2022
DOI: 10.3390/s22166108
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A New De-Noising Method Based on Enhanced Time-Frequency Manifold and Kurtosis-Wavelet Dictionary for Rolling Bearing Fault Vibration Signal

Abstract: The transient pulses caused by local faults of rolling bearings are an important measurement information for fault diagnosis. However, extracting transient pulses from complex nonstationary vibration signals with a large amount of background noise is challenging, especially in the early stage. To improve the anti-noise ability and detect incipient faults, a novel signal de-noising method based on enhanced time-frequency manifold (ETFM) and kurtosis-wavelet dictionary is proposed. First, to mine the high-dimens… Show more

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Cited by 5 publications
(2 citation statements)
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“…The size of the convolutional kernel in the convolutional layer is 3 × 3 with a step size of 1, and the activation function is ReLU; the pooling layer, with a dimension of 2 × 2 and a step size of 2, employs the maximum pooling method; the last layer is the SVR regression output layer based on the Gaussian radial basis kernel function. Grid search is utilized for the model parameter optimization [40], the initial learning rate is 0.001, the training minimum batch size is 4, the total number of iterations is 400 epochs, and the optimization algorithm Stochastic Gradient Descent with Momentum (SGDM) is used.…”
Section: Srn Prediction Based On Cnn-svrmentioning
confidence: 99%
“…The size of the convolutional kernel in the convolutional layer is 3 × 3 with a step size of 1, and the activation function is ReLU; the pooling layer, with a dimension of 2 × 2 and a step size of 2, employs the maximum pooling method; the last layer is the SVR regression output layer based on the Gaussian radial basis kernel function. Grid search is utilized for the model parameter optimization [40], the initial learning rate is 0.001, the training minimum batch size is 4, the total number of iterations is 400 epochs, and the optimization algorithm Stochastic Gradient Descent with Momentum (SGDM) is used.…”
Section: Srn Prediction Based On Cnn-svrmentioning
confidence: 99%
“…Statistical model-based methods eliminate noise by building statistical models of the time series [20]. The advantage of these methods is that the noise can be modeled, and the impact of the noise can be reduced by probabilistic extrapolation.…”
Section: Introductionmentioning
confidence: 99%