Published February 28, 2018 | Version v1
Conference paper Open

Know Thy Neighbor - A Data-Driven Approach to Neighborhood Estimation in VANETs

  • 1. Fraunhofer ESK
  • 2. Fraunhofer ESK, University of Augsburg

Description

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.

Files

Know Thy Neighbor - A Data-Driven Approach toNeighborhood Estimation in VANETs.pdf

Additional details

Funding

European Commission
TIMON – Enhanced real time services for an optimized multimodal mobility relying on cooperative networks and open data 636220