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Moving window kernel PCA for adaptive monitoring of nonlinear processes

机译:移动窗口内核PCA用于非线性过程的自适应监控

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This paper discusses the monitoring of complex nonlinear and time-varying processes. Kernel principal component analysis (KPCA) has gained significant attention as a monitoring tool for nonlinear systems in recent years but relies on a fixed model that cannot be employed for time-varying systems. The contribution of this article is the development of a numerically efficient and memory saving moving window KPCA (MWKPCA) monitoring approach. The proposed technique incorporates an up- and downdating procedure to adapt (i) the data mean and covariance matrix in the feature space and (ii) approximates the eigenvalues and eigenvectors of the Gram matrix. The article shows that the proposed MWKPCA algorithm has a computation complexity of O(N~(2)), whilst batch techniques, e.g. the Lanczos method, are of O(N~(3)). Including the adaptation of the number of retained components and an l-step ahead application of the MWKPCA monitoring model, the paper finally demonstrates the utility of the proposed technique using a simulated nonlinear time-varying system and recorded data from an industrial distillation column.
机译:本文讨论了对复杂的非线性和时变过程的监视。近年来,内核主成分分析(KPCA)作为非线性系统的监视工具而受到了广泛关注,但它依赖于无法用于时变系统的固定模型。本文的贡献是开发了一种数字高效且节省内存的移动窗口KPCA(MWKPCA)监视方法。提出的技术结合了更新和降级过程,以适应(i)特征空间中的数据均值和协方差矩阵,以及(ii)近似Gram矩阵的特征值和特征向量。文章表明,提出的MWKPCA算法的计算复杂度为O(N〜(2)),而批处理技术(例如Lanczos方法是O(N〜(3))。包括保留组分数量的适应性和MWKPCA监测模型的逐步应用,论文最终展示了所提出技术的实用性,该方法使用了模拟的非线性时变系统并记录了来自工业蒸馏塔的数据。

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