Deep adaptive sparse residual networks: A lifelong learning framework for rotating machinery fault diagnosis with domain increments
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Publisher
Elsevier BV
Reference36 articles.
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1. Reserving embedding space for new fault types: A new continual learning method for bearing fault diagnosis;Reliability Engineering & System Safety;2024-12
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