Article ID Journal Published Year Pages File Type
699729 Control Engineering Practice 2014 12 Pages PDF
Abstract

•A novel filtering KICA–PCA (FKICA–PCA) is proposed.•Gaussian and non-Gaussian features are made to be comparable by using FKICA-PCA.•A novel contribution analysis scheme is developed for FKICA-PCA to diagnose faults.•The feasibility and effectiveness of FKICA–PCA have been validated on the TE process.

In this paper, a novel approach for processes monitoring, termed as filtering kernel independent component analysis–principal component analysis (FKICA–PCA), is developed. In FKICA–PCA, first, a method to calculate the variance of independent component is proposed, which is significant to make Gaussian features and non-Gaussian features comparable and to select dominant components legitimately; second, Genetic Algorithm is used to determine the kernel parameter through minimizing false alarm rate and maximizing detection rate; furthermore, exponentially weighted moving average (EWMA) scheme is used to filter the monitoring indices of KICA–PCA to improve monitoring performance. In addition, a novel contribution analysis scheme is developed for FKICA–PCA to diagnosis faults. The feasibility and effectiveness of the proposed method are validated on the Tennessee Eastman (TE) process.

Related Topics
Physical Sciences and Engineering Engineering Aerospace Engineering
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