2.4GHz WiFi ap的吞吐量和延迟估计:基于机器学习的方法

Shugo Kajita, H. Yamaguchi, T. Higashino, Hirofumi Urayama, M. Yamada, M. Takai
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引用次数: 5

摘要

本文报告了我们最近为自主ap设计的一个功能的结果,该功能可以在2.4GHz WiFi信道中估计其客户端的吞吐量和延迟,以支持这些ap的动态信道选择。我们的函数以附近干扰AP发出的信号的流量和强度以及目标AP的流量为输入。通过该功能,目标AP可以估计其客户端的吞吐量和延迟,而无需实际移动到每个通道,只需要监视干扰AP发送或接收的IEEE802.11 MAC帧。该函数由基于支持向量机的分类器和回归函数组成,前者用于估计容量饱和,后者用于估计目标信道饱和情况下的吞吐量和延迟。机器学习的训练数据集由高精度网络模拟器创建。我们已经进行了超过10,000次模拟来训练模型,并使用额外的2,000次模拟结果进行评估。结果表明,估计的吞吐量误差小于10%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Throughput and Delay Estimator for 2.4GHz WiFi APs: A Machine Learning-Based Approach
This paper reports our recent result in designing a function for autonomous APs to estimate throughput and delay of its clients in 2.4GHz WiFi channels to support those APs' dynamic channel selection. Our function takes as inputs the traffic volume and strength of signals emitted from nearby interference APs as well as the target AP's traffic volume. By this function, the target AP can estimate throughput and delay of its clients without actually moving to each channel, it is just required to monitor IEEE802.11 MAC frames sent or received by the interference APs. The function is composed of an SVM-based classifier to estimate capacity saturation and a regression function to estimate both throughput and delay in case of saturation in the target channel. The training dataset for the machine learning is created by a highly-precise network simulator. We have conducted over 10,000 simulations to train the model, and evaluated using additional 2,000 simulation results. The result shows that the estimated throughput error is less than 10%.
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