Unsupervised Electrofacies Clustering Based on Parameterization of Petrophysical Properties: A Dynamic Programming Approach

Karthigan Sinnathamby, Chang-Yu Hou, V. Gkortsas, Lalitha Venkataramanan, H. Datir, T. Kollien, F. Fleuret
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Abstract

Electrofacies using well logs play a vital role in reservoir characterization. Often, they are sorted into clusters according to the self-similarity of input logs and do not capture the known underlying physical process. In this paper, we propose an unsupervised clustering algorithm based on the concept of dynamic programming, in which the underlying physical processes and geological constraints, such as the number of clusters, number of transitions between clusters, and minimal size of formation layers, can be directly integrated. We benchmark the proposed algorithm with synthetic data sets and demonstrate its applications to two field examples, where formations are clustered into zones through automated clustering using a consistent resistivity response. The inputs for our examples are porosity, clay volume fraction from elemental analysis, invaded zone resistivity, and invaded zone water saturation from dielectric interpretation or nuclear magnetic resonance logs. The proposed algorithm provides the optimized cluster pattern/electrofacies that satisfies desired constraints and enables the extraction of relevant petrophysical parameters, such as brine resistivity, cementation, and saturation exponents, as well as parameters that relate to the cation exchange capacity (CEC) of the clay for shaly-sand formations. Beyond the immediate examples demonstrated in this paper, we present the proposed algorithm in a generic form such that it can be easily tailored to the task at hand, taking into account any prior knowledge of the physics of the underlying process.
基于岩石物性参数化的无监督电相聚类:一种动态规划方法
测井电相在储层表征中起着至关重要的作用。通常,它们根据输入日志的自相似性被分类到集群中,并且不捕获已知的底层物理过程。本文提出了一种基于动态规划概念的无监督聚类算法,该算法可以直接集成底层物理过程和地质约束,如簇的数量、簇之间的过渡次数和最小地层尺寸。我们用合成数据集对提出的算法进行了基准测试,并在两个油田实例中演示了其应用,在两个油田中,通过使用一致的电阻率响应自动聚类,将地层聚类成层。我们的示例输入包括孔隙度、元素分析得到的粘土体积分数、介电解释或核磁共振测井得到的侵入层电阻率和侵入层含水饱和度。所提出的算法提供了优化的簇模式/电相,满足所需的约束条件,并能够提取相关的岩石物理参数,如盐水电阻率、胶结和饱和度指数,以及与泥砂岩地层粘土阳离子交换容量(CEC)相关的参数。除了本文中演示的直接示例之外,我们以通用形式提出了所提出的算法,以便它可以很容易地针对手头的任务进行定制,同时考虑到潜在过程的任何先验物理知识。
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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