基于强化学习的有线网络拥塞控制方法综述

Mettu Jhansi Lakshmi, Mahesh BabuArrama
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引用次数: 0

摘要

在TCP/IP网络中,TCP拥塞控制系统CC (TCP拥塞控制系统)保证了网络资源在用户之间高效、公平地共享。以前,TCP CC系统被设计成从预定义行为到特定网络控制信号的硬电缆。然而,随着网络变得更加复杂和竞争,这种分析发明的最优反馈动作映射将很难发展,本研究的贡献是对拥塞控制(CC)方法的全面描述和比较。与主要基于规则的标准CC算法相比,从先前知识中学习的能力非常有价值。根据研究,强化学习是基于学习的CC算法的一个主要趋势。在本文中,我们讨论了基于RL的CC算法的效率,并提出了基于RL的CC算法的当前问题。我们描述了基于学习的CC算法的问题和动态。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Methods of Congestion Control in Wired Networks with Reinforcement Learning – A Review
In a TCP/IP network, the TCP congestion control system (CC) ensures that network resources are shared efficiently and fairly between its users. Previously, TCP CC systems have been designed to cable hard from predefined behaviour to particular network control signal. However, as networks become more complex and competitive, the optimal feedback action mapping the invention of this analysis will be difficult to develop, and the contribution of this study is the thorough description of and comparison of the congestion control (CC) approaches. Comparatively to standard CC algorithms, which are primarily rule-based, the capacity to learn from previous knowledge is extremely valuable. According to the research, RL is a major trend among learning-based CC algorithms. In the paper we discuss the efficiency of CC algorithms on an RL basis and present current issues with CC algorithms on an RL basis. We describe the problems and dynamics of CC algorithms based on learning.
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