Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
699729 | Control Engineering Practice | 2014 | 12 Pages |
•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.