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Fault diagnosis in industrial processes using principal component analysis and hidden Markov model

机译:基于主成分分析和隐马尔可夫模型的工业过程故障诊断

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An approach combining hidden Markov model (HMM) with principal component analysis (PCA) for on-line fault diagnosis is introduced. As a tool for feature extraction, PCA is used to reduce the large number of correlated variables to a small number of principal components in an optimal way. HMM is applied to classify various process operating conditions, which is based on pattern recognition principles and consists of two phases, training and testing. The moving window for tracking dynamic data is used. The impact of the window length is studied by simulation. The sampling rate used in training data and in test data is different for correct and quick fault diagnosis. Case studies from the Tennessee Eastman plant illustrate that the proposed method is effective.
机译:介绍了一种结合隐马尔可夫模型(HMM)和主成分分析(PCA)的在线故障诊断方法。作为特征提取的工具,PCA用于以最佳方式将大量相关变量减少为少量主成分。 HMM用于基于模式识别原理对各种过程操作条件进行分类,包括两个阶段,即培训和测试。使用了用于跟踪动态数据的移动窗口。通过仿真研究了窗口长度的影响。训练数据和测试数据中使用的采样率不同,它们可以正确而快速地进行故障诊断。田纳西州伊士曼工厂的案例研究表明,该方法是有效的。

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