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Compositional Balance Analysis: An Elegant Method of Geochemical Pattern Recognition and Anomaly Mapping for Mineral Exploration

机译:组成平衡分析:矿物勘探地球化学模式识别和异常绘图的优雅方法

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摘要

Geochemical pattern recognition and anomaly mapping are always involved in the fields of environmental and exploration geochemistry. Principal component analysis (PCA) and factor analysis (FA) are most commonly used to reveal underlying geochemical associations for the purpose of spatial distribution pattern analysis. However, the methods of PCA and FA cannot eliminate correlations between different principal components/factors, meaning that geochemical associations revealed by PCA or FA could be simultaneously influenced by two or more principal components/factors, as can be observed from biplot analysis. Such problem provides a challenge for interpretation of geochemical/geological processes. In the present study, we demonstrated a simple method, termed compositional balance analysis (CoBA), to interpret critical geochemical/geological processes. Comparative studies between CoBA and compositional factor analysis, as well as data- and knowledge-driven CoBA, were considered to discuss the advantage and practicability of the CoBA in geochemical pattern recognition and anomaly mapping based on a case study in the Nanling belt, South China. The results indicate that the CoBA has greater efficiency in enhancing weak or concealed geochemical anomalies and suppressing spurious geochemical anomalies relative to multivariate dimensionality reduction analysis; especially, knowledge-driven CoBA provides more robust interpretation of geochemical/geological processes relative to data-driven CoBA.
机译:地球化学模式识别和异常映射始终涉及环境和勘探地球化学领域。主要成分分析(PCA)和因子分析(FA)最常用于揭示用于空间分布模式分析的目的的底层地球化学关联。然而,PCA和FA的方法不能消除不同主成分/因素之间的相关性,这意味着PCA或FA的地球化学关联可以同时受到两个或更多个主成分/因素的同时影响,可以从方法分析中观察到。此类问题为地球化学/地质过程的解释提供了挑战。在本研究中,我们证明了一种简单的方法,称为组成平衡分析(COBA),以解释关键地球化学/地质过程。 COBA与组成因子分析的比较研究以及数据和知识驱动的豚鼠被认为是基于南林南风的案例研究,探讨了COBA在地球化学模式识别和异常映射中的优势和实用性。 。结果表明,COBA在增强弱或隐藏的地球化学异常和抑制相对于多变量维度降低分析的杂散地球化学异常方面具有更高的效率。特别是,知识驱动的COBA相对于数据驱动的COBA提供了更强大的地球化学/地质过程的解释。

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