利用测井曲线属性预测少量测井曲线的总有机碳

IF 4.2 Q2 ENERGY & FUELS Petroleum Pub Date : 2023-06-01 DOI:10.1016/j.petlm.2022.10.004
David A. Wood
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引用次数: 0

摘要

很少有常规记录的测井曲线的导数/挥发性测井属性可以帮助预测页岩和致密地层的总有机碳(TOC)。这对于只有有限的测井记录,以及很少对岩石样品进行TOC实验室测量的情况是有价值的。本文考虑了来自美国两口Lower-Barnett-Shale (LBS)井的数据,包括测井数据和岩心分析。它展示了如何利用测井属性与机器学习(ML)来生成准确的TOC预测。计算了伽马射线(GR)、体积密度(PB)和压缩声波(DT)测井的6个属性。将这些属性与其中一个记录的日志结合使用,与使用所有三个记录的日志相比,这些属性通过ML模型提供了更准确的TOC预测。当与两到三条记录的测井曲线结合使用时,该属性生成的TOC预测精度可与使用5条记录测井曲线的ML模型相媲美。多重k倍交叉验证分析表明,k近邻算法为LBS数据集产生最准确的TOC预测。极端梯度增强(XGB)算法也表现良好。XGB能够提供关于作为输入变量的每个测井属性的相对重要性的信息。这有助于特征选择,从而可以减少仅从两到三口记录的测井曲线中生成准确TOC预测所需的属性数量。
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Predicting total organic carbon from few well logs aided by well-log attributes

Derivative/volatility well-log attributes from very few commonly recorded well logs can assist in the prediction of total organic carbon (TOC) in shales and tight formations. This is of value where only limited suites of well logs are recorded, and few laboratory measurements of TOC are conducted on rock samples. Data from two Lower-Barnett-Shale (LBS) wells (USA), including well logs and core analysis is considered. It demonstrates how well-log attributes can be exploited with machine learning (ML) to generate accurate TOC predictions. Six attributes are calculated for gamma-ray (GR), bulk-density (PB) and compressional-sonic (DT) logs. Used in combination with just one of those recorded logs, those attributes deliver more accurate TOC predictions with ML models than using all three recorded logs. When used in combination with two or three of the recorded logs, the attributes generate TOC prediction accuracy comparable with ML models using five recorded well logs. Multi-K-fold-cross-validation analysis reveals that the K-nearest-neighbour algorithm yields the most accurate TOC predictions for the LBS dataset. The extreme-gradient-boosting (XGB) algorithm also performs well. XGB is able to provide information about the relative importance of each well-log attribute used as an input variable. This facilitates feature selection making it possible to reduce the number of attributes required to generate accurate TOC predictions from just two or three recorded well logs.

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来源期刊
Petroleum
Petroleum Earth and Planetary Sciences-Geology
CiteScore
9.20
自引率
0.00%
发文量
76
审稿时长
124 days
期刊介绍: Examples of appropriate topical areas that will be considered include the following: 1.comprehensive research on oil and gas reservoir (reservoir geology): -geological basis of oil and gas reservoirs -reservoir geochemistry -reservoir formation mechanism -reservoir identification methods and techniques 2.kinetics of oil and gas basins and analyses of potential oil and gas resources: -fine description factors of hydrocarbon accumulation -mechanism analysis on recovery and dynamic accumulation process -relationship between accumulation factors and the accumulation process -analysis of oil and gas potential resource 3.theories and methods for complex reservoir geophysical prospecting: -geophysical basis of deep geologic structures and background of hydrocarbon occurrence -geophysical prediction of deep and complex reservoirs -physical test analyses and numerical simulations of reservoir rocks -anisotropic medium seismic imaging theory and new technology for multiwave seismic exploration -o theories and methods for reservoir fluid geophysical identification and prediction 4.theories, methods, technology, and design for complex reservoir development: -reservoir percolation theory and application technology -field development theories and methods -theory and technology for enhancing recovery efficiency 5.working liquid for oil and gas wells and reservoir protection technology: -working chemicals and mechanics for oil and gas wells -reservoir protection technology 6.new techniques and technologies for oil and gas drilling and production: -under-balanced drilling/gas drilling -special-track well drilling -cementing and completion of oil and gas wells -engineering safety applications for oil and gas wells -new technology of fracture acidizing
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