2023
DOI: 10.1002/cjce.25085
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Fault detection and diagnosis in a non‐Gaussian process with modified kernel independent component regression

Meizhi Liu,
Xiangyu Kong,
Jiayu Luo
et al.

Abstract: Quality‐related fault detection and diagnosis are crucial in the data‐driven process monitoring field. Most existing methods are based on principal component analysis (PCA) or partial least squares (PLS), which will miss high‐order statistical information when the industrial process does not satisfy a Gaussian distribution. Meanwhile, the traditional contribution plot is difficult to directly apply to nonlinear processes in some cases due to its limitation of convergence. As such, a modified kernel independent… Show more

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Cited by 3 publications
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“…The application of ICA in process monitoring is relatively recent, with the initial works proposed in the early 2000s [243][244][245][246][247][248]. Subsequent advancements have been proposed in the recent literature [249][250][251][252][253][254][255][256][257][258][259]. Notably, Zhang et al [260] proposed an interesting method that automatically selects between the exclusive or mixed application of PCA and ICA techniques, with or without using kernel functions to incorporate nonlinearity.…”
mentioning
confidence: 99%
“…The application of ICA in process monitoring is relatively recent, with the initial works proposed in the early 2000s [243][244][245][246][247][248]. Subsequent advancements have been proposed in the recent literature [249][250][251][252][253][254][255][256][257][258][259]. Notably, Zhang et al [260] proposed an interesting method that automatically selects between the exclusive or mixed application of PCA and ICA techniques, with or without using kernel functions to incorporate nonlinearity.…”
mentioning
confidence: 99%