首页> 外文期刊>Journal of Petroleum Science & Engineering >Lithology prediction by support vector classifiers using inverted seismic attributes data and petrophysical logs as a new approach and investigation of training data set size effect on its performance in a heterogeneous carbonate reservoir
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Lithology prediction by support vector classifiers using inverted seismic attributes data and petrophysical logs as a new approach and investigation of training data set size effect on its performance in a heterogeneous carbonate reservoir

机译:支持向量机使用反演地震属性数据和岩石物理测井作为一种新方法进行岩性预测,研究训练数据集大小对其在非均质碳酸盐岩储层中的性能的影响

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Lithology prediction is one the most affective requirements in all of the petroleum engineering embranchments. Petrophysical analysis, geophysical modeling, statistical methods and artificial intelligent approaches have been used to lithology prediction. Support vector machines (SVMs) based on statistical learning theory (SLT) and the principles of structural risk minimization (SRM) and empirical risk minimization (ERM) use an analytical approach to classification and regression. In this research, SVM classification method is used to lithology prediction from inverted seismic attributes data and petrophysical logs based on petrographic studies of cores lithology in a heterogeneous carbonate reservoir in Iran. Also, because of high impact of the data set size on most of machine learning techniques, effect of training data set size on different SVMs was deliberated by training and testing SVMs by six different partitioned cases according to the learning ratio of each case. Data preparation including normalization, attribute selection, kernel parameters optimization by grid search technique and data partitioning to construct training and testing data sets were performed on the data. The results showed that the SVM performs well in lithology prediction using inverted seismic attributes data and petrophysical logs, and by training data set size reduction, SVM performance has not affected too much, which it is an advantage for SVM as a machine learning method. Also, in order to predict lithology by SVMs using small training data sets, it is recommended to use normalized polynomial kernel function. Kernel functions and generally SVMs are not affected by the training data set size when the learning ratio varies in normal learning ratios. Using the kernels with their associated optimum values of the parameters obtained from grid search technique, it is possible to predict lithology in the investigated reservoir. (C) 2015 Elsevier B.V. All rights reserved.
机译:岩性预测是所有石油工程部门中最有影响力的要求之一。岩石物理分析,地球物理建模,统计方法和人工智能方法已用于岩性预测。基于统计学习理论(SLT),结构风险最小化(SRM)和经验风险最小化(ERM)的支持向量机(SVM)使用分析方法进行分类和回归。在这项研究中,基于伊朗非均质碳酸盐岩储层岩心岩性的岩石学研究,将SVM分类法用于根据反演地震属性数据和岩石物性测井进行岩性预测。另外,由于数据集大小对大多数机器学习技术的影响很大,因此通过根据每个案例的学习率在六个不同的分区案例中对SVM进行训练和测试来研究训练数据集大小对不同SVM的影响。数据准备包括归一化,属性选择,通过网格搜索技术进行的内核参数优化以及数据分区以构造训练和测试数据集。结果表明,支持向量机在反演地震属性数据和岩石物理测井的岩性预测中表现良好,并且通过训练数据集大小的减小,对支持向量机的性能影响不大,这对支持向量机作为一种机器学习方法来说是一个优势。另外,为了使用小的训练数据集通过SVM预测岩性,建议使用归一化多项式核函数。当学习比率在正常学习比率中变化时,内核功能以及通常的SVM不受训练数据集大小的影响。使用核及其从网格搜索技术获得的参数的最佳值,可以预测所研究储层的岩性。 (C)2015 Elsevier B.V.保留所有权利。

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