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Research on path planning of robot based on deep reinforcement learning

机译:基于深度强化学习的机器人路径规划研究

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In this paper, to avoid the problem of local optimization and slow convergence in complex environment, a reinforcement learning algorithm is proposed to solve the problem. A robot path planning model is built and its feasibility is verified by simulation. In addition, this paper proposes a deep environment to neural network for robot camera to establish a deep reinforcement learning path planning model, and establishes a deep recursive Q-network (DRQN) and Deep Dueling Q-network(DDQN) respectively. In the comparison of the final simulation results, DRQN needs to consume more computation time, but can achieve better results with higher accuracy.
机译:为了避免复杂环境下的局部优化和收敛慢的问题,提出了一种强化学习算法来解决该问题。建立了机器人路径规划模型,并通过仿真验证了其可行性。此外,本文为机器人摄像机的神经网络提供了一个深度环境,以建立深度强化学习路径规划模型,并分别建立了深度递归Q网络(DRQN)和深度决斗Q网络(DDQN)。在最终仿真结果的比较中,DRQN需要消耗更多的计算时间,但是可以以更高的精度获得更好的结果。

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