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Recurrent Fuzzy Neural Network Control for Mimo Nonlinear Systems

Yi‐Jen Mon, Chih‐Min Lin, Chin-Hsu Leng

Year
2008
Citations
11

Abstract

Abstract This paper develops a design method of recurrent fuzzy neural network (RFNN) control system for multi-input multi-output (MIMO) nonlinear dynamic systerns. This control system consists of a state feedback controller and an RFNN controller. The state feedback controller is a basic stabilizing controller to stabilize the system, and the RFNN controller presents a robust controller to deal with uncertain parts of system dynamics and external disturbances. The adaptive laws of the RFNN parameters are derived based on the Lyapunov synthesis approach and a projection algorithm, so that the stability of the system and convergence of the parameters can be guaranteed. The simulation results for a robotic system and an ecological system confirm the effectiveness of the proposed design method.

Keywords

Computer scienceMIMONonlinear systemArtificial neural networkControl (management)Neuro-fuzzyFuzzy logicControl theory (sociology)Fuzzy control systemArtificial intelligence

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