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首页> 外文期刊>IEEE Transactions on Control Systems Technology >Quality-Driven Principal Component Analysis Combined With Kernel Least Squares for Multivariate Statistical Process Monitoring
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Quality-Driven Principal Component Analysis Combined With Kernel Least Squares for Multivariate Statistical Process Monitoring

机译:质量驱动的主成分分析与核最小二乘相结合的多元统计过程监控

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摘要

This brief discusses a novel quality-driven principal component analysis method for statistical process monitoring. Through a nonlinear mapping, the original measurement space is mapped to another high-dimensional space, and then the relevant information between the high-dimensional space and the process quality can be obtained with the help of the kernel least squares. Based on this, the high-dimensional space will be further projected onto two mutually orthogonal high-dimensional subspaces representing quality-related part and quality-unrelated part, respectively. The traditional method is difficult to achieve this type of projection because the mapping from the original space to a high-dimensional space is hard to calculate explicitly. The main contribution is to derive the projection matrix using the knowledge of matrix theory. For each subspace, some meaningful statistical indicators are constructed to give more targeted fault information. Case studies on a numerical instance and the Tennessee Eastman process indicate that the proposed approach outperforms some of the current research results. The reliability of quality monitoring is improved through a proper space decomposition, and the fault detection rate turns to be higher due to reasonable monitoring indicators.
机译:本文简要讨论了一种用于统计过程监控的新颖的质量驱动主成分分析方法。通过非线性映射,将原始测量空间映射到另一个高维空间,然后可以借助核最小二乘法获得高维空间与过程质量之间的相关信息。基于此,高维空间将进一步投影到两个相互正交的高维子空间上,分别代表质量相关部分和质量无关部分。传统方法很难实现这种类型的投影,因为从原始空间到高维空间的映射很难明确计算。主要贡献是利用矩阵理论的知识来推导投影矩阵。对于每个子空间,构造一些有意义的统计指标以提供更具针对性的故障信息。对数值实例和田纳西伊士曼过程进行的案例研究表明,所提出的方法优于某些当前的研究结果。通过适当的空间分解可以提高质量监控的可靠性,并且由于监控指标的合理性,故障检测率也更高。

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