Lujie Shi , Younes Aoues , Valeria Casson Moreno , Yankai Wang , Sébastien Leveneur
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引用次数: 0
Abstract
In chemical process optimization, identifying conditions that balance production rate and thermal risks is crucial. This paper presents a surrogate-assisted optimization methodology that integrates parameters uncertainty, specifically focusing on synthesizing γ-valerolactone (GVL) in adiabatic and batch modes. A surrogate model was established to elucidate the relationships between input variables, production rate and risk index, which reduces the computational burden associated with complex differential equations. The Latin Hypercube Sampling method was employed to assess how uncertainties propagate through the processes. This study formulates a multi-objective optimization model that seeks to find a balance between the highest possible GVL production rate and the lowest probability of failure under deterministic and uncertain scenarios. The results in Pareto charts illustrate the possible operating conditions and determine the optimized initial conditions. This approach serves as a model for optimizing complex chemical processes, balancing production capacity and safety while considering uncertainty management.
期刊介绍:
Computers & Chemical Engineering is primarily a journal of record for new developments in the application of computing and systems technology to chemical engineering problems.