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

IF 3.4 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Inteligencia Artificial-Iberoamerical Journal of Artificial Intelligence Pub Date : 2023-09-10 DOI:10.4114/intartif.vol26iss72pp146-159
Etienne Feukeu, Sumbwanyambe Mbuyu
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Abstract

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 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 the transmitted errors, model efficiency and throughput respectively, compared to Cte, ARF, and AMC algorithms.
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车辆自组织网络中链路自适应策略的机器学习算法
车辆自组织网络(VANETs)创建于18年前,旨在减少公共道路上的事故并挽救生命。实现这一目标取决于VANET移动设备与周围环境交换道路状态信息(RSI),并根据接收到的RSI采取行动。因此,必须确保准确地接收传输的消息。这需要控制共享介质或链路的质量,同时考虑信道状态信息(CSI),它提供了信道质量和信噪比(SNR)的信息。基于CSI调整负载的过程称为链路适应(Link Adaptation, LA)。虽然有几篇LA论文发表在VANETs上,但很少有人考虑到相对节点移动性的影响。这项工作提出了一种使用神经网络(NN)和Levenberg-Marquardt算法(LMA)的VANETs链路自适应策略。在考虑相对速度引起的多普勒频移效应的情况下,仿真结果表明,与Cte、ARF和AMC算法相比,该方法在传输误差、模型效率和吞吐量方面分别提高了77%、115%和853%。
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来源期刊
CiteScore
2.00
自引率
0.00%
发文量
15
审稿时长
8 weeks
期刊介绍: Inteligencia Artificial is a quarterly journal promoted and sponsored by the Spanish Association for Artificial Intelligence. The journal publishes high-quality original research papers reporting theoretical or applied advances in all branches of Artificial Intelligence. The journal publishes high-quality original research papers reporting theoretical or applied advances in all branches of Artificial Intelligence. Particularly, the Journal welcomes: New approaches, techniques or methods to solve AI problems, which should include demonstrations of effectiveness oor improvement over existing methods. These demonstrations must be reproducible. Integration of different technologies or approaches to solve wide problems or belonging different areas. AI applications, which should describe in detail the problem or the scenario and the proposed solution, emphasizing its novelty and present a evaluation of the AI techniques that are applied. In addition to rapid publication and dissemination of unsolicited contributions, the journal is also committed to producing monographs, surveys or special issues on topics, methods or techniques of special relevance to the AI community. Inteligencia Artificial welcomes submissions written in English, Spaninsh or Portuguese. But at least, a title, summary and keywords in english should be included in each contribution.
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