Identifying serpentine minerals by their chemical compositions with machine learning

Author:

Ji Shichao12ORCID,Huang Fang3ORCID,Wang Shaoze4,Gupta Priyantan5,Seyfried William6,Zhang Hejia7,Chu Xu8,Cao Wentao9ORCID,ZhangZhou J10ORCID

Affiliation:

1. CAS Key Laboratory of Mineralogy and Metallogeny/Guangdong provincial Key Laboratory of Mineral Physics and Materials, Guangzhou Institute of Geochemistry, Chinese Academy of Sciences (CAS), Guangzhou 510640, China

2. CAS Center for Excellence in Deep Earth Science, Guangzhou 510640, China

3. CSIRO Mineral Resources, Kensington, Western Australia 6151, Australia

4. Surface Science Lab, Physics and Astronomy Department, Ohio University, Athens, Ohio 74501, U.S.A.

5. Indian Institute of Technology, Kharagpur, West Bengal 721302, India

6. Department of Earth and Environmental Sciences, University of Minnesota, Minneapolis, Minnesota 55455, U.S.A.

7. School of the Environment, Yale University, New Haven, Connecticut 06511, U.S.A.

8. Department of Earth Sciences, University of Toronto, Toronto, Ontario M5S 3B1, Canada

9. Department of Geology and Environmental Sciences, State University of New York at Fredonia, Fredonia, New York 14063, U.S.A.

10. School of Earth Sciences, Zhejiang University, Hangzhou 310058, China

Abstract

Abstract The three main serpentine minerals, chrysotile, lizardite, and antigorite, form in various geological settings and have different chemical compositions and rheological properties. The accurate identification of serpentine minerals is thus of fundamental importance to understanding global geochemical cycles and the tectonic evolution of serpentine-bearing rocks. However, it is challenging to distinguish specific serpentine species solely based on geochemical data obtained by traditional analytical techniques. Here, we apply machine learning approaches to classify serpentine minerals based on their chemical compositions alone. Using the Extreme Gradient Boosting (XGBoost) algorithm, we trained a classifier model (overall accuracy of 87.2%) that is capable of distinguishing between low-temperature (chrysotile and lizardite) and high-temperature (antigorite) serpentines mainly based on their SiO2, NiO, and Al2O3 contents. We also utilized a k-means model to demonstrate that the tectonic environment in which serpentine minerals form correlates with their chemical compositions. Our results obtained by combining these classification and clustering models imply the increase of Al2O3 and SiO2 contents and the decrease of NiO content during the transformation from low-to high-temperature serpentine (i.e., lizardite and chrysotile to antigorite) under greenschist–blueschist conditions. These correlations can be used to constrain mass transfer and the surrounding environments during the subduction of hydrated oceanic crust.

Publisher

Mineralogical Society of America

Subject

Geochemistry and Petrology,Geophysics

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