Automated Well-Log Pattern Alignment and Depth-Matching Techniques: An Empirical Review and Recommendations

C. P. Ezenkwu, John Guntoro, A. Starkey, V. Vaziri, Maurillio Addario
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Abstract

Well logging has been an integral part of decision making at different stages (drilling, completion, production, abandonment) of a well’s history. However, the traditional human-reliant approach to well-log interpretation, which has been the most common practice in the industry, can be time consuming, subjective, and incapable of identifying fine details in log curves. Previous studies have recommended automated approaches as a candidate for addressing these challenges. Despite the progress made so far, what is not yet clear from the existing literature is the extent to which these automated approaches can dispense with human interventions in real-life scenarios. This paper presents an empirical review of different depth-matching techniques in real-life timelapse well logs, primarily focusing on gamma ray and the extent to which the outcomes of these techniques match the results from a human expert. Specifically, the performances of dynamic time warping (DTW), constrained DTW (CDTW), and correlation optimized warping (COW) are investigated. The experiments also consider the effects of filtering and normalization on the performance of each of the techniques. Concerning the correlations of each technique’s outcome with the reference data and an expert-generated outcome, this research identifies and discusses its key challenges, as well as provides recommendations for future research directions. Although the COW technique has its limitations, as discussed in this paper, our experiments demonstrate that it shows more potential than DTW and its variants in the well-log pattern alignment task. The work entailed by this research is significant because identifying and discussing the limitations of these techniques is vital for solution-oriented future research in this area.
自动测井模式对齐和深度匹配技术:经验回顾和建议
测井已经成为油井历史中不同阶段(钻井、完井、生产、弃井)决策的重要组成部分。然而,传统的依赖人工的测井解释方法是业内最常见的做法,这种方法耗时、主观,而且无法识别测井曲线中的细节。以前的研究已经推荐了自动化方法作为解决这些挑战的候选方法。尽管到目前为止取得了进展,但从现有文献中尚不清楚的是,这些自动化方法在多大程度上可以在现实生活中免除人类干预。本文介绍了不同深度匹配技术在实际时间推移测井中的经验回顾,主要关注伽马射线以及这些技术的结果与人类专家结果的匹配程度。具体而言,研究了动态时间规整(DTW)、约束时间规整(CDTW)和相关优化规整(COW)的性能。实验还考虑了滤波和归一化对每种技术性能的影响。关于每种技术的结果与参考数据和专家产生的结果的相关性,本研究确定并讨论了其主要挑战,并为未来的研究方向提供了建议。尽管COW技术有其局限性,但正如本文所讨论的,我们的实验表明,在测井模式对准任务中,它比DTW及其变体显示出更大的潜力。这项研究所涉及的工作意义重大,因为识别和讨论这些技术的局限性对于该领域面向解决方案的未来研究至关重要。
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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