TY - JOUR
T1 - Response surface methodology with prediction uncertainty
T2 - A multi-objective optimisation approach
AU - Chi, Guoyi
AU - Hu, Shuangquan
AU - Yang, Yanhui
AU - Chen, Tao
PY - 2012/9
Y1 - 2012/9
N2 - In the field of response surface methodology (RSM), the prediction uncertainty of the empirical model needs to be considered for effective process optimisation. Current methods combine the prediction mean and uncertainty through certain weighting strategies, either explicitly or implicitly, to form a single objective function for optimisation. This paper proposes to address this problem under the multi-objective optimisation framework. Overall, the method iterates through initial experimental design, empirical modelling and model-based optimisation to allocate promising experiments for the next iteration. Specifically, the Gaussian process regression is adopted as the empirical model due to its demonstrated prediction accuracy and reliable quantification of prediction uncertainty in the literature. The non-dominated sorting genetic algorithm II (NSGA-II) is used to search for Pareto points that are further clustered to give experimental points to be conducted in the next iteration. The application study, on the optimisation of a catalytic epoxidation process, demonstrates that the proposed method is a powerful tool to aid the development of chemical and potentially other processes.
AB - In the field of response surface methodology (RSM), the prediction uncertainty of the empirical model needs to be considered for effective process optimisation. Current methods combine the prediction mean and uncertainty through certain weighting strategies, either explicitly or implicitly, to form a single objective function for optimisation. This paper proposes to address this problem under the multi-objective optimisation framework. Overall, the method iterates through initial experimental design, empirical modelling and model-based optimisation to allocate promising experiments for the next iteration. Specifically, the Gaussian process regression is adopted as the empirical model due to its demonstrated prediction accuracy and reliable quantification of prediction uncertainty in the literature. The non-dominated sorting genetic algorithm II (NSGA-II) is used to search for Pareto points that are further clustered to give experimental points to be conducted in the next iteration. The application study, on the optimisation of a catalytic epoxidation process, demonstrates that the proposed method is a powerful tool to aid the development of chemical and potentially other processes.
KW - Design of experiments
KW - Gaussian process regression
KW - Heterogeneous catalysis
KW - Kriging
KW - Model uncertainty
KW - Response surface methodology
UR - http://www.scopus.com/inward/record.url?scp=84865537223&partnerID=8YFLogxK
U2 - 10.1016/j.cherd.2011.12.012
DO - 10.1016/j.cherd.2011.12.012
M3 - 文章
AN - SCOPUS:84865537223
SN - 0263-8762
VL - 90
SP - 1235
EP - 1244
JO - Chemical Engineering Research and Design
JF - Chemical Engineering Research and Design
IS - 9
ER -