Mobile-Network Connected Drones: Field Trials, Simulations, and Design Insights
January 31, 2018 Β· Declared Dead Β· π IEEE Vehicular Technology Magazine
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Authors
Xingqin Lin, Richard Wiren, Sebastian Euler, Arvi Sadam, Helka-Liina Maattanen, Siva D. Muruganathan, Shiwei Gao, Y. -P. Eric Wang, Juhani Kauppi, Zhenhua Zou, Vijaya Yajnanarayana
arXiv ID
1801.10508
Category
cs.NI: Networking & Internet
Citations
124
Venue
IEEE Vehicular Technology Magazine
Last Checked
4 months ago
Abstract
Drones are becoming increasingly used in a wide variety of industries and services and are delivering profound socioeconomic benefits. Technology needs to be in place to ensure safe operation and management of the growing fleet of drones. Mobile networks have connected tens of billions of devices on the ground in the past decades and are now ready to connect the drones flying in the sky. In this article, we share some of our findings in cellular connectivity for low altitude drones. We first present and analyze field measurement data collected during drone flights in a commercial Long-Term Evolution (LTE) network. We then present simulation results to shed light on the performance of a network when it is serving many drones simultaneously over a wide area. The results, analysis, and design insights presented in this article help enhance the understanding of the applicability and performance of providing mobile connectivity to low altitude drones.
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