Research on Autonomous Mobile Robot Navigation Technology Based on Deep Reinforcement Learning

Authors

  • Yiheng Xi

DOI:

https://doi.org/10.54097/krgznc69

Keywords:

Deep Reinforcement Learning, Robot Navigation, Machine Learning.

Abstract

The development of autonomous mobile robots (AMRs) is crucial for advancing automation across various sectors, including industrial, logistics, and service industries. These robots have the potential to revolutionize how tasks are performed, offering increased efficiency and reduced human intervention. However, one of the primary challenges in this field is achieving efficient and reliable navigation in complex and dynamic environments. Traditional navigation techniques, which often rely on predefined paths and static maps, fall short in such settings. This limitation necessitates the adoption of more sophisticated approaches that can adapt to real-time changes and uncertainties in the environment. Deep Reinforcement Learning (DRL), particularly algorithms like Deep Q-Learning and Proximal Policy Optimization (PPO), has emerged as a promising solution to these challenges. This review explores recent advancements in DRL-based navigation technologies, highlighting key methodologies, simulation results, practical applications, and future research directions. By analyzing various studies, this paper demonstrates how DRL can significantly enhance AMR navigation capabilities, offering marked improvements in path planning, obstacle avoidance, and overall adaptability to dynamic environments. These advancements suggest a promising future for AMR deployment in increasingly complex settings.

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References

[1] Prases K. Mohanty, Arun Kumar Sah, Vikas Kumar, et al. Application of Deep Q-Learning for Wheel Mobile Robot Navigation. International Conference on Computational Intelligence and Networks, 2017: 1-6.

[2] Wail Gueaieb, Md. Suruz Miah, et al. An Intelligent Mobile Robot Navigation Technique Using RFID Technology. IEEE Transactions on Instrumentation and Measurement, 2008, 57 (9): 1908-1917.

[3] Ahmed Alagha, Shakti Singh, Rabeb Mizouni, Jamal Bentahar, Hadi Otrok. Target Localization using Multi-Agent Deep Reinforcement Learning with Proximal Policy. Future Generation Computer Systems, 2022, 134: 1-20.

[4] Kai Zhu, Tao Zhang. Deep Reinforcement Learning Based Mobile Robot Navigation: A Review. Tsinghua Science and Technology, 2021, 26 (5): 674-691.

[5] Xiaogang Ruan, Dingqi Ren, Xiaoqing Zhu, Jing Huang. Mobile robot navigation based on deep reinforcement learning. Chinese control and decision conference, 6174-6178, 2019.

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Published

31-10-2024

How to Cite

Xi, Y. (2024). Research on Autonomous Mobile Robot Navigation Technology Based on Deep Reinforcement Learning. Highlights in Science, Engineering and Technology, 114, 108-113. https://doi.org/10.54097/krgznc69