基于支持向量机的化工厂故障分类器性能评价

Xin Zhang, Jinqiu Hu, Laibin Zhang
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引用次数: 1

摘要

支持向量机(SVM)在化工厂故障诊断中发挥着重要作用,采用智能优化算法对支持向量机参数进行优化,包括不同核函数的惩罚参数C和参数g,以提高其故障分类性能。为了评估基于不同优化算法和不同核函数的SVM故障分类能力,综合考虑SVM故障分类器的总体准确率、虚警概率、漏检概率和鲁棒性,提出了基于正确率、召回率和精密度的SVM故障分类能力评价指标体系。采用田纳西伊士曼(Tennessee Eastman, TE)过程基准作为仿真平台,评估支持向量机分类故障的能力。结果表明,基于径向基函数(RBF)的支持向量机对优化算法最敏感,而基于网格搜索方法(gsm -多项式-SVM)优化的多项式核支持向量机鲁棒性最强。提出的评价指标体系有利于选择最优的故障分类器,并可作为今后比较的框架。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Performance assessment of fault classifier of chemical plant based on support vector machine
Support vector machine (SVM) plays an important part in fault diagnosis of chemical plant, and intelligent optimization algorithms are used to optimize the SVM parameters, including the penalty parameter C and parameter g of different kernel function, to improve performance of its faults classification. To assess SVM faults classification capability based on diverse optimization algorithms and various kernel functions, an evaluation index system that is based upon accuracy, recall and precision was proposed, which comprehensively considers overall accuracy, false alarm probability, missing detection probability and robustness of SVM fault classifiers. Tennessee Eastman (TE) process benchmark was used as simulation platform to evaluate SVM classifying faults ability. The results showed that SVM with radical basic function (RBF) is the most sensitive to the optimization algorithm and that SVM with polynomial kernel optimized by Grid Search Method (GSM-Polynomial-SVM) provides the highest robustness. The suggested evaluation index system is conducive to selecting optimum faults classifier and could be used as a framework for future comparison.
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