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Lithologic Identification for Imbalanced Logging Data Based on AdaC2-SVM in Drilling Process

机译:基于AdaC2-SVM的钻井过程不平衡测井数据岩性识别

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摘要

To identify some special formation lithology with imbalanced logging data, a framework of Multi-layer lithology identification method is proposed. In this framewoke, some special lithology is divided into one class in the first layer, and each lithology is separated in the second layer. A novel algorithm of AdaCost2-support vector machine (AdaC2-SVM) is put forward using logging data of actual well located in Karamay for training, and the support vector machine-recursive feature elimination (SVM-RFE) is adopted to select attribute, and logging data from another well nearby is used for testing. Experiment result shows the G-mean and accuracy of our method is up to 95.3% and 94.4%, which has better performance than random forest(RF) algorithm, particle swarm optimization-support vector machine (PSO-SVM) algorithm and improved PSO-SVM(IPSO-SVM) algorithm. In the future, the proposed method have a good prospect and give a valuable result for geology research.
机译:为了识别测井数据不均衡的某些特殊地层岩性,提出了一种多层岩性识别方法的框架。在这个框架中,一些特殊的岩性在第一层中被划分为一类,每种岩性在第二层中被分离。利用克拉玛依地区实际井的测井数据,提出了一种新的AdaCost2-支持向量机算法(AdaC2-SVM)进行训练,并采用支持向量机递归特征消除(SVM-RFE)来选择属性,从附近另一口井的测井数据进行测试。实验结果表明,该方法的G均值和准确度分别达到95.3 \%和94.4 \%,性能优于随机森林算法,粒子群优化支持向量机算法和改进算法。 PSO-SVM(IPSO-SVM)算法。今后,该方法具有良好的应用前景,可为地质研究提供有价值的成果。

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