Several research works have applied Reinforcement Learning (RL) algorithms to solve the Rate Adaptation (RA) problem in Wi-Fi networks. The dynamic nature of the radio link requires the algorithms to be responsive to changes in link quality. Delays in the execution of the algorithm may be detrimental to its performance, which in turn may decrease network performance. This aspect has been overlooked in the state of the art. In this paper, we present an analysis of common computational delays in RL-based RA algorithms, and propose a methodology that may be applied to reduce these computational delays and increase the efficiency of this type of algorithms. We apply the proposed methodology to an existing RL-based RA algorithm. The obtained experimental results indicate a reduction of one order of magnitude in the execution time of the algorithm, improving its responsiveness to link quality changes.
翻译:大量研究工作已将强化学习算法应用于解决Wi-Fi网络中的速率自适应(RA)问题。无线电信号的动态特性要求算法对链路质量变化做出响应。算法执行延迟可能对其性能产生负面影响,从而降低网络性能。这方面在现有文献中被忽视了。本文分析了基于强化学习的RA算法中常见的计算延迟,并提出了一种减少这些计算延迟并提高此类算法效率的方法。我们将所提出的方法应用于现有的基于强化学习的RA算法中。实验结果显示,算法执行时间缩短了一个数量级,提高了对链路质量变化的响应能力。