One of the biggest hurdles robotics faces is the facet of sophisticated and hard-to-engineer behaviors. Reinforcement learning offers a set of tools, and a framework to address this problem. In parallel, the misgivings of robotics offer a solid testing ground and evaluation metric for advancements in reinforcement learning. The two disciplines go hand-in-hand, much like the fields of Mathematics and Physics. By means of this survey paper, we aim to invigorate links between the research communities of the two disciplines by focusing on the work done in reinforcement learning for locomotive and control aspects of robotics. Additionally, we aim to highlight not only the notable successes but also the key challenges of the application of Reinforcement Learning in Robotics. This paper aims to serve as a reference guide for researchers in reinforcement learning applied to the field of robotics. The literature survey is at a fairly introductory level, aimed at aspiring researchers. Appropriately, we have covered the most essential concepts required for research in the field of reinforcement learning, with robotics in mind. Through a thorough analysis of this problem, we are able to manifest how reinforcement learning could be applied profitably, and also focus on open-ended questions, as well as the potential for future research.
翻译:机器人面临的最大障碍之一是复杂和难以制造的行为的面貌。强化学习提供了一套工具,并提供了解决这一问题的框架。与此同时,机器人的疑虑为强化学习的进步提供了坚实的测试基础和评估标准。这两个学科是手牵手的,与数学和物理领域很相似。通过这份调查文件,我们的目标是通过侧重于在加强机器人机车和控制方面的学习方面所做的工作,使这两个学科的研究界之间产生新的联系。此外,我们不仅要突出在机器人中应用强化学习所取得的显著成功,而且要突出应用强化学习的关键挑战。本文旨在作为研究人员加强机器人领域学习的参考指南。文献调查处于一个相当入门的层次,目的是培养研究者。我们适当地涵盖了在机器人的脑中加强学习领域研究所需的最基本概念。我们通过对这一问题的透彻分析,能够展示未来研究的开放性学习潜力,同时也能够显示未来研究的开放性研究重点是如何被应用的。