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ARS: AI-Driven Recovery Controller for Quadruped Robot Using Single-Network Model

Hansol Kang, Hyun‐Yong Lee, Ji‐Man Park, Seong Won Nam, Boem Ha Yi, Jae Young Oh, B. Kim, Hyun Seok Kim, Hyouk Ryeol Choi

发表年份
2024
引用次数
2
访问权限
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摘要

Legged robots, especially quadruped robots, are widely used in various environments due to their advantage in overcoming rough terrains. However, falling is inevitable. Therefore, the ability to overcome a falling state is an essential ability for legged robots. In this paper, we propose a method to fully recover a quadruped robot from a fall using a single-neural network model. The neural network model is trained in two steps in simulations using reinforcement learning, and then directly applied to AiDIN-VIII, a quadruped robot with 12 degrees of freedom. Experimental results using the proposed method show that the robot can successfully recover from a fall within 5 s in various postures, even when the robot is completely turned over. In addition, we can see that the robot successfully recovers from a fall caused by a disturbance.

关键词

RobotFalling (accident)TerrainArtificial neural networkComputer scienceController (irrigation)SimulationControl theory (sociology)Artificial intelligenceControl (management)

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