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Deep reinforcement learning for robust robot navigation in complex and crowded environments

Jin Meng, Shifeng Wang, R Yang, Aakash Kumar, Jonghyuk Kim

Year
2025
Citations
3
Access
Open access

Abstract

In complex environments with dense pedestrian traffic, mobile robots often experience errors and instability during trajectory tracking and dynamic obstacle avoidance tasks. This paper presents a scene perception and decision-making strategy combined with deep reinforcement learning. Temporal sequences of LiDAR data and sub-goal were used as input, and action output is generated via an end-to-end network. We designed an adaptive heading reward that guides the robot to proactively avoid pedestrians while efficiently moving toward its target. Through continuous interaction with a dynamic environment, the robot learns an optimal decision-making strategy by maximizing cumulative rewards. A series of simulation experiments and real-world validations demonstrate that the proposed strategy achieves an effective balance between collision avoidance and real-time performance in robotic navigation. Furthermore, extensive results confirm that the method remains robust in unfamiliar environments and in varying crowd densities. Finally, tests on a hardware platform indicate that the strategy offers strong stability and adaptability in practical applications, effectively meeting obstacle avoidance requirements and validating its reliability in complex dynamic settings.

Keywords

Collision avoidanceReinforcement learningObstacle avoidanceRobotTrajectoryAdaptabilityMobile robotHeading (navigation)Reliability (semiconductor)

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