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Recent catastrophic events in aviation have shown that current fault diagnosis schemes may not be enough to ensure a reliable and prompt sensor fault diagnosis. This paper describes a comparative analysis of consolidated data-driven sensor Fault Isolation (FI) and Fault Estimation (FE) techniques using flight data. Linear regression models, identified from data, are derived to build primary and transformed residuals. These residuals are then implemented to develop fault isolation schemes for 14 sensors of a semi-autonomous aircraft. Specifically, directional Mahalanobis distance-based and fault reconstruction-based techniques are compared in terms of their FI and FE performance. Then, a bank of Bayesian filters is proposed to compute, in flight, the fault belief for each sensor. Both the training and the validation of the schemes are performed using data from multiple flights. Artificial faults are injected into the fault-free sensor measurements to reproduce the occurrence of failures. A detailed evaluation of the techniques in terms of FI and FE performance is presented for failures on the air-data sensors, with special emphasis on the True Air Speed (TAS), Angle of Attack (AoA), and Angle of Sideslip (AoS) sensors.
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http://dx.doi.org/10.3390/s21051645 | DOI Listing |
Sci Rep
September 2025
Computer Science and Engineering, Thapar Institute of Engineering and Technology, Street, Patiala, Punjab, 147004, India.
In recent years, electric vehicles (EVs) have become increasingly popular, driven by advancements in battery technology, growing environmental awareness, and the demand for sustainable transportation. Compared to internal combustion engines, EVs not only produce fewer emissions but also offer greater energy efficiency, leading to reduced operating costs. Despite these advantages, concerns about battery failures have been a significant safety issue for EVs.
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September 2025
College of Computer and Information Sciences, Prince Sultan University, 11586, Riyadh, Saudi Arabia.
This paper introduces two novel fault detection techniques employing Fractional Order Proportional Integral Fuzzy Observer (FO-PIFO) designs to diagnose nonlinear systems modeled by Fractional Order Takagi-Sugeno (FO-TS) frameworks. The proposed approaches address both measurable premise variables (MPV) and unmeasurable premise variables (UPV), facilitating the development of observer banks for effective fault detection. By extending prior research, largely limited to integer-order Takagi-Sugeno models, into the domain of fractional-order systems, this study fills a critical gap in the literature.
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September 2025
CRRC Zhuzhou Times New Material Technology Co., Ltd., Zhuzhou, China.
Lightning strikes pose a significant threat to the structural integrity and operational performance of wind turbine blades. Due to the high probability of lightning strikes but the difficulty in capturing their dynamic data, obtaining comprehensive data on blades subjected to lightning strikes is challenging. This study presents a rare multimodal dataset for wind turbine blade monitoring during lightning strikes (MDWTBM-LS).
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August 2025
Vilnius Gediminas Technical University, Saulėtekio al. 11, Vilnius, LT-10223, Lithuania.
This study presents a novel diagnostic methodology for assessing drive system damage and its propagation in an unmanned aerial vehicle (UAV) using piezoelectric sensors mounted on each arm of the drone. In contrast to existing studies that focus solely on fault localization, this work investigates the spatial propagation of structural responses to localized motor faults under varying operating conditions. By varying the PWM control signal duty cycle on one motor, different degrees of damage (from 20% to 80%) were simulated.
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August 2025
Key Laboratory of Advanced Equipment Intelligent Manufacturing Technology of Yunnan Province, Kunming University of Science &Technology, Kunming 650500, China.
Although contact-based vibration signal methods for mechanical equipment fault diagnosis demonstrate superior performance, their practical deployment faces significant limitations. In contrast, acoustic signals offer notable deployment flexibility due to their non-contact nature. However, acoustic diagnostic methods are susceptible to environmental noise interference, and fault samples are typically scarce, leading to insufficient model generalization capability and robustness.
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