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首页> 外文期刊>Journal of Process Control >Fault detection and isolation in transient states using principal component analysis
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Fault detection and isolation in transient states using principal component analysis

机译:使用主成分分析的瞬态故障检测和隔离

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摘要

This paper proposes the use of principal component analysis (PCA) for process monitoring and fault detection and isolation in processes with several operation modes and long transient states and start-ups. The principal aspects of the PCA approach and the necessary transformations for dealing with this type of processes are presented. In this paper a classical PCA model is used for each steady state of the process and a modification of a batch PCA approach is applied to the transient states of the continuous process. So, in this last case, the PCA model is performed over a three way matrix arranged with the values of the measured variables of several past transitions with a nominal behaviour. This approach presents some problems, such as the unfolding, alignment and imputation. The methods proposed to deal with these problems are explained in detail and compared in order to design a fault detection and isolation method. Two examples are considered to perform the tasks explained. In both cases good results are obtained.
机译:本文提出将主成分分析(PCA)用于具有多个操作模式以及较长瞬态和启动过程的过程监控以及故障检测和隔离。介绍了PCA方法的主要方面以及处理此类过程的必要转换。在本文中,经典的PCA模型用于过程的每个稳态,并且批PCA方法的修改应用于连续过程的瞬态。因此,在这最后一种情况下,PCA模型是在三通矩阵上执行的,该三通矩阵排列有几个过去过渡的测量变量的值,并具有正常的行为。这种方法存在一些问题,例如展开,对齐和插补。为了设计故障检测和隔离方法,将详细解释和比较为解决这些问题而提出的方法。考虑两个例子来执行所说明的任务。在这两种情况下均获得了良好的结果。

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