A comparative study of the XGBoost ensemble learning and multilayer perceptron in mineral prospectivity modeling: a case study of the Torud-Chahshirin belt, NE Iran

被引:15
作者
Bigdeli, Amirreza [1 ]
Maghsoudi, Abbas [1 ]
Ghezelbash, Reza [1 ]
机构
[1] Amirkabir Univ Technol, Fac Min Engn, Tehran, Iran
关键词
Mineral prospectivity modeling; Success-rate curve; XGBoost; ANN; ROC; AUC; Torud-Chahshirin belt; RANDOM FOREST; GEOCHEMICAL DATA; SEMNAN PROVINCE; DISTRICT; SYSTEMS; ARC; ROC;
D O I
10.1007/s12145-023-01184-4
中图分类号
TP39 [计算机的应用];
学科分类号
081203 ; 0835 ;
摘要
Precisely selecting the exploration criteria and building robust machine-learning models are two critical issues for enhancing the efficiency of mineral prospectivity mapping (MPM) for delimiting highly favorable mineralization zones. The efficient exploration features linked to geochemical, geological, and remote sensing criteria were distinguished in the Torud-Chahshirin (TCS) volcano-intrusive belt, NE Iran using success-rate curves. Then, the Extreme Gradient Boosting (XGBoost) as an ensemble learning method was employed on a coherent group of exploratory evidence layers for highlighting the epithermal-Cu prospectivity areas in the TCS belt. In the next step, the artificial neural networks (here, MLP-ANN) as a data-driven machine learning technique was applied to compare the results which was obtained by the XGBoost algorithm. The outcomes of the receiver operating characteristics (ROC) curves illustrate that both predictive models succeeded in delineating target zones. However, regarding the area under the curve (AUC) values, the XGBoost model successfully delineates the exploration target by mostly Cu mineral occurrences rather than the MLP-ANN model.
引用
收藏
页码:483 / 499
页数:17
相关论文
共 79 条
[21]   Hard to say goodbye: South Korea, Japan, and China as the last lenders for coal [J].
Davidson, Michael R. ;
Gao, Xue ;
Busby, Joshua ;
Shearer, Christine ;
Eisenman, Joshua .
ENVIRONMENTAL POLITICS, 2023, 32 (07) :1186-1207
[22]   Landslide susceptibility prediction using artificial neural networks, SVMs and random forest: hyperparameters tuning by genetic optimization algorithm [J].
Daviran, M. ;
Shamekhi, M. ;
Ghezelbash, R. ;
Maghsoudi, A. .
INTERNATIONAL JOURNAL OF ENVIRONMENTAL SCIENCE AND TECHNOLOGY, 2023, 20 (01) :259-276
[23]   Quantifying Uncertainties Linked to the Diversity of Mathematical Frameworks in Knowledge-Driven Mineral Prospectivity Mapping [J].
Daviran, Mehrdad ;
Parsa, Mohammad ;
Maghsoudi, Abbas ;
Ghezelbash, Reza .
NATURAL RESOURCES RESEARCH, 2022, 31 (05) :2271-2287
[24]   A new strategy for spatial predictive mapping of mineral prospectivity: Automated hyperparameter tuning of random forest approach [J].
Daviran, Mehrdad ;
Maghsoudi, Abbas ;
Ghezelbash, Reza ;
Pradhan, Biswajeet .
COMPUTERS & GEOSCIENCES, 2021, 148
[25]   Ensemble methods in machine learning [J].
Dietterich, TG .
MULTIPLE CLASSIFIER SYSTEMS, 2000, 1857 :1-15
[26]  
Eshraghi S.A., 2006, The Geological Map of Moalleman
[27]  
Fard M., 2006, J SCI, V17, P327
[28]   Principal component analysis for compositional data with outliers [J].
Filzmoser, Peter ;
Hron, Karel ;
Reimann, Clemens .
ENVIRONMETRICS, 2009, 20 (06) :621-632
[29]   Practical Implementation of Random Forest-Based Mineral Potential Mapping for Porphyry Cu-Au Mineralization in the Eastern Lachlan Orogen, NSW, Australia [J].
Ford, Arianne .
NATURAL RESOURCES RESEARCH, 2020, 29 (01) :267-283
[30]   3D mineral prospectivity modeling based on machine learning: A case study of the Zhuxi tungsten deposit in northeastern Jiangxi Province, South China [J].
Fu, Guangming ;
Lu, Qingtian ;
Yan, Jiayong ;
Farquharson, Colin G. ;
Qi, Guang ;
Zhang, Kun ;
Zhang, Yongqian ;
Wang, Hao ;
Luo, Fan .
ORE GEOLOGY REVIEWS, 2021, 131