A Survey of Machine Learning Approaches for Mobile Robot Control

Robotics Pub Date : 2024-01-09 DOI:10.3390/robotics13010012
M. Rybczak, Natalia Popowniak, A. Lazarowska
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Abstract

Machine learning (ML) is a branch of artificial intelligence that has been developing at a dynamic pace in recent years. ML is also linked with Big Data, which are huge datasets that need special tools and approaches to process them. ML algorithms make use of data to learn how to perform specific tasks or make appropriate decisions. This paper presents a comprehensive survey of recent ML approaches that have been applied to the task of mobile robot control, and they are divided into the following: supervised learning, unsupervised learning, and reinforcement learning. The distinction of ML methods applied to wheeled mobile robots and to walking robots is also presented in the paper. The strengths and weaknesses of the compared methods are formulated, and future prospects are proposed. The results of the carried out literature review enable one to state the ML methods that have been applied to different tasks, such as the following: position estimation, environment mapping, SLAM, terrain classification, obstacle avoidance, path following, learning to walk, and multirobot coordination. The survey allowed us to associate the most commonly used ML algorithms with mobile robotic tasks. There still exist many open questions and challenges such as the following: complex ML algorithms and limited computational resources on board a mobile robot; decision making and motion control in real time; the adaptability of the algorithms to changing environments; the acquisition of large volumes of valuable data; and the assurance of safety and reliability of a robot’s operation. The development of ML algorithms for nature-inspired walking robots also seems to be a challenging research issue as there exists a very limited amount of such solutions in the recent literature.
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移动机器人控制的机器学习方法概览
机器学习(ML)是人工智能的一个分支,近年来发展迅猛。机器学习也与大数据有关,大数据是需要特殊工具和方法来处理的巨大数据集。ML 算法利用数据来学习如何执行特定任务或做出适当决策。本文对最近应用于移动机器人控制任务的 ML 方法进行了全面调查,这些方法分为以下几种:监督学习、无监督学习和强化学习。文中还介绍了应用于轮式移动机器人和步行机器人的 ML 方法的区别。文中阐述了比较方法的优缺点,并提出了未来展望。根据文献综述的结果,我们可以指出应用于不同任务的 ML 方法,例如:位置估计、环境映射、SLAM、地形分类、避障、路径跟踪、步行学习和多机器人协调。通过调查,我们将最常用的 ML 算法与移动机器人任务联系起来。目前仍有许多悬而未决的问题和挑战,例如:移动机器人上复杂的 ML 算法和有限的计算资源;实时决策和运动控制;算法对不断变化的环境的适应性;获取大量有价值的数据;以及确保机器人运行的安全性和可靠性。为受自然启发的行走机器人开发 ML 算法似乎也是一个具有挑战性的研究课题,因为近期文献中此类解决方案的数量非常有限。
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