Journal of Jilin University(Earth Science Edition)

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Kernel Mahalanobis Distance for Multivariate Geochemical Anomaly Recognition

Chen Yongliang1, Lu Laijun2, Li Xuebin1   

  1. 1. Institute of Mineral Resources Prognosis on Synthetic Information, Jilin University, Changchun130026, China;
    2. College of Earth Sciences, Jilin University, Changchun130061, China
  • Received:2013-07-21 Online:2014-01-26 Published:2014-01-26

Abstract:

Mahalanobis distance is an effective synthetic index for multivariate geochemical anomaly identification in the situation where geochemical data satisfy multivariate normal distribution. However, complex geological system, multi-stage mineralization, and multiple ore-controlling factors, usually result in the ambiguity and nonlinearity of the critical surface of multivariate geochemical anomaly. This complicated surface can’t be properly represented by the smooth hyper-ellipsoid defined by Mahalanobis distances. Kernel functions can nonlinearly transform the sample set onto a feature space, where the background sample image population constructs a manifold while anomaly sample images distribute the boundary or out space of the manifold. The kernel Mahalanobis distances from a sample image to the sample image population can be computed and used to determine whether the sample is an outlier. The method is applied to the multivariate geochemical anomaly identification of Baishan region, Jilin Province, China. Kernel Mahalanobis distance, Mahalanobis distance, and principal component score serve as the synthetic indexes for identifying the multivariate geochemical anomalies of four combinations of gold-silver, gold-silver-arsenic-bismuth-mercury, gold-silver-copper-lead-zinc-stibnite-cobalt, and gold-silver-copper-lead-zinc-stibnite-cobalt-arsenic-bismuth-mercury. The research shows that the performance of composite kernel Mahalanobis distance is superior to the other indexes in multivariate geochemical anomaly identification.

Key words: Mahalanobis distance, kernel Mahalanobis distance, principal component score, geochemical data, multivariate anomaly recognition

CLC Number: 

  • P628.1
[1] Xiao Fan, Chen Jianguo. Application of PPC Model Combined with RCGA to Identify and Extract Geochemical Anomaly [J]. Journal of Jilin University(Earth Science Edition), 2017, 47(4): 1319-1330.
[2] CHEN Yong-liang, LI Xue-bin, LIN Nan. A Method for Extracting Anomalous Pixels of Remotely Sensed Data [J]. J4, 2012, 42(3): 881-886.
[3] HAO Li-bo,JIANG Yan-ming,LU Ji-long,SUN Shu-mei,BAI Rong-jie. Identification of Quaternary Sediments Types Used by Multi-Purpose Geochemical Data-With Probabilistic Neural Networks Method [J]. J4, 2008, 38(6): 1081-1084.
[4] SHI Yan-xiang, HAO Li-bo, LU Ji-long, JI Hong-jin. Application of Factor Classification in Geological Mapping in Tahe Area, Heilongjiang Province [J]. J4, 2008, 38(5): 899-0903.
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