2019
DOI: 10.1016/j.measurement.2019.02.073
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A novel transfer learning method for robust fault diagnosis of rotating machines under variable working conditions

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Cited by 127 publications
(52 citation statements)
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“…For the convolution layer, two convolution kernels are used. As illustrated in [21], the high frequency noise commonly in vibration signals disturbs the local feature extraction, and the kernels of the first layer should be wide for suppressing the noise. Therefore, a wide kernel is used in the first layer and the size is 2 × 64, following a convolution kernel of 1 × 8 in the second layer.…”
Section: Parameters Of the Proposed Modelmentioning
confidence: 99%
See 1 more Smart Citation
“…For the convolution layer, two convolution kernels are used. As illustrated in [21], the high frequency noise commonly in vibration signals disturbs the local feature extraction, and the kernels of the first layer should be wide for suppressing the noise. Therefore, a wide kernel is used in the first layer and the size is 2 × 64, following a convolution kernel of 1 × 8 in the second layer.…”
Section: Parameters Of the Proposed Modelmentioning
confidence: 99%
“…For example, Long et al [20] used maximum mean discrepancy (MMD) to joint distribution alignments in deep networks. Qian et al [21] proposed a novel transfer learning method to align both the marginal and conditional distributions of both source and target domain datasets. In addition, the method is proved to be effective for fault diagnosis on roller bearing and gearbox.…”
mentioning
confidence: 99%
“…Lu et al [10] added a maximum mean discrepancy term to the loss function of auto-encoders to force them to learn features that are not affected by operating conditions. Qian et al [11] proposed a new transfer learning method and solved data distribution problems caused by rotating speed variation. Peng et al [12] proposed a novel deeper 1D CNN based on 1D residual block and the experimental results show that this method is effective in the case of strong noise and variable load.…”
Section: Introductionmentioning
confidence: 99%
“…After reducing the dimension of the dataset, a new dataset with a low dimension can enhance the effectiveness and accuracy of bearing diagnosis. Some researchers have applied the JDA to model classification, such as (JDA improved by sparse filtering, joint distribution optimal deep domain adaptation, Deep transfer network with JDA, joint-space force distribution) in [26][27][28][29][30]. JDA is mainly used for feature distribution in image processing, but rarely in signal processing.…”
Section: Introductionmentioning
confidence: 99%