Three-Dimensional Mineral Prospectivity Mapping by XGBoost Modeling: A Case Study of the Lannigou Gold Deposit, China

被引:0
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作者
Quanping Zhang
Jianping Chen
Hua Xu
Yule Jia
Xuewei Chen
Zhen Jia
Hao Liu
机构
[1] China University of Geosciences (Beijing),School of Earth Sciences and Resources
[2] Beijing Key Laboratory of Land and Resources Information Research and Development,School of Resource and Environmental Engineering
[3] Guizhou University,Department of Civil and Environmental Engineering
[4] Technical University of Catalonia (UPC),undefined
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关键词
3DMPM; Machine learning; XGBoost; Lannigou gold deposit;
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摘要
Three-dimensional mineral prospectivity mapping (3DMPM) aims to explore deep mineral resources and many methods have been developed for this task in recent years. The eXtreme Gradient Boosting (XGBoost) algorithm, an improvement of the gradient boosting decision tree model, has been used widely in many fields due to its high computational efficiency and its ability to alleviate overfitting effectively. The Lannigou gold deposit in Guizhou is a well-known epithermal gold deposit in the "Golden Triangle" area of Guizhou, Guangxi and Yunnan, China, with potential for deep exploration. Geological data were used to establish a three-dimensional (3D) model, and subsequently a prospectivity model was built based on the metallogenic system and on geological anomaly theories. The 3D spatial reconstruction of mineralization anomalies was completed and 3D prediction layers of the ore-controlling factor were implemented to establish the basic data for the prediction model. The XGBoost classification model was proved efficient for 3DMPM, outperforming the weights of evidence method according to prediction success rate and accuracy.
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页码:1135 / 1156
页数:21
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