Back to Search Start Over

Two-phase approaches to optimal model-based design of experiments: how many experiments and which ones?

Authors :
Vanaret, Charlie
Seufert, Philipp
Schwientek, Jan
Karpov, Gleb
Ryzhakov, Gleb
Oseledets, Ivan
Asprion, Norbert
Bortz, Michael
Source :
Computers & Chemical Engineering, Volume 146, March 2021, 107218
Publication Year :
2021

Abstract

Model-based experimental design is attracting increasing attention in chemical process engineering. Typically, an iterative procedure is pursued: an approximate model is devised, prescribed experiments are then performed and the resulting data is exploited to refine the model. To help to reduce the cost of trial-and-error approaches, strategies for model-based design of experiments suggest experimental points where the expected gain in information for the model is the largest. It requires the resolution of a large nonlinear, generally nonconvex, optimization problem, whose solution may greatly depend on the starting point. We present two discretization strategies that can assist the experimenter in setting the number of relevant experiments and performing an optimal selection, and we compare them against two pattern-based strategies that are independent of the problem. The validity of the approaches is demonstrated on an academic example and two test problems from chemical engineering including a vapor liquid equilibrium and reaction kinetics.

Details

Database :
arXiv
Journal :
Computers & Chemical Engineering, Volume 146, March 2021, 107218
Publication Type :
Report
Accession number :
edsarx.2101.09219
Document Type :
Working Paper
Full Text :
https://doi.org/10.1016/j.compchemeng.2020.107218