Master data

Title: Interference Management for Cellular-Connected UAVs: A Deep Reinforcement Learning Approach
Subtitle:
Abstract:

In this paper, an interference-aware path planning scheme for a network of cellular-connected unmanned aerial vehicles (UAVs) is proposed. In particular, each UAV aims at achieving a tradeoff between maximizing energy efficiency and minimizing both wireless latency and the interference caused on the ground network along its path. The problem is cast as a dynamic game among UAVs. To solve this game, a deep reinforcement learning algorithm, based on echo state network (ESN) cells, is proposed. The introduced deep ESN architecture is trained to allow each UAV to map each observation of the network state to an action, with the goal of minimizing a sequence of time-dependent utility functions. Each UAV uses the ESN to learn its optimal path, transmission power, and cell association vector at different locations along its path. The proposed algorithm is shown to reach a subgame perfect Nash equilibrium upon convergence. Moreover, an upper bound and a lower bound for the altitude of the UAVs are derived thus reducing the computational complexity of the proposed algorithm. The simulation results show that the proposed scheme achieves better wireless latency per UAV and rate per ground user (UE) while requiring a number of steps that are comparable to a heuristic baseline that considers moving via the shortest distance toward the corresponding destinations. The results also show that the optimal altitude of the UAVs varies based on the ground network density and the UE data rate requirements and plays a vital role in minimizing the interference level on the ground UEs as well as the wireless transmission delay of the UAV.

Keywords:
Publication type: Article in journal (Authorship)
Publication date: 04.2019 (Print)
Published by: IEEE Transactions on Wireless Communications
IEEE Transactions on Wireless Communications
to publication
 ( IEEE; )
Title of the series: -
Volume number: 18
Issue: 4
First publication: Yes
Version: -
Page: pp. 2125 - 2140

Versionen

Keine Version vorhanden
Publication date:
ISBN (e-book): -
eISSN: -
DOI: http://dx.doi.org/10.1109/TWC.2019.2900035
Homepage: -
Open access
  • No open access
Publication date: 04.2019
ISBN: -
ISSN: 1536-1276
Homepage: https://doi.org/10.1109/TWC.2019.2900035

Assignment

Organisation Address
Fakultät für Technische Wissenschaften
 
Institut für Vernetzte und Eingebettete Systeme
Universitätsstraße 65-67
9020 Klagenfurt am Wörthersee
Austria
  -993640
   kornelia.lienbacher@aau.at
https://nes.aau.at/
To organisation
Universitätsstraße 65-67
AT - 9020  Klagenfurt am Wörthersee

Categorisation

Subject areas
  • 102018 - Artificial neural networks
  • 102025 - Distributed systems
  • 202022 - Information technology
  • 202030 - Communication engineering
  • 202031 - Network engineering
  • 202035 - Robotics
  • 202041 - Computer engineering
  • 202038 - Telecommunications
Research Cluster No research Research Cluster selected
Citation index
  • Science Citation Index (SCI)
Information about the citation index: Master Journal List
Peer reviewed
  • Yes
Publication focus
  • Science to Science (Quality indicator: I)
Classification raster of the assigned organisational units:
working groups
  • Mobile Systems Group

Cooperations

Organisation Address
Virginia Tech
United States of America
US  

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