework_for_Data-Driven_Mineral_Prospectivity_Mapping_with_Interpretable_Machine_Learning_and_Modulated_Predictive_Modeling
  • https://www.sciencedirect.com/science/article/pii/S0169136824002026 -> A Global-Local collaborative approach to quantifying spatial non-stationarity in three-dimensional mineral prospectivity modeling
  • https://www.sciencedirect.com/science/article/pii/S0169136824001343 -> A novel hybrid ensemble model for mineral prospectivity prediction: A case study in the Malipo W-Sn mineral district, Yunnan Province, China
  • https://www.researchgate.net/publication/347344551_A_positive_and_unlabeled_learning_algorithm_for_mineral_prospectivity_mapping
  • https://link.springer.com/article/10.1007/s11053-024-10344-2 -> A Heterogeneous Graph Construction Method for Mineral Prospectivity Mapping [UNSEEN]
  • https://www.researchgate.net/publication/353421842_A_hybrid_logistic_regression_gene_expression_programming_model_and_its_application_to_mineral_prospectivity_mapping
  • https://www.researchgate.net/publication/339821823_A_Monte_Carlo-based_framework_for_risk-return_analysis_in_mineral_prospectivity_mapping
  • https://www.researchgate.net/publication/375764940_A_lightweight_convolutional_neural_network_with_end-to-end_learning_for_three-dimensional_mineral_prospectivity_modeling_A_case_study_of_the_Sanhetun_Area_Heilongjiang_Province_Northeastern_China
  • https://www.researchgate.net/publication/373715610_A_Multimodal_Learning_Framework_for_Comprehensive_3D_Mineral_Prospectivity_Modeling_with_Jointly_Learned_Structure-Fluid_Relationships
  • https://www.researchgate.net/publication/335036019_An_Autoencoder-Based_Dimensionality_Reduction_Algorithm_for_Intelligent_Clustering_of_Mineral_Deposit_Data
  • https://www.researchgate.net/publication/363696083_An_Integrated_Framework_for_Data-Driven_Mineral_Prospectivity_Mapping_Using_Bagging-Based_Positive_Unlabeled_Learning_and_Bayesian_Cost-Sensitive_Logistic_Regression
  • https://link.springer.com/article/10.1007/s11004-023-10076-8 - An Interpretable Graph Attention Network for Mineral Prospectivity Mapping
  • https://www.researchgate.net/publication/332751556_Application_of_hierarchical_clustering_singularity_mapping_and_Kohonen_neural_network_to_identify_Ag-Au-Pb-Zn_polymetallic_mineralization_associated_geochemical_anomaly_in_Pangxidong_district
  • https://www.researchgate.net/publication/339096362_Application_of_nonconventional_mineral_exploration_techniques_case_studies
  • https://www.researchgate.net/publication/325702993_Assessment_of_Geochemical_Anomaly_Uncertainty_Through_Geostatistical_Simulation_and_Singularity_Analysis
  • https://www.researchgate.net/publication/368586826_Bagging-based_Positive-Unlabeled_Data_Learning_Algorithm_with_Base_Learners_Random_Forest_and_XGBoost_for_3D_Exploration_Targeting_in_the_Kalatongke_District_Xinjiang_China
  • https://www.sciencedirect.com/science/article/pii/S0169136824001409 -> CNN-Transformers for mineral prospectivity mapping in the Maodeng–Baiyinchagan area, Southern Great Xing'an Range
  • https://www.researchgate.net/publication/347079505_Convolutional_neural_network_and_transfer_learning_based_mineral_prospectivity_modeling_for_geochemical_exploration_of_Au_mineralization_within_the_Guandian-Zhangbaling_area_Anhui_Province_China
  • https://www.researchgate.net/publication/352703015_Data-driven_based_logistic_function_and_prediction-area_plot_for_mineral_prospectivity_mapping_a_case_study_from_the_eastern_margin_of_Qinling_orogenic_belt_central_China
  • https://www.sciencedirect.com/science/article/abs/pii/S0012825218306123 -> Deep learning and its application in geochemical mapping
  • https://www.frontiersin.org/articles/10.3389/feart.2024.1308426/full -> Deep gold prospectivity modeling in the Jiaojia gold belt, Jiaodong Peninsula, eastern China using machine learning of geometric and geodynamic variables
  • https://www.researchgate.net/publication/352893038_Detection_of_geochemical_anomalies_related_to_mineralization_using_the_GANomaly_network
  • https://www.researchgate.net/publication/357685352_Determination_of_Predictive_Variables_in_Mineral_Prospectivity_Mapping_Using_Supervised_and_Unsupervised_Methods
  • https://www.sciencedirect.com/science/article/abs/pii/S0375674221001370 -> Distinguishing IOCG and IOA deposits via random forest algorithm based on magnetite composition
  • https://www.researchgate.net/publication/340401748_Effects_of_Random_Negative_Training_Samples_on_Mineral_Prospectivity_Mapping
  • https://www.researchgate.net/publication/360333702_Ensemble_learning_models_with_a_Bayesian_optimization_algorithm_for_mineral_prospectivity_mapping
  • https://www.researchgate.net/publication/267927676_Evaluation_of_uncertainty_in_mineral_prospectivity_mapping_due_to_missing_evidence_A_case_study_with_skarn-type_Fe_deposits_in_Southwestern_Fujian_Province_China
  • https://www.mdpi.com/2075-163X/14/5/492 ->Exploration Vectors and Indicators Extracted by Factor Analysis and Association Rule Algorithms at the Lintan Carlin-Type Gold Deposit, Youjiang Basin, China
  • https://www.researchgate.net/publication/379852209_Fractal-Based_Multi-Criteria_Feature_Selection_to_Enhance_Predictive_Capability_of_AI-Driven_Mineral_Prospectivity_Mapping
  • https://www.researchgate.net/publication/338789096_From_2D_to_3D_Modeling_of_Mineral_Prospectivity_Using_Multi-source_Geoscience_Datasets_Wulong_Gold_District_China
  • https://www.researchgate.net/publication/359714254_Geochemical_characterization_of_the_Central_Mineral_Belt_U_Cu_Mo_V_mineralization_Labrador_Canada_Application_of_unsupervised_machine-learning_for_evaluation_of_IOCG_and_affiliated_mineral_potential
  • https://www.researchgate.net/publication/350788828_Geochemically_Constrained_Prospectivity_Mapping_Aided_by_Unsupervised_Cluster_Analysis
  • https://www.researchgate.net/publication/267927506_GIS-based_mineral_potential_modeling_by_advanced_spatial_analytical_methods_in_the_southeastern_Yunnan_mineral_district_China
  • https://www.researchgate.net/publication/380190183_Geologically_Constrained_Convolutional_Neural_Network_for_Mineral_Prospectivity_Mapping
  • https://www.researchgate.net/publication/332997161_GNER_A_Generative_Model_for_Geological_Named_Entity_Recognition_Without_Labeled_Data_Using_Deep_Learning
  • https://www.researchgate.net/publication/307011381_Identification_and_mapping_of_geochemical_patterns_and_their_significance_for_regional_metallogeny_in_the_southern_Sanjiang_China
  • https://link.springer.com/article/10.1007/s11053-024-10334-4 -> Identification of Geochemical Anomalies Using an End-to-End Transformer
  • https://www.researchgate.net/publication/359627130_Identification_of_ore-finding_targets_using_the_anomaly_components_of_ore-forming_element_associations_extracted_by_SVD_and_PCA_in_the_Jiaodong_gold_cluster_area_Eastern_China
  • https://www.researchgate.net/publication/282621670_Identifying_geochemical_anomalies_associated_with_Au-Cu_mineralization_using_multifractal_and_artificial_neural_network_models_in_the_Ningqiang_district_Shaanxi_China
  • https://www.sciencedirect.com/science/article/abs/pii/S0375674224000943 -> Integrate physics-driven dynamics simulation with data-driven machine learning to predict potential targets in maturely explored orefields: A case study in Tongguangshan orefield, Tongling, China
  • https://www.researchgate.net/publication/329299202_Integrating_sequential_indicator_simulation_and_singularity_analysis_to_analyze_uncertainty_of_geochemical_anomaly_for_exploration_targeting_of_tungsten_polymetallic_mineralization_Nanling_belt_South_
  • https://www.researchgate.net/publication/358555996_Learning_3D_mineral_prospectivity_from_3D_geological_models_using_convolutional_neural_networks_Application_to_a_structure-controlled_hydrothermal_gold_deposit
  • https://www.researchgate.net/publication/352476625_Machine_Learning-Based_3D_Modeling_of_Mineral_Prospectivity_Mapping_in_the_Anqing_Orefield_Eastern_China
  • https://www.researchgate.net/publication/331575655_Mapping_Geochemical_Anomalies_Through_Integrating_Random_Forest_and_Metric_Learning_Methods
  • https://www.researchgate.net/publication/229399579_Mapping_geochemical_singularity_using_multifractal_analysis_Application_to_anomaly_definition_on_stream_sediments_data_from_Funin_Sheet_Yunnan_China
  • https://www.researchgate.net/publication/328255422_Mapping_mineral_prospectivity_through_big_data_analytics_and_a_deep_learning_algorithm
  • https://www.researchgate.net/publication/334106787_Mapping_Mineral_Prospectivity_via_Semi-supervised_Random_Forest
  • https://www.researchgate.net/publication/236270466_Mapping_of_district-scale_potential_targets_using_fractal_models
  • https://www.researchgate.net/publication/357584076_Mapping_prospectivity_for_regolith-hosted_REE_deposits_via_convolutional_neural_network_with_generative_adversarial_network_augmented_data
  • https://www.researchgate.net/publication/328623280_Maximum_Entropy_and_Random_Forest_Modeling_of_Mineral_Potential_Analysis_of_Gold_Prospectivity_in_the_Hezuo-Meiwu_District_West_Qinling_Orogen_China
  • https://www.sciencedirect.com/science/article/pii/S016913682400163X -> Metallogenic prediction based on fractal theory and machine learning in Duobaoshan Area, Heilongjiang Province
  • https://www.researchgate.net/publication/369104190_Mineral_Prospectivity_Mapping_Using_Attention-based_Convolutional_Neural_Network
  • https://www.researchgate.net/publication/235443301_Mineral_potential_mapping_in_a_frontier_region
  • https://www.researchgate.net/publication/235443302_Mineral_potential_mapping_in_frontier_regions_A_Mongolian_case_study
  • https://www.researchgate.net/publication/329037175_Mineral_prospectivity_analysis_for_BIF_iron_deposits_A_case_study_in_the_Anshan-Benxi_area_Liaoning_province_North-East_China
  • https://www.researchgate.net/publication/351649498_Mineral_Prospectivity_Mapping_based_on_Isolation_Forest_and_Random_Forest_Implication_for_the_Existence_of_Spatial_Signature_of_Mineralization_in_Outliers
  • https://www.researchgate.net/publication/358528670_Mineral_Prospectivity_Mapping_Based_on_Wavelet_Neural_Network_and_Monte_Carlo_Simulations_in_the_Nanling_W-Sn_Metallogenic_Province
  • https://www.researchgate.net/publication/352983697_Mineral_prospectivity_mapping_by_deep_learning_method_in_Yawan-Daqiao_area_Gansu
  • https://www.researchgate.net/publication/367106018_Mineral_Prospectivity_Mapping_of_Porphyry_Copper_Deposits_Based_on_Remote_Sensing_Imagery_and_Geochemical_Data_in_the_Duolong_Ore_District_Tibet - Mineral Prospectivity Mapping of Porphyry Copper Deposits Based on Remote Sensing Imagery and Geochemical Data in the Duolong Ore District, Tibet
  • https://www.researchgate.net/publication/355749736_Mineral_prospectivity_mapping_using_a_joint_singularity-based_weighting_method_and_long_short-term_memory_network
  • https://www.researchgate.net/publication/369104190_Mineral_Prospectivity_Mapping_Using_Attention-based_Convolutional_Neural_Network
  • https://www.researchgate.net/publication/365434839_Mineral_Prospectivity_Mapping_Using_Deep_Self-Attention_Model
  • https://www.researchgate.net/publication/379674196_Mineral_prospectivity_mapping_using_knowledge_embedding_and_explainable_ensemble_learning_A_case_study_of_the_Keeryin_ore_concentration_in_Sichuan_China
  • https://www.researchgate.net/publication/350817877_Mineral_Prospectivity_Prediction_via_Convolutional_Neural_Networks_Based_on_Geological_Big_Data
  • https://www.researchgate.net/publication/338871759_Modeling-based_mineral_system_approach_to_prospectivity_mapping_of_stratabound_hydrothermal_deposits_A_case_study_of_MVT_Pb-Zn_deposits_in_the_Huayuan_area_northwestern_Hunan_Province_China
  • https://www.researchgate.net/publication/332547136_Prospectivity_Mapping_for_Porphyry_Cu-Mo_Mineralization_in_the_Eastern_Tianshan_Xinjiang_Northwestern_China
  • https://www.sciencedirect.com/science/article/pii/S0169136824001823 -> Quantitative prediction methods and applications of digital ore deposit models
  • https://www.researchgate.net/publication/344303914_Random-Drop_Data_Augmentation_of_Deep_Convolutional_Neural_Network_for_Mineral_Prospectivity_Mapping
  • https://www.researchgate.net/publication/371044606_Supervised_Mineral_Prospectivity_Mapping_via_Class-Balanced_Focal_Loss_Function_on_Imbalanced_Geoscience_DatasetsSupervised Mineral Prospectivity Mapping via Class-Balanced Focal Loss Function on Imbalanced Geoscience Datasets
  • https://www.researchgate.net/publication/361520562_Recognizing_Multivariate_Geochemical_Anomalies_Related_to_Mineralization_by_Using_Deep_Unsupervised_Graph_Learning
  • https://www.researchgate.net/publication/360028637_Three-Dimensional_Mineral_Prospectivity_Mapping_by_XGBoost_Modeling_A_Case_Study_of_the_Lannigou_Gold_Deposit_China
  • https://www.researchgate.net/publication/361589587_Unlabeled_Sample_Selection_for_Mineral_Prospectivity_Mapping_by_Semi-supervised_Support_Vector_Machine
  • https://www.researchgate.net/publication/343515866_Using_deep_variational_autoencoder_networks_for_recognizing_geochemical_anomalies
  • https://www.researchgate.net/publication/361194407_Visual_Interpretable_Deep_Learning_Algorithm_for_Geochemical_Anomaly_Recognition

