Low‐pass filtering empirical wavelet transform machine learning based fault diagnosis for combined fault of wind turbines

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Abstract

Fault diagnosis of wind turbines is of great importance to reduce operating and maintenance costs of wind farms. At present, most wind turbine fault diagnosis methods are focused on single faults, and the methods for combined faults usually depend on inefficient manual analysis. Filling the gap, this paper proposes a low‐pass filtering empirical wavelet transform (LPFEWT) machine learning based fault diagnosis method for combined fault of wind turbines, which can identify the fault type of wind turbines simply and efficiently without human experience and with low computation costs. In this method, low‐pass filtering empirical wavelet transform is proposed to extract fault features from vibration signals, LPFEWT energies are selected to be the inputs of the fault diagnosis model, a grey wolf optimizer hyperparameter tuned support vector machine (SVM) is employed for fault diagnosis. The method is verified on a wind turbine test rig that can simulate shaft misalignment and broken gear tooth faulty conditions. Compared with other models, the proposed model has superiority for this classification problem.

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APA

Xiao, Y., Xue, J., Li, M., & Yang, W. (2021). Low‐pass filtering empirical wavelet transform machine learning based fault diagnosis for combined fault of wind turbines. Entropy, 23(8). https://doi.org/10.3390/e23080975

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