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Generating Collective Behavior of a Multi-Legged Robotic Swarm Using Deep Reinforcement Learning

Daichi Morimoto, Yukiha Iwamoto, Motoaki Hiraga, Kazuhiro Ohkura

Year
2023
Citations
6

Abstract

This paper presents a method of generating collective behavior of a multi-legged robotic swarm using deep reinforcement learning. Most studies in swarm robotics have used mobile robots driven by wheels. These robots can operate only on relatively flat surfaces. In this study, a multi-legged robotic swarm was employed to generate collective behavior not only on a flat field but also on rough terrain fields. However, designing a controller for a multi-legged robotic swarm becomes a challenging problem because it has a large number of actuators than wheeled-mobile robots. This paper applied deep reinforcement learning to designing a controller. The proximal policy optimization (PPO) algorithm was utilized to train the robot controller. The controller was trained through the task that required robots to walk and form a line. The results of computer simulations showed that the PPO led to the successful design of controllers for a multi-legged robotic swarm in flat and rough terrains.

Keywords

Swarm roboticsSwarm behaviourReinforcement learningController (irrigation)RobotArtificial intelligenceTerrainComputer scienceRoboticsLegged robot

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