Wind Turbine Anomaly Identification Based on Improved Deep Belief Network with SCADA Data

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[1] Long, Xiafei
[2] 1,Li, Shengqing
[3] Wu, Xiwen
[4] Jin, Zhao
来源
Li, Shengqing (2205456745@qq.com) | 1600年 / Hindawi Limited卷 / 2021期
关键词
Fault detection - Correlation methods - Forecasting - Data acquisition - Wind power - Failure analysis - Electric fault currents;
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