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Navigating Robots in Dynamic Environment With Deep Reinforcement Learning

Zhiqian Zhou, Zhiwen Zeng, Lin Lang, Weijia Yao, Huimin Lu, Zhiqiang Zheng, Zongtan Zhou

2022IEEE Transactions on Intelligent Transportation Systems41 citationsDOI

Abstract

In the fight against COVID-19, many robots replace human employees in various tasks that involve a risk of infection. Among these tasks, the fundamental problem of navigating robots among crowds, named robot crowd navigation, remains open and challenging. Therefore, we propose HGAT-DRL, a heterogeneous GAT-based deep reinforcement learning algorithm. This algorithm encodes the constrained human-robot-coexisting environment in a heterogeneous graph consisting of four types of nodes. It also constructs an interactive agent-level representation for objects surrounding the robot, and incorporates the kinodynamic constraints from the non-holonomic motion model into the deep reinforcement learning (DRL) framework. Simulation results show that our proposed algorithm achieves a success rate of 92%, at least 6% higher than four baseline algorithms. Furthermore, the hardware experiment on a Fetch robot demonstrates our algorithm’s successful and convenient migration to real robots.

Topics & Concepts

Reinforcement learningRobotArtificial intelligenceComputer scienceHuman–computer interactionRobotic Path Planning AlgorithmsRobotics and Sensor-Based LocalizationAutonomous Vehicle Technology and Safety