Emergent Mind

Machine Learning-Assisted UAV Operations with UTM: Requirements, Challenges, and Solutions

(2006.14544)
Published Jun 24, 2020 in eess.SP , cs.SY , and eess.SY

Abstract

Unmanned aerial vehicles (UAVs) are emerging in commercial spaces and will support many applications and services, such as smart agriculture, dynamic network deployment, and network coverage extension, surveillance and security. The unmanned aircraft system (UAS) traffic management (UTM) provides a framework for safe UAV operation integrating UAV controllers and central data bases via a communications network. This paper discusses the challenges and opportunities for ML for effectively providing critical UTM services. We introduce the four pillars of UTMoperation planning, situational awareness, status and advisors and securityand discuss the main services, specific opportunities for ML and the ongoing research. We conclude that the multi-faceted operating environment and operational parameters will benefit from collected data and data-driven algorithms, as well as online learning to face new UAV operation situations.

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