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A one-class classification framework using SVDD: Application to an imbalanced geological dataset

机译:使用SVDD的一类分类框架:应用于不平衡的地质数据集

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Evaluation of hydrocarbon reservoir requires classification of petrophysical properties from available dataset. However, characterization of reservoir attributes is difficult due to the nonlinear and heterogeneous nature of the subsurface physical properties. In this context, present study proposes a generalized one class classification framework based on Support Vector Data Description (SVDD) to classify a reservoir characteristic-water saturation into two classes (Class high and Class low) from four logs namely gamma ray, neutron porosity, bulk density, and P-sonic using an imbalanced dataset. A comparison is carried out among proposed framework and different supervised classification algorithms in terms of g-metric means and execution time. Experimental results show that proposed framework has outperformed other classifiers in terms of these performance evaluators. It is envisaged that the classification analysis performed in this study will be useful in further reservoir modeling.
机译:评估油气藏需要从可用数据集中对岩石物性进行分类。但是,由于地下物理属性的非线性和非均质性,很难刻画储层属性。在这种情况下,本研究提出了一种基于支持向量数据描述(SVDD)的广义一类分类框架,该模型将来自四个伽马射线,中子孔隙度,体积密度,以及使用不平衡数据集的P-sonic。在建议的框架和不同的监督分类算法之间,在g度量均值和执行时间方面进行了比较。实验结果表明,在这些性能评估器方面,所提出的框架优于其他分类器。可以设想,在这项研究中进行的分类分析将在进一步的储层建模中有用。

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