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Robot Navigation among External Autonomous Agents through Deep Reinforcement Learning using Graph Attention Network

机译:通过使用曲线图注意网络,通过深度加强学习在外部自治代理中的机器人导航

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Finding collision-free and efficient paths in an uncertain dynamic environment is a challenge for robot navigation tasks, especially when there are external autonomous agents that also have decision-making abilities in the same environment. This paper develops a novel method based on DRL with graph attention network (GAT) to solve the problem of robot navigation among external autonomous agents (other agents). Specifically, GAT is adopted to describe the robot and other agents as a specific graph, and extract the spatial structural influence features of other agents on the robot from the graph. Multi-head attention mechanism is utilized to calculate the weights of interactions between the robot and other agents. This GAT uses observations of an arbitrary number of other agents in dynamic environments. Furthermore, the proposed method is combined with optimal reciprocal collision avoidance to improve its safety in new environments. Various simulations demonstrate that our method has good performance and robustness in different environments.
机译:在不确定的动态环境中找到无碰撞和有效的路径是机器人导航任务的挑战,特别是当存在外部自治代理时,在同一环境中也具有决策能力。本文开发了一种基于DRL的新方法,具有曲线图注意网络(GAT)来解决外部自治代理(其他代理)之间的机器人导航问题。具体地,采用GAT描述机器人和其他药物作为特定图表,并从图表中提取机器人上的其他代理的空间结构影响特征。利用多针注意机制来计算机器人和其他代理之间的相互作用的重量。该GAT使用动态环境中的任意数量的其他代理的观察。此外,所提出的方法与最佳互易碰撞避免相结合,以改善其在新环境中的安全性。各种仿真表明,我们的方法在不同环境中具有良好的性能和鲁棒性。

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