Egypt

  • https://www.researchgate.net/publication/340084035_Reliability_of_using_ASTER_data_in_lithologic_mapping_and_alteration_mineral_detection_of_the_basement_complex_of_West_Berenice_Southeastern_Desert_Egypt

England

  • https://www.researchgate.net/publication/342339753_A_machine_learning_approach_to_tungsten_prospectivity_modelling_using_knowledge-driven_feature_extraction_and_model_confidence
  • https://www.researchgate.net/project/Enhancing-the-Geological-Understanding-of-SW-England-Using-Machine-Learning-Algorithms

Eritrea

  • https://www.researchgate.net/publication/349158008_Mapping_gold_mineral_prospectivity_based_on_weights_of_evidence_method_in_southeast_Asmara_Eritrea

Finland

  • https://www.researchgate.net/publication/360661926_Target-scale_prospectivity_modeling_for_gold_mineralization_within_the_Rajapalot_Au-Co_project_area_in_northern_Fennoscandian_Shield_Finland_Part_2_Application_of_self-organizing_maps_and_artificial_n

Finland

  • https://publications.csiro.au/publications/#publication/PIcsiro:EP146125/SQmineral%20prospectivity/RP1/RS50/RORECENT/STsearch-by-keyword/LISEA/RI12/RT26 -> A novel spatial analysis approach for assessing regional-scale mineral prospectivity In Northern Finland
  • https://www.researchgate.net/publication/332352805_Boosting_for_Mineral_Prospectivity_Modeling_A_New_GIS_Toolbox
  • https://www.researchgate.net/publication/324517415_Can_boosting_boost_minimal_invasive_exploration_targeting
  • https://www.researchgate.net/publication/248955109_Combined_conceptualempirical_prospectivity_mapping_for_orogenic_gold_in_the_northern_Fennoscandian_Shield_Finland
  • https://www.researchgate.net/publication/283451958_Data-driven_logistic-based_weighting_of_geochemical_and_geological_evidence_layers_in_mineral_prospectivity_mapping
  • https://www.researchgate.net/publication/320280611_Evaluation_of_boosting_algorithms_for_prospectivity_mapping
  • https://www.researchgate.net/publication/298297988_Fuzzy_logic_data_integration_technique_used_as_a_nickel_exploration_tool
  • https://www.researchgate.net/publication/259372191_Gravity_data_in_regional_scale_3D_and_gold_prospectivity_modelling_-_example_from_the_Central_Lapland_greenstone_belt_northern_Finland
  • https://www.researchgate.net/publication/315381587_Introduction_to_the_special_issue_GIS-based_mineral_potential_targeting
  • https://www.researchgate.net/publication/320709733_Knowledge-driven_prospectivity_model_for_Iron_oxide-Cu-Au_IOCG_deposits_in_northern_Finland
  • https://tupa.gtk.fi/raportti/arkisto/57_2021.pdf -> Mineral Prospectivity and Exploration Targeting MinProXT 2021 Webinar - paper compilation
  • https://tupa.gtk.fi/raportti/arkisto/29_2023.pdf -> Mineral Prospectivity and Exploration Targeting MinProXT 2022 Webinar - paper compilation
  • https://www.researchgate.net/publication/312180531_Optimizing_a_Knowledge-driven_Prospectivity_Model_for_Gold_Deposits_Within_Perapohja_Belt_Northern_Finland
  • https://www.researchgate.net/publication/320703774_Prospectivity_Models_for_Volcanogenic_Massive_Sulfide_Deposits_VMS_in_Northern_Finland
  • https://www.researchgate.net/publication/280875727_Receiver_operating_characteristics_ROC_as_validation_tool_for_prospectivity_models_-_A_magmatic_Ni-Cu_case_study_from_the_Central_Lapland_Greenstone_Belt_Northern_Finland
  • https://www.researchgate.net/publication/332298116_Scalability_of_the_Mineral_Prospectivity_Modelling_-_An_orogenic_gold_case_study_from_northern_Finland
  • https://www.researchgate.net/publication/251786465_Spatial_data_analysis_as_a_tool_for_mineral_prospectivity_mapping
  • https://www.researchgate.net/publication/331006924_Unsupervised_clustering_and_empirical_fuzzy_memberships_for_mineral_prospectivity_modelling

Ghana

  • https://www.researchgate.net/publication/227256267_Application_of_Data-Driven_Evidential_Belief_Functions_to_Prospectivity_Mapping_for_Aquamarine-Bearing_Pegmatites_Lundazi_District_Zambia
  • https://www.researchgate.net/publication/226842511_Mapping_of_prospectivity_and_estimation_of_number_of_undiscovered_prospects_for_lode_gold_southwestern_Ashanti_Belt_Ghana
  • https://www.researchgate.net/publication/233791624_Spatial_association_of_gold_deposits_with_remotely_-_sensed_faults_South_Ashanti_belt_Ghana

Greenland

  • https://www.researchgate.net/publication/360970965_Identification_of_Radioactive_Mineralized_Lithology_and_Mineral_Prospectivity_Mapping_Based_on_Remote_Sensing_in_High-Latitude_Regions_A_Case_Study_on_the_Narsaq_Region_of_Greenland

India

  • https://www.researchgate.net/publication/372636338_Unsupervised_machine_learning_based_prospectivity_analysis_of_NW_and_NE_India_for_carbonatite-alkaline_complex-related_REE_deposits

Indonesia

  • https://www.researchgate.net/publication/263542819_Regional-Scale_Geothermal_Prospectivity_Mapping_in_West_Java_Indonesia_by_Data-driven_Evidential_Belief_Functions

Iran

  • https://www.researchgate.net/publication/325697373_A_comparative_analysis_of_artificial_neural_network_ANN_wavelet_neural_network_WNN_and_support_vector_machine_SVM_data-driven_models_to_mineral_potential_mapping_for_copper_mineralizations_in_the_Shah
  • https://www.researchgate.net/publication/358507255_A_Comparative_Study_of_Convolutional_Neural_Networks_and_Conventional_Machine_Learning_Models_for_Lithological_Mapping_Using_Remote_Sensing_Data
  • https://www.researchgate.net/publication/351750324_A_data_augmentation_approach_to_XGboost-based_mineral_potential_mapping_An_example_of_carbonate-hosted_Zn_Pb_mineral_systems_of_Western_Iran
  • https://www.researchgate.net/publication/336471932_A_knowledge-guided_fuzzy_inference_approach_for_integrating_geophysics_geochemistry_and_geology_data_in_deposit-scale_porphyry_copper_targeting_Saveh-Iran
  • https://www.researchgate.net/publication/348500913_A_new_strategy_for_spatial_predictive_mapping_of_mineral_prospectivity
  • https://www.researchgate.net/publication/348482539_A_new_strategy_for_spatial_predictive_mapping_of_mineral_prospectivity_Automated_hyperparameter_tuning_of_random_forest_approach
  • https://www.researchgate.net/publication/352251016_A_simulation-based_framework_for_modulating_the_effects_of_subjectivity_in_greenfield_Mineral_Prospectivity_Mapping_with_geochemical_and_geological_data
  • https://www.researchgate.net/publication/296638839_An_AHP-TOPSIS_Predictive_Model_for_District-Scale_Mapping_of_Porphyry_Cu-Au_Potential_A_Case_Study_from_Salafchegan_Area_Central_Iran
  • https://www.researchgate.net/publication/278029106_Application_of_Discriminant_Analysis_and_Support_Vector_Machine_in_Mapping_Gold_Potential_Areas_for_Further_Drilling_in_the_Sari-Gunay_Gold_Deposit_NW_Iran
  • https://www.researchgate.net/publication/220164381_Application_of_geochemical_zonality_coefficients_in_mineral_prospectivity_mapping
  • https://www.researchgate.net/publication/330359897_Application_of_hybrid_AHP-TOPSIS_method_for_prospectivity_modeling_of_Cu_porphyry_in_Varzaghan_district_Iran
  • https://www.researchgate.net/publication/356872819_Application_of_self-organizing_map_SOM_and_K-means_clustering_algorithms_for_portraying_geochemical_anomaly_patterns_in_Moalleman_district_NE_Iran
  • https://www.researchgate.net/publication/258505300_Application_of_staged_factor_analysis_and_logistic_function_to_create_a_fuzzy_stream_sediment_geochemical_evidence_layer_for_mineral_prospectivity_mapping
  • https://www.researchgate.net/publication/358567148_Applications_of_data_augmentation_in_mineral_prospectivity_prediction_based_on_convolutional_neural_networks
  • https://www.researchgate.net/publication/353761696_Assessing_the_effects_of_mineral_systems-derived_exploration_targeting_criteria_for_Random_Forests-based_predictive_mapping_of_mineral_prospectivity_in_Ahar-Arasbaran_area_Iran
  • https://www.researchgate.net/publication/270586282_Data-Driven_Index_Overlay_and_Boolean_Logic_Mineral_Prospectivity_Modeling_in_Greenfields_Exploration
  • https://www.researchgate.net/publication/356660905_Deep_GMDH_Neural_Networks_for_Predictive_Mapping_of_Mineral_Prospectivity_in_Terrains_Hosting_Few_but_Large_Mineral_Deposits
  • https://www.researchgate.net/publication/317240761_Enhancement_and_Mapping_of_Weak_Multivariate_Stream_Sediment_Geochemical_Anomalies_in_Ahar_Area_NW_Iran
  • https://www.researchgate.net/publication/356580903_Evidential_data_integration_to_produce_porphyry_Cu_prospectivity_map_using_a_combination_of_knowledge_and_data_driven_methods
  • https://research-repository.uwa.edu.au/en/publications/exploration-feature-selection-applied-to-hybrid-data-integration-Exploration feature selection applied to hybrid data integrationmodeling: Targeting copper-gold potential in central
  • https://www.researchgate.net/publication/333199619_Incorporation_of_principal_component_analysis_geostatistical_interpolation_approaches_and_frequency-space-based_models_for_portraying_the_Cu-Au_geochemical_prospects_in_the_Feizabad_district_NW_Iran
  • https://www.researchgate.net/publication/351965039_Intelligent_geochemical_exploration_modeling_using_multiclass_support_vector_machine_and_integration_it_with_continuous_genetic_algorithm_in_Gonabad_region_Khorasan_Razavi_Iran
  • https://www.researchgate.net/publication/310658663_Multifractal_interpolation_and_spectrum-area_fractal_modeling_of_stream_sediment_geochemical_data_Implications_for_mapping_exploration_targets
  • https://www.researchgate.net/publication/267635150_Multivariate_regression_analysis_of_lithogeochemical_data_to_model_subsurface_mineralization_A_case_study_from_the_Sari_Gunay_epithermal_gold_deposit_NW_Iran
  • https://www.researchgate.net/publication/330129457_Performance_evaluation_of_RBF-_and_SVM-based_machine_learning_algorithms_for_predictive_mineral_prospectivity_modeling_integration_of_S-A_multifractal_model_and_mineralization_controls
  • https://www.researchgate.net/publication/353982380_Porphyry_Cu-Au_prospectivity_modelling_using_semi-supervised_learning_algorithm_in_Dehsalm_district_eastern_Iran_In_Farsi_with_extended_English_abstract
  • https://www.researchgate.net/publication/320886789_Prospectivity_analysis_of_orogenic_gold_deposits_in_Saqez-Sardasht_Goldfield_Zagros_Orogen_Iran
  • https://www.researchgate.net/publication/361529867_Prospectivity_mapping_of_orogenic_lode_gold_deposits_using_fuzzy_models_a_case_study_of_Saqqez_area_NW_of_Iran
  • https://www.researchgate.net/publication/361717490_Quantifying_Uncertainties_Linked_to_the_Diversity_of_Mathematical_Frameworks_in_Knowledge-Driven_Mineral_Prospectivity_Mapping
  • https://www.researchgate.net/publication/349957803_Regional-Scale_Mineral_Prospectivity_Mapping_Support_Vector_Machines_and_an_Improved_Data-Driven_Multi-criteria_Decision-Making_Technique
  • https://www.researchgate.net/publication/339153591_Sensitivity_analysis_of_prospectivity_modeling_to_evidence_maps_Enhancing_success_of_targeting_for_epithermal_gold_Takab_district_NW_Iran
  • https://www.researchgate.net/publication/321076980_Spatial_analyses_of_exploration_evidence_data_to_model_skarn-type_copper_prospectivity_in_the_Varzaghan_district_NW_Iran
  • https://www.researchgate.net/publication/304904242_Stepwise_regression_for_recognition_of_geochemical_anomalies_Case_study_in_Takab_area_NW_Iran
  • https://www.researchgate.net/publication/350423220_Supervised_mineral_exploration_targeting_and_the_challenges_with_the_selection_of_deposit_and_non-deposit_sites_thereof
  • https://www.researchgate.net/publication/307874730_The_use_of_decision_tree_induction_and_artificial_neural_networks_for_recognizing_the_geochemical_distribution_patterns_of_LREE_in_the_Choghart_deposit_Central_Iran

