A deformable CNN-DLSTM based transfer learning method for fault diagnosis of rolling bearing under multiple working conditions
Year of publication: |
2021
|
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Authors: | Wang, Zheng ; Liu, Qingxiu ; Chen, Hansi ; Chu, Xuening |
Published in: |
International journal of production research. - London [u.a.] : Taylor & Francis, ISSN 1366-588X, ZDB-ID 1485085-0. - Vol. 59.2021, 16, p. 4811-4825
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Subject: | deep LSTM | deformable CNN | Fault diagnosis | multiple working conditions | rolling bearing | transfer learning |
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