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Modifier adaptation meets bayesian optimization and derivative-free optimization

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2009.08819v1.pdfWorking paper14.46 MBAdobe PDFView/Open
Title: Modifier adaptation meets bayesian optimization and derivative-free optimization
Authors: Rio-Chanona, EAD
Petsagkourakis, P
Bradford, E
Graciano, JEA
Chachuat, B
Item Type: Working Paper
Abstract: This paper investigates a new class of modifier-adaptation schemes to overcome plant-model mismatch in real-time optimization of uncertain processes. The main contribution lies in the integration of concepts from the areas of Bayesian optimization and derivative-free optimization. The proposed schemes embed a physical model and rely on trust-region ideas to minimize risk during the exploration, while employing Gaussian process regression to capture the plant-model mismatch in a non-parametric way and drive the exploration by means of acquisition functions. The benefits of using an acquisition function, knowing the process noise level, or specifying a nominal process model are illustrated on numerical case studies, including a semi-batch photobioreactor optimization problem.
Issue Date: 18-Sep-2020
URI: http://hdl.handle.net/10044/1/83079
Publisher: arXiv
Copyright Statement: © 2020 The Author(s).
Sponsor/Funder: BG International Limited
Engineering & Physical Science Research Council (EPSRC)
Funder's Grant Number: PO 4513104531
EP/T000414/1
Keywords: math.OC
math.OC
cs.LG
math.OC
math.OC
cs.LG
Notes: First two authors have equal contribution
Publication Status: Published
Appears in Collections:Chemical Engineering
Faculty of Engineering