Acquisition of earthworm-like movement patterns of many-segmented peristaltic crawling robots

Author:

Saga Norihiko1,Tesen Satoshi1,Sato Toshiyuki2,Nagase Jun-Ya3

Affiliation:

1. School of Science and Technology, Kwansei Gakuin University, Sanda, Hyogo, Japan

2. Department of Machine Intelligence and System Engineering, Akita Prefectural University, Yurihonjo, Akita, Japan

3. Department of Mechanical and Systems Engineering, Ryukoku University, Seta Oecho, Otsu, Shiga, Japan

Abstract

In recent years, attention has been increasingly devoted to the development of rescue robots that can protect humans from the inherent risks of rescue work. Particularly, anticipated is the development of a robot that can move deeply through small spaces. We have devoted our attention to peristalsis, the movement mechanism used by earthworms. A reinforcement learning technique used for the derivation of the robot movement pattern, Q-learning, was used to develop a three-segmented peristaltic crawling robot with a motor drive. Characteristically, peristalsis can provide movement capability if at least three segments work, even if a segmented part does not function. Therefore, we had intended to derive the movement pattern of many-segmented peristaltic crawling robots using Q-learning. However, because of the necessary increase in calculations, in the case of many segments, Q-learning cannot be used because of insufficient memory. Therefore, we devoted our attention to a learning method called Actor–Critic, which can be implemented with low memory. Because Actor-Critic methods are TD methods that have a separate memory structure to explicitly represent the policy independent of the value function. Using it, we examined the movement patterns of six-segmented peristaltic crawling robots.

Publisher

SAGE Publications

Subject

Artificial Intelligence,Computer Science Applications,Software

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