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Transformer–GCN Fusion Framework for Mineral Prospectivity Mapping: A Geospatial Deep Learning Approach

Le Gao, Gnanachandrasamy Gopalakrishnan, Adel Nasri, Yonghong Li, Yuying Zhang, Xiaoying Ou, Kele Xia

2025Minerals7 citationsDOIOpen Access PDF

Abstract

Mineral prospectivity mapping (MPM) is a pivotal technique in geoscientific mineral resource exploration. To address three critical challenges in current deep convolutional neural network applications for geoscientific mineral resource prediction—(1) model bias induced by imbalanced distribution of ore deposit samples, (2) deficiency in global feature extraction due to excessive reliance on local spatial correlations, and (3) diminished discriminative capability caused by feature smoothing in deep networks—this study innovatively proposes a T-GCN model integrating Transformer with graph convolutional neural networks (GCNs). The model achieves breakthrough performance through three key technological innovations: firstly, constructing a global perceptual field via Transformer’s self-attention mechanism to effectively capture long-range geological relationships; secondly, combining GCNs’ advantages in topological feature extraction to realize multi-scale feature fusion; and thirdly, designing a feature enhancement module to mitigate deep network degradation. In practical application to the PangXD ore district, the T-GCN model achieved a prediction accuracy of 97.27%, representing a 3.76 percentage point improvement over the best comparative model, and successfully identified five prospective mineralization zones, demonstrating its superior performance and application value under complex geological conditions.

Topics & Concepts

Prospectivity mappingGeospatial analysisFusionTransformerEnvironmental scienceGeochemistryGeologyRemote sensingEngineeringGeomorphologyPhilosophyElectrical engineeringVoltageStructural basinLinguisticsGeochemistry and Geologic MappingMineral Processing and GrindingRemote-Sensing Image Classification