基于机器人操作系统持续学习的物理UGV强化学习仿真模型的实现

Edgar M. Perez, Abhijit Majumdar, P. Benavidez, M. Jamshidi
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引用次数: 1

摘要

人工智能(AI)一直是机器人领域的一个问题,因为人工智能是基于迭代算法的。一般来说,物理模型的模拟用于显示学习算法的结果或显示概念的证明。由于模型是基于训练数据的参数估计生成的,因此为了建模准确的分类函数,迭代大量的时间是至关重要的。因此,机器人需要花费大量的时间来生成这样的功能。在本研究中,强化学习的实现将应用于无人地面车辆(UGV)学习模拟模型,该模型将使用机器人操作系统(ROS)转换为物理UGV,以测试给定模型的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Implementation of Reinforcement Learning Simulated Madel on Physical UGV Using Robot Operating System for Continual Learning
Artificial intelligence (AI) has been an issue in robotics, since AI is based on iterative algorithms. In general, simulations of physical models are used to show the outcome of learning algorithms or show proof of concepts. Since models are generated based on parameter estimations of training data, it is crucial to iterate a significant amount of times in order to model an accurate classification function. Thus, it would take a substantial amount of time for a robot to generate such a function. In this research, an implementation of reinforced learning will be applied on a unmanned ground vehicle (UGV) learning simulated model that will be translated into a physical UGV using Robot Operating System (ROS) to test performance of the given model.
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