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Fracture identification by semi-supervised learning using conventional logs in tight sandstones of Ordos Basin, China

机译:中国鄂尔多斯盆地紧密砂岩中的半监督学习骨折识别

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Fracture identification using conventional logs is a cost effective way of identifying fracture zones in reservoirs. However, there are challenging problems including complex well log responses and small amount of labelled data available from cores or image logs, making it difficult to build a prediction model with a good generalization capability. To address these problems, a semi-supervised learning method termed Laplacian support vector machine (LapSVM) is introduced in this work, which is a combination of the supervised kernel method and the unsupervised clustering method. LapSVM inherits SVM' s capability of handling nonlinear problems and overcomes partially the issue of limited labelled data by using the unsupervised clustering technique with the help of abundant well log information. To examine the effectiveness of LapSVM for fracture identification in tight reservoirs, a dataset from the tight sandstones of the Ordos Basin in China is used. Both statistical and geological evaluations indicate that LapSVM outperforms other three nonlinear SVM methods tested. It has been demonstrated that LapSVM can provide an accurate and effective means for the identification of fracture zones in tight reservoirs.
机译:使用常规日志的断裂识别是识别储层中骨折区域的成本有效的方法。然而,存在具有挑战性的问题,包括复杂的井数响应和可从核心或图像日志获得的少量标记数据,使得难以构建具有良好概率的预测模型。为了解决这些问题,在这项工作中介绍了一个半监督的学习方法称为拉普拉斯支持向量机(LAPSVM),这是监督内核方法和无监督聚类方法的组合。 Lapsvm继承了SVM的处理非线性问题的能力,通过在丰富的井日志信息的帮助下使用无监督的聚类技术克服了有限标记数据的问题。为了检查Lapsvm在紧密水库中裂缝识别的有效性,使用了中国鄂尔多斯盆地紧密砂岩的数据集。统计和地质评估都表明Lapsvm优于测试的其他三种非线性SVM方法。已经证明,LAPSVM可以提供准确且有效的手段,用于识别紧密水库中的骨折区域。

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