Adaptively exploring the feature space of flowsheets
- Martin Bubel
Abstract
Simulation and optimization of chemical flowsheets rely on the solution
of a large number of non-linear equations. Finding such solutions can be
supported by constructing machine-learning based surrogates, relating
features and outputs by simple, explicit functions. In order to generate
training data for those surrogates computationally efficiently, schemes
to adaptively sample the feature space are mandatory. In this article,
we present a novel family of utility functions to favor an adaptive,
Bayesian exploration of the feature space in order to identify regions
that are convergent, fulfill customized inequality constraints and are
Pareto-optimal with respect to conflicting objectives. The benefit is
illustrated by small toy-examples as well as by industrially relevant
chemical flowsheets.19 Sep 2023Submitted to AIChE Journal 23 Sep 2023Review(s) Completed, Editorial Evaluation Pending
23 Sep 2023Submission Checks Completed
23 Sep 2023Assigned to Editor
24 Sep 2023Reviewer(s) Assigned
05 Nov 2023Editorial Decision: Revise Major
28 Jan 2024Editorial Decision: Accept