posted on 2016-06-14, 11:09authored byOlumayowa T. Kajero, Rex B. Thorpe, Tao Chen, Bo Wang, Yuan Yao
Computational fluid dynamics (CFD) is a simulation technique widely used in chemical and process engineering applications. However, computation has become a bottleneck when calibration of CFD models with experimental data (also known as model parameter estimation) is needed. In this research, the kriging meta-modelling approach (also termed Gaussian process) was coupled with expected improvement (EI) to address this challenge. A new EI measure was developed for the sum of squared errors (SSE) which conforms to a generalised chi-square distribution and hence existing normal distribution-based EI measures are not applicable. The new EI measure is to suggest the CFD model parameter to simulate with, hence minimising SSE and improving match between simulation and experiments. The usefulness of the developed method was demonstrated through a case study of a single-phase flow in both a straight-type and a convergent-divergent-type annular jet pump, where a single model parameter was calibrated with experimental data.
History
Citation
AIChE Journal, 2016, 62 (12), pp. 4308–4320
Author affiliation
/Organisation/COLLEGE OF SCIENCE AND ENGINEERING/Department of Mathematics
Version
AM (Accepted Manuscript)
Published in
AIChE Journal
Publisher
Wiley on behalf of American Institute of Chemical Engineers (AIChE)
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