2019
DOI: 10.1002/we.2375
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Quantile regression neural network‐based fault detection scheme for wind turbines with application to monitoring a bearing

Abstract: Under the framework of normal behavior modeling, this paper develops a novel scheme for fault detection via quantile regression neural networks (QRNNs). The QRNN model is a combination of quantile regressions and neural networks. It is able to identify the normal status or extract the normal behavior data accurately and quickly through lower and upper regression quantiles.Additionally, it is flexible to explore the potential nonlinear patterns contained in the normal status by taking advantage of neural networ… Show more

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Cited by 24 publications
(10 citation statements)
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References 37 publications
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“…Finally, the advantages and limitations of these techniques were presented. In [71], a new approach to WT fault detection based on quantile regression neural networks (QRNN) was proposed under the framework of a normal behavioral model. On the basis of the acquired SCADA data, the QRNN model was found to exceed multiple linear regression (MLR) and BPNNs in terms of the MAE.…”
Section: Rq4: Which Ai Techniques Are Currently Under Research For Wt Cm?mentioning
confidence: 99%
“…Finally, the advantages and limitations of these techniques were presented. In [71], a new approach to WT fault detection based on quantile regression neural networks (QRNN) was proposed under the framework of a normal behavioral model. On the basis of the acquired SCADA data, the QRNN model was found to exceed multiple linear regression (MLR) and BPNNs in terms of the MAE.…”
Section: Rq4: Which Ai Techniques Are Currently Under Research For Wt Cm?mentioning
confidence: 99%
“…In addition, the domain knowledge that converts wind energy into mechanical energy and ultimately drives generators to generate electricity also plays an indispensable role in these features selection. More details about energy conversion can be found in [29]. Table 1 summarises all the data with total sample size of 6324,481.…”
Section: Data Descriptionmentioning
confidence: 99%
“…Since the bearing is one of the critical components of the WT, the bearing temperature is considered for the condition monitoring of WT in [11]. Temperature higher than the allowed limit indicates the probability of bearing malfunction, such as: issues on lubrication, electrical leakage through the shaft, aging, and variability of external loads.…”
Section: Introductionmentioning
confidence: 99%