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首页> 外文期刊>journal of shanghai jiaotong university (science) >Obstacle Avoidance in Multi-Agent Formation Process Based on Deep Reinforcement Learning
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Obstacle Avoidance in Multi-Agent Formation Process Based on Deep Reinforcement Learning

机译:Obstacle Avoidance in Multi-Agent Formation Process Based on Deep Reinforcement Learning

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Abstract To solve the problems of difficult control law design, poor portability, and poor stability of traditional multi-agent formation obstacle avoidance algorithms, a multi-agent formation obstacle avoidance method based on deep reinforcement learning (DRL) is proposed. This method combines the perception ability of convolutional neural networks (CNNs) with the decision-making ability of reinforcement learning in a general form and realizes direct output control from the visual perception input of the environment to the action through an end-to-end learning method. The multi-agent system (MAS) model of the follow-leader formation method was designed with the wheelbarrow as the control object. An improved deep Q netwrok (DQN) algorithm (we improved its discount factor and learning efficiency and designed a reward value function that considers the distance relationship between the agent and the obstacle and the coordination factor between the multi-agents) was designed to achieve obstacle avoidance and collision avoidance in the process of multi-agent formation into the desired formation. The simulation results show that the proposed method achieves the expected goal of multi-agent formation obstacle avoidance and has stronger portability compared with the traditional algorithm.

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