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Hierarchical Reinforcement Learning for Safe Mapless Navigation with Congestion Estimation

15 March 2025
Jianqi Gao
Xizheng Pang
Qi Liu
Yanjie Li
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Abstract

Reinforcement learning-based mapless navigation holds significant potential. However, it faces challenges in indoor environments with local minima area. This paper introduces a safe mapless navigation framework utilizing hierarchical reinforcement learning (HRL) to enhance navigation through such areas. The high-level policy creates a sub-goal to direct the navigation process. Notably, we have developed a sub-goal update mechanism that considers environment congestion, efficiently avoiding the entrapment of the robot in local minimum areas. The low-level motion planning policy, trained through safe reinforcement learning, outputs real-time control instructions based on acquired sub-goal. Specifically, to enhance the robot's environmental perception, we introduce a new obstacle encoding method that evaluates the impact of obstacles on the robot's motion planning. To validate the performance of our HRL-based navigation framework, we conduct simulations in office, home, and restaurant environments. The findings demonstrate that our HRL-based navigation framework excels in both static and dynamic scenarios. Finally, we implement the HRL-based navigation framework on a TurtleBot3 robot for physical validation experiments, which exhibits its strong generalization capabilities.

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@article{gao2025_2503.12036,
  title={ Hierarchical Reinforcement Learning for Safe Mapless Navigation with Congestion Estimation },
  author={ Jianqi Gao and Xizheng Pang and Qi Liu and Yanjie Li },
  journal={arXiv preprint arXiv:2503.12036},
  year={ 2025 }
}
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