3.8 Proceedings Paper

Online Feature Selection Method Based on Change Rate for Process Monitoring

Journal

2022 41ST CHINESE CONTROL CONFERENCE (CCC)
Volume -, Issue -, Pages 3984-3989

Publisher

IEEE

Keywords

Process monitoring; features selection; change-rate; principal component analysis

Funding

  1. Fundamental Research Funds for the Central Universities [buctrc202201]

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This study proposes a change-rate principal component analysis (CR-PCA) method for selecting features that are most conducive to process monitoring. The method reduces information loss by considering the fluctuation of score vectors and takes into account historical fault information. A sliding window algorithm is introduced to adaptively change the window width, which helps in self-adjusting the update speed of features and reducing the influence of random errors.
In most existing process monitoring methods, the features are selected according to only the amount of information they carry, but ignoring the information that is beneficial to monitoring carried by measurement variables with small variance, and hence some key information is lost and the features cannot be updated online. A change-rate principal component analysis (CR-PCA) is proposed to select the features that are most conducive to process monitoring. The data that change along the direction of the loading vector is reflected in the score matrix. The proposed method reduces information loss by considering the fluctuation of score vectors and takes into account historical fault information. A sliding window algorithm that adaptively changes the window width is introduced, which can realize the self-adjustment of features update speed and reduce the influence of random errors to a certain extent. The CR-PCA method includes the establishment of an offline model and the selection of an online feature. Finally, this research is applied to Tennessee Eastman (TE) process, which validates that with the update of features, the fault detection rate (FDR) has improved.

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