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Adaptive neural network dynamic surface control of hypersonic vehicle

机译:高超音速飞行器的自适应神经网络动态表面控制

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A novel adaptive neural network dynamic surface control is proposed for hypersonic vehicle. Based on the hypersonic vehicle model characteristics, the adaptive neural network dynamic surface control attitude controller and the neural networks velocity controller are designed, respectively. By combining Nussbaum gain function with decoupled backstepping, the problems of unknown control directions and control singularity from hypersonic vehicles model in strict-feedback form are simultaneously solved. Furthermore, the norm of the ideal weighting vector in neural network systems is considered as the estimation parameter, such that only one parameter is adjusted at each recursive step. Based on decoupled backstepping method and Lyapunov stability theorem, the semi-global stability of the flight control system is proved. Simulation results show that the new controller can guarantee the expected tracking performance.
机译:提出了一种适用于高超音速飞行器的新型自适应神经网络动态表面控制。根据高超声速飞行器模型特性,分别设计了自适应神经网络动态表面控制姿态控制器和神经网络速度控制器。通过将Nussbaum增益函数与解耦后推相结合,可以同时解决严格反馈形式的高超声速飞行器模型的控制方向未知和控制奇异性的问题。此外,将神经网络系统中理想加权向量的范数视为估算参数,以便在每个递归步骤仅调整一个参数。基于解耦后推法和Lyapunov稳定性定理,证明了飞行控制系统的半全局稳定性。仿真结果表明,新控制器可以保证预期的跟踪性能。

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