Modeling and optimal control of fed-batch processes using control affine feedforward neural networks

Proceedings of the American Control Conference - Tập 6 - Trang 5025-5030 vol.6 - 2002
Zhihua Xiong1, Jie Zhang1
1Centre for Process Analytics and Control Technology, Department of Chemical and Process Engineering, University of Newcastle, UK

Tóm tắt

Many fed-batch processes can be considered as a class of control-affine nonlinear systems. In this paper, a new methodology of neural networks, called the Control Affine Feedforward Neural Network (CAFNN), is proposed. It can be trained easily. For constrained nonlinear optimization problems, it offers an effective and simple optimal control strategy by sequential quadratic programming in which the analytic gradient information can be computed directly. The proposed modeling and optimal control schemes are illustrated on an ethanol fermentation process. Compared with a general multilayer neural network, the nonlinear programming problem based on a CAFNN model is solved more accurately and efficiently.

Từ khóa

#Optimal control #Process control #Neural networks #Feedforward neural networks #Multi-layer neural network #Nonlinear control systems #Control systems #Nonlinear systems #Constraint optimization #Quadratic programming

Tài liệu tham khảo

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