Earth Science Frontiers ›› 2025, Vol. 32 ›› Issue (4): 78-94.DOI: 10.13745/j.esf.sf.2025.4.62

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Multifractal analysis and random forest algorithm for mineral prospecting in the Habahe gold deposit, Xinjiang

JIAN Fuyuan1(), ZHANG Ziming2, DONG Yuelin1, ZHANG Wenjing2, HAO Fengyun3, WANG Yiming1, WANG Yu1, ZHANG Zhenjie1,*()   

  1. 1. School of Earth Sciences and Resources, State Key Laboratory of Geological Processes and Mineral Resources, Frontiers Science Center for Deep-time Digital Earth, China University of Geosciences (Beijing), Beijing 100083, China
    2. Northwest Bureau of China Metallurgical Geology Bureau, Xi’an 710119, China
    3. Habahe Jinba Mining Co.Ltd., Aertai 836700, China
  • Received:2024-10-05 Revised:2025-02-10 Online:2025-07-25 Published:2025-08-04

Abstract:

In the era of big data, machine learning-based intelligent mineral prediction methods have been widely applied. The integration of non-linear theory and techniques, such as fractal and multifractal approaches, into intelligent mineral prospecting research provides new perspectives and technical support. This study focuses on the Habahe gold deposit in Xinjiang, China, and establishes a four-factor information prospecting model based on regional structure, mineralization alteration, magnetic anomalies, and induced polarization anomalies. An intelligent prediction workflow is implemented, by combining the multifractal method with the random forest algorithm. The S-A multifractal filtering technique and local singularity analysis are employed to separate the background variations of regional geophysical and geochemical data from superimposed anomalies, enabling the extraction of concealed information indicative of deep mineralization. The C-Nsum multifractal model is applied to reveal the hidden nonlinear characteristics of gold content in drilling data and determine anomaly thresholds. Subsequently, the random forest algorithm and SHAP method is utilized for comprehensive information integration and feature contribution evaluation, achieving quantitative prediction of gold mineral resources. This approach delineated three prospective mineralization targets, which were validated through drilling, demonstrating the effectiveness of multifractal theory in quantitative mineral prediction within the Habahe gold deposit area. The results provide a robust basis for subsequent mineral exploration efforts.

Key words: S-A multifractal model, local singularity analysis, random forest, mineral prospectivity, machine learning, Habahe gold deposit

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