Litcius/Paper detail

3D Mineral Prospectivity Mapping of Zaozigou Gold Deposit, West Qinling, China: Deep Learning-Based Mineral Prediction

Zhengbo Yu, Bingli Liu, Miao Xie, Yixiao Wu, Yunhui Kong, Cheng Li, Guodong Chen, Yaxin Gao, Shuai Zha, Hanyuan Zhang, Lu Wang, Rui Tang

2022Minerals21 citationsDOIOpen Access PDF

Abstract

This paper focuses on the scientific problem of quantitative mineralization prediction at large depth in the Zaozigou gold deposit, west Qinling, China. Five geological and geochemical indicators are used to establish geological and geochemical quantitative prediction model. Machine learning and Deep learning algorithms are employed for 3D Mineral Prospectivity Mapping (MPM). Especially, the Student Teacher Ore-induced Anomaly Detection (STOAD) model is proposed based on the knowledge distillation (KD) idea combined with Deep Auto-encoder (DAE) network model. Compared to DAE, STOAD uses three outputs for anomaly detection and can make full use of information from multiple levels of data for greater overall robustness. The results show that the quantitative mineral resources prediction by applying the STOAD model has a good performance, where the value of Area Under Curve (AUC) is 0.97. Finally, three main mineral exploration targets are delineated for further investigation.

Topics & Concepts

Prospectivity mappingGeologyMineral explorationMineral depositMineral resource classificationMineralization (soil science)GeochemistryMineralRobustness (evolution)Mining engineeringData miningComputer scienceSoil scienceGeomorphologySoil waterGeneMaterials scienceChemistryBiochemistryMetallurgyStructural basinGeochemistry and Geologic MappingMineral Processing and GrindingRemote-Sensing Image Classification