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Bayesian approach to probabilistic design space characterization: a nested sampling strategy

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Title: Bayesian approach to probabilistic design space characterization: a nested sampling strategy
Authors: Kusumo, KP
Gomoescu, L
Paulen, R
García Muñoz, S
Pantelides, CC
Shah, N
Chachuat, B
Item Type: Journal Article
Abstract: Quality by design in pharmaceutical manufacturing hinges on computational methods and tools that are capable of accurate quantitative prediction of the design space. This paper investigates Bayesian approaches to design space characterization, which determine a feasibility probability that can be used as a measure of reliability and risk by the practitioner. An adaptation of nested sampling—a Monte Carlo technique introduced to compute Bayesian evidence—is presented. The nested sampling algorithm maintains a given set of live points through regions with increasing probability feasibility until reaching a desired reliability level. It furthermore leverages efficient strategies from Bayesian statistics for generating replacement proposals during the search. Features and advantages of this algorithm are demonstrated by means of a simple numerical example and two industrial case studies. It is shown that nested sampling can outperform conventional Monte Carlo sampling and be competitive with flexibility-based optimization techniques in low-dimensional design space problems. Practical aspects of exploiting the sampled design space to reconstruct a feasibility probability map using machine learning techniques are also discussed and illustrated. Finally, the effectiveness of nested sampling is demonstrated on a higher-dimensional problem, in the presence of a complex dynamic model and significant model uncertainty.
Issue Date: 26-Nov-2019
Date of Acceptance: 26-Nov-2019
URI: http://hdl.handle.net/10044/1/75841
DOI: 10.1021/acs.iecr.9b05006
ISSN: 0888-5885
Publisher: American Chemical Society (ACS)
Start Page: 2396
End Page: 2408
Journal / Book Title: Industrial & Engineering Chemistry Research
Volume: 59
Issue: 6
Copyright Statement: © 2019 American Chemical Society. This document is the Accepted Manuscript version of a Published Work that appeared in final form in Industrial && Engineering Chemistry Research, after peer review and technical editing by the publisher. To access the final edited and published work see https://doi.org/10.1021/acs.iecr.9b05006
Sponsor/Funder: Eli Lilly & Company (USA)
Funder's Grant Number: 4900606521
Keywords: Science & Technology
Technology
Engineering, Chemical
Engineering
FLEXIBILITY ANALYSIS
FEASIBILITY
OPTIMIZATION
DEFINITION
SYSTEMS
MODELS
INDEX
03 Chemical Sciences
09 Engineering
Chemical Engineering
Publication Status: Published
Article Number: acs.iecr.9b05006
Online Publication Date: 2019-12-16
Appears in Collections:Chemical Engineering
Grantham Institute for Climate Change
Faculty of Natural Sciences
Faculty of Engineering