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A Spatial Data-Driven Approach for Mineral Prospectivity Mapping

I.P. Senanayake, Anthony S. Kiem, Gregory Hancock, Václav Metelka, Chris B. Folkes, Phillip L. Blevin, Anthony Budd

2023Remote Sensing20 citationsDOIOpen Access PDF

Abstract

Mineral prospectivity mapping is a crucial technique for discovering new economic mineral deposits. However, detailed knowledge-based geological exploration and interpretations generally involve significant costs, time, and human resources. In this study, an ensemble machine learning approach was tested using geoscience datasets to map Cu-Au and Pb-Zn mineral prospectivity in the Cobar Basin, NSW, Australia. The input datasets (magnetic, gravity, faults, electromagnetic, and magnetotelluric data layers) were chosen by considering their association with Cu-Au and Pb-Zn mineralization patterns. Three machine learning algorithms, namely random forest (RF), support vector machine (SVM), and maximum-likelihood (MaxL) classification, were applied to the input data. The results of the three algorithms were ensembled to produce Cu-Au and Pb-Zn prospectivity maps over the Cobar Basin with improved classification accuracy. The findings demonstrate good agreement with known mineral occurrence points and existing mineral prospectivity maps developed using the weights-of-evidence (WofE) method. The ability to capture training points accurately and the simplicity of the proposed approach make it advantageous over complex mineral prospectivity mapping methods, to serve as a preliminary evaluation technique. The methodology can be modified with different datasets and algorithms, facilitating the investigations of mineral prospectivity in other regions and providing guidance for more detailed, high-resolution geological investigations.

Topics & Concepts

Prospectivity mappingMineral explorationGeologyMagnetotelluricsMineral depositSupport vector machineMineralData miningMining engineeringGeochemistryComputer scienceStructural basinMachine learningGeomorphologyEngineeringMetallurgyMaterials scienceElectrical resistivity and conductivityElectrical engineeringGeochemistry and Geologic MappingSoil Geostatistics and MappingRemote-Sensing Image Classification
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