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Fakultät für Elektrotechnik und Informationstechnik
C. Schüler, M. Patchou, B. Sliwa, C. Wietfeld

Robust machine learning-enabled routing for highly mobile vehicular networks with PARRoT in ns-3

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in
  • Benjamin Sliwa
  • Cedrik Krieger
  • Manuel Patchou
  • Univ.-Prof. Dr.-Ing. Christian Wietfeld
  • Publications
  • CC5G.NRW
  • DRZ
  • Plan & Play
  • SFB 876

Abstract:

As implied by the high grade of relative mobility, the inherent network topology dynamics render aerial and ground-based vehicular mesh routing a highly challenging task. Since existing protocols are often not able to timely adopt their decision-making to the actual network conditions, they fail to provide reliable and efficient data delivery mechanisms. In this paper, we present the ns-3 integration of Predictive Ad-hoc Routing fueled by Reinforcement learning and Trajectory knowledge (PARRoT), a novel reinforcement learning-enabled routing protocol that integrates knowledge about the future motion of the mobile agents into the routing process.