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Elastic impedance based facies classification using support vector machine and deep learning

机译:使用支持向量机和深度学习的基于弹性阻抗的相分类

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Machine learning methods including support-vector-machine and deep learning are applied to facies classification problems using elastic impedances acquired from a Paleocene oil discovery in the UK Central North Sea. Both of the supervised learning approaches showed similar accuracy when predicting facies after the optimization of hyperparameters derived from well data. However, the results obtained by deep learning provided better correlation with available wells and more precise decision boundaries in cross-plot space when compared to the support-vector-machine approach. Results from the support-vector-machine and deep learning classifications are compared against a simplified linear projection based classification and a Bayes-based approach. Differences between the various facies classification methods are connected by not only their methodological differences but also human interactions connected to the selection of machine learning parameters. Despite the observed differences, machine learning applications, such as deep learning, have the potential to become standardized in the industry for the interpretation of amplitude versus offset cross-plot problems, thus providing an automated facies classification approach.
机译:包括支持向量机和深度学习在内的机器学习方法使用从英国中北海的古新世石油发现中获得的弹性阻抗应用于相分类问题。在优化根据井数据得出的超参数后预测相时,两种监督学习方法均显示出相似的准确性。但是,与支持向量机方法相比,通过深度学习获得的结果提供了与可用井的更好关联,并且在跨图空间中提供了更精确的决策边界。将支持向量机和深度学习分类的结果与简化的基于线性投影的分类和基于贝叶斯的方法进行比较。各种相分类方法之间的差异不仅通过它们的方法差异来连接,而且还通过与机器学习参数选择有关的人机交互来实现。尽管存在观察到的差异,但机器学习应用程序(例如深度学习)仍可能在行业中标准化,以解释幅度与偏移量交叉图问题,从而提供一种自动化的相分类方法。

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