灵巧操作的模型预测-行为批评家强化学习

Muhammad Omer, Rami Ahmed, Benjamin Rosman, Sharief F. Babikir
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引用次数: 5

摘要

灵巧的多指机器人手通过获得更多的通用技能,为机器人操作器执行广泛的复杂任务提供了一个有前途的解决方案。然而,为机器人开发复杂的行为需要复杂的控制策略,这需要具有良好理解数学和基础物理的领域专业知识,这对于这种复杂的机器人来说将是非常困难的。像深度强化学习这样的学习算法为机器人直接从数据中学习复杂行为提供了一个通用框架。但是,即使对于学习算法,灵巧机械手由于其高维数和接触丰富的欠驱动对象操作,也代表了一个重大挑战。为了克服这些挑战,学习算法需要大量的数据生成,这通常是昂贵的或难以获得的。因此,对更高效和更有效的算法的需求增加了——从最少的可用数据中提取更多有用的信息。本文提出了一种算法模型预测控制-软演员评论家(MPC-SAC),该算法将离线学习与在线计划相结合,以制定控制策略。该算法在两个具有挑战性的复杂灵巧操作任务上进行了基准测试,并与其他最先进的无模型强化学习算法进行了比较。最后,发现该算法在两个任务中都能以最先进的数据效率达到渐近性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Model Predictive-Actor Critic Reinforcement Learning for Dexterous Manipulation
Dexterous multi-fingered robotic hands represent a promising solution for robotic manipulators to perform a wide range of complex tasks, through acquiring more general purpose skills. Nevertheless, developing complex behaviours for a robot needs sophisticated control strategies, which requires domain expertise with a good understanding of mathematics, and underlying physics, this will be very difficult for such complex robots. Learning algorithms like deep reinforcement learning provide a general framework for robots to learn complex behaviours directly from data. But, even for learning algorithms, dexterous manipulators represent a major challenge due to their high dimensionality and contact rich under-actuated object manipulation. To overcome these challenges, learning algorithms demand extensive data generation, which is often expensive or hard to obtain. So, the need for more efficient and more effective algorithms -that extract more useful information from the least amount of available data- has increased. This paper presents a contribution which is the development of the algorithm Model Predictive Control-Soft Actor Critic (MPC-SAC), an algorithm that combines offline learning with online planning to develop a control policy. The algorithm is benchmarked on two challenging complex dexterous manipulation tasks, against other state of the art model free reinforcement learning algorithms. Finally, it was found that the algorithm achieves asymptotic performance with state of the art data efficiency in both tasks.
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