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应用群能量恒定粒子群优化算法的批次流加发酵过程批次间优化(英文)
引用本文:王建林,薛尧予,于涛,赵利强.应用群能量恒定粒子群优化算法的批次流加发酵过程批次间优化(英文)[J].中国化学工程学报,2010,18(5):787-794.
作者姓名:王建林  薛尧予  于涛  赵利强
作者单位:College of Information Science and Technology, Beijing University of Chemical Technology, Beijing 100029, China
基金项目:Supported by the National Natural Science Foundation of China (20676013)
摘    要:An iterative optimization strategy for fed-batch fermentation process is presented by combining a run-to-run optimization with swarm energy conservation particle swarm optimization (SEC-PSO). SEC-PSO, which is designed with the concept of energy conservation, can solve the problem of premature convergence frequently appeared in standard PSO algorithm by partitioning its population into several sub-swarms according to the energy of the swarm and is used in the optimization strategy for parameter iden-tification and operation condition optimization. The run-to-run optimization exploits the repetitive nature of fed-batch processes in order to deal with the optimal problems of fed-batch fermentation process with inaccurate process model and unsteady process state. The kinetic model parameters, used in the operation condition optimization of the next run, are adjusted by calculating time-series data obtained from real fed-batch process in the run-to-run optimization. The simulation results show that the strategy can adjust its kinetic model dynamically and overcome the instability of fed-batch process effectively. Run-to-run strategy with SEC-PSO provides an effective method for optimization of fed-batch fermentation process.

关 键 词:run-to-run  optimization  fed-batch  process  particle  swarm  optimization  swarm  energy  conservation  particle  swarm  optimization  
收稿时间:2010-2-3
修稿时间:2010-2-3  

Run-to-run Optimization for Fed-batch Fermentation Process with Swarm Energy Conservation Particle Swarm Optimization Algorithm
WANG Jianlin,XUE Yaoyu,YU Tao,ZHAO Liqiang.Run-to-run Optimization for Fed-batch Fermentation Process with Swarm Energy Conservation Particle Swarm Optimization Algorithm[J].Chinese Journal of Chemical Engineering,2010,18(5):787-794.
Authors:WANG Jianlin  XUE Yaoyu  YU Tao  ZHAO Liqiang
Affiliation:College of Information Science and Technology,Beijing University of Chemical Technology,Beijing 100029,China;College of Information Science and Technology,Beijing University of Chemical Technology,Beijing 100029,China;College of Information Science and Technology,Beijing University of Chemical Technology,Beijing 100029,China;College of Information Science and Technology,Beijing University of Chemical Technology,Beijing 100029,China
Abstract:An iterative optimization strategy for fed-batch fermentation process is presented by combining a run-to-run optimization with swarm energy conservation particle swarm optimization (SEC-PSO). SEC-PSO, which is designed with the concept of energy conservation, can solve the problem of premature convergence frequently appeared in standard PSO algorithm by partitioning its population into several sub-swarms according to the energy of the swarm and is used in the optimization strategy for parameter iden-tification and operation condition optimization. The run-to-run optimization exploits the repetitive nature of fed-batch processes in order to deal with the optimal problems of fed-batch fermentation process with inaccurate process model and unsteady process state. The kinetic model parameters, used in the operation condition optimization of the next run, are adjusted by calculating time-series data obtained from real fed-batch process in the run-to-run optimization. The simulation results show that the strategy can adjust its kinetic model dynamically and overcome the instability of fed-batch process effectively. Run-to-run strategy with SEC-PSO provides an effective method for optimization of fed-batch fermentation process.
Keywords:run-to-run optimization  fed-batch process  particle swarm optimization  swarm energy conservation particle swarm optimization
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