2020
DOI: 10.3390/electronics9020323
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Robust Detection of Bearing Early Fault Based on Deep Transfer Learning

Abstract: In recent years, machine learning techniques have been proven to be a promising tool for early fault detection of rolling bearings. In many actual applications, however, bearing whole-life data are not easy to be historically accumulated, while insufficient data may result in training a detection model that is not good enough. If utilizing the available data under different working conditions to facilitate model training, the data distribution of different bearings are usually quite different, which does not m… Show more

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Cited by 17 publications
(10 citation statements)
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“…However, kurtosis can just reflect the distribution density of shock signals, it ignores the components with large amplitude and scattered distribution. The correlation coefficient can express the reproduction degree of the component to the original signal, it is easy to be disturbed by noise [31]. Obviously, a single index can not fully interpret the vibration characteristics of the signal.…”
Section: B Efficient Weighted Sparseness Kurtosis Indexmentioning
confidence: 99%
See 1 more Smart Citation
“…However, kurtosis can just reflect the distribution density of shock signals, it ignores the components with large amplitude and scattered distribution. The correlation coefficient can express the reproduction degree of the component to the original signal, it is easy to be disturbed by noise [31]. Obviously, a single index can not fully interpret the vibration characteristics of the signal.…”
Section: B Efficient Weighted Sparseness Kurtosis Indexmentioning
confidence: 99%
“…Step5: Calculate the EHNR value of the reconstructed signal. According to the 4 criterion of Gaussian distribution [31], Set the alarm threshold to the relatively stable EHNR mean value  in the normal period plus 4 times the standard deviation  , and the data beyond this interval is the abnormal point. Judge whether the bearing enters the degradation period according to the alarm threshold, find out the starting point of degradation, and realize the detection of abnormal points of early degradation of the bearing.…”
Section: Figure 8 the Implementation Process Of Avmd-ehnrmentioning
confidence: 99%
“…Applications of fault diagnosis and fault detection are found especially in context of rotating machinery to analyze bearing faults or gearbox faults. Fault detection is addressed in [46] as an anomaly detection problem to distinguish between normal and abnormal states. The other 34 publications address fault diagnosis, which attempts to classify between fault types or health statuses.…”
Section: B Analysis Of Application Domains (Q1)mentioning
confidence: 99%
“…In [ 15 ], the authors presented the machine learning technique as a promising tool for the early detection of rolling bearing failure. To solve the problems of false alarms and thus increase the reliability of the detection results, a robust method of early bearing failure detection based on learning of deep transmission was proposed.…”
Section: Introductionmentioning
confidence: 99%