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Locomotion Generation for a Rat Robot based on Environmental Changes via Reinforcement Learning

Authors :
Shan, Xinhui
Huang, Yuhong
Bing, Zhenshan
Zhang, Zitao
Yao, Xiangtong
Huang, Kai
Knoll, Alois
Shan, Xinhui
Huang, Yuhong
Bing, Zhenshan
Zhang, Zitao
Yao, Xiangtong
Huang, Kai
Knoll, Alois
Publication Year :
2024

Abstract

This research focuses on developing reinforcement learning approaches for the locomotion generation of small-size quadruped robots. The rat robot NeRmo is employed as the experimental platform. Due to the constrained volume, small-size quadruped robots typically possess fewer and weaker sensors, resulting in difficulty in accurately perceiving and responding to environmental changes. In this context, insufficient and imprecise feedback data from sensors makes it difficult to generate adaptive locomotion based on reinforcement learning. To overcome these challenges, this paper proposes a novel reinforcement learning approach that focuses on extracting effective perceptual information to enhance the environmental adaptability of small-size quadruped robots. According to the frequency of a robot's gait stride, key information of sensor data is analyzed utilizing sinusoidal functions derived from Fourier transform results. Additionally, a multifunctional reward mechanism is proposed to generate adaptive locomotion in different tasks. Extensive simulations are conducted to assess the effectiveness of the proposed reinforcement learning approach in generating rat robot locomotion in various environments. The experiment results illustrate the capability of the proposed approach to maintain stable locomotion of a rat robot across different terrains, including ramps, stairs, and spiral stairs.

Details

Database :
OAIster
Publication Type :
Electronic Resource
Accession number :
edsoai.on1438537137
Document Type :
Electronic Resource