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Main Authors: Akashi, Nozomi, Kuniyoshi, Yasuo, Jo, Taketomo, Nishida, Mitsuhiro, Sakurai, Ryo, Wakao, Yasumichi, Nakajima, Kohei
Format: Preprint
Published: 2023
Subjects:
Online Access:https://arxiv.org/abs/2305.03994
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author Akashi, Nozomi
Kuniyoshi, Yasuo
Jo, Taketomo
Nishida, Mitsuhiro
Sakurai, Ryo
Wakao, Yasumichi
Nakajima, Kohei
author_facet Akashi, Nozomi
Kuniyoshi, Yasuo
Jo, Taketomo
Nishida, Mitsuhiro
Sakurai, Ryo
Wakao, Yasumichi
Nakajima, Kohei
contents Harnessing complex body dynamics has been a long-standing challenge in robotics. Soft body dynamics is a typical example of high complexity in interacting with the environment. An increasing number of studies have reported that these dynamics can be used as a computational resource. This includes the McKibben pneumatic artificial muscle, which is a typical soft actuator. This study demonstrated that various dynamics, including periodic and chaotic dynamics, could be embedded into the pneumatic artificial muscle, with the entire bifurcation structure using the framework of physical reservoir computing. These results suggest that dynamics that are not presented in training data could be embedded by using this capability of bifurcation embeddment. This implies that it is possible to embed various qualitatively different patterns into pneumatic artificial muscle by learning specific patterns, without the need to design and learn all patterns required for the purpose. Thus, this study sheds new light on a novel pathway to simplify the robotic devices and training of the control by reducing the external pattern generators and the amount and types of training data for the control.
format Preprint
id arxiv_https___arxiv_org_abs_2305_03994
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle Embedding bifurcations into pneumatic artificial muscle
Akashi, Nozomi
Kuniyoshi, Yasuo
Jo, Taketomo
Nishida, Mitsuhiro
Sakurai, Ryo
Wakao, Yasumichi
Nakajima, Kohei
Robotics
Chaotic Dynamics
I.2.9
Harnessing complex body dynamics has been a long-standing challenge in robotics. Soft body dynamics is a typical example of high complexity in interacting with the environment. An increasing number of studies have reported that these dynamics can be used as a computational resource. This includes the McKibben pneumatic artificial muscle, which is a typical soft actuator. This study demonstrated that various dynamics, including periodic and chaotic dynamics, could be embedded into the pneumatic artificial muscle, with the entire bifurcation structure using the framework of physical reservoir computing. These results suggest that dynamics that are not presented in training data could be embedded by using this capability of bifurcation embeddment. This implies that it is possible to embed various qualitatively different patterns into pneumatic artificial muscle by learning specific patterns, without the need to design and learn all patterns required for the purpose. Thus, this study sheds new light on a novel pathway to simplify the robotic devices and training of the control by reducing the external pattern generators and the amount and types of training data for the control.
title Embedding bifurcations into pneumatic artificial muscle
topic Robotics
Chaotic Dynamics
I.2.9
url https://arxiv.org/abs/2305.03994