2023
DOI: 10.1109/tim.2023.3301898
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Fault Diagnosis of UAV Based on Adaptive Siamese Network With Limited Data

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Cited by 3 publications
(2 citation statements)
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“…This arises from the stability characteristics of UAV flights, which primarily operate under normal conditions. Conducting faulty flight tests is costly and perilous, while data obtained from simulation software often fails to reflect real world scenarios [45]. Consequently, acquiring UAV fault data remains challenging.…”
Section: Data Sourcesmentioning
confidence: 99%
See 1 more Smart Citation
“…This arises from the stability characteristics of UAV flights, which primarily operate under normal conditions. Conducting faulty flight tests is costly and perilous, while data obtained from simulation software often fails to reflect real world scenarios [45]. Consequently, acquiring UAV fault data remains challenging.…”
Section: Data Sourcesmentioning
confidence: 99%
“…This paper focuses on the motor of a quadrotor UAV and investigates a data driven fault diagnosis method based on current signals. Considering the requirements for UAV flight stability and the limited training data due to the UAV's sensitivity to component health status, traditional machine learning and deep learning methods struggle to identify representative features and suffer from low fault classification accuracy when dealing with a small number of training samples [45,48]. Treating the fault diagnosis of UAV motors as a small sample classification problem, a hybrid neural network with small sample learning capabilities is proposed, leveraging the broad learning system (BLS) [49] and convolutional neural network (CNN) [50] for the analysis of current signal data to address the challenges of small sample fault diagnosis in UAV motors.…”
Section: Data Sourcesmentioning
confidence: 99%