Proceedings Article10.1109/CCNC51644.2023.10060414
Multi-UAV Assisted Network Coverage Optimization for Rescue Operations using Reinforcement Learning
Omar Sami Oubbati,Hakim Badis,Abderrezak Rachedi,A. Lakas,Pascal Lorenz +4 more
- 08 Jan 2023
pp 1003-1008
13
TL;DR: In this paper , the authors proposed deploying an intelligent connected group of energy-efficient UAVs assisting rescue members and providing them communication coverage in the long run using a deep reinforcement learning strategy.
read more
Abstract: Mobile communication networks could make a significant difference in rescuing affected people in post-disaster scenarios. However, the existing communication infrastructures tend to be out of service in such scenarios. To solve this issue, Unmanned Aerial Vehicles (UAVs) could be launched as flying base stations to provide the required coverage to Rescue Members (RMs) and allow them to communicate and transmit crucial information through the established links. Meanwhile, with the unpredictable movements of RMs, three serious issues are affecting the deployment of UAVs: (i) the control of their mobility, (ii) their limited energy capacity, and (iii) their restricted communication ranges. Aiming to address these issues, we propose deploying an intelligent connected group of energy-efficient UAVs assisting RMs and providing them communication coverage in the long run. These requirements are satisfied using a deep reinforcement learning strategy to learn the environment dynamics and make good trajectory decisions. Simulation experiments have demonstrated the potential of our framework compared to baseline methods to provide temporary communication networks for emergency response teams during disaster relief missions.
read more
Chat with Paper
AI Agents for this Paper
Find similar papers on Google Scholar, PubMed and Arxiv
Write a critical review of this paper
Analyze citations of this paper to find unaddressed research gaps
Citations
An Overview of Drone Applications in the Construction Industry
Hee-Wook Choi,Hyung-Jin Kim,Sung-Keun Kim,Wongi S. Na +3 more
TL;DR: This paper provides an overview of drone applications in construction, highlighting their efficiency, accuracy, and safety benefits in design, construction, and maintenance phases, with a focus on transformative advancements and future industry impact.
49
Pilot and data power optimization problems in multiple Aerial Relay Stations cell‐free communication systems
Bui Anh Duc,Tran Manh Hoang,Nguyen Thi Thu Phuong,Xuan Nam Tran,Pham Thanh Hiep +4 more
TL;DR: This study investigates the quality of the multi‐ARS CF communication system, where ARSs are equipped with multiple antennas and stochastic distribution within a specific region to simultaneously serve numerous ground users, and proposes a novel method to optimize the pilot and data transmission power coefficients for improving channel estimation and increasing throughput per user.
3
Deep Reinforcement Learning Based Placement for Integrated Access Backhauling in UAV-Assisted Wireless Networks
Yuhui Wang,Junaid Farooq +1 more
TL;DR: A novel approach leveraging deep reinforcement learning (DRL) to optimize UAV placement in real-time, dynamically adjusting to changing network conditions and user requirements is introduced, providing a scalable and adaptive solution for future mobile networks.
2
Unmanned aerial vehicles in collaboration with fog computing network for improving quality of service
Akshita Gupta,Sachin Kumar Gupta +1 more
TL;DR: The proposed collaborative network improves QoS in UAV-based fog computing networks by minimizing latency and improving throughput.
2
Fuzzy synthetic evaluation of the critical drivers of UAVs’ deployment for construction in Nigeria
John Aliu,Douglas Aghimien,Ogungbayi Olumide David,Ayodeji Emmanuel Oke +3 more
TL;DR: This study identifies critical drivers of UAV adoption in Nigeria's construction industry using the TOE framework and Fuzzy Synthetic Evaluation, finding technology and organizational drivers as most influential, with logistics management, monitoring, and site surveying as key areas of application.
References
Deep reinforcement learning with double Q-learning
H Van Hasselt,Arthur Guez,David Silver +2 more
- 01 Jan 2015
TL;DR: In this article, the authors show that the DQN algorithm suffers from substantial overestimation in some games in the Atari 2600 domain, and they propose a specific adaptation to the algorithm and show that this algorithm not only reduces the observed overestimations, but also leads to much better performance on several games.
7.9K
Energy Minimization for Wireless Communication With Rotary-Wing UAV
Yong Zeng,Jie Xu,Rui Zhang +2 more
TL;DR: This paper derives a closed-form propulsion power consumption model for rotary-wing UAVs, and proposes a new path discretization method to transform the original problem into a discretized equivalent with a finite number of optimization variables, for which the proposed designs significantly outperform the benchmark schemes.
Modeling air-to-ground path loss for low altitude platforms in urban environments
Akram Al-Hourani,Sithamparanathan Kandeepan,Abbas Jamalipour +2 more
- 01 Dec 2014
TL;DR: A statistical propagation model is proposed for predicting the air-to-ground path loss between a low altitude platform and a terrestrial terminal based on the urban environment properties, and is dependent on the elevation angle between the terminal and the platform.
1.2K
Unmanned Aerial Vehicle With Underlaid Device-to-Device Communications: Performance and Tradeoffs
TL;DR: In this article, a tractable analytical framework for the coverage and rate analysis is derived for the deployment of an unmanned aerial vehicle (UAV) as a flying base station used to provide the fly wireless communications to a given geographical area is analyzed.
UAV assistance paradigm: State-of-the-art in applications and challenges
Bander A. Alzahrani,Omar Sami Oubbati,Ahmed Barnawi,Mohammed Atiquzzaman,Daniyal M. Alghazzawi +4 more
TL;DR: This comprehensive survey both studies and summarizes the existing UAV-assisted research, such as routing, data gathering, cellular communications, Internet of Things (IoT) networks, and disaster management that supports existing enabling technologies.
381