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Integration of deep neural networks and ensemble learning machines for missing well logs estimation

机译:深度神经网络和集合学习机器的集成,以便缺少井日志估算

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摘要

Geophysical logging is one of the most important measurement techniques for the oil/gas development and exploration industry. In practice, missing well logs estimation/prediction or soft logging is one of the effective ways to save oil/gas exploration costs. Due to the structural complexity and heterogeneous of the geological reservoir, there must be strong nonlinear relationships among different well logs. In order to reveal one or more of these relationships, multiple linear regressions, Bayesian learning and traditional machine learning methods (ANN, SVM, etc.) are always employed in the literature. However, in practice, it is impossible to obtain a compact data set that accurately reflects these nonlinear relationships. Therefore, falling into local optimum solution is the fatal defect of these traditional methods. In order to address this problem for a certain extent, we propose to integrate deep neural networks (DNN) and several ensemble learning machines (ELM) to reveal these relationships more accurately. Experiential results illustrated that the proposed method can really estimate missing logs more accurately than traditional ones, and the performance is promising.
机译:地球物理测井是石油/天然气开发和勘探业最重要的测量技术之一。在实践中,缺少井的日志估计/预测或软记录是节省石油/天然气勘探成本的有效方法之一。由于地质储层的结构复杂性和异构,不同井的日志中必须存在强烈的非线性关系。为了揭示这些关系中的一个或多个,多元线性回归,贝叶斯学习和传统的机器学习方法(ANN,SVM等)总是在文献中使用。然而,在实践中,不可能获得准确地反映这些非线性关系的紧凑数据集。因此,落入局部最佳解决方案是这些传统方法的致命缺陷。为了在一定程度上解决这个问题,我们建议将深度神经网络(DNN)和几种集合学习机(ELM)集成,以更准确地揭示这些关系。经验结果表明,所提出的方法可以比传统方式更准确地估计丢失的日志,并且性能很有希望。

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