Robot Navigation among External Autonomous Agents through Deep Reinforcement Learning using Graph Attention Network
Zhang TL(张天乐)1,2; Qiu TH(丘腾海)2; Pu ZQ(蒲志强)1,2; Liu Z(刘振)1,2; Yi JQ(易建强)1,2
2020
会议日期July 12-17, 2020
会议地点Berlin, Germany
卷号53
期号2
页码9465-9470
英文摘要

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.

会议录出版者Elsevier
语种英语
内容类型会议论文
源URL[http://ir.ia.ac.cn/handle/173211/51956]  
专题综合信息系统研究中心_飞行器智能技术
通讯作者Qiu TH(丘腾海)
作者单位1.中国科学院大学人工智能学院
2.中国科学院自动化研究所
推荐引用方式
GB/T 7714
Zhang TL,Qiu TH,Pu ZQ,et al. Robot Navigation among External Autonomous Agents through Deep Reinforcement Learning using Graph Attention Network[C]. 见:. Berlin, Germany. July 12-17, 2020.
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