Journal of Robotics and Mechatronics
Online ISSN : 1883-8049
Print ISSN : 0915-3942
ISSN-L : 0915-3942
Special Issue on Control and Applications of Multi-Agent Systems
Learning Agents in Robot Navigation: Trends and Next Challenges
Fumito Uwano
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JOURNAL OPEN ACCESS

2024 Volume 36 Issue 3 Pages 508-516

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Abstract

Multiagent reinforcement learning performs well in multiple situations such as social simulation and data mining. It particularly stands out in robot control. In this approach, artificial agents behave in a system and learn their policies for their own satisfaction and that of others. Robots encode policies to simulate the performance. Therefore, learning should maintain and improve system performance. Previous studies have attempted various approaches to outperform control robots. This paper provides an overview of multiagent reinforcement learning work, primarily on navigation. Specifically, we discuss current achievements and limitations, followed by future challenges.

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