Ireland

  • https://www.gsi.ie/en-ie/programmes-and-projects/tellus/activities/tellus-product-development/mineral-prospectivity/Pages/default.aspx - > NW Midlands Mineral Prospectivity Mapping

India

  • https://www.researchgate.net/publication/226092981_A_Hybrid_Neuro-Fuzzy_Model_for_Mineral_Potential_Mapping
  • https://www.researchgate.net/publication/225328359_A_Hybrid_Fuzzy_Weights-of-Evidence_Model_for_Mineral_Potential_Mapping
  • https://www.researchgate.net/publication/227221497_Artificial_Neural_Networks_for_Mineral-Potential_Mapping_A_Case_Study_from_Aravalli_Province_Western_India
  • https://www.researchgate.net/publication/222050039_Bayesian_network_classifiers_for_mineral_potential_mapping
  • https://www.researchgate.net/publication/355397149_Gold_Prospectivity_Mapping_in_the_Sonakhan_Greenstone_Belt_Central_India_A_Knowledge-Driven_Guide_for_Target_Delineation_in_a_Region_of_Low_Exploration_Maturity
  • https://www.researchgate.net/publication/272092276_Extended_Weights-of-Evidence_Modelling_for_Predictive_Mapping_of_Base_Metal_Deposit_Potential_in_Aravalli_Province_Western_India
  • https://www.researchgate.net/publication/226193283_Knowledge-Driven_and_Data-Driven_Fuzzy_Models_for_Predictive_Mineral_Potential_Mapping
  • https://www.researchgate.net/publication/238027981_SVM-based_base-metal_prospectivity_modeling_of_the_Aravalli_Orogen_Northwestern_India

Norway

  • https://www.mdpi.com/2075-163X/9/2/131/htm - Prospectivity Mapping of Mineral Deposits in Northern Norway Using Radial Basis Function Neural Networks

South Korea

  • https://www.researchgate.net/publication/221911782_Application_of_Artificial_Neural_Network_for_Mineral_Potential_Mapping
  • https://www.researchgate.net/publication/359861043_Rock_Classification_in_a_Vanadiferous_Titanomagnetite_Deposit_Based_on_Supervised_Machine_Learning#fullTextFileContent Rock Classification in a Vanadiferous Titanomagnetite Deposit Based on Supervised Machine Learning

Phillipines

  • https://www.researchgate.net/publication/359632307_A_Geologically_Constrained_Variational_Autoencoder_for_Mineral_Prospectivity_Mapping
  • https://www.researchgate.net/publication/263174923_Application_of_Mineral_Exploration_Models_and_GIS_to_Generate_Mineral_Potential_Maps_as_Input_for_Optimum_Land-Use_Planning_in_the_Philippines
  • https://www.researchgate.net/publication/267927677_Data-driven_predictive_mapping_of_gold_prospectivity_Baguio_district_Philippines_Application_of_Random_Forests_algorithm
  • https://www.researchgate.net/publication/276271833_Data-Driven_Predictive_Modeling_of_Mineral_Prospectivity_Using_Random_Forests_A_Case_Study_in_Catanduanes_Island_Philippines
  • https://www.researchgate.net/publication/209803275_Evidential_belief_functions_for_data-driven_geologically_constrained_mapping_of_gold_potential_Baguio_district_Philippines
  • https://www.researchgate.net/publication/241001432_Geologically_Constrained_Probabilistic_Mapping_of_Gold_Potential_Baguio_District_Philippines
  • https://www.researchgate.net/publication/263724277_Geologically_Constrained_Fuzzy_Mapping_of_Gold_Mineralization_Potential_Baguio_District_Philippines
  • https://www.researchgate.net/publication/229641286_Improved_Wildcat_Modelling_of_Mineral_Prospectivity
  • https://www.researchgate.net/publication/238447208_Logistic_Regression_for_Geologically_Constrained_Mapping_of_Gold_Potential_Baguio_District_Philippines
  • https://www.researchgate.net/publication/248977334_Mineral_imaging_with_Landsat_TM_data_for_hydrothermal_alteration_mapping_in_heavily-vegetated_terrane​​​​​​
  • https://www.researchgate.net/publication/356546133_Mineral_Prospectivity_Mapping_via_Gated_Recurrent_Unit_Model
  • https://www.researchgate.net/publication/267640864_Random_forest_predictive_modeling_of_mineral_prospectivity_with_small_number_of_prospects_and_data_with_missing_values_in_Abra_Philippines
  • https://www.researchgate.net/publication/3931975_Remote_detection_of_vegetation_stress_for_mineral_exploration
  • https://www.researchgate.net/publication/263422015_Where_Are_Porphyry_Copper_Deposits_Spatially_Localized_A_Case_Study_in_Benguet_Province_Philippines
  • https://www.researchgate.net/publication/233488614_Wildcat_mapping_of_gold_potential_Baguio_District_Philippines
  • https://www.researchgate.net/publication/226982180_Weights_of_Evidence_Modeling_of_Mineral_Potential_A_Case_Study_Using_Small_Number_of_Prospects_Abra_Philippines

Russia

  • https://www.researchgate.net/publication/358431343_Application_of_Maximum_Entropy_for_Mineral_Prospectivity_Mapping_in_Heavily_Vegetated_Areas_of_Greater_Kurile_Chain_with_Landsat_8_Data
  • https://www.researchgate.net/publication/354000754_Mineral_Prospectivity_Mapping_for_Forecasting_Gold_Deposits_in_the_Central_Kolyma_Region_North-East_Russia

South Africa

  • https://www.researchgate.net/publication/359294267_Data-driven_multi-index_overlay_gold_prospectivity_mapping_using_geophysical_and_remote_sensing_datasets
  • https://www.researchgate.net/publication/361526053_Mineral_prospectivity_mapping_of_gold-base_metal_mineralisation_in_the_Sabie-Pilgrim%27s_Rest_area_Mpumalanga_Province_South_Africa
  • https://www.researchgate.net/publication/264296137_PREDICTIVE_BEDROCK_AND_MINERAL_PROSPECTIVITY_MAPPING_IN_THE_GIYANI_GREENSTONE_BELT_SOUTH_AFRICA
  • https://www.researchgate.net/publication/268196204_Predictive_mapping_of_prospectivity_for_orogenic_gold_Giyani_greenstone_belt_South_Africa

Spain

  • https://www.researchgate.net/publication/225656353_Deriving_Optimal_Exploration_Target_Zones_on_Mineral_Prospectivity_Maps
  • https://www.researchgate.net/publication/222198648_Knowledge-guided_data-driven_evidential_belief_modeling_of_mineral_prospectivity_in_Cabo_de_Gata_SE_Spain
  • https://www.researchgate.net/publication/356639977_Machine_learning_models_for_Hg_prospecting_in_the_Almaden_mining_district
  • https://www.researchgate.net/publication/43165602_Methodology_for_deriving_optimal_exploration_target_zones
  • https://www.researchgate.net/publication/263542579_Optimal_Exploration_Target_Zones
  • https://www.researchgate.net/publication/222892103_Optimal_field_sampling_for_targeting_minerals_using_hyperspectral_data
  • https://www.researchgate.net/publication/271671416_Predictive_modelling_of_gold_potential_with_the_integration_of_multisource_information_based_on_random_forest_a_case_study_on_the_Rodalquilar_area_Southern_Spain

Sweden

  • https://www.researchgate.net/publication/259128115_Biogeochemical_expression_of_rare_earth_element_and_zirconium_mineralization_at_Norra_Karr_Southern_Sweden
  • https://www.researchgate.net/publication/260086862_COMPARISION_OF_VMS_PROSPECTIVITY_MAPPING_BY_EBF_AND_WOFE_MODELING_THE_SKELLEFTE_DISTRICT_SWEDEN
  • https://www.researchgate.net/publication/336086368_GIS-based_mineral_system_approach_for_prospectivity_mapping_of_iron-oxide_apatite-bearing_mineralisation_in_Bergslagen_Sweden
  • https://www.researchgate.net/publication/229347041_Predictive_mapping_of_prospectivity_and_quantitative_estimation_of_undiscovered_VMS_deposits_in_Skellefte_district_Sweden
  • https://www.researchgate.net/publication/260086947_PRELIMINARY_GIS-BASED_ANALYSIS_OF_REGIONAL-SCALE_VMS_PROSPECTIVITY_IN_THE_SKELLEFTE_REGION_SWEDEN

Uganda

  • https://www.researchgate.net/publication/242339962_Predictive_mapping_for_orogenic_gold_prospectivity_in_Uganda
  • https://www.researchgate.net/publication/262566098_Predictive_Mapping_of_Prospectivity_for_Orogenic_Gold_in_Uganda

USA

  • https://www.researchgate.net/publication/338663292_A_Predictive_Geospatial_Exploration_Model_for_Mississippi_Valley_Type_Pb-Zn_Mineralization_in_the_Southeast_Missouri_Lead_District
  • https://www.sciencedirect.com/science/article/abs/pii/S0375674218300396?via%3Dihub -> Machine learning strategies for classification and prediction of alteration facies: Examples from the Rosemont Cu-Mo-Ag skarn deposit, SE Tucson Arizona
  • [presentation of the above!] https://www.slideshare.net/JuanCarlosOrdezCalde/geology-chemostratigraphy-and-alteration-geochemistry-of-the-rosemont-cumoag-skarn-deposit-southern-arizona
  • https://github.com/rohitash-chandra/research/blob/master/presentations/CSIRO%20Minerals-Seminar-September2022.pdf -> Machine Learning for Mineral Exploration: A Data Odyssey
    • Video https://www.youtube.com/watch?v=zhXuPQy7mk8&t=561s -> Talks about using plate subduction and associated statistics via GPlates

Zambia

  • https://www.researchgate.net/publication/263542565_APPLICATION_OF_REMOTE_SENSING_AND_SPATIAL_DATA_INTEGRATION_TO_PREDICT_POTENTIAL_ZONES_FOR_AQUAMARINE-BEARING_PEGMATITES_LUNDAZI_AREA_NORTHEAST_ZAMBIA
  • https://www.researchgate.net/publication/264041472_Geological_and_Mineral_Potential_Mapping_by_Geoscience_Data_Integration

Zimbabwe

  • https://www.researchgate.net/publication/260792212_Nickel_Sulphide_Deposits_in_Archaean_Greenstone_Belts_in_Zimbabwe_Review_and_Prospectivity_Analysis

Overviews

  • https://www.sciencedirect.com/science/article/pii/S2772883824000347 -> A review on the applications of airborne geophysical and remote sensing datasets in epithermal gold mineralisation mapping
  • https://www.researchgate.net/publication/353530416_A_Systematic_Review_on_the_Application_of_Machine_Learning_in_Exploiting_Mineralogical_Data_in_Mining_and_Mineral_Industry
  • https://www.researchgate.net/publication/352104303_Deep_Learning_for_Geophysics_Current_and_Future_Trends
  • https://www.researchgate.net/publication/365777421_Computer_Vision_and_Pattern_Recognition_for_the_Analysis_of_2D3D_Remote_Sensing_Data_in_Geoscience_A_Survey - Computer Vision and Pattern Recognition for the Analysis of 2D/3D Remote Sensing Data in Geoscience: A Survey

Deposits

  • https://pubs.er.usgs.gov/publication/ofr20211049 -> Deposit Classification Scheme for the Critical Minerals Mapping Initiative Global Geochemical Database

