Wi-Fi Throughput Estimation for Vehicle-to-Network Communication in Heterogeneous Wireless Environments

Daniel Teixeira, Rui Meireles, Ana Aguiar
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引用次数: 2

Abstract

Vehicles increasingly need to be connected to networking infrastructure, to support applications such as over-the-air updates, edge computing, and even autonomous driving. The ubiquity of Wi-Fi networks makes them a good candidate for opportunistic vehicular access. However, that ubiquity also creates a problem of choice. In a heterogeneous Wi-Fi environment, with multiple different networks available, it becomes important for vehicles to be able to pick the best-performing one. Focusing on delay-insensitive traffic, we equate network performance with throughput, and aim to estimate it to inform network selection. Throughput estimation is traditionally done by injecting probe traffic, which induces congestion. We provide a solution that avoids this by using only passive measurements of variables such as signal strength to estimate throughput. Taking real-world training data collected in a diverse vehicular Wi-Fi communication scenario, with IEEE 802.11n, ac, and ad networks, we used Symbolic Regression (SR) and Unscented Kalman Filter (UKF) to develop a computationally inexpensive throughput estimation model, UKF-SR. Using a separate testing dataset, we compared the proposed UKF-SR model against traditional linear and support-vector regression, decision tree, random forest, and shallow neural network models. UKF-SR was competitive with even the most complex models. It yielded the lowest Root-Mean-Square Errors (RMSE) for 802.11n and ac, by 4.71% and 27.59 %, respectively, and was within 1% of the best-performing model for 802.11ad.
异构无线环境下车对网通信的Wi-Fi吞吐量估计
车辆越来越需要连接到网络基础设施,以支持无线更新、边缘计算甚至自动驾驶等应用。无处不在的Wi-Fi网络使其成为机会主义车辆接入的好选择。然而,这种普遍性也带来了选择的问题。在异构Wi-Fi环境中,有多种不同的网络可用,因此车辆能够选择性能最佳的网络变得非常重要。关注延迟不敏感的流量,我们将网络性能与吞吐量等同起来,并旨在估计它以告知网络选择。吞吐量估计传统上是通过注入探测流量来完成的,这会导致拥塞。我们提供了一种解决方案,通过仅使用被动测量变量(如信号强度)来估计吞吐量,从而避免了这种情况。采用在不同的车载Wi-Fi通信场景中收集的真实世界训练数据,使用IEEE 802.11n, ac和ad网络,我们使用符号回归(SR)和无气味卡尔曼滤波(UKF)来开发计算成本低廉的吞吐量估计模型UKF-SR。使用单独的测试数据集,我们将提出的UKF-SR模型与传统的线性和支持向量回归、决策树、随机森林和浅神经网络模型进行了比较。即使与最复杂的模型相比,UKF-SR也具有竞争力。对于802.11n和ac,它产生了最低的均方根误差(RMSE),分别为4.71%和27.59%,并且与802.11ad的最佳性能模型相差不到1%。
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