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Neural network adaptive position tracking control of underactuated autonomous surface vehicle

机译:无后期自主表面车辆的神经网络自适应位置跟踪控制

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摘要

The present study investigates the position tracking control of the underactuated autonomous surface vehicle, which is subjected to parameters uncertainties and external disturbances. In this regard, the backstepping method, neural network, dynamic surface control and the sliding mode method are employed to design an adaptive robust controller. Moreover, a Lyapunov synthesis is utilized to verify the stability of the closed-loop control system. Following innovations are highlighted in this study: (i) The derivatives of the virtual control signals are obtained through the dynamic surface control, which overcomes the computational complexities of the conventional backstepping method. (ii) The designed controller can be easily applied in practical applications with no requirement to employ the neural network and state predictors to obtain model parameters. (iii) The prediction errors are combined with position tracking errors to construct the neural network updating laws, which improves the adaptation and the tracking performance. The simulation results demonstrate the effectiveness of the proposed position tracking controller.
机译:本研究研究了欠型自主表面车辆的位置跟踪控制,其受到参数的不确定性和外部干扰。在这方面,采用反向梗方法,神经网络,动态表面控制和滑动模式方法来设计自适应鲁棒控制器。此外,利用Lyapunov合成来验证闭环控制系统的稳定性。在本研究中突出显示以下创新:(i)通过动态表面控制获得虚拟控制信号的衍生物,其克服了传统的反向方法的计算复杂性。 (ii)设计的控制器可以在实际应用中容易地应用,没有要求使用神经网络和状态预测器来获得模型参数。 (iii)将预测误差与位置跟踪误差相结合,以构建神经网络更新规律,从而提高了适应性和跟踪性能。仿真结果证明了所提出的位置跟踪控制器的有效性。

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