model predictive control based on kalman filter for constrained hammerstein-wiener systems

model predictive control based on kalman filter for constrained hammerstein-wiener systems

;Man Hong;Shao Cheng
journal of power sources 2013 Vol. 2013 pp. -
158
hong2013mathematicalmodel

Abstract

To precisely track the reactor temperature in the entire working condition, the constrained Hammerstein-Wiener model describing nonlinear chemical processes such as in the continuous stirred tank reactor (CSTR) is proposed. A predictive control algorithm based on the Kalman filter for constrained Hammerstein-Wiener systems is designed. An output feedback control law regarding the linear subsystem is derived by state observation. The size of reaction heat produced and its influence on the output are evaluated by the Kalman filter. The observation and evaluation results are calculated by the multistep predictive approach. Actual control variables are computed while considering the constraints of the optimal control problem in a finite horizon through the receding horizon. The simulation example of the CSTR tester shows the effectiveness and feasibility of the proposed algorithm.

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Ref Key: hong2013mathematicalmodel
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181446
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10.1155/2013/104702
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