The Use of Artificial Intelligence to Increase the Functional Stability of UAV Systems
Mazakova A. Jomartova S. Mazakov T. Brzhanov R. Gura D.
2024Praise Worthy Prize S.r.l
International Review of Aerospace Engineering
2024#17Issue 398 - 106 pp.
– Automated troubleshooting of Unmanned Aerial Vehicles (UAVs) is essential in modern aviation. With the growing number of UAVs across various fields, fault detection and prediction have become essential for ensuring flight safety, enhancing reliability, and reducing operating costs. This article aims to evaluate various machine learning methods, including neural networks. The article analyzes the effectiveness of several machine-learning methods in detecting various types of malfunctions in UAVs, including engine failures and issues with rudders, elevators, and ailerons. Methods such as CNN-LSTM, CNN-NB, and CNN-LSTM-NB were tested on relevant data on emulated UAV flights with malfunctions. The results of the study revealed that different machine-learning methods vary in their effectiveness in detecting malfunctions in UAVs. For example, the CNN-LSTM method proved to be the most effective for detecting engine failures, while the CNN-LSTM-NB method showed high accuracy in detecting rudder and aileron failures. These findings can be useful for improving maintenance and safety systems in UAV aviation.
Machine Learning , Neural Networks , Sustainable Development Goals , Troubleshooting , Unmanned Aerial Vehicles (UAVs)
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Department of Artificial Intelligence and Big Data, Al-Farabi Kazakh National University, Almaty, Kazakhstan
Department of Computational Sciences and Statistics, Al-Farabi Kazakh National University, Almaty, Kazakhstan
Department of Information Systems, Al-Farabi Kazakh National University, Almaty, Kazakhstan
Department of Construction Engineering, Caspian University of Technology and Engineering named after Sh. Yessenov, Aktau, Kazakhstan
Department of Cadastre and Geoengineering, Kuban State Technological University, Krasnodar, Russian Federation
Department of Geodesy, Kuban State Agrarian University, Krasnodar, Russian Federation
Department of Artificial Intelligence and Big Data
Department of Computational Sciences and Statistics
Department of Information Systems
Department of Construction Engineering
Department of Cadastre and Geoengineering
Department of Geodesy
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