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Reaction Modeling and Optimization Using Neural Networks and Genetic Algorithms: Case Study Involving TS-1-Catalyzed Hydroxylation of Benzene
54
Citations
35
References
2002
Year
EngineeringComputational ChemistryChemistryReaction ModelingMolecular DesignChemical EngineeringGenetic AlgorithmHybrid Optimization TechniqueMaterials OptimizationHybrid FormalismProcess OptimizationProcess DesignIntelligent OptimizationCatalysisProcess Systems EngineeringHybrid Process ModelingOptimization FormalismEvolving Neural NetworkGenetic AlgorithmsReaction EngineeringAi-based Process OptimizationChemical Kinetics
This paper proposes a hybrid process modeling and optimization formalism integrating artificial neural networks (ANNs) and genetic algorithms (GAs). The resultant ANN−GA strategy has the advantage that it allows process modeling and optimization exclusively on the basis of process input−output data. In the hybrid strategy, first an ANN-based process model is developed from the input−output process data. Next, the input space of the model representing process input variables is optimized using GAs, with a view to simultaneously maximize multiple process output variables. The GAs are stochastic optimization methods possessing certain unique advantages over the commonly used gradient-based deterministic algorithms. The efficacy of the hybrid formalism has been evaluated for modeling and optimizing the zeolite (TS-1)-catalyzed benzene hydroxylation to phenol reaction whereby several sets of optimized operating conditions have been obtained. A few optimized solutions have also been subjected to the experimental verification, and the results obtained thereby matched the GA-maximized values of the three reaction output variables with a good accuracy.
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