Machine learning for efficient link adaptation strategy in VANETs

被引:0
|
作者
Feukeu E.A. [1 ]
Snyman L.W. [2 ]
机构
[1] Department of Electrical Engineering, College of Science, Engineering and Technology (CSET), University of South Africa, Gauteng, Pretoria
[2] Institute for Nanotechnology and Water Sustainability, College of Science, Engineering and Technology (CSET), University of South Africa, Gauteng, Pretoria
关键词
Doppler shift; DSRC; IEEE802.11p; link adaptation; machine learning; V2I; V2V; VANET; WAVE;
D O I
10.1504/IJVICS.2023.132930
中图分类号
学科分类号
摘要
The benefit brought by Vehicular Ad Hoc Networks (VANETs) can only be gained if the successful Road State Information (RSI) message notifications are exchanged between the mobiles involved. Moreover, a successful exchange is only possible with a well-integrated Link Adaptation (LA) mechanism. Furthermore, the higher mobility induces Doppler Shift (DS) in the carrier frequency component of the transmitter node, which corrupts the transmitted signal and makes decoding difficult at the receiver end. Several authors have addressed the LA in VANETs, but almost all of them have done so without incorporating an effective DS mitigation strategy. The current study presents a Machine Learning (ML) approach for an efficient LA strategy in VANETs. The simulation results demonstrated that the ML outperformed AMC, ARF and Cte in threefold, with an improvement level of 212% in terms of throughput, 86.5% in terms of transmission duration and 39% in terms of model efficiency. Copyright © 2023 Inderscience Enterprises Ltd.
引用
收藏
页码:279 / 307
页数:28
相关论文
共 50 条
  • [21] A machine learning based algorithm for joint improvement of power control, link adaptation, and capacity in beyond 5G communication systems
    Jafar Norolahi
    Paeiz Azmi
    Telecommunication Systems, 2023, 83 : 323 - 337
  • [22] A machine learning efficient frontier
    Clark, Brian
    Feinstein, Zachary
    Simaan, Majeed
    OPERATIONS RESEARCH LETTERS, 2020, 48 (05) : 630 - 634
  • [23] Spatial Modulation Link Adaptation: a Deep Learning Approach
    Tato, Anxo
    Mosquera, Carlos
    CONFERENCE RECORD OF THE 2019 FIFTY-THIRD ASILOMAR CONFERENCE ON SIGNALS, SYSTEMS & COMPUTERS, 2019, : 1801 - 1805
  • [24] The Case for a Network Adaptation Framework in VANETs
    Caloca, Carlos F.
    Antonio Garcia-Macias, J.
    Delot, Thierry
    2010 IEEE 6TH INTERNATIONAL CONFERENCE ON WIRELESS AND MOBILE COMPUTING, NETWORKING AND COMMUNICATIONS (WIMOB), 2010, : 562 - 569
  • [25] Link quality-aware call admission strategy for mobile cellular networks with link adaptation
    Cruz-Perez, Felipe A.
    Vazquez-Avila, Jose L.
    Hernandez-Valdez, Genaro
    Ortigoza-Guerrero, Lauro
    IEEE TRANSACTIONS ON WIRELESS COMMUNICATIONS, 2006, 5 (09) : 2413 - 2425
  • [26] Joint power allocation and MCS selection for energy-efficient link adaptation: A deep reinforcement learning approach
    Parsa, Ali
    Moghim, Neda
    Salavati, Pouyan
    COMPUTER NETWORKS, 2022, 218
  • [27] Environmental Adaptation and Differential Replication in Machine Learning
    Unceta, Irene
    Nin, Jordi
    Pujol, Oriol
    ENTROPY, 2020, 22 (10) : 1 - 14
  • [28] Dynamic adaptation of policies using machine learning
    Pelaez, Alejandro
    Parashar, Manish
    Quiroz, Andres
    2016 16TH IEEE/ACM INTERNATIONAL SYMPOSIUM ON CLUSTER, CLOUD AND GRID COMPUTING (CCGRID), 2016, : 501 - 510
  • [29] Dynamic Microarchitectural Adaptation Using Machine Learning
    Dubach, Christophe
    Jones, Timothy M.
    Bonilla, Edwin V.
    ACM TRANSACTIONS ON ARCHITECTURE AND CODE OPTIMIZATION, 2013, 10 (04)
  • [30] Towards More Reliable Deep Learning-Based Link Adaptation for WiFi 6
    Hussien, Mostafa
    Ahmed, Mohammed F. A.
    Dahman, Ghassan
    Kim Khoa Nguyen
    Cheriet, Mohamed
    Poitau, Gwenael
    IEEE INTERNATIONAL CONFERENCE ON COMMUNICATIONS (ICC 2021), 2021,