Research Article

Predictive UAV Battery Maintenance Planning with Artificial Intelligence

Volume: 9 Number: 2 June 28, 2025
EN

Predictive UAV Battery Maintenance Planning with Artificial Intelligence

Abstract

This research paper explores the use of artificial intelligence (AI) in the maintenance planning of electric batteries for unmanned aerial vehicles (UAVs). Traditional maintenance strategies are challenged by the impact on battery performance and the complexity of battery degradation, highlighting the importance of an AI-assisted predictive maintenance approach. The research predicts battery degradation using machine learning techniques, specifically Artificial Neural Networks (ANN) model, in combination with MATLAB's Remaining Useful Life (RUL) Prediction Toolbox. The AI model is designed to accurately predict remaining flight time and perform maintenance only when needed. This prevents premature battery replacement, reduces environmental pollution, and contributes to sustainable aviation. The AI-powered maintenance model helps transform maintenance strategy, optimize operational costs, and increase the safety of UAV systems while reducing unexpected battery failures. Refined predictive methodologies for UAV battery diagnostics and maintenance demonstrate the importance of UAV battery health on operational efficiency. Statistical analysis of the AI model demonstrates robust predictive capability, achieving a mean absolute percentage error (MAPE) of 3.2% for battery capacity degradation and 2.9% for flight time prediction, supporting high prediction accuracy. The study’s originality lies in its use of ANN within the MATLAB RUL Prediction Toolbox to provide a data-driven predictive maintenance framework for UAV batteries, addressing a gap in the literature by offering a scalable solution that enhances prediction accuracy over traditional methods. The study proposes the integration of real-time operational data and advanced AI algorithms and demonstrates a significant advance in predictive maintenance to improve UAV reliability and sustainability.

Keywords

References

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Details

Primary Language

English

Subjects

Air-Space Transportation, Avionics

Journal Section

Research Article

Publication Date

June 28, 2025

Submission Date

September 9, 2024

Acceptance Date

May 22, 2025

Published in Issue

Year 2025 Volume: 9 Number: 2

APA
Şahin, H. (2025). Predictive UAV Battery Maintenance Planning with Artificial Intelligence. Journal of Aviation, 9(2), 260-269. https://doi.org/10.30518/jav.1546277
AMA
1.Şahin H. Predictive UAV Battery Maintenance Planning with Artificial Intelligence. JAV. 2025;9(2):260-269. doi:10.30518/jav.1546277
Chicago
Şahin, Hüseyin. 2025. “Predictive UAV Battery Maintenance Planning With Artificial Intelligence”. Journal of Aviation 9 (2): 260-69. https://doi.org/10.30518/jav.1546277.
EndNote
Şahin H (June 1, 2025) Predictive UAV Battery Maintenance Planning with Artificial Intelligence. Journal of Aviation 9 2 260–269.
IEEE
[1]H. Şahin, “Predictive UAV Battery Maintenance Planning with Artificial Intelligence”, JAV, vol. 9, no. 2, pp. 260–269, June 2025, doi: 10.30518/jav.1546277.
ISNAD
Şahin, Hüseyin. “Predictive UAV Battery Maintenance Planning With Artificial Intelligence”. Journal of Aviation 9/2 (June 1, 2025): 260-269. https://doi.org/10.30518/jav.1546277.
JAMA
1.Şahin H. Predictive UAV Battery Maintenance Planning with Artificial Intelligence. JAV. 2025;9:260–269.
MLA
Şahin, Hüseyin. “Predictive UAV Battery Maintenance Planning With Artificial Intelligence”. Journal of Aviation, vol. 9, no. 2, June 2025, pp. 260-9, doi:10.30518/jav.1546277.
Vancouver
1.Hüseyin Şahin. Predictive UAV Battery Maintenance Planning with Artificial Intelligence. JAV. 2025 Jun. 1;9(2):260-9. doi:10.30518/jav.1546277

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