Application of discriminant analysis to phase versus offset data in detection of resistivity contrast

M. Abdulkarim, A. Shafie, R. Razali, W. Ahmad
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引用次数: 2

Abstract

Sea-Bed Logging (SBL) is an application of the marine Controlled-Source Electro-Magnetic (CSEM) method to detect the presence of hydrocarbon layer beneath the sea bed. This method depends on the large resistivity contrast between the hydrocarbon reservoir, and the surrounding layers of different resistivity. Thus, the ability to detect the presence of different resistive layers is important in processing CSEM data. In this paper, discriminant analysis is applied to simulated data aimed at classifying them into two groups based on the resistivity contrast. Discriminant function analysis is a statistical technique used to predict membership in two or more mutually exclusive groups. Two types of data, with (1000Ω) and without (1Ω) hydrocarbon was used to develop the discriminant model. Wilks' lambda is used to test the significance of the discriminant function as a whole, while measure of F-value for a variable is used to indicate its statistical significance in the discrimination between groups and extent to which that variable makes a unique contribution to the prediction of group membership. The results obtained imply that discriminant analysis has potential in detecting the contrast.
判别分析在电阻率对比检测中相位与偏移数据的应用
海底测井(SBL)是利用海洋可控源电磁(CSEM)方法探测海底是否存在油气层的一种方法。该方法依赖于油气储层与周围不同电阻率层之间的大电阻率对比。因此,在处理CSEM数据时,检测不同电阻层存在的能力是重要的。本文对模拟数据进行判别分析,根据电阻率对比将模拟数据分为两类。判别函数分析是一种统计技术,用于预测两个或多个互斥群体的隶属关系。采用含烃(1000Ω)和不含烃(1Ω)两类数据建立判别模型。Wilks’lambda用于检验判别函数作为一个整体的显著性,而变量的f值度量用于表示其在组间判别中的统计显著性以及该变量对群体成员预测的独特贡献程度。结果表明,判别分析在检测对比度方面具有一定的潜力。
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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