Geochemistry

  • https://ui.adsabs.harvard.edu/abs/2018EGUGA..20.4169R/abstract -> Accelerating minerals exploration with in-field characterisation, sample tracking and active machine learning
  • https://www.researchgate.net/publication/375509344_Alteration_assemblage_characterization_using_machine_learning_applied_to_high_resolution_drill-core_images_hyperspectral_data_and_geochemistry
  • https://qspace.library.queensu.ca/items/38f52d19-609d-4916-bcd0-3ce20675dee3/full - > Application of Computational Methods to Data Integration and Geoscientific Problems in Mineral Exploration and Mining
  • https://www.sciencedirect.com/science/article/pii/S0169136822005509?dgcid=rss_sd_all -> Applying neural networks-based modelling to the prediction of mineralization: A case-study using the Western Australian Geochemistry (WACHEM) database
  • https://www.researchgate.net/publication/302595237_A_machine_learning_approach_to_geochemical_mapping
  • https://www.researchgate.net/publication/369300132_DEEP-LEARNING_IDENTIFICATION_OF_ANOMALOUS_DATA_IN_GEOCHEMICAL_DATASETS_DEEP-LEARNING_IDENTIFICATION_OF_ANOMALOUS_DATA_IN_GEOCHEMICAL_DATASETS
  • https://link.springer.com/article/10.1007/s11053-024-10317-5 -> Denoising of Geochemical Data using Deep Learning–Implications for Regional Surveys]
  • https://www.researchgate.net/publication/368489689_Discrimination_of_Pb-Zn_deposit_types_using_sphalerite_geochemistry_New_insights_from_machine_learning_algorithm
  • https://www.researchgate.net/publication/365953549_Incorporating_the_genetic_and_firefly_optimization_algorithms_into_K-means_clustering_method_for_detection_of_porphyry_and_skarn_Cu-related_geochemical_footprints_in_Baft_district_Kerman_Iran
  • https://www.researchgate.net/publication/369768936_Infomax-based_deep_autoencoder_network_for_recognition_of_multi-element_geochemical_anomalies_linked_to_mineralization -> Paywalled
  • https://www.researchsquare.com/article/rs-4106957/v1 -> Multi-element geochemical anomaly recognition applying geologically-constrained convolutional deep learning algorithm with Butterworth filtering
  • https://www.researchgate.net/publication/369241349_Quantifying_continental_crust_thickness_using_the_machine_learning_method
  • https://www.researchgate.net/publication/334651800_Using_machine_learning_to_estimate_a_key_missing_geochemical_variable_in_mining_exploration_Application_of_the_Random_Forest_algorithm_to_multi-sensor_core_logging_data

Geology

Depth

  • https://www.researchgate.net/publication/332263305_A_speedy_update_on_machine_learning_applied_to_bedrock_mapping_using_geochemistry_or_geophysics_examples_from_the_Pacific_Rim_and_nearby
  • https://eprints.utas.edu.au/32368/ - thesis paper update
  • https://www.researchgate.net/publication/280038632_Estimating_the_fill_thickness_and_bedrock_topography_in_intermontane_valleys_using_artificial_neural_networks_-_Supporting_Information
  • https://www.researchgate.net/publication/311783770_Mapping_the_global_depth_to_bedrock_for_land_surface_modeling
  • https://www.researchgate.net/publication/379813337_Contribution_to_advancing_aquifer_geometric_mapping_using_machine_learning_and_deep_learning_techniques_a_case_study_of_the_AL_Haouz-Mejjate_aquifer_Marrakech_Morocco

Drill Core

  • https://pubmed.ncbi.nlm.nih.gov/35776744/ - Deep learning based lithology classification of drill core images
  • https://www.researchgate.net/publication/379760986_A_machine_vision_approach_for_detecting_changes_in_drill_core_textures_using_optical_images
  • https://www.sciencedirect.com/science/article/pii/S2949891024002112 -> Sensitivity analysis of similarity learning models for well-intervals based on logging data

General

  • https://www.researchgate.net/publication/335104674_Does_shallow_geological_knowledge_help_neural-networks_to_predict_deep_units
  • https://www.researchgate.net/publication/379939974_Graph_convolutional_network_for_lithological_classification_and_mapping_using_stream_sediment_geochemical_data_and_geophysical_data
  • https://ieeexplore.ieee.org/abstract/document/10493129 -> Geological Background Prototype Learning Enhanced Network for Remote Sensing-Based Engineering Geological Lithology Interpretation in Highly Vegetated Areas [Unseen]
  • https://www.researchgate.net/publication/370175012_GeoPDNN_A_Semisupervised_Deep_Learning_Neural_Network_Using_Pseudolabels_for_Three-dimensional_Urban_Geological_Modelling_and_Uncertainty_Analysis_from_Borehole_Data
  • https://www.researchgate.net/publication/343511849_Identification_of_intrusive_lithologies_in_volcanic_terrains_in_British_Columbia_by_machine_learning_using_Random_Forests_the_value_of_using_a_soft_classifier
  • https://www.sciencedirect.com/science/article/pii/S0169136824000921 -> Machine learning-based field geological mapping: A new exploration of geological survey data acquisition strategy https://www.researchgate.net/publication/324411647_Predicting_rock_type_and_detecting_hydrothermal_alteration_using_machine_learning_and_petrophysical_properties_of_the_Canadian_Malartic_ore_and_host_rocks_Pontiac_Subprovince_Quebec_Canada

Geochronology

  • https://www.researchgate.net/publication/379077847_Tracing_Andean_Origins_A_Machine_Learning_Framework_for_Lead_Isotopes

Geomorphology

  • https://agu.confex.com/agu/fm18/mediafile/Handout/Paper427843/Landforms%20Poster.pdf -> Using machine learning to classify landforms for minerals exploration

Mineralogy

  • https://pubs.geoscienceworld.org/msa/ammin/article-abstract/doi/10.2138/am-2023-9092/636861/The-application-of-transfer-learning-in-optical -> The application of “transfer learning” in optical microscopy: the petrographic classification of metallic minerals

Structure

  • https://www.researchgate.net/publication/332267249_Seismic_fault_detection_using_an_encoder-decoder_convolutional_neural_network_with_a_small_training_set
  • https://www.researchgate.net/publication/377168034_Unsupervised_machine_learning_and_depth_clusters_of_Euler_deconvolution_of_magnetic_data_a_new_approach_to_imaging_geological_structures

Geophysics

Foundation

  • https://www.researchgate.net/publication/373714604_Seismic_Foundation_Model_SFM_a_new_generation_deep_learning_model_in_geophysics
  • https://www.researchgate.net/publication/353789276_Geology_differentiation_by_applying_unsupervised_machine_learning_to_multiple_independent_geophysical_inversions
  • https://www.sciencedirect.com/science/article/pii/S001379522100137X - Joint interpretation of geophysical data: Applying machine learning to the modeling of an evaporitic sequence in Villar de Cañas (Spain)
  • https://www.sciencedirect.com/science/article/pii/S2666544121000253 - Microleveling aerogeophysical data using deep convolutional network and MoG-RPCA
  • https://www.researchgate.net/publication/368550674_Objective_classification_of_high-resolution_geophysical_data_Empowering_the_next_generation_of_mineral_exploration_in_Sierra_Leone
  • https://datarock.com.au/blog/transfer-learning-with-seismic-attributes -> Transfer Learning with Seismic Attributes

EM

  • https://d197for5662m48.cloudfront.net/documents/publicationstatus/206704/preprint_pdf/59681a0a2c571bc2a9006f37517bc6ef.pdf -> A Fast Three-dimensional Imaging Scheme of Airborne Time Domain Electromagnetic Data using Deep Learning
  • https://www.researchgate.net/publication/351507441_A_Neural_Network-Based_Hybrid_Framework_for_Least-Squares_Inversion_of_Transient_Electromagnetic_Data
  • https://www.researchgate.net/publication/325980016_Agglomerative_hierarchical_clustering_of_airborne_electromagnetic_data_for_multi-scale_geological_studies
  • https://npg.copernicus.org/articles/26/13/2019/ -> Denoising stacked autoencoders for transient electromagnetic signal denoising
  • https://www.researchgate.net/publication/373836226_An_information_theoretic_Bayesian_uncertainty_analysis_of_AEM_systems_over_Menindee_Lake_Australia -> An information theoretic Bayesian uncertainty analysis of AEM systems over Menindee Lake, Australia
  • https://www.researchgate.net/publication/348850484_Effect_of_Data_Normalization_on_Neural_Networks_for_the_Forward_Modelling_of_Transient_Electromagnetic_Data
  • https://www.researchgate.net/publication/342153377_Fast_imaging_of_time-domain_airborne_EM_data_using_deep_learning_technology
  • https://library.seg.org/doi/10.4133/JEEG4.2.93 -> Neural Network Interpretation of High Frequency Electromagnetic Ellipticity Data Part I: Understanding the Half-Space and Layered Earth Response
  • https://arxiv.org/abs/2207.12607 -> Physics Embedded Machine Learning for Electromagnetic Data Imaging
  • https://www.researchgate.net/publication/359441000_Surface_parameters_and_bedrock_properties_covary_across_a_mountainous_watershed_Insights_from_machine_learning_and_geophysics
  • https://www.researchgate.net/publication/337166479_Using_machine_learning_to_interpret_3D_airborne_electromagnetic_inversions
  • https://www.researchgate.net/publication/344397798_TEMDnet_A_Novel_Deep_Denoising_Network_for_Transient_Electromagnetic_Signal_With_Signal-to-Image_Transformation
  • https://www.researchgate.net/publication/366391168_Two-dimensional_fast_imaging_of_airborne_EM_data_based_on_U-net

Gravity

  • https://www.researchgate.net/publication/365142017_3D_gravity_inversion_based_on_deep_learning
  • https://www.researchgate.net/publication/378930477_A_Deep_Learning_Gravity_Inversion_Method_Based_on_a_Self-Constrained_Network_and_Its_Application
  • https://www.researchgate.net/publication/362276214_DecNet_Decomposition_network_for_3D_gravity_inversion -> Olympic Dam example here
  • https://www.researchgate.net/publication/368448190_Deep_Learning_to_estimate_the_basement_depth_by_gravity_data_using_Feedforward_neural_network
  • https://www.researchgate.net/publication/326231731_Depth_and_Lineament_Maps_Derived_from_North_Cameroon_Gravity_Data_Computed_by_Artificial_Neural_Network_International_Journal_of_Geophysics_vol_2018_Article_ID_1298087_13_pages_2018
  • https://www.researchgate.net/publication/366922016_Fast_imaging_for_the_3D_density_structures_by_machine_learning_approach
  • https://www.researchgate.net/publication/370230217_Inversion_of_the_Gravity_Gradiometry_Data_by_ResUet_Network_An_Application_in_Nordkapp_Basin_Barents_Sea

Hyperspectral

  • https://www.researchgate.net/publication/380391736_A_review_on_hyperspectral_imagery_application_for_lithological_mapping_and_mineral_prospecting_Machine_learning_techniques_and_future_prospects
  • https://www.researchgate.net/publication/372876863_Ore-Grade_Estimation_from_Hyperspectral_Data_Using_Convolutional_Neural_Networks_A_Case_Study_at_the_Olympic_Dam_Iron_Oxide_Copper-Gold_Deposit_Australia [UNSEEN] -### Magnetics
  • https://www.researchgate.net/publication/360288249_3D_Inversion_of_Magnetic_Gradient_Tensor_Data_Based_on_Convolutional_Neural_Networks
  • https://www.researchgate.net/publication/295902270_Artificial_neural_network_inversion_of_magnetic_anomalies_caused_by_2D_fault_structures
  • https://www.researchgate.net/publication/354002966_Convolutional_neural_networks_for_the_characterization_of_magnetic_anomalies
  • https://www.researchgate.net/publication/354772176_Convolution_Neural_Networks_Applied_to_the_Interpretation_of_Lineaments_in_Aeromagnetic_Data
  • https://www.researchgate.net/publication/347173621_Predicting_Magnetization_Directions_Using_Convolutional_Neural_Networks -> Paywalled
  • https://www.researchgate.net/publication/361114986_Reseaux_de_Neurones_Convolutifs_pour_la_Caracterisation_d'Anomalies_Magnetiques -> French original of the above

Magnetotellurics

  • http://en.dzkx.org/article/doi/10.6038/cjg2024R0580 -> Fast inversion method of apparent resistivity based on deep learning
  • https://www.researchgate.net/publication/367504269_Flexible_and_accurate_prior_model_construction_based_on_deep_learning_for_2D_magnetotelluric_data_inversion
  • https://www.researchgate.net/publication/355568465_Stochastic_inversion_of_magnetotelluric_data_using_deep_reinforcement_learning
  • https://www.researchgate.net/publication/354360079_Two-dimensional_deep_learning_inversion_of_magnetotelluric_sounding_data
  • https://www.researchgate.net/publication/361741409_Physics-Driven_Deep_Learning_Inversion_with_Application_to_Magnetotelluric

Passive Seismic

  • https://arxiv.org/abs/2403.15095 -> End-to-End Mineral Exploration with Artificial Intelligence and Ambient Noise Tomography

Surface Resistivity

  • https://www.researchgate.net/publication/367606119_Deriving_Surface_Resistivity_from_Polarimetric_SAR_Data_Using_Dual-Input_UNet

Geothermal

  • https://www.osti.gov/biblio/2335471 - Applications of Machine Learning Techniques to Geothermal Play Fairway Analysis in the Great Basin Region, Nevada [adjacent but interesting]
  • https://gdr.openei.org/submissions/1402 - Associated code
  • https://catalog.data.gov/dataset/python-codebase-and-jupyter-notebooks-applications-of-machine-learning-techniques-to-geoth
  • https://www.researchgate.net/publication/341418586_Preliminary_Report_on_Applications_of_Machine_Learning_Techniques_to_the_Nevada_Geothermal_Play_Fairway_Analysis

