Litcius/Paper detail

A Deep Residual PLS for Data-Driven Quality Prediction Modeling in Industrial Process

Xiaofeng Yuan, Weiwei Xu, Yalin Wang, Chunhua Yang, Weihua Gui

2024IEEE/CAA Journal of Automatica Sinica74 citationsDOI

Abstract

Partial least squares (PLS) model is the most typical data-driven method for quality-related industrial tasks like soft sensor. However, only linear relations are captured between the input and output data in the PLS. It is difficult to obtain the remaining nonlinear information in the residual subspaces, which may deteriorate the prediction performance in complex industrial processes. To fully utilize data information in PLS residual subspaces, a deep residual PLS (DRPLS) framework is proposed for quality prediction in this paper. Inspired by deep learning, DRPLS is designed by stacking a number of PLSs successively, in which the input residuals of the previous PLS are used as the layer connection. To enhance representation, nonlinear function is applied to the input residuals before using them for stacking highlevel PLS. For each PLS, the output parts are just the output residuals from its previous PLS. Finally, the output prediction is obtained by adding the results of each PLS. The effectiveness of the proposed DRPLS is validated on an industrial hydrocracking process.

Topics & Concepts

ResidualQuality (philosophy)Computer scienceProcess (computing)Data miningArtificial intelligenceAlgorithmPhilosophyEpistemologyOperating systemFault Detection and Control SystemsSpectroscopy and Chemometric AnalysesIndustrial Technology and Control Systems