Assuring Safe and Efficient Operation of UAV Using Explainable Machine Learning

Author:

Alharbi Abdulrahman1ORCID,Petrunin Ivan1ORCID,Panagiotakopoulos Dimitrios1

Affiliation:

1. School of Aerospace, Transport and Manufacturing, Cranfield University, Bedford MK43 0AL, UK

Abstract

The accurate estimation of airspace capacity in unmanned traffic management (UTM) operations is critical for a safe, efficient, and equitable allocation of airspace system resources. While conventional approaches for assessing airspace complexity certainly exist, these methods fail to capture true airspace capacity, since they fail to address several important variables (such as weather). Meanwhile, existing AI-based decision-support systems evince opacity and inexplicability, and this restricts their practical application. With these challenges in mind, the authors propose a tailored solution to the needs of demand and capacity management (DCM) services. This solution, by deploying a synthesized fuzzy rule-based model and deep learning will address the trade-off between explicability and performance. In doing so, it will generate an intelligent system that will be explicable and reasonably comprehensible. The results show that this advisory system will be able to indicate the most appropriate regions for unmanned aerial vehicle (UAVs) operation, and it will also increase UTM airspace availability by more than 23%. Moreover, the proposed system demonstrates a maximum capacity gain of 65% and a minimum safety gain of 35%, while possessing an explainability attribute of 70%. This will assist UTM authorities through more effective airspace capacity estimation and the formulation of new operational regulations and performance requirements.

Publisher

MDPI AG

Subject

Artificial Intelligence,Computer Science Applications,Aerospace Engineering,Information Systems,Control and Systems Engineering

Reference129 articles.

1. Kim, Y., Jo, J., and Shaw, M. (2015, January 21–23). A Lightweight Communication Architecture for Small UAS Traffic Management (sUTM). Proceedings of the 2015 Integrated Communication, Navigation and Surveillance Conference (ICNS), Herdon, VA, USA.

2. Kopardekar, P., Rios, J., Prevot, T., Johnson, M., Jung, J., and Robinson, J.E. (2016, January 13–17). Unmanned Aircraft System Traffic Management (UTM) Concept of Operations. Proceedings of the AIAA Aviation and Aeronautics Forum (Aviation 2016), 2016 (ARC-E-DAA-TN32838), Washington, DC, USA.

3. Mueller, E., Kopardekar, P., and Goodrich, K. (2017, January 5–9). Enabling Airspace Integration for High-Density On-Demand Mobility Operations. Proceedings of the 17th AIAA Aviation Technology, Integration, and Operations Conference, Denver, CO, USA.

4. An evolutionary outlook of air traffic flow management techniques;Kistan;Prog. Aerosp. Sci.,2017

5. Ali, B.S. (2018, January 2–5). Management for Drones Flying in the City. Proceedings of the 22nd Air Transport Research Society (Atrs) World Conference Atcoex, Seoul, Republic of Korea. Available online: http://eprints.um.edu.my/18968/1/Traffic_Management_for_Drones_Flying_in_the_City.pdf.

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