Geology differentiation of geophysical inversions using machine learning

A. Melo, Yaoguo Li
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引用次数: 3

Abstract

Summary Multiple geophysical methods are often employed to improve subsurface understanding, especially in areas with little a priori geological information. Therefore, quantitative methods for integrating multiple physical property models are fundamental to taking the interpretation further into geology di ff erentiation of distinct units. Hence, applications of machine learning are growing in geosciences due to its potential to integrate various sources of information. We evaluate the performance of density-, distribution-, centroid-, and correlation-based clustering methods in the identification of the three geologic units in density, susceptibility and conductivity models derived from a synthetic model, and show that correlation-based clustering gives the best results for geology di ff erentiation. We apply the method to physical property models recovered from field data over a copper deposit and the results show a good spatial correspondence with the known geology from drilling information, allowing the construction of a quasi-geology model.
利用机器学习进行地球物理反演的地质分异
通常采用多种地球物理方法来提高对地下的了解,特别是在缺乏先验地质信息的地区。因此,整合多种物性模型的定量方法是将解释进一步纳入不同单元的地质区分的基础。因此,机器学习在地球科学中的应用越来越多,因为它有潜力整合各种信息来源。通过对基于密度、分布、质心和相关的聚类方法在密度、磁化率和电导率三种地质单元识别中的应用效果进行评价,发现基于相关的聚类方法在地质单元识别中的效果最好。将该方法应用于某铜矿床现场数据反演的物性模型,结果表明,该方法与钻探信息中已知的地质特征具有良好的空间对应关系,从而可以建立准地质模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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