Similarity Learning for Well Logs Prediction Using Machine Learning Algorithms

Alina Rogulina, A. Zaytsev, L. Ismailova, D. Kovalev, Klemens Katterbauer, A. Marsala
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引用次数: 8

Abstract

Determining and predicting reservoir formation properties for newly drilled wells represents a significant challenge for oil and gas companies. Extensive well logs are available only while or after drilling, and thus they bear substantial financial, technical, and operational risks. We propose a new machine learning data-based model for determining well properties similarity and further derive and predict well logs before drilling in a specific geological context. Our model starts with selecting crucial well intervals and aggregation of vital features that determine the petrophysical properties related to particular well layers. Then, a machine-learning algorithm uses this info as input to provide a similarity score between wells. Our fast-to-train nonlinear data-based model is a variant of gradient boosting. We show that this approach can work well in complex scenarios with missing data and inconsistent similarity measures. We compare the modern machine learning algorithms for the evaluation of well similarity models based on aggregated features. The algorithms include gradient boosting and baseline logistic regression models. Our assessment for a real well log dataset via group cross-validation demonstrates that the gradient boosting model pretty accurately identifies well similarity. The receiver operating characteristic quality metric (ROC AUC) is 0.824. The developed similarity learning framework provides a data-driven approach towards estimating well logs for planned and newly drilled wells. Therefore, it allows prediction, improves determination, and can drive an optimal selection of log measurements to be executed in a new well in a specific field / geological context.
利用机器学习算法进行测井预测的相似学习
对于油气公司来说,确定和预测新钻井的储层性质是一个重大挑战。大量的测井数据只能在钻井过程中或钻井后获得,因此它们承担着巨大的财务、技术和操作风险。我们提出了一种新的基于机器学习数据的模型,用于确定井属性相似性,并在特定地质环境下钻探前进一步推导和预测测井曲线。我们的模型首先选择关键井段和关键特征的集合,这些特征决定了与特定井层相关的岩石物理性质。然后,机器学习算法使用这些信息作为输入,提供井间的相似度评分。我们的快速训练非线性数据模型是梯度增强的一种变体。我们的研究表明,这种方法可以很好地处理数据缺失和不一致的相似度量的复杂场景。我们比较了基于聚合特征的井相似模型评估的现代机器学习算法。算法包括梯度增强和基线逻辑回归模型。我们通过组交叉验证对真实测井数据集的评估表明,梯度增强模型非常准确地识别了井的相似性。受试者工作特征质量度量(ROC AUC)为0.824。开发的相似学习框架为估算计划井和新钻井的测井曲线提供了数据驱动的方法。因此,它可以进行预测,改进确定,并可以在特定油田/地质环境下的新井中执行最佳的测井测量选择。
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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