冯恩民

Professor  

Gender:Male

Alma Mater:大连工学院

School/Department:数学科学学院

E-Mail:emfeng@dlut.edu.cn


Paper Publications

Modelling and parameter identification for a hybrid dynamical system in microbial fed-batch culture

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Indexed by:期刊论文

Date of Publication:2016-01-02

Journal:INTERNATIONAL JOURNAL OF COMPUTER MATHEMATICS

Included Journals:SCIE、EI

Volume:93

Issue:1

Page Number:200-222

ISSN No.:0020-7160

Key Words:nonlinear hybrid dynamical system; parameter identification; parametric sensitivity functions; continuous state inequality constraints; fed-batch fermentation

Abstract:In this paper, we consider the modelling and identification in the fed-batch fermentation of glycerol by Klebsiella pneumoniae with open-loop glycerol input and pH logic control. Taking into account the hybrid characteristic of the fed-batch operation, we present a nonlinear hybrid dynamical system, which is developed by embedding the discrete process of adding glycerol and alkali into the dynamical system of batch culture, to formulate this fermentation process. Some important properties of the solution to the proposed system are then discussed, including the existence, uniqueness, boundedness and regularity. To estimate the unknown parameters in the system, a parameter identification problem subject to continuous state inequality constraints is proposed, and its identifiability is also proved. Subsequently, the parametric sensitivity functions of the system are given and utilized to obtain the requisite gradient information for further numerical computation. Finally, to solve the identification problem, a gradient-based algorithm is constructed in conjunction with constraint transcription and the smoothing approximation technique. Numerical simulations show that the validated hybrid system is fit for describing the fed-batch processes as observed from the experimental results.

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