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Main Authors: Kawaharazuka, Kento, Hiraoka, Naoki, Koga, Yuya, Nishiura, Manabu, Omura, Yusuke, Asano, Yuki, Okada, Kei, Kawasaki, Koji, Inaba, Masayuki
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2502.16085
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author Kawaharazuka, Kento
Hiraoka, Naoki
Koga, Yuya
Nishiura, Manabu
Omura, Yusuke
Asano, Yuki
Okada, Kei
Kawasaki, Koji
Inaba, Masayuki
author_facet Kawaharazuka, Kento
Hiraoka, Naoki
Koga, Yuya
Nishiura, Manabu
Omura, Yusuke
Asano, Yuki
Okada, Kei
Kawasaki, Koji
Inaba, Masayuki
contents The complex structure of musculoskeletal humanoids makes it difficult to model them, and the inter-body interference and high internal muscle force are unavoidable. Although various safety mechanisms have been developed to solve this problem, it is important not only to deal with the dangers when they occur but also to prevent them from happening. In this study, we propose a method to learn a network outputting danger probability corresponding to the muscle length online so that the robot can gradually prevent dangers from occurring. Applications of this network for control are also described. The method is applied to the musculoskeletal humanoid, Musashi, and its effectiveness is verified.
format Preprint
id arxiv_https___arxiv_org_abs_2502_16085
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Online Learning of Danger Avoidance for Complex Structures of Musculoskeletal Humanoids and Its Applications
Kawaharazuka, Kento
Hiraoka, Naoki
Koga, Yuya
Nishiura, Manabu
Omura, Yusuke
Asano, Yuki
Okada, Kei
Kawasaki, Koji
Inaba, Masayuki
Robotics
The complex structure of musculoskeletal humanoids makes it difficult to model them, and the inter-body interference and high internal muscle force are unavoidable. Although various safety mechanisms have been developed to solve this problem, it is important not only to deal with the dangers when they occur but also to prevent them from happening. In this study, we propose a method to learn a network outputting danger probability corresponding to the muscle length online so that the robot can gradually prevent dangers from occurring. Applications of this network for control are also described. The method is applied to the musculoskeletal humanoid, Musashi, and its effectiveness is verified.
title Online Learning of Danger Avoidance for Complex Structures of Musculoskeletal Humanoids and Its Applications
topic Robotics
url https://arxiv.org/abs/2502.16085