王挺韶,季天瑶,姜雨滋,王瑾.基于降噪自动编码器与一维卷积网络的风机故障诊断方法[J].电测与仪表,2023,60(1):87-93. Wang Tingshao,Ji Tianyao作者,jiangyuzi,wangjin.Fault diagnosis and isolation method for wind turbines based on denoise auto encoder decoder and 1-demension convolution network[J].Electrical Measurement & Instrumentation,2023,60(1):87-93.
基于降噪自动编码器与一维卷积网络的风机故障诊断方法
Fault diagnosis and isolation method for wind turbines based on denoise auto encoder decoder and 1-demension convolution network
When the wind turbine fails, the sensor data implies the fault features. To mine multiple features from sensor data, a fault diagnosis model of wind turbine based on Auto-encoder and one-dimension Convolutional Neural Network (Conv1dNN) is proposed. A one-dimensional convolutional layer is constructed to identify multiple features of time series data. The extracted features can be processed correctly and faults can be identified accurately by adjusting the network structure and parameters. For sensor data containing noise in complex operation environment,a noise reduction method based on Auto-encoder is proposed. The noise reduction effect of the auto-encoder reconstructs the noise signal into the original signal, which improves the recognition effect of the fault in the noise environment. The simulation results show that the proposed method has obvious advantages in accuracy and robustness compared with the model-based method and other data-driven methods.