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A Sparse PCA for Nonlinear Fault Diagnosis and Robust Feature Discovery of Industrial Processes

机译:用于工业过程非线性故障诊断和鲁棒特征发现的稀疏PCA

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Pearson's correlation measure is only able to model linear dependence between random variables. Hence, conventional principal component analysis (PCA) based on Pearson's correlation measure is not suitable for application to modern industrial processes where process variables are often nonlinearly related. To address this problem, a nonparametric PCA model is proposed based on nonlinear correlation measures, including Spearman's and Kendall tau's rank correlation. These two correlation measures are also less sensitive to outliers comparing to Pearson's correlation, making the proposed PCA a robust feature extraction technique. To reveal meaningful patterns from process data, a generalized iterative deflation method is applied to the robust correlation matrix of the process data to sequentially extract a set of leading sparse pseudoeigenvectors. For online fault diagnosis, the T-2 and SPE statistics are computed and analyzed with respect to the subspace spanned by the extracted pseudoeigenvectors. The proposed method is applied to two industrial case studies. Its process monitoring performance is demonstrated to be superior to that of the conventional PCA and is comparable to those of Kernel PCA and kernel independent component analysis at a lower computational cost. The proposed PCA is also more robust in sparse feature extraction from contaminated process data. VC 2016 American Institute of Chemical Engineers
机译:Pearson的相关性度量只能对随机变量之间的线性相关性进行建模。因此,基于Pearson相关度量的常规主成分分析(PCA)不适合应用于过程变量通常非线性相关的现代工业过程。为了解决这个问题,提出了一种基于非线性相关测度的非参数PCA模型,包括Spearman和Kendall tau的秩相关。与Pearson的相关性相比,这两种相关性测量值对异常值的敏感性也较低,从而使所提出的PCA成为一种鲁棒的特征提取技术。为了从过程数据中揭示有意义的模式,将广义迭代放气方法应用于过程数据的鲁棒相关矩阵,以依次提取一组前导稀疏伪特征向量。对于在线故障诊断,针对提取的伪特征向量跨越的子空间,计算和分析T-2和SPE统计信息。所提出的方法被应用于两个工业案例研究。事实证明,它的过程监视性能优于常规PCA,并且可以较低的计算成本与内核PCA和独立于内核的组件分析相媲美。所提出的PCA在从受污染的过程数据中进行稀疏特征提取方面也更加强大。 VC 2016美国化学工程师学会

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