Classifier fusion of vibration and acoustic signals for fault diagnosis and classification of planetary gears based on Dempster–Shafer evidence theory
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Mahmoud Omid | Ashkan Moosavian | Meghdad Khazaee | Hojat Ahmadi | Majid Khazaee | M. Omid | Majid Khazaee | H. Ahmadi | M. Khazaee | A. Moosavian
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