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基于混合微分进化算法的生化过程动态参数估计(英文)
引用本文:赵超,许巧玲,林思铭,李学来.基于混合微分进化算法的生化过程动态参数估计(英文)[J].中国化学工程学报,2013,21(2):155-162.
作者姓名:赵超  许巧玲  林思铭  李学来
作者单位:College of Chemistry and Chemical Engineering, Fuzhou University, Fuzhou 350108, China
基金项目:Supported by the National Natural Science Foundation of China(60804027, 61064003);Fuzhou University ResearchFoundation(FZU-02335, 600338 and 600567)
摘    要:Determination of the optimal model parameters for biochemical systems is a time consuming iterative process. In this study, a novel hybrid differential evolution (DE) algorithm based on the differential evolution technique and a local search strategy is developed for solving kinetic parameter estimation problems. By combining the merits of DE with Gauss-Newton method, the proposed hybrid approach employs a DE algorithm for identifying promising regions of the solution space followed by use of Gauss-Newton method to determine the optimum in the identified regions. Some well-known benchmark estimation problems are utilized to test the efficiency and the robustness of the proposed algorithm compared to other methods in literature. The comparison indicates that the present hybrid algorithm outperforms other estimation techniques in terms of the global searching ability and the convergence speed. Additionally, the estimation of kinetic model parameters for a feed batch fermentor is carried out to test the applicability of the proposed algorithm. The result suggests that the method can be used to estimate suitable values of model parameters for a complex mathematical model.

关 键 词:parameter  estimation  kinetic  model  hybrid  differential  evolution  Gauss-Newton  feed  batch  fermentor  
收稿时间:2012-08-03

Hybrid Differential Evolution for Estimation of Kinetic Parameters for Biochemical Systems
ZHAO Chao , XU Qiaoling , LIN Siming , LI Xuelai.Hybrid Differential Evolution for Estimation of Kinetic Parameters for Biochemical Systems[J].Chinese Journal of Chemical Engineering,2013,21(2):155-162.
Authors:ZHAO Chao  XU Qiaoling  LIN Siming  LI Xuelai
Affiliation:College of Chemistry and Chemical Engineering, Fuzhou University, Fuzhou 350108, China
Abstract:Determination of the optimal model parameters for biochemical systems is a time consuming iterative process. In this study, a novel hybrid differential evolution (DE) algorithm based on the differential evolution technique and a local search strategy is developed for solving kinetic parameter estimation problems. By combining the merits of DE with Gauss-Newton method, the proposed hybrid approach employs a DE algorithm for identifying promising regions of the solution space followed by use of Gauss-Newton method to determine the optimum in the identified regions. Some well-known benchmark estimation problems are utilized to test the efficiency and the robustness of the proposed algorithm compared to other methods in literature. The comparison indicates that the present hybrid algorithm outperforms other estimation techniques in terms of the global searching ability and the convergence speed. Additionally, the estimation of kinetic model parameters for a feed batch fermentor is carried out to test the applicability of the proposed algorithm. The result suggests that the method can be used to estimate suitable values of model parameters for a complex mathematical model.
Keywords:parameter estimation  kinetic model  hybrid differential evolution  Gauss-Newton  feed batch fermentor
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