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Geoscience ›› 2023, Vol. 37 ›› Issue (03): 662-673.DOI: 10.19657/j.geoscience.1000-8527.2023.009

• Ore Deposits and Geochemical Prospecting • Previous Articles     Next Articles

Regional Geochemical Data Analysis Using Isometric Log-ratio Transformation and Mixture Distribution

LI Zhu1,2(), ZHANG Dehui1(), YANG Fan3, LIU Xiangchong4   

  1. 1. School of Earth Sciences and Resources, China University of Geosciences (Beijing), Beijing 100083, China
    2. Inner Mongolian Geological Engineering Co.,Ltd., Hohhot, Inner Mongolia 010010, China
    3. Institute of Geophysics and Geochemistry,Chinese Academy of Geological Sciences, Langfang, Hebei 065000, China
    4. Institute of Geomechanics, Chinese Academy of Geological Sciences, Beijing 100081, China
  • Received:2022-10-28 Revised:2023-03-09 Online:2023-06-10 Published:2023-07-20

Abstract:

Regional geochemical exploration data are typical compositional data. Isometric log-ratio transformation (ILR) produces an orthonormal basis of geochemical data, which can eliminate the data closure effect and account for the data compositional nature. However, it is still difficult to interpret ILR-transformed variables. To make ILR transformations easier to understand, geological knowledge and data-driven methods are used to construct the interpretable ILR-transformed variables. This method was applied to extract geo-information from stream sediment geochemical data in the central and southern Da Hinggan Mountains, Inner Mongolia, northern China. Based on these geological information and hierarchical cluster analysis, sequential binary partition was constructed among the Sn, W, Cr, and Ni concentrations, and expressed as variables b1, b2 and b3 by ILR transformation. Furthermore, the expectation-maximization (EM) algorithm modified by a minimum message length criterion (MML) was employed to investigate the variables mixture distributions.The ILR-transformed variables follow either a bi-normal or tri-normal distribution, which were interpreted as fingerprints inherited from mafic magmatic, Sn-W hydrothermal, and later geological processes. The high-average subpopulation of b1, b2 and b3 variables of ILR transformation corresponds to the anomalies of W-Sn metallogenic system, and four areas were predicted to have high Sn-W prospecting potential. This study shows that the ILR transformation and MML-EM algorithm are promising tools to effectively extract geo-information from geochemical data and delineate anomalies.

Key words: isometric log-ratio transformation, mixture distribution, compositional data, geochemical exploration, Da Hinggan Mountains

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