ICUAS'17 Paper Abstract


Paper ThC4.5

Manukyan, Anush (University of Luxembourg), Olivares-Mendez, Miguel A. (SnT - University of Luxembourg), Voos, Holger (University of Luxembourg), Geist, Matthieu (CentraleSupelec)

Real Time Degradation Identification of UAV Using Machine Learning Techniques

Scheduled for presentation during the "UAS Applications - VI" (ThC4), Thursday, June 15, 2017, 17:00−17:20, Lummus Island

2017 International Conference on Unmanned Aircraft Systems, June 13-16, 2017, Miami Marriott Biscayne Bay, Miami, FL,

This information is tentative and subject to change. Compiled on April 12, 2021

Keywords UAS Applications, Levels of Safety, Autonomy


The usages and functionalities of Unmanned Aerial Vehicles (UAV) have grown rapidly during the last years. They are being engaged in many types of missions, ranging from military to agriculture passing by entertainment and rescue or even delivery. Nonetheless, for being able to perform such tasks, UAVs have to navigate safely in an often dynamic and partly unknown environment. This brings many challenges to overcome, some of which can lead to damages or degradations of different body parts. Thus, new tools and methods are required to allow the successful analysis and identification of the different threats that UAVs have to manage during their missions or flights. Various approaches, addressing this domain, have been proposed. However, most of them typically identify the changes in the UAVs behavior rather than the issue. This work presents an approach, which focuses not only on identifying degradations of UAVs during flights, but estimate the source of the failure as well.



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