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Design of ethylene oxide production process based on adaptive design of experiments and Bayesian optimization

Ryo Iwama, Hiromasa Kaneko

2021Journal of Advanced Manufacturing and Processing30 citationsDOI

Abstract

Abstract In process design, the values of design variables X for equipment and operating conditions should be appropriately selected for entire processes, including all unit operations, such as reactors and distillation columns, to consider effects between unit operations. However, as the number of X increases, many more simulations are required to search for the optimal X values. Furthermore, multiple objective variables Y, such as yields, make the optimization problem difficult. We propose a process design method based on adaptive design of experiments and Bayesian optimization. Selection of X values that satisfy the target values of multiple Y variables are searched, and simulations for the selected X values are then repeated. Therefore, the X will be selected by a small number of simulations. We verify the effectiveness of this method by simulating an ethylene oxide production plant.

Topics & Concepts

Bayesian optimizationEthylene oxideSelection (genetic algorithm)Process (computing)Mathematical optimizationDesign of experimentsComputer scienceProduction (economics)Process designBayesian probabilityProcess engineeringMathematicsEngineeringChemistryStatisticsProcess integrationMachine learningArtificial intelligenceOperating systemMacroeconomicsEconomicsCopolymerOrganic chemistryPolymerFault Detection and Control SystemsAdvanced Control Systems OptimizationProcess Optimization and Integration
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