Bayesian migration of Gaussian process regression for rapid process modeling and optimization

Wenjin Yan, Shuangquan Hu, Yanhui Yang, Furong Gao, Tao Chen

Research output: Contribution to journalArticlepeer-review

47 Scopus citations

Abstract

Data-based empirical models, though widely used in process optimization, are restricted to a specific process being modeled. Model migration has been proved to be an effective technique to adapt a base model from a old process to a new but similar process. This paper proposes to apply the flexible Gaussian process regression (GPR) for empirical modeling, and develops a Bayesian method for migrating the GPR model. The migration is conducted by a functional scale-bias correction of the base model, as opposed to the restrictive parametric scale-bias approach. Furthermore, an iterative approach that jointly accomplishes model migration and process optimization is presented. This is in contrast to the conventional " two-step" method whereby an accurate model is developed prior to model-based optimization. A rigorous statistical measure, the expected improvement, is adopted for optimization in the presence of prediction uncertainty. The proposed methodology has been applied to the optimization of a simulated chemical process, and a real catalytic reaction for the epoxidation of trans-stilbene.

Original languageEnglish
Pages (from-to)1095-1103
Number of pages9
JournalChemical Engineering Journal
Volume166
Issue number3
DOIs
StatePublished - 1 Feb 2011
Externally publishedYes

Keywords

  • Design of experiments
  • Gaussian process regression
  • Heterogeneous catalysis
  • Model adaptation
  • Model uncertainty
  • Response surface methodology

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