Maps

  • https://www.researchgate.net/publication/347786302_Semantic_Segmentation_Deep_Learning_for_Extracting_Surface_Mine_Extents_from_Historic_Topographic_Maps

Mineral

  • https://www.researchgate.net/publication/357942198_Mineral_classification_of_lithium-bearing_pegmatites_based_on_laser-induced_breakdown_spectroscopy_Application_of_semi-supervised_learning_to_detect_known_minerals_and_unknown_material
  • https://iopscience.iop.org/article/10.1088/1755-1315/1032/1/012046 -> Classifying Minerals using Deep Learning Algorithms
  • https://www.researchgate.net/publication/370835450_Predicting_new_mineral_occurrences_and_planetary_analog_environments_via_mineral_association_analysis
  • https://www.researchgate.net/publication/361230503_What_is_Mineral_Informatics

NLP

  • https://www.researchgate.net/publication/358616133_Chinese_Named_Entity_Recognition_in_the_Geoscience_Domain_Based_on_BERT
  • https://www.researchgate.net/publication/339394395_Dictionary-Based_Automated_Information_Extraction_From_Geological_Documents_Using_a_Deep_Learning_Algorithm
  • https://www.aclweb.org/anthology/2020.lrec-1.568/ -> Embeddings for Named Entity Recognition in Geoscience Portuguese Literature
  • https://www.researchgate.net/publication/359186219_Few-shot_learning_for_name_entity_recognition_in_geological_text_based_on_GeoBERT
  • https://www.researchgate.net/publication/333464862_GeoDocA_-_Fast_Analysis_of_Geological_Content_in_Mineral_Exploration_Reports_A_Text_Mining_Approach
  • https://www.researchgate.net/publication/366710921_Geological_profile-text_information_association_model_of_mineral_exploration_reports_for_fast_analysis_of_geological_content
  • https://www.researchgate.net/publication/330835955_Geoscience_Keyphrase_Extraction_Algorithm_Using_Enhanced_Word_Embedding [UNSEEN]
  • https://www.researchgate.net/publication/332997161_GNER_A_Generative_Model_for_Geological_Named_Entity_Recognition_Without_Labeled_Data_Using_Deep_Learning
  • https://www.researchgate.net/publication/321850315_Information_extraction_and_knowledge_graph_construction_from_geoscience_literature
  • https://www.researchgate.net/publication/365929623_Named_Entity_Annotation_Schema_for_Geological_Literature_Mining_in_the_Domain_of_Porphyry_Copper_Deposits
  • https://www.researchgate.net/publication/329621358_Ontology-Based_Enhanced_Word_Embedding_for_Automated_Information_Extraction_from_Geoscience_Reports
  • https://www.researchgate.net/publication/379808469_Ontology-driven_relational_data_mapping_for_constructing_a_knowledge_graph_of_porphyry_copper_deposits -> Ontology-driven relational data mapping for constructing a knowledge graph of porphyry copper deposits
  • https://www.researchgate.net/publication/327709479_Prospecting_Information_Extraction_by_Text_Mining_Based_on_Convolutional_Neural_Networks-A_Case_Study_of_the_Lala_Copper_Deposit_China
  • https://ieeexplore.ieee.org/document/8711400 -> Research and Application on Geoscience Literature Knowledge Discovery Technology
  • https://www.researchgate.net/publication/332328315_Text_Mining_to_Facilitate_Domain_Knowledge_Discovery
  • https://www.researchgate.net/publication/351238658_Understanding_Ore-Forming_Conditions_using_Machine_Reading_of_Text
  • https://www.researchgate.net/publication/359089763_Visual_analytics_and_information_extraction_of_geological_content_for_text-based_mineral_exploration_reports
  • https://www.researchgate.net/publication/354754114_What_is_this_article_about_Generative_summarization_with_the_BERT_model_in_the_geosciences_domain
  • https://www.slideshare.net/phcleverley/where-text-analytics-meets-geoscience -> Where text analytics meets geoscience

Petrography

  • https://www.researchgate.net/publication/335226326_Digital_petrography_Mineralogy_and_porosity_identification_using_machine_learning_algorithms_in_petrographic_thin_section_images

Last edited: 29/09/2020 The below are a collection of works from when I was doing a review

Public Mineral Prospectivity Mapping

Overview

  • https://www.researchgate.net/publication/331852267_Applying_Spatial_Prospectivity_Mapping_to_Exploration_Targeting_Fundamental_Practical_issues_and_Suggested_Solutions_for_the_Future
  • https://www.researchgate.net/publication/284890591_Geochemical_Anomaly_and_Mineral_Prospectivity_Mapping_in_GIS
  • https://www.researchgate.net/publication/341472154_Geodata_Science-Based_Mineral_Prospectivity_Mapping_A_Review
  • https://www.researchgate.net/publication/275338029_Introduction_to_the_Special_Issue_GIS-based_mineral_potential_modelling_and_geological_data_analyses_for_mineral_exploration
  • https://www.researchgate.net/publication/339074334_Introduction_to_the_special_issue_on_spatial_modelling_and_analysis_of_ore-forming_processes_in_mineral_exploration_targeting
  • https://www.researchgate.net/publication/317319129_Natural_Resources_Research_Publications_on_Geochemical_Anomaly_and_Mineral_Potential_Mapping_and_Introduction_to_the_Special_Issue_of_Papers_in_These_Fields
  • https://www.researchgate.net/publication/46696293_Selection_of_coherent_deposit-type_locations_and_their_application_in_data-driven_mineral_prospectivity_mapping

Geochemistry

  • https://www.researchgate.net/publication/375926319_A_paradigm_shift_in_Precambrian_research_driven_by_big_data

  • https://www.researchgate.net/publication/359447201_A_review_of_machine_learning_in_geochemistry_and_cosmochemistry_Method_improvements_and_applications

    • https://jaywen.com/files/He_2022_Applied_Geochemistry.pdf
  • https://www.researchgate.net/publication/220164381_Application_of_geochemical_zonality_coefficients_in_mineral_prospectivity_mapping

  • https://www.researchgate.net/publication/238505045_Analysis_and_mapping_of_geochemical_anomalies_using_logratio-transformed_stream_sediment_data_with_censored_values

  • https://agupubs.onlinelibrary.wiley.com/doi/full/10.1029/2022EA002626 -> Comparative Study on Three Autoencoder-Based Deep Learning Algorithms for Geochemical Anomaly Identification

  • https://www.researchgate.net/publication/373758047_Decision-making_within_geochemical_exploration_data_based_on_spatial_uncertainty_-A_new_insight_and_a_futuristic_review

  • https://www.researchgate.net/publication/331505001_Deep_learning_and_its_application_in_geochemical_mapping

  • https://www.researchgate.net/publication/380262759_Factor_analysis_in_residual_soils_of_the_Iberian_Pyrite_Belt_Spain_Comparison_between_raw_data_log_transformation_data_and_compositional_data [UNSEEN]

  • https://www.researchgate.net/publication/272091723_Geochemical_characteristics_of_mineral_deposits_Implications_for_ore_genesis

  • https://www.researchgate.net/publication/257189047_Geochemical_mineralization_probability_index_GMPI_A_new_approach_to_generate_enhanced_stream_sediment_geochemical_evidential_map_for_increasing_probability_of_success_in_mineral_potential_mapping

  • https://www.researchgate.net/publication/333497470_Integration_of_auto-encoder_network_with_density-based_spatial_clustering_for_geochemical_anomaly_detection_for_mineral_exploration

  • https://www.researchgate.net/publication/319303831_Introduction_to_the_thematic_issue_Analysis_of_exploration_geochemical_data_for_mapping_of_anomalies

  • https://www.researchgate.net/publication/356722687_Machine_learning-based_prediction_of_trace_element_concentrations_using_data_from_the_Karoo_large_igneous_province_and_its_application_in_prospectivity_mapping#fullTextFileContent

  • https://www.researchgate.net/publication/257026525_Primary_geochemical_characteristics_of_mineral_deposits_-_Implications_for_exploration

  • https://www.researchgate.net/publication/283554338_Recognition_of_geochemical_anomalies_using_a_deep_autoencoder_network

    • https://zarmesh.com/wp-content/uploads/2017/04/Recognition-of-geochemical-anomalies-using-a-deep-autoencoder-network.pdf
  • https://www.researchgate.net/publication/349606557_Robust_Feature_Extraction_for_Geochemical_Anomaly_Recognition_Using_a_Stacked_Convolutional_Denoising_Autoencoder [UNSEEN]

  • https://www.researchgate.net/publication/375911531_Spatial_Interpolation_Using_Machine_Learning_From_Patterns_and_Regularities_to_Block_Models#fullTextFileContent

  • https://www.researchgate.net/publication/ 259716832_Supervised_and_unsupervised_classification_of_near-mine_soil_Geochemistry_and_Geophysics_data

  • https://www.researchgate.net/publication/277813662_Supervised_Geochemical_Anomaly_Detection_by_Pattern_Recognition

  • https://www.researchgate.net/publication/249544991_Usefulness_of_stream_order_to_detect_stream_sediment_geochemical_anomalies

  • https://www.researchgate.net/publication/321275541_Weighting_stream_sediment_geochemical_samples_as_exploration_indicator_of_deposit_-_type

Fuzzy

  • https://www.researchgate.net/publication/272170968_A_Comparative_Analysis_of_Weights_of_Evidence_Evidential_Belief_Functions_and_Fuzzy_Logic_for_Mineral_Potential_Mapping_Using_Incomplete_Data_at_the_Scale_of_Investigation
  • https://www.researchgate.net/publication/267816279_Fuzzification_of_continuous-value_spatial_evidence_for_mineral_prospectivity_mapping
  • https://www.researchgate.net/publication/301635716_Union_score_and_fuzzy_logic_mineral_prospectivity_mapping_using_discretized_and_continuous_spatial_evidence_values

Uncertainty

  • https://deliverypdf.ssrn.com/delivery.php?ID=555064031119110002088087068121000096050036019060022069010050000053011056029076002067121000064004002088113115000107115017083105004026015092089005123065040099024112018026013043065104094012124120126039100033055018066074125089104115090100009064122122019003015085069021024027072126106082092110&EXT=pdf&INDEX=TRUE -> Estimating uncertainties in 3-D models of complex fold-and-thrust 2 belts: a case study of the Eastern Alps triangle zone
  • https://www.researchgate.net/publication/333339659_Incorporating_conceptual_and_interpretation_uncertainty_to_mineral_prospectivity_modelling
  • https://www.researchgate.net/publication/235443307_Managing_uncertainty_in_exploration_targeting
  • https://www.researchgate.net/publication/255909185_The_upside_of_uncertainty_Identification_of_lithology_contact_zones_from_airborne_geophysics_and_satellite_data_using_random_forests_and_support_vector_machines

Geospatial Maps

Australia

  • https://www.researchgate.net/publication/334440382_Mapping_iron_oxide_Cu-Au_IOCG_mineral_potential_in_Australia_using_a_knowledge-driven_mineral_systems-based_approach

South Australia

  • https://www.researchgate.net/publication/335313790_Prospectivity_modelling_of_the_Olympic_Cu-Au_Province - https://services.sarig.sa.gov.au/raster/ProspectivityModelling/wms?service=wms&version=1.1.1&REQUEST=GetCapabilities
  • An assessment of the uranium and geothermal prospectivity of east-central South Australia - https://d28rz98at9flks.cloudfront.net/72666/Rec2011_034.pdf

NT

  • https://www.researchgate.net/publication/285235798_An_assessment_of_the_uranium_and_geothermal_prospectivity_of_the_southern_Northern_Territory

WA

  • https://www.researchgate.net/publication/273073675_Building_a_machine_learning_classifier_for_iron_ore_prospectivity_in_the_Yilgarn_Craton
  • http://dmpbookshop.eruditetechnologies.com.au/product/district-scale-targeting-for-gold-in-the-yilgarn-craton-part-2-of-the-yilgarn-gold-exploration-targeting-atlas.do$55 purchase
  • http://dmpbookshop.eruditetechnologies.com.au/product/mineral-prospectivity-of-the-king-leopold-orogen-and-lennard-shelf-analysis-of-potential-field-data-in-the-west-kimberley-region-geographical-product-n14bnzp.do
  • http://dmpbookshop.eruditetechnologies.com.au/product/mineral-systems-analysis-of-the-west-musgrave-province-regional-structure-and-prospectivity-modelling-geographical-product-n12dzp.do
  • http://dmpbookshop.eruditetechnologies.com.au/product/mineral-systems-analysis-of-the-west-musgrave-province-regional-structure-and-prospectivity-modelling.do $22 purchase
  • https://researchdata.edu.au/predictive-mineral-discovery-gold-mineral/1209568?source=suggested_datasets - Predictive mineral discovery in the eastern Yilgarn Craton: an example of district-scale targeting of an orogenic gold mineral system - https://d28rz98at9flks.cloudfront.net/82617/Y4_Gold_Targeting.zip
  • http://dmpbookshop.eruditetechnologies.com.au/product/prospectivity-analysis-of-the-halls-creek-orogen-western-australia-using-a-mineral-systems-approach-geographical-product-n15af3zp.do
  • https://researchdata.edu.au/prospectivity-analysis-using-063-m436/1424743 - Prospectivity analysis using a mineral systems approach - Capricorn case study project CSIRO Prospectivity analysis using a mineral systems approach - Capricorn case study project (13.5 GB Download)
  • http://dmpbookshop.eruditetechnologies.com.au/product/regional-scale-targeting-for-gold-in-the-yilgarn-craton-part-1-of-the-yilgarn-gold-exploration-targeting-atlas.do $55 purchase
  • https://www.researchgate.net/publication/263928515_Towards_Australian_metallogenic_maps_through_space_and_time
  • https://www.sciencedirect.com/science/article/abs/pii/S0301926810002111 - Yilgarn

