Al-Hamadani Mokhaled N A, Fadhel Mohammed A, Alzubaidi Laith, Balazs Harangi
Department of Data Science and Visualization, Faculty of Informatics, University of Debrecen, H-4032 Debrecen, Hungary.
Doctoral School of Informatics, University of Debrecen, H-4032 Debrecen, Hungary.
Sensors (Basel). 2024 Apr 11;24(8):2461. doi: 10.3390/s24082461.
Reinforcement learning (RL) has emerged as a dynamic and transformative paradigm in artificial intelligence, offering the promise of intelligent decision-making in complex and dynamic environments. This unique feature enables RL to address sequential decision-making problems with simultaneous sampling, evaluation, and feedback. As a result, RL techniques have become suitable candidates for developing powerful solutions in various domains. In this study, we present a comprehensive and systematic review of RL algorithms and applications. This review commences with an exploration of the foundations of RL and proceeds to examine each algorithm in detail, concluding with a comparative analysis of RL algorithms based on several criteria. This review then extends to two key applications of RL: robotics and healthcare. In robotics manipulation, RL enhances precision and adaptability in tasks such as object grasping and autonomous learning. In healthcare, this review turns its focus to the realm of cell growth problems, clarifying how RL has provided a data-driven approach for optimizing the growth of cell cultures and the development of therapeutic solutions. This review offers a comprehensive overview, shedding light on the evolving landscape of RL and its potential in two diverse yet interconnected fields.
强化学习(RL)已成为人工智能中一种动态且具有变革性的范式,有望在复杂和动态环境中实现智能决策。这一独特特性使强化学习能够通过同时进行采样、评估和反馈来解决序列决策问题。因此,强化学习技术已成为在各个领域开发强大解决方案的合适候选方法。在本研究中,我们对强化学习算法及其应用进行了全面而系统的综述。本综述首先探讨强化学习的基础,接着详细研究每种算法,最后基于若干标准对强化学习算法进行比较分析。然后,本综述扩展到强化学习的两个关键应用领域:机器人技术和医疗保健。在机器人操作中,强化学习提高了诸如物体抓取和自主学习等任务的精度和适应性。在医疗保健领域,本综述将重点转向细胞生长问题领域,阐明强化学习如何提供一种数据驱动的方法来优化细胞培养的生长以及开发治疗方案。本综述提供了一个全面的概述,可以了解强化学习不断发展的前景及其在两个不同但相互关联的领域中的潜力。