机器人
强化学习
忠诚
物理引擎
计算机科学
动力学仿真
执行机构
残余物
鉴定(生物学)
人工智能
学习迁移
控制工程
模拟
工程类
物理
算法
电信
植物
量子力学
生物
作者
Nitish Sontakke,Hosik Chae,Sang Joon Lee,Tianle Huang,Dennis Hong,S. R. P. van Hal
标识
DOI:10.1109/iros55552.2023.10342062
摘要
The light and soft characteristics of Buoyancy Assisted Lightweight Legged Unit (BALLU) robots have a great potential to provide intrinsically safe interactions in environments involving humans, unlike many heavy and rigid robots. However, their unique and sensitive dynamics impose challenges to obtaining robust control policies in the real world. In this work, we demonstrate robust sim-to-real transfer of control policies on the BALLU robots via system identification and our novel residual physics learning method, Environment Mimic (EnvMimic). First, we model the nonlinear dynamics of the actuators by collecting hardware data and optimizing the simulation parameters. Rather than relying on standard supervised learning formulations, we utilize deep reinforcement learning to train an external force policy to match real-world trajectories, which enables us to model residual physics with greater fidelity. We analyze the improved simulation fidelity by comparing the simulation trajectories against the real-world ones. We finally demonstrate that the improved simulator allows us to learn better walking and turning policies that can be successfully deployed on the hardware of BALLU.
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