Brazil

  • https://www.researchgate.net/publication/340633563_CATALOG_OF_PROSPECTIVITY_MAPS_OF_SELECTED_AREAS_FROM_BRAZIL
  • https://www.researchgate.net/publication/341936771_Modeling_of_Cu-Au_Prospectivity_in_the_Carajas_mineral_province_Brazil_through_Machine_Learning_Dealing_with_Imbalanced_Training_Data
  • https://www.researchgate.net/publication/287270273_Nickel_prospective_modelling_using_fuzzy_logic_on_nova_Brasilandia_metasedimentary_belt_Rondonia_Brazil
  • https://www.scielo.br/scielo.php?script=sci_arttext&pid=S2317-48892016000200261 - Sao Francisco Craton Nickel

Australia

  • https://www.researchgate.net/publication/248211737_A_continent-wide_study_of_Australia's_uranium_potential
  • https://www.researchgate.net/publication/334440382_Mapping_iron_oxide_Cu-Au_IOCG_mineral_potential_in_Australia_using_a_knowledge-driven_mineral_systems-based_approach
  • https://researchdata.edu.au/predictive-model-opal-mining-approach/673159/?refer_q=rows=15/sort=score%20desc/class=collection/p=2/q=mineral%20prospectivity%20map/ - Opal

SA

  • https://data.gov.au/dataset/ds-ga-a8619169-1c2a-6697-e044-00144fdd4fa6/details?q= -> An assessment of the uranium and geothermal prospectivity of east central South Australia
  • https://d28rz98at9flks.cloudfront.net/72666/Rec2011_034.pdf -> An assessment of the uranium and geothermal prospectivity of east-central South Australia
  • https://www.pir.sa.gov.au/__data/assets/pdf_file/0011/239636/204581-001_wise_high.pdf - Eastern Gawler - WPA
  • http://www.energymining.sa.gov.au/minerals/knowledge_centre/mesa_journal/previous_feature_articles/new_prospectivity_map
  • https://catalog.sarig.sa.gov.au/geonetwork/srv/eng/catalog.search#/metadata/e59cd4ba-1a0a-4911-9e6a-58d80576678d - Olympic Domain IOCG Prospectivity model
  • https://www.researchgate.net/publication/335313790_Prospectivity_modelling_of_the_Olympic_Cu-Au_Province - https://services.sarig.sa.gov.au/raster/ProspectivityModelling/wms?service=wms&version=1.1.1&REQUEST=GetCapabilities

WA

  • https://www.sciencedirect.com/science/article/abs/pii/S0301926810002111 - Yilgarn Karol Czarnota
  • https://www.researchgate.net/publication/229333177_Prospectivity_analysis_of_the_Plutonic_Marymia_Greenstone_Belt_Western_Australia
  • https://www.researchgate.net/publication/280039091_Mineral_systems_approach_applied_to_GIS-based_2D-prospectivity_modelling_of_geological_regions_Insights_from_Western_Australia
  • https://www.researchgate.net/publication/351238658_Understanding_Ore-Forming_Conditions_using_Machine_Reading_of_Text

NT

  • https://www.researchgate.net/publication/285235798_An_assessment_of_the_uranium_and_geothermal_prospectivity_of_the_southern_Northern_Territory
  • https://www.researchgate.net/publication/342352173_Modelling_gold_potential_in_the_Granites-Tanami_Orogen_NT_Australia_A_comparative_study_using_continuous_and_data-driven_techniques

NSW

  • https://www.resourcesandgeoscience.nsw.gov.au/miners-and-explorers/geoscience-information/projects/mineral-potential-mapping#_southern-_new-_england-_orogen-mineral-potential
  • https://www.smedg.org.au/GSNSW_2019_Blevin.pdf - Eastern Lachlan Orogen
  • https://www.researchgate.net/publication/265915602_Comparing_prospectivity_modelling_results_and_past_exploration_data_A_case_study_of_porphyry_Cu-Au_mineral_systems_in_the_Macquarie_Arc_Lachlan_Fold_Belt_New_South_Wales

Brazil

  • https://www.researchgate.net/publication/340633563_CATALOG_OF_PROSPECTIVITY_MAPS_OF_SELECTED_AREAS_FROM_BRAZIL
  • https://www.researchgate.net/publication/340633739_MINERAL_POTENTIAL_AND_OPORTUNITIES_FOR_THE_EXPLORATION_OF_NEW_GEOLOGICAL_GROUNDS_IN_BRAZIL
  • https://www.semanticscholar.org/paper/Mineral-Potential-Mapping-for-Orogenic-Gold-in-the-Silva-Silva/a23a9ce4da48863da876758afa9e1d2723088853
  • https://www.scielo.br/scielo.php?script=sci_arttext&pid=S2317-48892016000200261 - Supergene nickel deposits in outhwestern Sao Francisco Carton, Brazil

Carajas

  • https://www.researchgate.net/publication/258466504_Self-Organizing_Maps_A_Data_Mining_Tool_for_the_Analysis_of_Airborne_Geophysical_Data_Collected_over_the_Brazilian_Amazon
  • https://www.researchgate.net/publication/258647519_Semiautomated_geologic_mapping_using_self-organizing_maps_and_airborne_geophysics_in_the_Brazilian_Amazon
  • https://www.researchgate.net/publication/235443304_GIS-Based_prospectivity_mapping_for_orogenic_gold_A_case_study_from_the_Andorinhas_region_Brasil
  • https://www.researchgate.net/publication/341936771_Modeling_of_Cu-Au_Prospectivity_in_the_Carajas_mineral_province_Brazil_through_Machine_Learning_Dealing_with_Imbalanced_Training_Data
  • https://www.researchgate.net/publication/332031621_Predictive_lithological_mapping_through_machine_learning_methods_a_case_study_in_the_Cinzento_Lineament_Carajas_Province_Brazil
  • https://www.researchgate.net/publication/340633659_Copper-gold_favorability_in_the_Cinzento_Shear_Zone_Carajas_Mineral_Province
  • https://www.researchgate.net/publication/329477409_Favorability_potential_for_IOCG_type_deposits_in_the_Riacho_do_Pontal_Belt_New_insights_for_identifying_prospects_of_IOCG-type_deposits_in_NE_Brazil
  • https://www.researchgate.net/publication/339453836_Uranium_anomalies_detection_through_Random_Forest_regression
  • https://d1wqtxts1xzle7.cloudfront.net/48145419/Artificial_neural_networks_applied_to_mi20160818-5365-odv4na.pdf?1471522188=&response-content-disposition=inline%3B+filename%3DArtificial_neural_networks_applied_to_mi.pdf&Expires=1593477539&Signature=DNmSxKogrD54dE4LX~8DT4K7vV0ZGcf8Q2RRfXEPsCc8PGiBrbeBpy4NVQdCiENLz-YfSzVGk6LI8k5MEGxR~qwnUn9ISLHDuIau6VqBFSEA29jMixCbvQM6hbkUJKQlli-AuSPUV23TsSk76kB6amDYtwNHmBnUPzTQGZLj2XkzJza9PA-7W2-VrPQKHNPxJp3z8J0mPq4rhmHZLaFMMSL6QMpK5qpvSqi6Znx-kIhCprlyYfODisq0unOIwnEQstiMf2RnB6gPmGOodhNlLsSr01e7TvtvFDBOQvhhooeDeQrvkINN4DJjAIIrbrcQ8B2b-ATQS0a3QQe93h-VFA__&Key-Pair-Id=APKAJLOHF5GGSLRBV4ZA - Leite, E.P.L.; de Souza Filho, C.R. Artificial neural networks applied to mineral potential mapping for copper-gold mineralizations in the Carajás Mineral Province, Brazil. Geoph. Prosp. 2009, 57, 1049–1065.
  • https://link-springer-com.access.library.unisa.edu.au/content/pdf/10.1007/s11053-015-9263-2.pdf - A Comparative Analysis of Weights of Evidence, Evidential Belief Functions, and Fuzzy Logic for Mineral Potential Mapping Using Incomplete Data at the Scale of Investigation
  • https://library.seg.org/doi/abs/10.1190/sbgf2011-245 - Gold Prospectivity Mapping of Andorinhas Greenstone Belt, Para

Gurupi

  • https://www.researchgate.net/publication/312220651_Predictive_Mapping_of_Prospectivity_in_the_Gurupi_Orogenic_Gold_Belt_North-Northeast_Brazil_An_Example_of_District-Scale_Mineral_System_Approach_to_Exploration_Targeting

Australia

  • https://www.researchgate.net/publication/260107484_Unsupervised_clustering_of_continental-scale_geophysical_and_geochemical_data_using_Self-Organising_Maps
  • https://www.researchgate.net/publication/332263305_A_speedy_update_on_machine_learning_applied_to_bedrock_mapping_using_geochemistry_or_geophysics_examples_from_the_Pacific_Rim_and_nearby
  • https://www.researchgate.net/publication/317312520_Catchment-based_gold_prospectivity_analysis_combining_geochemical_geophysical_and_geological_data_across_northern_Australia
  • https://www.researchgate.net/publication/326571155_Continental-scale_mineral_prospectivity_assessment_using_the_National_Geochemical_Survey_of_Australia_NGSA_dataset
  • https://www.researchgate.net/publication/334440382_Mapping_iron_oxide_Cu-Au_IOCG_mineral_potential_in_Australia_using_a_knowledge-driven_mineral_systems-based_approach
  • https://www.researchgate.net/publication/282189370_Uranium_Prospectivity_Mapping_Across_the_Australian_Continent_via_Unsupervised_Cluster_Analysis_of_Integrated_Remote_Sensing_Data

South Australia

  • https://www.researchgate.net/publication/335313790_Prospectivity_modelling_of_the_Olympic_Cu-Au_Province - https://services.sarig.sa.gov.au/raster/ProspectivityModelling/wms?service=wms&version=1.1.1&REQUEST=GetCapabilities

Queensland

  • https://www.researchgate.net/publication/317312520_Catchment-based_gold_prospectivity_analysis_combining_geochemical_geophysical_and_geological_data_across_northern_Australia
  • https://www.researchgate.net/publication/252707107_GIS-based_epithermal_copper_prospectivity_mapping_of_the_Mt_Isa_Inlier_Australia_Implications_for_exploration_targeting
  • https://www.researchgate.net/publication/222211452_Predictive_modelling_of_prospectivity_for_Pb-Zn_deposits_in_the_Lawn_Hill_Region_Queensland_Australia

New South Wales

  • https://www.researchgate.net/publication/336349643_MINERAL_POTENTIAL_MAPPING_AS_A_STRATEGIC_PLANNING_TOOL_IN_THE_EASTERN_LACHLAN_OROGEN_NSW
  • https://www.publish.csiro.au/ex/pdf/ASEG2013ab236 - Mineral prospectivity analysis of the Wagga–Omeo belt in NSW
  • https://www.researchgate.net/publication/329761040_NSW_Zone_54_Mineral_Systems_Mineral_Potential_Report
  • https://www.researchgate.net/publication/337569823_Practical_Implementation_of_Random_Forest-Based_Mineral_Potential_Mapping_for_Porphyry_Cu-Au_Mineralization_in_the_Eastern_Lachlan_Orogen_NSW_Australia
  • https://www.researchgate.net/publication/333551776_Translating_expressions_of_intrusion-related_mineral_systems_into_mappable_spatial_proxies_for_mineral_potential_mapping_Case_studies_from_the_Southern_New_England_Orogen_Australia

Tasmania

  • https://www.researchgate.net/publication/262380025_Mapping_geology_and_volcanic-hosted_massive_sulfide_alteration_in_the_Hellyer-Mt_Charter_region_Tasmania_using_Random_Forests_TM_and_Self-Organising_Maps

Victoria

  • https://www.researchgate.net/publication/323856713_Lithological_mapping_using_Random_Forests_applied_to_geophysical_and_remote_sensing_data_a_demonstration_study_from_the_Eastern_Goldfields_of_Australia
  • https://publications.csiro.au/publications/#publication/PIcsiro:EP123339/SQmineral%20prospectivity/RP1/RS50/RORECENT/STsearch-by-keyword/LISEA/RI16/RT26 [nickel]
  • https://www.researchgate.net/publication/257026553_Regional_prospectivity_analysis_for_hydrothermal-remobilised_nickel_mineral_systems_in_western_Victoria_Australia

