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Comparative Study of PCA Approaches in Process Monitoring and Fault Detection

机译:PCA在过程监测和故障检测中PCA方法的比较研究

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This paper suggests an alternative scaling approach to PCA analysis for monitoring industrial processes. It also compares performance of the proposed moving PCA (MPCA) and three other PCA-based approaches including conventional PCA, adaptive PCA and exponentially weighted PCA, on a well known simulation model of an industrial plant and on data obtained from a petrochemical plant over a period of X months. The result showed that MPCA, which uses the mean and standard deviation of a moving window for scaling purpose, appeared to outperform the other three methods in monitoring processes with/without changes in operating conditions/set-points. While a conventional PCA seemed to work satisfactorily with the Tennessee Eastman Process (TEP) simulation, its performance was much poorer on the industrial data set. This comparison demonstrates that a degree of adaptation in scaling parameters is necessary for PCA-based approaches, especially for processes with multi operating modes.
机译:本文表明了监测工业流程的PCA分析的另一种扩展方法。它还比较了所提出的移动PCA(MPCA)和三种基于PCA的方法的性能,包括传统PCA,自适应PCA和指数加权PCA,在工业设备的众所周知的仿真模型上以及从石油化工厂获得的数据X个月的时期。结果表明,MPCA使用移动窗口的用于缩放目的的平均值和标准偏差,似乎在监控过程中的其他三种方法似乎优于运行条件/设定点的改变。虽然传统的PCA似乎与田纳西州伊斯特曼流程(TEP)模拟令人满意的工作,但其性能在工业数据集上较差。此比较表明,基于PCA的方法是必要的,特别是对于具有多操作模式的过程是必要的。

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