Automated Well-Log Depth Matching – 1D Convolutional Neural Networks Vs. Classic Cross Correlation

V. A. Torres Caceres, K. Duffaut, A. Yazidi, F. Westad, Y. Johansen
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引用次数: 3

Abstract

During drilling and logging, depth alignment of well logs acquired in the same borehole section at different times is a vital preprocessing step before any petrophysical analysis. Depth alignment requires high precision as depth misalignment between different log curve measurements can substantially suppress possible correlations between formation properties, leading to imprecise interpretation or even misinterpretation. Standard depth alignment involves cross correlation, which typically requires user intervention for reliability. To improve the depth alignment process, we apply deep-learning techniques and propose a simple and practical implementation of a one-dimensional (1D) supervised convolutional neural network (1D CNN). We train seven CNN models using different log measurements, such as gamma ray, resistivity, P- and S-wave sonic, density, neutron, and photoelectric factor (PEF), to estimate depth mismatches between the corresponding raw logging-while-drilling (LWD) and electrical-wireline-logging (EWL) logs of each measurement type. Our deep-learning approach avoids manual feature extraction; hence, no high-level petrophysical knowledge is needed by our algorithms. We use log data from six wells from the Ivar Aasen Field in the Norwegian North Sea. Four of the six wells constitute the entire data set for training and model selection, in which we compare three search algorithms during the hyperparameter tuning. Only two wells have both LWD and EWL log suites. These wells are used for depth-shift inference. We focus on estimating bulk shifts, and we assume the existence of small pattern differences. We assess our results by visual inspection and quantitative metrics such as the Pearson correlation and Euclidean distance. We also compare the CNN depth shifts with depth shifts obtained using the classical cross-correlation method. The CNN performs well and is competitive with cross correlation. CNN performs better for some log types—resistivity, for instance—than others. Several factors influence our results, including the quality of the input data, borehole conditions, pattern differences between LWD and EWL, and significant stretch/squeeze effects. Differences between the mean Pearson correlation computed after CNN and the cross-correlation depth-matching process are of the order of 10–1 and 10–2. Our CNN approach is, therefore, a potential alternative to current depth-matching methods, which may reduce the amount of user intervention required from the petrophysicist.
自动测井深度匹配:一维卷积神经网络与经典相互关联
在钻井和测井过程中,在进行岩石物理分析之前,对同一井段不同时间获得的测井曲线进行深度定位是至关重要的预处理步骤。深度对准要求精度高,因为不同测井曲线测量之间的深度不对准会极大地抑制地层属性之间可能存在的相关性,从而导致解释不精确甚至误读。标准深度对准涉及相互关联,通常需要用户干预才能保证可靠性。为了改进深度对齐过程,我们应用深度学习技术,并提出了一个简单实用的一维(1D)监督卷积神经网络(1D CNN)的实现。我们使用不同的测井数据(如伽马射线、电阻率、P波和s波声波、密度、中子和光电因子(PEF))训练了7个CNN模型,以估计每种测量类型的相应原始随钻测井(LWD)和电缆电测井(EWL)测井之间的深度不匹配。我们的深度学习方法避免了人工特征提取;因此,我们的算法不需要高水平的岩石物理知识。我们使用了挪威北海Ivar Aasen油田六口井的测井数据。6口井中的4口构成了用于训练和模型选择的整个数据集,我们在超参数调优期间比较了三种搜索算法。只有两口井同时拥有随钻测井和EWL测井套件。这些井用于深移推断。我们专注于估计大位移,并假设存在小的模式差异。我们评估我们的结果通过目视检查和定量指标,如皮尔逊相关性和欧几里得距离。我们还将CNN的深度偏移与经典互相关方法得到的深度偏移进行了比较。CNN表现良好,具有很强的相互关系竞争力。CNN在某些对数类型上表现得更好,比如电阻率。有几个因素会影响我们的结果,包括输入数据的质量、井眼条件、随钻测井和EWL之间的模式差异,以及显著的拉伸/挤压效应。CNN后计算的平均Pearson相关性与互相关深度匹配过程的差值分别为10-1和10-2。因此,我们的CNN方法是当前深度匹配方法的潜在替代方案,可以减少岩石物理学家对用户干预的需求。
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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