Western Australia

  • https://www.researchgate.net/publication/274714146_Reducing_subjectivity_in_multi-commodity_mineral_prospectivity_analyses_Modelling_the_west_Kimberley_Australia
  • https://www.researchgate.net/publication/319013132_Identifying_mineral_prospectivity_using_3D_magnetotelluric_potential_field_and_geological_data_in_the_east_Kimberley_Australia
  • https://www.researchgate.net/publication/280930127_Regional-scale_targeting_for_gold_in_the_Yilgarn_Craton_Part_1_of_the_Yilgarn_Gold_Exploration_Targeting_Atlas
  • https://www.researchgate.net/publication/279533541_District-scale_targeting_for_gold_in_the_Yilgarn_Craton_Part_2_of_the_Yilgarn_Gold_Exploration_Targeting_Atlas
  • https://www.researchgate.net/publication/257026568_Exploration_targeting_for_orogenic_gold_deposits_in_the_Granites-Tanami_Orogen_Mineral_system_analysis_targeting_model_and_prospectivity_analysis
  • https://www.researchgate.net/publication/280039091_Mineral_systems_approach_applied_to_GIS-based_2D-prospectivity_modelling_of_geological_regions_Insights_from_Western_Australia (the West Arunta Orogen, West Musgrave Orogen and Gascoyne Province - http://dmpbookshop.eruditetechnologies.com.au/product/mineral-systems-analysis-of-the-west-musgrave-province-regional-structure-and-prospectivity-modelling.do
  • https://reader.elsevier.com/reader/sd/pii/S0169136810000417? - token=9FD1C06A25E7ECC0C384C0ECF976E4BC9C36047C53CEED08066811979A640E89DD94C49510D1B500C6FF5E69982E018E Prospectivity analysis of the Plutonic Marymia Greenstone Belt, Western Australia
  • https://research-repository.uwa.edu.au/en/publications/exploration-targeting-for-orogenic-gold-deposits-in-the-granites- - Tanami orogen
  • https://www.researchgate.net/publication/332631130_Fuzzy_inference_systems_for_prospectivity_modeling_of_mineral_systems_and_a_case-study_for_prospectivity_mapping_of_surficial_Uranium_in_Yeelirrie_Area_Western_Australia_Ore_Geology_Reviews_71_839-852Tasmania
  • https://publications.csiro.au/rpr/download?pid=csiro:EP102133&dsid=DS3 [nickel]

Endowment Modelling

  • https://www.researchgate.net/publication/248211962_A_new_method_for_spatial_centrographic_analysis_of_mineral_deposit_clusters
  • https://www.researchgate.net/publication/275620329_A_Time-Series_Audit_of_Zipf's_Law_as_a_Measure_of_Terrane_Endowment_and_Maturity_in_Mineral_Exploration
  • https://www.researchgate.net/publication/341087909_Assessing_the_variability_of_expert_estimates_in_the_USGS_Three-part_Mineral_Resource_Assessment_Methodology_A_call_for_increased_skill_diversity_and_scenario-based_training
  • https://github.com/iagoslc/ZipfsLaw_Quadrilatero_Ferrifero
  • https://www.researchgate.net/publication/222834436_Controls_on_mineral_deposit_occurrence_inferred_from_analysis_of_their_spatial_pattern_and_spatial_association_with_geological_features
  • https://www.researchgate.net/publication/229792860_From_Predictive_Mapping_of_Mineral_Prospectivity_to_Quantitative_Estimation_of_Number_of_Undiscovered_Prospects
  • https://www.researchgate.net/publication/330994502_Global_Grade-and-Tonnage_Modeling_of_Uranium_deposits
  • https://pubs.geoscienceworld.org/segweb/economicgeology/article-abstract/103/4/829/127993/Linking-Mineral-Deposit-Models-to-Quantitative?redirectedFrom=fulltext
  • https://www.researchgate.net/publication/238365283_Metal_endowment_of_cratons_terranes_and_districts_Insights_from_a_quantitative_analysis_of_regions_with_giant_and_super-giant_deposits
  • https://www.researchgate.net/publication/308778798_Spatial_analysis_of_mineral_deposit_distribution_A_review_of_methods_and_implications_for_structural_controls_on_iron_oxide-copper-gold_mineralization_in_Carajas_Brazil
  • https://www.researchgate.net/publication/229347041_Predictive_mapping_of_prospectivity_and_quantitative_estimation_of_undiscovered_VMS_deposits_in_Skellefte_district_Sweden
  • https://www.researchgate.net/publication/342405763_Predicting_grade-tonnage_characteristics_of_undiscovered_mineralisation_application_of_the_USGS_Three-part_Undiscovered_Mineral_Resource_Assessment_to_the_Sandstone_Greenstone_Belt_of_the_Yilgarn_Bloc
  • https://www.sciencedirect.com/science/article/pii/S0169136810000685
  • https://www.researchgate.net/publication/240301743_Spatial_statistical_analysis_of_the_distribution_of_komatiite-hosted_nickel_sulfide_deposits_in_the_Kalgoorlie_terrane_Western_Australia_Clustered_or_Not

World Models

  • https://www.researchgate.net/publication/331283650_Archean_crust_and_metallogenic_zones_in_the_Amazonian_Craton_sensed_by_satellite_gravity_data
  • https://eartharxiv.org/2kjvc/ -> Global distribution of sediment-hosted metals controlled by craton edge stability
  • https://www.researchgate.net/post/Is_it_possible_to_derive_free_air_anomaly_or_bouguer_anomaly_from_gravity_disturbance_data
  • https://www.researchgate.net/publication/325344128_The_role_of_basement_control_in_Iron_Oxide-Copper-Gold_mineral_systems_revealed_by_satellite_gravity_models
  • https://www.researchgate.net/publication/331428028_Supplementary_Material_for_the_paper_Archean_crust_and_metallogenic_zones_in_the_Amazonian_Craton_sensed_by_satellite_gravity_data
  • https://www.leouieda.com/pdf/use-the-disturbance.pdf
  • https://www.leouieda.com/papers/use-the-disturbance.html

Financial Forecasting

  • https://www.researchgate.net/publication/317137060_Forecasting_copper_prices_by_decision_tree_learning
  • https://www.researchgate.net/publication/4874824_Mine_Size_and_the_Structure_of_Costs

Agent based Modelling

  • https://mpra.ub.uni-muenchen.de/62159/ -> Mineral exploration as a game of chance [Agent Based Modelling]

Spectral Unmixing

  • Overviews and examples, with some focus on neural network approaches.

Neural Networks

  • https://www.researchgate.net/publication/224180646_A_neural_network_approach_for_pixel_unmixing_in_hyperspectral_data
  • https://www.researchgate.net/publication/340690859_A_Supervised_Nonlinear_Spectral_Unmixing_Method_by_Means_of_Neural_Networks
  • https://www.researchgate.net/publication/326205017_Classification_of_Hyperspectral_Data_Using_a_Multi-Channel_Convolutional_Neural_Network
  • https://www.researchgate.net/publication/339062151_Classification_of_small-scale_hyperspectral_images_with_multi-source_deep_transfer_learning
  • https://www.researchgate.net/publication/331824337_Comparative_Analysis_of_Unmixing_Algorithms_Using_Synthetic_Hyperspectral_Data
  • https://www.researchgate.net/publication/335501086_Convolutional_Autoencoder_For_Spatial-Spectral_Hyperspectral_Unmixing
  • https://www.researchgate.net/publication/341501560_Convolutional_Autoencoder_for_Spectral-Spatial_Hyperspectral_Unmixing
  • https://www.researchgate.net/publication/333906204_Deep_convolutional_neural_networks_for_land-cover_classification_with_Sentinel-2_images
  • https://www.researchgate.net/publication/356711693_Deep-learning-based_latent_space_encoding_for_spectral_unmixing_of_geological_materials
  • https://www.researchgate.net/publication/331505001_Deep_learning_and_its_application_in_geochemical_mapping
  • https://www.researchgate.net/publication/332696102_Deep_Learning_for_Classification_of_Hyperspectral_Data_A_Comparative_Review
  • https://www.researchgate.net/publication/336889271_Deep_Learning_for_Hyperspectral_Image_Classification_An_Overview
  • https://www.researchgate.net/publication/327995228_Deep_Spectral_Convolution_Network_for_Hyperspectral_Unmixing
  • https://www.researchgate.net/publication/356393038_Generalized_Unsupervised_Clustering_of_Hyperspectral_Images_of_Geological_Targets_in_the_Near_Infrared
  • https://www.researchgate.net/publication/333301728_Hyperspectral_Image_Classification_Method_Based_on_CNN_Architecture_Embedding_With_Hashing_Semantic_Feature
  • https://www.researchgate.net/publication/323950012_Hyperspectral_Unmixing_Using_A_Neural_Network_Autoencoder
  • https://www.researchgate.net/publication/339657313_Hyperspectral_unmixing_using_deep_convolutional_autoencoder
  • https://www.researchgate.net/publication/339066136_Hyperspectral_Unmixing_Using_Deep_Convolutional_Autoencoders_in_a_Supervised_Scenario
  • https://www.researchgate.net/publication/335878933_LITHOLOGICAL_CLASSIFICATION_USING_MULTI-SENSOR_DATA_AND_CONVOLUTIONAL_NEURAL_NETWORKS
  • https://www.researchgate.net/publication/331794887_Nonlinear_Unmixing_of_Hyperspectral_Data_via_Deep_Autoencoder_Networks
  • https://www.researchgate.net/publication/340961027_Recent_Advances_in_Hyperspectral_Unmixing_Using_Sparse_Techniques_and_Deep_Learning
  • https://www.researchgate.net/publication/330272600_Semisupervised_Stacked_Autoencoder_With_Cotraining_for_Hyperspectral_Image_Classification
  • https://www.researchgate.net/publication/336097421_Spatial-Spectral_Hyperspectral_Unmixing_Using_Multitask_Learning
  • https://www.researchgate.net/publication/312355586_Spectral-Spatial_Classification_of_Hyperspectral_Imagery_with_3D_Convolutional_Neural_Network
  • https://meetingorganizer.copernicus.org/EGU2020/EGU2020-10719.html -> Sentinel-2 as a tool for mapping iron-bearing alteration minerals: a case study from the Iberian Pyrite Belt (Southern Spain)
  • https://www.researchgate.net/publication/334058881_SSDC-DenseNet_A_Cost-Effective_End-to-End_Spectral-Spatial_Dual-Channel_Dense_Network_for_Hyperspectral_Image_Classification
  • https://www.researchgate.net/publication/334058881_SSDC-DenseNet_A_Cost-Effective_End-to-End_Spectral-Spatial_Dual-Channel_Dense_Network_for_Hyperspectral_Image_Classification
  • https://www.researchgate.net/publication/333497470_Integration_of_auto-encoder_network_with_density-based_spatial_clustering_for_geochemical_anomaly_detection_for_mineral_exploration
  • https://www.sciencedirect.com/science/article/pii/S0009281924000473 -> Geochemical characteristics and mapping of Reşadiye (Tokat-Türkiye) bentonite deposits using machine learning and sub-pixel mixture algorithms

General

  • https://www.researchgate.net/publication/337841253_A_solar_optical_hyperspectral_library_of_rare_earth-bearing_minerals_rare_earth_oxides_copper-bearing_minerals_and_Apliki_mine_surface_samples
  • https://www.researchgate.net/publication/3204295_Abundance_Estimation_of_Spectrally_Similar_Minerals_by_Using_Derivative_Spectra_in_Simulated_Annealing
  • https://www.researchgate.net/publication/338371376_Accuracy_assessment_of_hydrothermal_mineral_maps_derived_from_ASTER_images
  • https://www.researchgate.net/publication/337790490_Analysis_of_Most_Significant_Bands_and_Band_Ratios_for_Discrimination_of_Hydrothermal_Alteration_Minerals
  • https://www.researchgate.net/project/Deep-Learning-for-Remote-Sensing-2
  • https://www.researchgate.net/publication/331876006_Fusion_of_Landsat_and_Worldview_Images
  • https://www.researchgate.net/publication/259096595_Geological_mapping_using_remote_sensing_data_A_comparison_of_five_machine_learning_algorithms_their_response_to_variations_in_the_spatial_distribution_of_training_data_and_the_use_of_explicit_spatial_
  • https://www.researchgate.net/publication/341802637_Improved_k-means_and_spectral_matching_for_hyperspectral_mineral_mapping
  • https://www.researchgate.net/publication/272565561_Integration_and_Analysis_of_ASTER_and_IKONOS_Images_for_the_Identification_of_Hydrothermally-_Altered_Mineral_Exploration_Sites
  • https://www.researchgate.net/publication/236271149_Multi-_and_hyperspectral_geologic_remote_sensing_A_review_GRSG_Member_News
  • https://www.researchgate.net/publication/220492175_Multi-and_Hyperspectral_geologic_remote_sensing_A_review
  • https://www.sciencedirect.com/science/article/pii/S1574954124001572 -> Rapid estimation of soil Mn content by machine learning and soil spectra in large-scale
  • https://www.researchgate.net/publication/342184377_remotesensing-12-01239-v2_1
  • https://www.researchgate.net/project/Remote-sensing-exploration-of-critical-mineral-deposits
  • https://www.researchgate.net/project/Sentinel-2-MSI-for-geological-remote-sensing
  • https://www.researchgate.net/publication/323808118_Thermal_infrared_multispectral_remote_sensing_of_lithology_and_mineralogy_based_on_spectral_properties_of_materials
  • https://www.researchgate.net/publication/340505978_Unsupervised_and_Supervised_Feature_Extraction_Methods_for_Hyperspectral_Images_Based_on_Mixtures_of_Factor_Analyzers

