Dynamic Nonlinear Partial Least Squares Modeling Using Gaussian Process Regression

Hongbin Liu, Chong Yang, Bengt Carlsson, S. Joe Qin*, Changkyoo Yoo*

*Corresponding author for this work

Research output: Journal Publications and ReviewsRGC 21 - Publication in refereed journalpeer-review

56 Citations (Scopus)

Abstract

A dynamic Gaussian process regression based partial least-squares (D-GPR-PLS) model is proposed to improve estimation ability and compared to the conventional nonlinear PLS. Considering the strong ability of GPR in nonlinear process modeling, this method is used to build a nonlinear regression between each pair of latent variables in the partial least-squares. In addition, augmented matrices are embedded into the D-GPR-PLS model to obtain better prediction accuracy in nonlinear dynamic processes. To evaluate the modeling performance of the proposed method, two simulated cases and a real industrial process based on wastewater treatment processes (WWTPs) are considered. The simulated cases use data from two high fidelity simulators: benchmark simulation model no. 1 and its long-term version. The second study uses data from a real biological wastewater treatment process. The results show the superiority of D-GPR-PLS in modeling performance for both data sets. More specifically, in terms of the prediction for effluent chemical oxygen demand of the real WWTP data, the value of the root-mean-square error is decreased by 31%, 16%, and 52%, respectively, in comparison with that for linear PLS, quadratic PLS, and least-squares support vector machine based PLS.
Original languageEnglish
Pages (from-to)16676-16686
JournalIndustrial & Engineering Chemistry Research
Volume58
Issue number36
Online published7 Aug 2019
DOIs
Publication statusPublished - 11 Sept 2019
Externally publishedYes

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