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A Nonlinear Quality-relevant Process Monitoring Method with Kernel Input-output Canonical Variate Analysis

机译:基于核输入输出规范变量分析的与质量相关的非线性过程监控方法

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Traditional process monitoring methods based on kernel canonical variate analysis do not extract variances. They cannot judge whether a process fault that is detected affects product quality. A nonlinear quality-relevant process monitoring method based on kernel input-output canonical variate analysis (KIOCVA) is proposed. Firstly, Process variables and quality variables are mapped into higher-dimensional linear feature spaces via unknown nonlinear mappings respectively. The higher-dimensional linear feature spaces are projected to three subspaces, an input-output correlated subspace that captures correlations between process data and quality data, an uncorrelated input subspace and an uncorrelated output subspace. To monitoring the variances of the uncorrelated input subspace and the uncorrelated output subspace, principal component analysis is performed. Correlations and variances in the higher-dimensional linear feature spaces are extracted by means of nonlinear kernel functions. The proposed KIOCVA method can judge the process fault that is detected affects product quality or not. The effectiveness of the proposed method is demonstrated by case studies of Tennessee Eastman process.
机译:基于核规范变异分析的传统过程监控方法无法提取差异。他们无法判断检测到的过程故障是否影响产品质量。提出了一种基于核输入-输出典型变量分析(KIOCVA)的非线性质量相关过程监控方法。首先,过程变量和质量变量分别通过未知的非线性映射映射到高维线性特征空间。高维线性特征空间被投影到三个子空间,一个输入-输出相关子空间,它捕获过程数据和质量数据之间的相关性,一个不相关的输入子空间和一个不相关的输出子空间。为了监视不相关的输入子空间和不相关的输出子空间的方差,执行主成分分析。利用非线性核函数提取高维线性特征空间中的相关性和方差。所提出的KIOCVA方法可以判断检测到的过程故障是否影响产品质量。田纳西伊士曼过程的案例研究证明了该方法的有效性。

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