Classifying zircon: A machine-learning approach using zircon geochemistry

被引:1
|
作者
Kong, Jintao [1 ,2 ]
Yu, Hongru [1 ]
Sun, Junyi [1 ]
Zhang, Huan [1 ]
Zhang, Miaomiao [3 ]
Xia, Zhi [4 ]
机构
[1] PetroChina Coalbed Methane Co Ltd, Linfen Branch, Linfen 042300, Peoples R China
[2] Jilin Univ, Coll Earth Sci, Changchun 130000, Peoples R China
[3] Accenture, Melbourne 3000, Australia
[4] South China Normal Univ, Sch Geog, Guangzhou 510630, Peoples R China
关键词
AdaBoost algorithm; Back Propagation Neural Networks; Machine learning; Zircon origin; TRACE-ELEMENT COMPOSITION; HYDROTHERMAL ZIRCON; MAGMATIC ZIRCON; JACK HILLS; GEOCHRONOLOGY;
D O I
10.1016/j.gr.2024.09.010
中图分类号
P [天文学、地球科学];
学科分类号
07 ;
摘要
This study presented a novel, rapid, and accurate method for determining zircon origin via a comprehensive analysis of a dataset containing 27,818 zircon trace element sets. This method integrated back propagation neural networks with the AdaBoost algorithm. The optimal classifier characterized as a linear combination of a two-layer neural network model, comprised 100 base classifiers and 400 hidden neurons. It was rigorously trained over 1000 iterations, which resulted in an unbiased error rate of 8.31%. To facilitate practical application, the classifier was integrated into a macro-enabled Excel spreadsheet. (c) 2024 International Association for Gondwana Research. Published by Elsevier B.V. All rights are reserved, including those for text and data mining, AI training, and similar technologies.
引用
收藏
页码:227 / 233
页数:7
相关论文
共 50 条
  • [31] Geochemistry and origin of zircon in chlorite schists of the Ronda peridotites (Betic Cordilleras, southern Spain)
    Esteban, J. J.
    Cuevas, J.
    Tubia, J. M.
    LITHOSPHERE, 2019, 11 (06) : 855 - 867
  • [32] A Novel Approach to Identifying Mantle-Equilibrated Zircon by Using Trace Element Chemistry
    Ni, Ziqin
    Arevalo, Ricardo, Jr.
    Piccoli, Philip
    Reno, Barry L.
    GEOCHEMISTRY GEOPHYSICS GEOSYSTEMS, 2020, 21 (11)
  • [33] Automotive Feature Coordination based on a Machine-Learning Approach
    Dominka, Sven
    Tabrizi, Sarah
    Mandl, Michael
    Duebner, Michael
    2021 IEEE 11TH ANNUAL COMPUTING AND COMMUNICATION WORKSHOP AND CONFERENCE (CCWC), 2021, : 726 - 731
  • [34] Machine-learning approach improves deepwater facility uptime
    Singh, Ajay
    Sankaran, Sathish
    Ambre, Sachin
    1600, Society of Petroleum Engineers (SPE) (72): : 54 - 55
  • [35] A machine-learning approach for nonalcoholic steatohepatitis susceptibility estimation
    Fatemeh Ghadiri
    Abbas Ali Husseini
    Oğuzhan Öztaş
    Indian Journal of Gastroenterology, 2022, 41 : 475 - 482
  • [36] Prediction of Nucleophilicity and Electrophilicity Based on a Machine-Learning Approach
    Liu, Yidi
    Yang, Qi
    Cheng, Junjie
    Zhang, Long
    Luo, Sanzhong
    Cheng, Jin-Pei
    CHEMPHYSCHEM, 2023, 24 (14)
  • [37] Ship performance monitoring using machine-learning
    Gupta, Prateek
    Rasheed, Adil
    Steen, Sverre
    OCEAN ENGINEERING, 2022, 254
  • [38] Machine learning lattice constants of zircon-group minerals MXO4
    Zhang, Yun
    Xu, Xiaojie
    STRUCTURAL CHEMISTRY, 2021, 32 (03) : 1311 - 1326
  • [39] A Machine-Learning Approach for Detection and Quantification of QRS Fragmentation
    Goovaerts, Griet
    Padhy, Sibasankar
    Vandenberk, Bert
    Varon, Carolina
    Willems, Rik
    Van Huffel, Sabine
    IEEE JOURNAL OF BIOMEDICAL AND HEALTH INFORMATICS, 2019, 23 (05) : 1980 - 1989
  • [40] Machine-Learning Approach to Analysis of Driving Simulation Data
    Yoshizawa, Akira
    Nishiyama, Hiroyuki
    Iwasaki, Hirotoshi
    Mizoguchi, Fumio
    2016 IEEE 15TH INTERNATIONAL CONFERENCE ON COGNITIVE INFORMATICS & COGNITIVE COMPUTING (ICCI*CC), 2016, : 398 - 402