任务(项目管理)
计算机科学
对象(语法)
动力学(音乐)
桥(图论)
控制(管理)
控制工程
系统动力学
校准
机器人
培训(气象学)
传输(计算)
简单(哲学)
模拟
人工智能
钥匙(锁)
意外事件
瞬态(计算机编程)
理论(学习稳定性)
简单
任务分析
控制理论(社会学)
机器人学
机械臂
班级(哲学)
国家(计算机科学)
传输(电信)
作者
Xue Bin Peng,Marcin Andrychowicz,Wojciech Zaremba,Pieter Abbeel
标识
DOI:10.1109/icra.2018.8460528
摘要
Simulations are attractive environments for training agents as they provide an abundant source of data and alleviate certain safety concerns during the training process. But the behaviours developed by agents in simulation are often specific to the characteristics of the simulator. Due to modeling error, strategies that are successful in simulation may not transfer to their real world counterparts. In this paper, we demonstrate a simple method to bridge this “reality gap”. By randomizing the dynamics of the simulator during training, we are able to develop policies that are capable of adapting to very different dynamics, including ones that differ significantly from the dynamics on which the policies were trained. This adaptivity enables the policies to generalize to the dynamics of the real world without any training on the physical system. Our approach is demonstrated on an object pushing task using a robotic arm. Despite being trained exclusively in simulation, our policies are able to maintain a similar level of performance when deployed on a real robot, reliably moving an object to a desired location from random initial configurations. We explore the impact of various design decisions and show that the resulting policies are robust to significant calibration error.
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