5G Network on Wings: A Deep Reinforcement Learning Approach to the UAV-Based Integrated Access and Backhaul
Journal article, 2024

Fast and reliable wireless communication has become a critical demand in human life. In the case of mission-critical (MC) scenarios, for instance, when natural disasters strike, providing ubiquitous connectivity becomes challenging by using traditional wireless networks. In this context, unmanned aerial vehicle (UAV) based aerial networks offer a promising alternative for fast, flexible, and reliable wireless communications. Due to unique characteristics such as mobility, flexible deployment, and rapid reconfiguration, drones can readily change location dynamically to provide on-demand communications to users on the ground in emergency scenarios. As a result, the usage of UAV base stations (UAV-BSs) has been considered an appropriate approach for providing rapid connection in MC scenarios. In this paper, we study how to control multiple UAV-BSs in both static and dynamic environments. We use a system-level simulator to model an MC scenario in which a macro-BS of a cellular network is out of service and multiple UAV-BSs are deployed using integrated access and backhaul (IAB) technology to provide coverage for users in the disaster area. With the data collected from the system-level simulation, a deep reinforcement learning algorithm is developed to jointly optimize the three-dimensional placement of these multiple UAV-BSs, which adapt their 3-D locations to the on-ground user movement. The evaluation results show that the proposed algorithm can support the autonomous navigation of the UAV-BSs to meet the MC service requirements in terms of user throughput and drop rate.

Emergency Communication Network

Machine Learning

Reinforcement Learning

Software Engineering

Author

Hongyi Zhang

University of Gothenburg

Software Engineering 1

Zhiqiang Qi

Ericsson

Jingya Li

Chalmers, Electrical Engineering, Communication, Antennas and Optical Networks

Anders Aronsson

Ericsson

Jan Bosch

University of Gothenburg

Software Engineering 1

Helena Holmström Olsson

Malmö university

IEEE Transactions on Machine Learning in Communications and Networking

2831-316X (eISSN)

Vol. 2 1109-1126

Subject Categories (SSIF 2011)

Software Engineering

Computer Science

DOI

10.1109/TMLCN.2024.3442771

More information

Latest update

1/10/2025