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Fault Diagnosis Based on Interpretable Convolutional Temporal-spatial Attention Network for Offshore Wind Turbines
Journal article   Peer reviewed

Fault Diagnosis Based on Interpretable Convolutional Temporal-spatial Attention Network for Offshore Wind Turbines

Xiangjing Su, Chao Deng, Yanhao Shan, Farhad Shahnia, Yang Fu and Zhaoyang Dong
Journal of Modern Power Systems and Clean Energy, Vol.12(5), pp.1459-1471
2024

Abstract

Feature extraction Fault diagnosis Monitoring Data mining Wind turbines Deep learning Data models Offshore wind turbine (WT) gearbox fault diagnosis (FD) attention mechanism interpretability temporal-spatial feature
Fault diagnosis (FD) for offshore wind turbines (WTs) are instrumental to their operation and maintenance (O&M). To improve the FD effect in the very early stage, a condition monitoring based sample set mining method from super-visory control and data acquisition (SCADA) time-series data is proposed. Then, based on the convolutional neural network (CNN) and attention mechanism, an interpretable convolutional temporal-spatial attention network (CTSAN) model is proposed. The proposed CTSAN model can extract deep temporal-spatial features from SCADA time-series data sequentially by: ① a convolution feature extraction module to extract features based on time intervals; ② a spatial attention module to extract spatial features considering the weights of different features; and ③ a temporal attention module to extract temporal features considering the weights of intervals. The proposed CT-SAN model has the superiority of interpretability by exposing the deep temporal-spatial features extracted in a human-understandable form of the temporal-spatial attention weights. The effectiveness and superiority of the proposed CTSAN model are verified by real offshore wind farms in China.

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#7 Affordable and Clean Energy

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Collaboration types
Domestic collaboration
International collaboration
Citation topics
7 Engineering & Materials Science
7.215 Friction & Vibration
7.215.818 Rotating Machinery Diagnostics
Web Of Science research areas
Engineering, Electrical & Electronic
ESI research areas
Engineering
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