Machine Learning Algorithm for a Link Adaptation strategy in a Vehicular Ad hoc Network

被引:0
|
作者
Feukeu E.A. [1 ]
Mbuyu S. [1 ]
机构
[1] Dept. Electrical and Mining Engineering, CSET University of South Africa, Johannesburg
关键词
Link adaptation; Machine Learning; Neural Network; V2I; V2V; VANET; WAVE;
D O I
10.4114/intartif.vol26iss72pp146-159
中图分类号
学科分类号
摘要
Vehicular Ad Hoc Networks (VANETs) were created more than eighteen years ago with the aim of reducing accidents on public roads and saving lives. Achieving this goal depends on VANET mobiles exchanging Road State Information (RSI) with their surroundings and acting on the received RSI. Therefore, it is essential to ensure that transmitted messages are accurately received. This requires controlling the quality of the sharing medium or link while considering Channel State Information (CSI), which provides information on channel quality and Signal-to-Noise Ratio (SNR). The process of adjusting the payload based on the CSI is known as Link Adaptation (LA). While several LA works have been published in VANETs, few have considered the effect of relative node mobility. This work presents a link adaptation strategy for VANETs that uses a Neural Network (NN) and the Levenberg-Marquardt Algorithm (LMA). While accounting for the Doppler Shift effect induced by the relative velocity, the simulation results demonstrate that the NN approach outperforms its peers by 77%, 115% and 853% in terms of transmitted errors, model efficiency, and throughput respectively, compared to the Cte, ARF, and AMC algorithms. © IBERAMIA and the authors.
引用
收藏
页码:146 / 159
页数:13
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