1. Identifier-based adaptive neural dynamic surface control for uncertain DC–DC buck converter system with input constraint
- Author
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Chen, Qiang, Ren, Xuemei, and Oliver, Jesus Angel
- Subjects
- *
CASCADE converters , *ARTIFICIAL neural networks , *ELECTRIC controllers , *PARAMETER estimation , *LYAPUNOV functions , *COMPUTER simulation - Abstract
Abstract: In this paper, an identifier-based adaptive neural dynamic surface control (IANDSC) is proposed for the uncertain DC–DC buck converter system with input constraint. Based on the analysis of the effect of input constraint in the buck converter, the neural network compensator is employed to ensure the controller output within the permissible range. Subsequently, the constrained adaptive control scheme combined with the neural network compensator is developed for the buck converter with uncertain load current. In this scheme, a newly presented finite-time identifier is utilized to accelerate the parameter tuning process and to heighten the accuracy of parameter estimation. By utilizing the adaptive dynamic surface control (ADSC) technique, the problem of “explosion of complexity” inherently in the traditional adaptive backstepping design can be overcome. The proposed control law can guarantee the uniformly ultimate boundedness of all signals in the closed-loop system via Lyapunov synthesis. Numerical simulations are provided to illustrate the effectiveness of the proposed control method. [Copyright &y& Elsevier]
- Published
- 2012
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