机器人策略深度强化学习的教学方法

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS ACS Applied Bio Materials Pub Date : 2024-07-08 DOI:10.1002/cae.22780
Janez Podobnik, Ana Udir, Marko Munih, Matjaž Mihelj
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引用次数: 0

摘要

本文介绍了为卢布尔雅那大学电气工程系学生开发的强化学习(RL)教学方法。该方法旨在通过模拟环境和真实机器人上的示例和实验,向学生介绍强化学习的基本概念、方法和算法。该方法包括用 Python 编写的实用程序,并介绍了各种 RL 算法。介绍了 Q 学习算法,并实现了深度 Q 网络,以介绍神经网络在深度 RL 中的使用。软件对用户友好,可以轻松修改学习参数、奖励函数和算法。该方法在 Franka Emika Panda 机器人上进行了成功测试,机器人操纵器学会了移动到随机生成的目标位置、将真球射入球门以及将各种物体推到目标位置。本教学法的目标是为未来的机器人学学生提供学习辅助工具,帮助他们更好地理解 RL 的基本概念,并将其应用于各种问题。
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Teaching approach for deep reinforcement learning of robotic strategies
This paper presents the development of a teaching approach for Reinforcement Learning (RL) for students at the Faculty of Electrical Engineering, University of Ljubljana. The approach is designed to introduce students to the basic concepts, approaches, and algorithms of RL through examples and experiments in both simulation environments and on a real robot. The approach includes practical programs written in Python and presents various RL algorithms. The Q‐learning algorithm is introduced and a deep Q network is implemented to introduce the use of neural networks in deep RL. The software is user‐friendly and allows easy modification of learning parameters, reward functions, and algorithms. The approach was tested successfully on a Franka Emika Panda robot, where the robot manipulator learned to move to a randomly generated target position, shoot a real ball into the goal, and push various objects into target position. The goal of the presented teaching approach is to serve as a study aid for future generations of students of robotics to help them better understand the basic concepts of RL and apply them to a wide variety of problems.
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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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