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Dense Multiagent Reinforcement Learning Aided Multi-UAV Information Coverage for Vehicular Networks

  • Hang Fu
  • , Jingjing Wang*
  • , Jianrui Chen
  • , Pengfei Ren
  • , Zheng Zhang
  • , Guodong Zhao
  • *Corresponding author for this work
  • Beihang University
  • Xidian University
  • Peng Cheng Laboratory

Research output: Contribution to journalArticlepeer-review

Abstract

With the rapid development of wireless communication networks, UAVs serving as base stations are increasingly being applied in various scenarios which not only include edge computation and task offloading, but also involve emergency communication, vehicular network enhancement, etc. In order to enhance the utility of UAV base stations' allocation and deployment, a series of algorithms have been proposed, utilizing heuristic methods, learning-based algorithms, or optimization approaches. However, it is intractable for current algorithms to handle the exponential computation increment with UAV base stations increasing, and complicated application scenarios with high dynamic demands. To solve the above issues, we formulate a decision problem with a long sequence to optimize the deployment of multi-UAV base stations for maximizing vehicular networks' communication coverage ratio, which needs to be subject to co-constraints consisting of moving velocity, energy consumption, and communication coverage radius. To solve this optimization problem, we creatively propose an algorithm named dense multiagent reinforcement learning (DMARL), which is under the dual-layer nested decision-making framework, centralized training with decentralized deployment, and accelerates training by only collecting critical states into the dense sampling buffer. To prove our proposed algorithm's effectiveness and generalization ability, we conduct experimental simulations in scenarios with different scales. Corresponding results have been provided to verify our algorithm's superiority in training efficiency and performance metrics, including coverage ratio and energy consumption, compared with other algorithms.

Original languageEnglish
Pages (from-to)21274-21286
Number of pages13
JournalIEEE Internet of Things Journal
Volume11
Issue number12
DOIs
StatePublished - 15 Jun 2024

UN SDGs

This output contributes to the following UN Sustainable Development Goals (SDGs)

  1. SDG 7 - Affordable and Clean Energy
    SDG 7 Affordable and Clean Energy

Keywords

  • Communication coverage
  • dense reinforcement learning
  • distributed multiunmanned aerial vehicle (UAV)
  • multiagent reinforcement learning (MARL)
  • vehicular networks

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