基于小波导元的多重分形速度测井地下非均质特征分析

Saliha Amoura, S. Gaci, M. A. Bounif
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引用次数: 0

摘要

在石油工程中,测井曲线是表征油气储层的关键,也是提取与储层岩性和流体类型相关的有意义特征的关键。提出了几种利用测井资料的方法。为此,本文提出了基于小波导元的多重分形分析(WL)方法,并将其应用于两个科学深井:先导井(KTB-VB)和超深主井(KTB-HB)的速度测井数据,研究了所测数据的局部特征和不变尺度特性。建议的方法可以根据小波导区分不同的岩性类型。首先,根据不同的速度测井曲线,使用Peltier和l郁闷- v郁闷(PLV)算法计算局部规律性剖面,并进行岩性分割。然后,利用WL算法对速度测井曲线进行多重分形分析。从所研究的测井曲线中提取的岩性与多重分形性质之间存在明显的相关性,特别是奇点谱宽$(\Delta h)$的显著值对应于局部充填裂缝。综上所述,奇异谱可以作为表征地下非均质性和识别宏观和微观裂缝带的工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Wavelet leader-based multifractal analysis for characterizing subsurface heterogeneities using velocity logs
In petroleum engineering, well logs are the key to characterize a hydrocarbon reservoir, and to extract meaningful features related to the lithology and the type of fluids present in the reservoir. Several approaches have been suggested to exploit well log data. In this view, this paper presents a wavelet leader-based multifractal analysis (WL), applied to velocity log data measured at two scientific deep boreholes: the pilot well (KTB-VB) and the ultra-deep main well (KTB-HB), to study the local behavior and the invariant scale properties of the investigated data. The suggested approach allows distinguishing different lithology types based on the wavelet leaders. First, local regularity profiles have been computed using the Peltier and Lévy-Véhél (PLV) algorithm from the different velocity logs, and a lithological segmentation has been carried out. Then, a multifractal analysis has been carried out on velocity logs using the WL algorithm. A clear correlation is shown between lithology and multifractal properties extracted from the investigated logs, specifically significant values singularity spectrum width $( \Delta h)$ correspond to the local filled fractures. To conclude, the singularity spectrum may then serve as a tool for characterizing subsurface heterogeneity and identifying a zone of macro- and micro-fractures.
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