Condition Monitoring of DC-Link Capacitors Using Time–Frequency Analysis and Machine Learning Classification of Conducted EMI

IEEE Transactions on Power Electronics(2022)

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摘要
Condition monitoring techniques for power electronics components are important for reducing maintenance costs and increasing reliability in systems such as aircraft. This article presents a noninvasive condition monitoring system that utilizes time-frequency analysis of conducted electromagnetic interference (EMI) to classify the health of the dc-link capacitor within a three-phase inverter. The approach proposes a combined EMI filter and measurement board which is placed on the dc bus of the inverter. This board filters conducted EMI effectively and enables the inverter to comply with MIL-STD-461 G. It also enables EMI measurements to be collected for condition monitoring applications. The EMI content obtained from this board is analyzed from 15–43 MHz during switching events using a continuous wavelet transform. These characteristic switching images are used to train support vector machine models that are able to classify dc-link health into one of five health stages with accuracy up to 100%.
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关键词
Artificial intelligence,condition monitoring,dc link capacitor,electromagnetic interference (EMI),EMI filter,prognostic and health management,support vector machine (SVM),wavelet transform
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