Process monitoring based on distributed principal component analysis with angle-relevant variable selection

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Abstract

Multivariate statistics process monitoring can achieve dimensionality reduction and latent feature extraction on process variables. However, process variables without beneficial information may affect the monitoring performance. This article proposes a distributed principal component analysis method based on the angle-relevant variable selection for plant-wide process monitoring. The directions of principal components are utilized to construct the sub-blocks, where the variables in each sub-block are determined by angle. After establishing the principal component analysis model in each sub-block, the monitoring results are fused by Bayesian inference. The simulation results show that the proposed method can select the responsible variables effectively and enhance the monitoring performance.

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APA

Xu, C., & Liu, F. (2019). Process monitoring based on distributed principal component analysis with angle-relevant variable selection. International Journal of Distributed Sensor Networks, 15(6). https://doi.org/10.1177/1550147719857583

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