Rotor Fault Diagnosis Based on Characteristic Frequency Band Energy Entropy and Support Vector Machine
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Chong Zhou | Bin Pang | Guiji Tang | Tian Tian | Guiji Tang | B. Pang | Tian Tian | Chong Zhou
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