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Combination Method of Principal Component Analysis and Support Vector Machine for On-line Process Monitoring and Fault Diagnosis

机译:主成分分析与支持向量机相结合的在线过程监控与故障诊断方法

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摘要

On-line monitoring and fault diagnosis of chemical process is extremely important for operation safety and product quality. Principal component analysis (PCA) has been widely used in multivariate statistical process monitoring for its ability to reduce processes dimensions. PCA and other statistical techniques, however, have difficulties in differentiating faults correctly in complex chemical process. Support vector machine (SVM) is a novel approach based on statistical learning theory, which has emerged for feature identification and classification. In this paper, an integrated method is applied for process monitoring and fault diagnosis, which combines PCA for fault feature extraction and multiple SVMs for identification of different fault sources. This approach is verified and illustrated on the Tennessee Eastman benchmark process as a case study. Results show that the proposed PCA-SVMs method has good diagnosis capability and overall diagnosis correctness rate.
机译:化学过程的在线监测和故障诊断对于操作安全和产品质量极为重要。主成分分析(PCA)因其具有缩小流程规模的能力而被广泛用于多元统计流程监控中。然而,PCA和其他统计技术在正确区分复杂化学过程中的故障方面存在困难。支持向量机(SVM)是一种基于统计学习理论的新颖方法,已经出现用于特征识别和分类。本文将一种集成的方法应用于过程监控和故障诊断,该方法将PCA用于故障特征提取,并使用多个SVM来识别不同的故障源。该方法已在田纳西伊士曼基准流程中得到验证和说明,并作为案例研究。结果表明,所提出的PCA-SVMs方法具有良好的诊断能力和总体诊断正确率。

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