A Feature Inherited Hierarchical Convolutional Neural Network (FI-HCNN) for Motor Fault Severity Estimation Using Stator Current Signals
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Junmin Lee | Hyunjae Kim | Chan Hee Park | Giljun Ahn | Myeongbaek Youn | Byeng D. Youn | B. Youn | Junmin Lee | Myeongbaek Youn | Chan Hee Park | Hyunjae Kim | Giljun Ahn
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