Autonomous speed adaptation by a muscle-driven hind leg robot modeled on a cat without intervention from brain

Author:

Fukuoka Yasuhiro1ORCID,Habu Yasushi2,Inoue Kouta3,Ogura Satoshi4,Mori Yoshikazu1

Affiliation:

1. Graduate School of Mechanical Science and Engineering, Ibaraki University, Ibaraki, Japan

2. Yamaha Motor Co., Ltd., Shizuoka, Japan

3. SOLIZE Corporation, Tokyo, Japan

4. Nifty Corporation, Tokyo, Japan

Abstract

This study aims to design a nervous system model to drive the realistic muscle-driven legs for the locomotion of a quadruped robot. We evaluate our proposed nervous system model with a hind leg simulated model and robot. We apply a two-level central pattern generator for each leg, which generates locomotion rhythms and reproduces cat-like leg trajectories by driving different sets of the muscles at any timing during one cycle of moving the leg. The central pattern generator receives sensory feedback from leg loading. A cat simulated model and a robot with two hind legs, each with three joints driven by six muscle models, are controlled by our nervous system model. Even though their hind legs are forced backward at a wide range of speeds, they can adapt to the speed variation by autonomously adjusting its stride and cyclic duration without changing any parameters or receiving any descending inputs. In addition to the autonomous speed adaptation, the cat hind leg robot switched from a trot-like gait to a gallop-like gait while speeding up. These features can be observed in existing animal locomotion tests. These results demonstrate that our nervous system is useful as a valid and practical legged locomotion controller.

Funder

Japan Society for the Promotion of Science

Publisher

SAGE Publications

Subject

Artificial Intelligence,Computer Science Applications,Software

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