A Novel Time-Domain Fault Diagnosis Method With ELM for Aviation Intermediate Frequency Inverter.

IEEE Trans. Instrum. Meas.(2024)

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摘要
The fault diagnosis for the intermediate frequency inverter in the aviation industry has always been a difficult problem. However, most of the existing fault diagnosis methods are not directly applicable to it due to changes in system characteristics. In order to solve this problem, a new fault diagnosis model is proposed. Firstly, preliminary parameters are extracted from the measured current sequence. Secondly, two types of features values are obtained directly using the proposed current amplitude-deviation feature complement method, which can effectively distinguish usual open-circuit fault modes of the inverter. Thirdly, the dataset consisting of the above feature values is acquired under different load condition and fault modes. Finally, based on low-dimensional feature values data, the extreme learning machine is used to generate a fault diagnosis model rapidly through matrix operations. By experiments, the method proposed can accurately realize the fault diagnosis of aviation intermediate frequency inverter. Compared with most existing methods, proposed feature extraction method has advantages in fault discrimination ability and implementation difficulty. And extreme learning machine speeds up the training process and facilitates debugging.
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关键词
fault detection and location,extreme learning machine,current amplitude and deviation feature,aviation intermediate frequency inverter,open-circuit fault
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