2022
DOI: 10.1002/asmb.2709
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A Bayesian data modelling framework for chemical processes using adaptive sequential design with Gaussian process regression

Abstract: Accurate simulators are relied upon in the process industry for plant design and operation. Typical simulators, based on mechanistic models, require considerable resources: skilled engineers, computational time, and proprietary data. This article explores the complexities of developing a statistical modelling framework for chemical processes, focusing on inherent non-linearity in phenomena and the difficulty of obtaining data. A Bayesian approach to modelling is forwarded in this article, utilising Bayesian se… Show more

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