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Comparative assessment of simulation-based and surrogate-based approaches to flowsheet optimization using dimensionality reduction

Niki Triantafyllou, Ben Lyons, Andrea Bernardi, Benoît Chachuat, Cleo Kontoravdi, Maria M. Papathanasiou

2024Computers & Chemical Engineering7 citationsDOIOpen Access PDF

Abstract

This work proposes a framework for simulation-based and surrogate-based reduced space Bayesian optimization of process flowsheets. The framework uses global sensitivity analysis for dimensionality reduction via the identification of critical process variables that contribute significantly to the variability of the objective function (e.g. productivity and operating costs). Both simulation- and surrogate-based algorithms are applied to a biopharmaceutical and a chemical process simulator for the production of plasmid DNA and dimethyl ether (DME), respectively. Their capabilities are assessed in terms of the trade-off between computational effectiveness and solution accuracy. Results indicate that simulation-based Bayesian optimization achieves better objective function values, while surrogate-based Bayesian optimization is more computationally effective.

Topics & Concepts

Surrogate modelDimensionality reductionBayesian optimizationComputer scienceReduction (mathematics)Sensitivity (control systems)Curse of dimensionalityMathematical optimizationDimethyl etherProcess (computing)Bayesian probabilityBenchmark (surveying)Machine learningEngineeringMathematicsArtificial intelligenceChemistryGeodesyOrganic chemistryOperating systemMethanolGeometryGeographyElectronic engineeringAdvanced Multi-Objective Optimization AlgorithmsOptimal Experimental Design MethodsProbabilistic and Robust Engineering Design