Neural network based controller design for three-phase PWM AC/DC voltage source converters

IJCNN(2008)

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摘要
Three-phase AC/DC converter is widely used in many industrial applications. To improve performance, this paper proposes an adaptive neural network based controller design for three-phase PWM AC/DC voltage source converters. The controller is designed based on a nonlinear multi-input multi-output model using Lyapunovpsilas direct method. Since neural networks can approximate unknown nonlinear dynamics, there is no need to know the parameters of the system. In this way, the controller is robust to parameter drifting and changes of operating points. Additionally, the proposed control can be applied directly online after initialization. Thus, the time-consuming offline training process is avoided. Furthermore, the proposed controller design also avoids the singularity problem, which may exist in regular feedback linearization based controls. Co-simulation using Matlab/Simulink and PSIM demonstrates the effectiveness of the proposed controller design.
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关键词
adaptive neural network,neurocontrollers,three-phase pwm ac-dc voltage source converter,control system synthesis,robust control,lyapunov direct method,adaptive control,nonlinear control systems,pwm power convertors,controller design,nonlinear multi input multi output model,dc-ac power convertors,mimo systems,lyapunov methods,nonlinear dynamics,pulse width modulation,neural network,neural networks,function approximation,artificial neural networks,feedback linearization,direct method,mathematical model,stability analysis,adaptive systems
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