JOURNAL ARTICLE

Algebraic surrogate‐based process optimization using Bayesian symbolic learning

Abstract

Abstract Here, we propose a strategy for the global optimization of process flowsheets, a fundamental problem in process systems engineering, based on algebraic surrogates that are built from rigorous simulations via Bayesian symbolic regression. The applied method provides a closed‐form expression that can be optimized to global optimality using state‐of‐the‐art solvers, where BARON or ANTIGONE were the solvers of choice. When predicting unseen test data, the algebraic models show a similar accuracy level compared to traditional surrogates based on Gaussian processes. However, they can be more easily optimized to global optimality due to their analytical closed‐form structure, which allows the user to apply well‐established global deterministic solvers. We show the capabilities of our approach in several case studies, ranging from process units to full flowsheets. The performance of our approach is assessed by comparing the CPU time for model building, the prediction accuracy of the identified model, and the CPU time for the subsequent optimization with a proven benchmark.

Keywords:
Benchmark (surveying) Kriging Gaussian process Global optimization Surrogate model Bayesian optimization Computer science Process (computing) Symbolic regression Mathematical optimization Algebraic expression Bayesian probability Algebraic number Algorithm Gaussian Machine learning Artificial intelligence Mathematics Genetic programming

Metrics

11
Cited By
3.40
FWCI (Field Weighted Citation Impact)
66
Refs
0.90
Citation Normalized Percentile
Is in top 1%
Is in top 10%

Citation History

Topics

Advanced Multi-Objective Optimization Algorithms
Physical Sciences →  Computer Science →  Computational Theory and Mathematics
Optimal Experimental Design Methods
Social Sciences →  Decision Sciences →  Management Science and Operations Research
Probabilistic and Robust Engineering Design
Social Sciences →  Decision Sciences →  Statistics, Probability and Uncertainty

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