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Research on path planning of robot based on deep reinforcement learning

Feng Liu, Chang Chen, Zhihua Li, Zhi‐Hong Guan, Hua O. Wang

Year
2020
Citations
6

Abstract

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.

Keywords

Reinforcement learningMotion planningComputer sciencePath (computing)RobotArtificial intelligenceMobile robotRobot learningComputer network

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