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Application of dimensionality reduction technique to improve geophysical log data classification performance in crystalline rocks

机译:降维技术在提高岩石岩石地球物理测井数据分类性能中的应用

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摘要

In this study, dimensionality reduction technique to improve geophysical log data classification performance in crystalline rocks is presented. In fact, in complex geological situations such as the study area in context, more complex nonlinear functional behaviors exist for well log classification purpose; thus posing challenges in accurate identification of log curves for this purpose. Dimensionality reduction (DR) using Principal Component Analysis (PCA) and Linear Discriminant Analysis (LDA) were used here to reduce the dimensionality of the original log set of Chinese Continental Scientific Drilling Main Hole to a convenient size, and then feed the reduced-log set into the classifiers. Three classifiers were addressed, namely, Support vector Machines, Feed forward Back Propagation and Radial Basis Function Neural Networks in the classification of metamorphic rocks. The strategy of combining dimensionality reduction methods and classifiers was demonstrated and discussed. The results showed that the reduced log sets found from DR can separate the metamorphic rocks types better or almost as well as the original log set. Therefore LDA and PCA can be suitable to be performed before geophysical well log data classification in the context of crystalline rocks. (C) 2015 Elsevier By. All rights reserved.
机译:在这项研究中,提出了降维技术以提高晶体岩石中地球物理测井数据分类性能。实际上,在复杂的地质情况下,例如在研究区域内,出于测井分类的目的,存在更复杂的非线性功能行为。为此,在准确识别对数曲线方面提出了挑战。此处使用主成分分析(PCA)和线性判别分析(LDA)进行降维(DR),以将中国大陆科学钻探主孔的原始测井集的维数减小到合适的大小,然后将其减少设置为分类器。提出了三个分类器,分别是变质岩分类中的支持向量机,前馈传播和径向基函数神经网络。提出并讨论了降维方法和分类器相结合的策略。结果表明,从DR中发现的减少的测井集可以更好地或几乎与原始测井集一样区分变质岩类型。因此,LDA和PCA可以适合在结晶岩环境下进行地球物理测井数据分类之前进行。 (C)2015 Elsevier By。版权所有。

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