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  4. Know thy neighbor - a data-driven approach to neighborhood estimation in VANETs
 
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2017
Conference Paper
Title

Know thy neighbor - a data-driven approach to neighborhood estimation in VANETs

Abstract
Current advances in vehicular ad-hoc networks (VANETs) point out the importance of multi-hop message dissemination. For this type of communication, the selection of neighboring nodes with stable links is vital. In this work, we address the neighbor selection problem with a data-driven approach. To this aim, we apply machine learning techniques to a massive data-set of ETSI ITS message exchange samples, obtained from simulated traffic in the highly detailed Luxembourg SUMO Traffic (LuST) Scenario. As a result, we present classification methods that increase neighbor selection accuracy by up to 43% compared to the state of the art.
Author(s)
Roscher, Karsten  
Fraunhofer-Institut für Eingebettete Systeme und Kommunikationstechnik ESK  
Nitsche, Thomas
Fraunhofer-Institut für Eingebettete Systeme und Kommunikationstechnik ESK  
Knorr, Rudi
Fraunhofer-Institut für Eingebettete Systeme und Kommunikationstechnik ESK  
Mainwork
IEEE 86th Vehicular Technology Conference, VTC Fall 2017. Proceedings  
Project(s)
TIMON  
Funder
European Commission EC  
Conference
Vehicular Technology Conference (VTC Fall) 2017  
Open Access
DOI
10.24406/publica-r-399873
10.1109/VTCFall.2017.8288303
File(s)
N-484617.pdf (248.56 KB)
Rights
Under Copyright
Language
English
ESK  
Keyword(s)
  • classification

  • feature selection

  • link estimation

  • machine learning

  • neighbor selection

  • neural network

  • simulation

  • vehicular ad hoc network

  • VANET

  • V2X

  • Vehicle-to-X

  • unicast

  • standard

  • reliability

  • estimation

  • Cams

  • adaptation model

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