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RANK PREDICTIONS OF INTERNAL CORROSION OF GATHERING PIPELINES IN A NATURAL GAS FIELD WITH A MULTI-KERNEL SVM METHOD

机译:用多核SVM方法排除在天然气场中采集管道内部腐蚀的预测

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Internal CO_2/H_2S corrosion of gathering pipelines is a serious problem in natural gas plant. It is important for field engineers to assess the corrosion degree and control corrosion risk. A multi-kernel support-vector-machine(SVM) method is presented to rank internal corrosion of gathering pipelines according to the NACE RP-0775-91 standard. By considering the nonlinear indivisibility between data, we combined three kinds of kernels (linear kernel, polynomial kernel, and Gaussian kernel) into a multi-kernel SVM to rank the internal CO_2/H_2S corrosion of gathering pipelines. The method was applied to a natural gas field in northwest China. Corrosion data were collected and analyzed. The prediction accuracy of the multi-kernel SVM method for ranking CO_2/H_2S corrosion was 66%, which is higher than the results of the single-kernel SVM methods (linear kernel, polynomial kernel and Gaussian kernel), whose prediction accuracies are 50%, 48% and 54% respectively. These findings could help field engineers rank corrosion and reduce the corrosion risk.
机译:收集管道的内部CO_2 / H_2S腐蚀是天然气厂的严重问题。对于现场工程师来说,评估腐蚀程度并控制腐蚀风险非常重要。提出了一种多核支持向量机(SVM)方法,以根据NACE RP-0775-91标准排列收集管道的内部腐蚀。通过考虑数据之间的非线性不可等性,我们将三种内核(线性内核,多项式内核和高斯内核)组合到多核SVM中,以对收集管道的内部CO_2 / H_2S腐蚀进行排序。该方法应用于中国西北部的天然气场。收集并分析腐蚀数据。用于排序CO_2 / H_2S腐蚀的多核SVM方法的预测精度为66%,其高于单核SVM方法的结果(线性核,多项式内核和高斯内核),其预测精度为50%分别为48%和54%。这些调查结果可以帮助现场工程师排名腐蚀并降低腐蚀风险。

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