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AVIATION SPECIALIST FATIGUE ASSESSMENT BY THE RANDOM FOREST METHOD

https://doi.org/10.51955/2312-1327_2024_3_33

Abstract

The article examines the fatigue of flight personnel and members of the air traffic control service as a risk factor affecting flight safety. The proposed software solution based on the random forest method makes it possible to identify the state of fatigue in an aviation specialist after passing a series of tests evaluating a decrease in performance based on existing symptomatic attributes. The introduction of the presented solution into flight safety management systems at aviation enterprises will improve the corresponding reliability indicators of both pilots and air traffic controllers. 

About the Author

D. A. Evsevichev
Ulyanovsk Institute of Civil Aviation named after Chief Marshal of Aviation B.P. Bugaev
Russian Federation

Denis A. Evsevichev, Candidate of Technical Sciences, Associate Professor

Mozhayskogo street, 8/8 Ulyanovsk, 432071



References

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Review

For citations:


Evsevichev D.A. AVIATION SPECIALIST FATIGUE ASSESSMENT BY THE RANDOM FOREST METHOD. Crede Experto: transport, society, education, language. 2024;(3):33-44. (In Russ.) https://doi.org/10.51955/2312-1327_2024_3_33

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ISSN 2312-1327 (Online)