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Lyapunov-Based Dynamic Neural Network for Adaptive Control of Complex Systems

Lyapunov-Based Dynamic Neural Network for Adaptive Control of Complex Systems
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摘要 In this paper, an adaptive neuro-control structure for complex dynamic system is proposed. A recurrent Neural Network is trained-off-line to learn the inverse dynamics of the system from the observation of the input-output data. The direct adaptive approach is performed after the training process is achieved. A lyapunov-Base training algorithm is proposed and used to adjust on-line the network weights so that the neural model output follows the desired one. The simulation results obtained verify the effectiveness of the proposed control method. In this paper, an adaptive neuro-control structure for complex dynamic system is proposed. A recurrent Neural Network is trained-off-line to learn the inverse dynamics of the system from the observation of the input-output data. The direct adaptive approach is performed after the training process is achieved. A lyapunov-Base training algorithm is proposed and used to adjust on-line the network weights so that the neural model output follows the desired one. The simulation results obtained verify the effectiveness of the proposed control method.
出处 《Journal of Software Engineering and Applications》 2012年第4期225-248,共24页 软件工程与应用(英文)
关键词 Complex DYNAMICAL Systems LYAPUNOV Approach RECURRENT NEURAL Networks Adaptive Control Complex Dynamical Systems Lyapunov Approach Recurrent Neural Networks Adaptive Control
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