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Development and Engineering Application of Fault Early Warning Model for Large Hydropower Turbine Based on Principal Component Analysis and Long Short-Term Memory Network

Release Time:2025-11-05  Hits:

Date of Publication:2025-10-25

Journal:IEEE SENSORS JOURNAL

Volume:25

Issue:16

Page Number:30470-30483

ISSN:1530-437X

Key Words:Fault Early Warning; Large Hydro-Turbine Units; Long Short-Term Memory (LSTM); Principal Component Analysis (PCA)

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