Three-Dimensional Mineral Prospectivity Modeling with Geometric Restoration: Application to the Jinchuan Ni–Cu–(PGE) Sulfide Deposit, Northwestern China

被引:0
作者
Xiancheng Mao
Zhe Su
Hao Deng
Zhankun Liu
Longjiao Li
Yunqi Wang
Yongcai Wang
Lixin Wu
机构
[1] Central South University,Key Laboratory of Metallogenic Prediction of Nonferrous Metals and Geological Environment Monitoring (Ministry of Education), School of Geosciences and Info
[2] Hunan Key Laboratory of Nonferrous Resources and Geological Hazard Detection,Physics
[3] Jinchuan Group Co.,State Key Laboratory of Nickel and Cobalt Resources Comprehensive Utilization
[4] Ltd,undefined
来源
Natural Resources Research | 2024年 / 33卷
关键词
Mineral prospectivity modeling; Geometric restoration; Jinchuan deposit; Deformation algorithm;
D O I
暂无
中图分类号
学科分类号
摘要
Structural deformation is ubiquitous throughout geological history. For a mineral deposit that underwent structural deformation after its formation, its geological architecture may have been severely distorted from its original geometry. Due to lack of concern for this fact, the effectiveness of existing mineral prospectivity methods could be limited in areas that experienced structural deformation. This paper proposes a three-dimensional (3D) mineral prospectivity modeling method with geometric restoration. An energy-based geometric restoration approach is presented to restore the existing geometry of geological architecture to the original one according to a series of prior constraints. To represent the original ore-forming environment, the original mineralization distribution and the predictor variables are estimated from the restored 3D geological models. Then, Random Forest is applied to build the mineral prospectivity model that associates predictor variables with the original mineralization distribution. The proposed method was applied to the world-class Jinchuan Ni–Cu–(PGE) sulfide deposit, which underwent significant off-fault deformation after its formation. It was found that, by restoration of the geometry of geological objects and the mineralization distribution, the predictor variables are more reasonable and significant to indicate spatial associations to the mineralization at Jinchuan. This led to a more accurate prospectivity model with superior evaluation metrics (AUCs, F1 scores, kappa coefficients, and PR curves, etc.) compared with the prospectivity model built without geometric restoration. Therefore, 3D mineral prospectivity modeling with geometric restoration is probably much more effective and reliable in quantifying spatial associations with mineralization and in targeting subsurface orebodies in areas that underwent structural deformation.
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页码:75 / 105
页数:30
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