控制输入饱和的自主水下航行器神经网络强化学习控制

Rongxin Cui, Chenguang Yang, Y. Li, Sanjay K. Sharma
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引用次数: 18

摘要

为了便于数字计算机计算,本文研究了自主水下航行器(AUV)的离散时间轨迹跟踪控制问题。采用两个神经网络的强化学习方案,第一个是对控制器的不确定性进行补偿,第二个是估计评估函数,使AUV的跟踪性能达到最优。仿真结果表明,误差收敛到零附近的可调邻域,实现了强化学习意义上的优化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Neural network based reinforcement learning control of autonomous underwater vehicles with control input saturation
In this paper, the trajectory tracking control of the autonomous underwater vehicle (AUV) has been investigated in discrete time, for ease of digital computer calculation. A reinforcement learning scheme is employed using two neural networks, whereas the first one is to compensate for uncertainties for the controller, and the second one is to estimate the evaluation function, such that optimal tracking performance could be achieve for the AUV. Simulation results show that the errors convergence to a adjustable neighborhood around zero, and optimization has been achieved in the sense of reinforcement learning.
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