4.7 Article

Fault diagnosis of wind turbine bearing using a multi-scale convolutional neural network with bidirectional long short term memory and weighted majority voting for multi-sensors

期刊

RENEWABLE ENERGY
卷 182, 期 -, 页码 615-626

出版社

PERGAMON-ELSEVIER SCIENCE LTD
DOI: 10.1016/j.renene.2021.10.024

关键词

Bearing; Wind turbine; Convolutional neural network; Fault diagnosis; Information fusion

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This study developed a MSCNN-BiLSTM model for fault diagnosis of bearings in wind turbines, which leverages a weighted majority voting rule to fuse information from multiple sensors for improved extrapolation, showing superior performance compared to existing methods in experimental data analysis.
In order to solve the problems of insufficient extrapolation of intelligent models for the fault diagnosis of bearings in real wind turbines, this study has developed a multi-scale convolutional neural network with bidirectional long short term memory (MSCNN-BiLSTM) model for improving the generalization abilities under complex working and testing environments. A weighted majority voting rule has been proposed to fuse the information from multi-sensors for improving the extrapolation of multisensory diagnosis. The superiority of the MSCNN-BiLSTM model is examined through experimental data. The results indicate that the MSCNN-BiLSTM model has 97.12% mean F1 score, which is higher than existing advanced methods. Real wind turbine dataset and an experimental dataset are used to demonstrate the effectiveness of the weighted majority voting rule for multisensory diagnosis. The results present that the diagnosis result of the MSCNN-BiLSTM model with weighted majority voting rule is higher respectively 1.32% and 5.7% than the model with traditional majority voting or fusion of multisensory information in feature-level. (c) 2021 Published by Elsevier Ltd.

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