Surrogate-Based Optimization Techniques for Process Systems Engineering
Optimization plays an important role in chemical engineering, impacting cost-effectiveness, resource utilization, product quality, and process sustainability metrics. This chapter broadly focuses on data-driven optimization, particularly, on model-based derivative-free techniques, also known as surr...
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Zusammenfassung: | Optimization plays an important role in chemical engineering, impacting
cost-effectiveness, resource utilization, product quality, and process
sustainability metrics. This chapter broadly focuses on data-driven
optimization, particularly, on model-based derivative-free techniques, also
known as surrogate-based optimization. The chapter introduces readers to the
theory and practical considerations of various algorithms, complemented by a
performance assessment across multiple dimensions, test functions, and two
chemical engineering case studies: a stochastic high-dimensional reactor
control study and a low-dimensional constrained stochastic reactor optimization
study. This assessment sheds light on each algorithm's performance and
suitability for diverse applications. Additionally, each algorithm is
accompanied by background information, mathematical foundations, and algorithm
descriptions. Among the discussed algorithms are Bayesian Optimization (BO),
including state-of-the-art TuRBO, Constrained Optimization by Linear
Approximation (COBYLA), the Ensemble Tree Model Optimization Tool (ENTMOOT)
which uses decision trees as surrogates, Stable Noisy Optimization by Branch
and Fit (SNOBFIT), methods that use radial basis functions such as DYCORS and
SRBFStrategy, Constrained Optimization by Quadratic Approximations (COBYQA), as
well as a few others recognized for their effectiveness in surrogate-based
optimization. By combining theory with practice, this chapter equips readers
with the knowledge to integrate surrogate-based optimization techniques into
chemical engineering. The overarching aim is to highlight the advantages of
surrogate-based optimization, introduce state-of-the-art algorithms, and
provide guidance for successful implementation within process systems
engineering. |
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DOI: | 10.48550/arxiv.2412.13948 |