Africa

  • https://www.researchgate.net/publication/235443308_Application_of_remote_sensing_and_GIS_mapping_to_Quaternary_to_recent_surficial_sediments_of_the_Central_Uranium_district_Namibia
  • https://www.researchgate.net/publication/342373512_Geological_mapping_using_Random_Forests_applied_to_Remote_Sensing_data_a_demonstration_study_from_Msaidira-Souk_Al_Had_Sidi_Ifni_inlier_Western_Anti-Atlas_Morocco
  • https://www.researchgate.net/publication/340534611_Identifying_high_potential_zones_of_gold_mineralization_in_a_sub-tropical_region_using_Landsat-8_and_ASTER_remote_sensing_data_a_case_study_of_the_Ngoura-Colomines_goldfield_Eastern_Cameroon
  • https://www.researchgate.net/publication/342162988_Lithological_and_alteration_mineral_mapping_for_alluvial_gold_exploration_in_the_south_east_of_Birao_area_Central_African_Republic_using_Landsat-8_Operational_Land_Imager_OLI_data
  • https://www.researchgate.net/publication/329193841_Mapping_Copper_Mineralisation_using_EO-1_Hyperion_Data_Fusion_with_Landsat_8_OLI_and_Sentinel-2A_in_Moroccan_Anti_Atlas
  • https://www.researchgate.net/publication/230918249_SPECTRAL_REMOTE_SENSING_OF_HYDROTHERMAL_ALTERATION_ASSOCIATED_WITH_VOLCANOGENIC_MASSIVE_SULPHIDE_DEPOSITS_GOROB-HOPE_AREA_NAMIBIA
  • https://www.researchgate.net/publication/337304180_The_application_of_day_and_night_time_ASTER_satellite_imagery_for_geothermal_and_mineral_mapping_in_East_Africa
  • https://www.researchgate.net/publication/336823002_Towards_Multiscale_and_Multisource_Remote_Sensing_Mineral_Exploration_Using_RPAS_A_Case_Study_in_the_Lofdal_Carbonatite-Hosted_REE_Deposit_Namibia
  • https://www.researchgate.net/publication/338296843_Use_of_the_Sentinel-2A_Multispectral_Image_for_Litho-Structural_and_Alteration_Mapping_in_Al_Glo'a_Map_Sheet_150000_Bou_Azzer-El_Graara_Inlier_Central_Anti-Atlas_Morocco

Brazil

  • https://www.researchgate.net/publication/287950835_Altimetric_and_aeromagnetometric_data_fusion_as_a_tool_of_geological_interpretation_the_example_of_the_Carajas_Mineral_Province_PA
  • https://www.researchgate.net/publication/237222985_Analise_e_integracao_de_dados_do_SAR-R99B_com_dados_de_sensoriamento_remoto_optico_e_dados_aerogeofisicos_na_regiao_dos_depositos_de_oxido_de_Fe-Cu-Au_tipo_Sossego_e_118_na_Provincia_Mineral_de_Caraja
  • https://www.researchgate.net/publication/327503453_Comparison_of_Altered_Mineral_Information_Extracted_from_ETM_ASTER_and_Hyperion_data_in_Aguas_Claras_Iron_Ore_Brazil
  • https://www.researchgate.net/publication/251743903_Enhancement_Of_Landsat_Thematic_Mapper_Imagery_For_Mineral_Prospecting_In_Weathered_And_Vegetated_Terrain_In_SE_Brazil
  • https://www.researchgate.net/publication/228854234_Hyperspectral_Data_Processing_For_Mineral_Mapping_Using_AVIRIS_1995_Data_in_Alto_Paraiso_de_Goias_Central_Brazil
  • https://www.researchgate.net/publication/326612136_Mapping_Mining_Areas_in_the_Brazilian_Amazon_Using_MSISentinel-2_Imagery_2017
  • https://www.researchgate.net/publication/242188704_MINERALOGICAL_CHARACTERIZATION_AND_MAPPING_USING_REFLECTANCE_SPECTROSCOPY_AN_EXPERIMENT_AT_ALTO_DO_GIZ_PEGMATITE_IN_THE_SOUTH_PORTION_OF_BORBOREMA_PEGMATITE_PROVINCE_BPP_NORTHEASTERN_BRAZIL

China

  • https://www.researchgate.net/publication/338355143_A_comprehensive_scheme_for_lithological_mapping_using_Sentinel-2A_and_ASTER_GDEM_in_weathered_and_vegetated_coastal_zone_Southern_China
  • https://www.researchgate.net/publication/332957713_Data_mining_of_the_best_spectral_indices_for_geochemical_anomalies_of_copper_A_study_in_the_northwestern_Junggar_region_Xinjiang
  • https://www.researchgate.net/publication/380287318_Machine_learning_model_for_deep_exploration_Utilizing_short_wavelength_infrared_SWIR_of_hydrothermal_alteration_minerals_in_the_Qianchen_gold_deposit_Jiaodong_Peninsula_Eastern_China
  • https://www.researchgate.net/publication/304906898_Remote_sensing_and_GIS_prospectivity_mapping_for_magmatic-hydrothermal_base-_and_precious-metal_deposits_in_the_Honghai_district_China

Greenland

  • https://www.researchgate.net/publication/326655551_Application_of_Multi-Sensor_Satellite_Data_for_Exploration_of_Zn-Pb_Sulfide_Mineralization_in_the_Franklinian_Basin_North_Greenland
  • https://www.researchgate.net/publication/337512735_Fusion_of_DPCA_and_ICA_algorithms_for_mineral_detection_using_Landsat-8_spectral_bands
  • https://www.researchgate.net/publication/336684298_Landsat-8_Advanced_Spaceborne_Thermal_Emission_and_Reflection_Radiometer_and_WorldView-3_Multispectral_Satellite_Imagery_for_Prospecting_Copper-Gold_Mineralization_in_the_Northeastern_Inglefield_Mobil

India

  • https://www.researchgate.net/publication/337649256_Automated_lithological_mapping_by_integrating_spectral_enhancement_techniques_and_machine_learning_algorithms_using_AVIRIS-NG_hyperspectral_data_in_Gold-bearing_granite-greenstone_rocks_in_Hutti_India
  • https://www.researchgate.net/publication/333816841_Integrated_application_of_AVIRIS-NG_and_Sentinel-2A_dataset_in_altered_mineral_abundance_mapping_A_case_study_from_Jahazpur_area_Rajasthan
  • https://www.researchgate.net/publication/339631389_Identification_and_characterization_of_hydrothermally_altered_minerals_using_surface_and_space-based_reflectance_spectroscopy_in_parts_of_south-eastern_Rajasthan_India
  • https://www.researchgate.net/publication/338116272_Potential_Use_of_ASTER_Derived_Emissivity_Thermal_Inertia_and_Albedo_Image_for_Discriminating_Different_Rock_Types_of_Aravalli_Group_of_Rocks_Rajasthan

Iran

  • https://www.researchgate.net/publication/338336181_A_Remote_Sensing-Based_Application_of_Bayesian_Networks_for_Epithermal_Gold_Potential_Mapping_in_Ahar-Arasbaran_Area_NW_Iran
  • https://www.researchgate.net/publication/338371376_Accuracy_assessment_of_hydrothermal_mineral_maps_derived_from_ASTER_images
  • https://www.researchgate.net/publication/340606566_Application_of_Landsat-8_Sentinel-2_ASTER_and_WorldView-3_Spectral_Imagery_for_Exploration_of_Carbonate-Hosted_Pb-Zn_Deposits_in_the_Central_Iranian_Terrane_CIT
  • https://www.researchgate.net/publication/331428927_Comparison_of_Different_Algorithms_to_Map_Hydrothermal_Alteration_Zones_Using_ASTER_Remote_Sensing_Data_for_Polymetallic_Vein-Type_Ore_Exploration_Toroud-Chahshirin_Magmatic_Belt_TCMB_North_Iran
  • https://www.researchgate.net/publication/327832371_Band_Ratios_Matrix_Transformation_BRMT_A_Sedimentary_Lithology_Mapping_Approach_Using_ASTER_Satellite_Sensor
  • https://www.researchgate.net/publication/331314687_Lithological_mapping_in_Sangan_region_in_Northeast_Iran_using_ASTER_satellite_data_and_image_processing_methods
  • https://www.researchgate.net/publication/330774780_Mapping_hydrothermal_alteration_zones_and_lineaments_associated_with_orogenic_gold_mineralization_using_ASTER_data_A_case_study_from_the_Sanandaj-Sirjan_Zone_Iran
  • https://www.researchgate.net/publication/362620968_Spatial_mapping_of_hydrothermal_alterations_and_structural_features_for_gold_and_cassiterite_exploration

Peru

  • https://www.researchgate.net/publication/271714561_Geology_and_Hydrothermal_Alteration_of_the_Chapi_Chiara_Prospect_and_Nearby_Targets_Southern_Peru_Using_ASTER_Data_and_Reflectance_Spectroscopy
  • https://www.researchgate.net/publication/317141295_Hyperspectral_remote_sensing_applied_to_mineral_exploration_in_southern_Peru_A_multiple_data_integration_approach_in_the_Chapi_Chiara_gold_prospect

Spain

  • https://www.researchgate.net/publication/233039694_Geological_mapping_using_Landsat_Thematic_Mapper_imagery_in_Almeria_Province_south-east_Spain
  • https://www.researchgate.net/publication/263542786_WEIGHTS_DERIVED_FROM_HYPERSPECTRAL_DATA_TO_FACILITATE_AN_OPTIMAL_FIELD_SAMPLING_SCHEME_FOR_POTENTIAL_MINERALS

Other

  • https://www.researchgate.net/publication/341611032_ASTER_spectral_band_ratios_for_lithological_mapping_A_case_study_for_measuring_geological_offset_along_the_Erkenek_Segment_of_the_East_Anatolian_Fault_Zone_Turkey

  • https://www.researchgate.net/publication/229383008_Hydrothermal_Alteration_Mapping_at_Bodie_California_using_AVIRIS_Hyperspectral_Data

  • https://www.researchgate.net/publication/332737573_Identification_of_alteration_zones_using_a_Landsat_8_image_of_densely_vegetated_areas_of_the_Wayang_Windu_Geothermal_field_West_Java_Indonesia

  • https://www.researchgate.net/publication/325137721_Interpretation_of_surface_geochemical_data_and_integration_with_geological_maps_and_Landsat-TM_images_for_mineral_exploration_from_a_portion_of_the_precambrian_of_Uruguay

  • https://www.researchgate.net/publication/336684298_Landsat-8_Advanced_Spaceborne_Thermal_Emission_and_Reflection_Radiometer_and_WorldView-3_Multispectral_Satellite_Imagery_for_Prospecting_Copper-Gold_Mineralization_in_the_Northeastern_Inglefield_Mobil

  • https://www.researchgate.net/publication/304036250_Mineral_Exploration_for_Epithermal_Gold_in_Northern_Patagonia_Argentina_From_Regional-_to_Deposit-Scale_Prospecting_Using_Landsat_TM_and_Terra_ASTER

  • https://www.researchgate.net/publication/340652300_New_logical_operator_algorithms_for_mapping_of_hydrothermally_altered_rocks_using_ASTER_data_A_case_study_from_central_Turkey

  • https://www.researchgate.net/publication/324938267_Regional_geology_mapping_using_satellite-based_remote_sensing_approach_in_Northern_Victoria_Land_Antarctica

  • https://www.researchgate.net/publication/379960654_From_sensor_fusion_to_knowledge_distillation_in_collaborative_LIBS_and_hyperspectral_imaging_for_mineral_identification

NLP

  • https://www.researchgate.net/publication/376671309_Enhancing_knowledge_discovery_from_unstructured_data_using_a_deep_learning_approach_to_support_subsurface_modeling_predictions

General-Interest

  • https://www.earthdoc.org/content/journals/10.3997/1365-2397.fb2024019 - A Framework for Mineral Geoscience Data and Model Portability - geoh5
  • https://arxiv.org/pdf/2310.19909.pdf -> Battle of the Backbones: A Large-Scale Comparison of Pretrained Models across Computer Vision Tasks
  • https://arxiv.org/abs/2404.05746v1 -> Causality for Earth Science -- A Review on Time-series and Spatiotemporal Causality Methods
  • https://www.mdpi.com/1660-4601/18/18/9752 -> Learning and Expertise in Mineral Exploration Decision-Making: An Ecological Dynamics Perspective
  • https://www.sciencedirect.com/science/article/pii/S2214629624001476 -> Mapping critical minerals projects and their intersection with Indigenous peoples' land rights in Australia- https://www.sciencedirect.com/science/article/pii/S088329272400115X - > Ranking Mineral Exploration Targets in Support of Commercial Decision Making: A Key Component for Inclusion in an Exploration Information System
  • https://arxiv.org/abs/2404.07738 ResearchAgent: Iterative Research Idea Generation over Scientific Literature with Large Language Models