2024
DOI: 10.1088/1361-6501/ad8940
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Deep transfer learning in machinery remaining useful life prediction: a systematic review

Gaige Chen,
Xianguang Kong,
Han Cheng
et al.

Abstract: As a novel paradigm in machine learning, deep transfer learning (DTL) can harness the strengths of deep learning for feature representation, while also capitalizing on the advantages of transfer learning for knowledge transfer. Hence, DTL can effectively enhance the robustness and applicability of the data-driven RUL prediction methods, and has garnered extensive development and research attention in machinery RUL prediction. Although there are numerous systematic review articles published on the topic of the … Show more

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