2023
DOI: 10.1088/1361-6501/ad099b
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Three-dimensional hybrid fusion networks for current-based bearing fault diagnosis

Xufeng Huang,
Tingli Xie,
Jiexiang Hu
et al.

Abstract: Intelligent fault diagnosis (IFD) techniques commonly use vibration-based measurements to perform health monitoring of critical rotating components in industrial systems. However, these vibration-based approaches may be limited in cost-sensitive applications, because the installation of vibration sensors is inconvenient and vibration sensors are expensive. Considering the difficulties of IFD using only current-related information from the motor current signal (MCS), this paper proposes a three-dimensional hybr… Show more

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Cited by 6 publications
(2 citation statements)
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References 62 publications
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“…For example, He et al [28] proposed a CNNbased multi-signal fusion module for fusing vibration and acoustic signals, which realizes the dynamic allocation of the weights of the two signals. On the basis of multivariate variational mode decomposition and improved three-dimensional CNNs, Huang et al [29] proposed a three-dimensional hybrid fusion neural network, and utilized this model to achieve datalevel fusion of multi-channel current signals. Methods based on neural network models are able to adaptively realize data fusion, however, they are relatively poorly interpreted and usually require more computational resources.…”
Section: Data-level Fusionmentioning
confidence: 99%
“…For example, He et al [28] proposed a CNNbased multi-signal fusion module for fusing vibration and acoustic signals, which realizes the dynamic allocation of the weights of the two signals. On the basis of multivariate variational mode decomposition and improved three-dimensional CNNs, Huang et al [29] proposed a three-dimensional hybrid fusion neural network, and utilized this model to achieve datalevel fusion of multi-channel current signals. Methods based on neural network models are able to adaptively realize data fusion, however, they are relatively poorly interpreted and usually require more computational resources.…”
Section: Data-level Fusionmentioning
confidence: 99%
“…Rolling bearing fault diagnosis based on domain adaptation has become a popular topic [1][2][3]. Traditional rolling bearing transfer methods can effectively overcome cross-domain problems and are applied to transfer high-dimensional features and recognise health state knowledge to similar yet distinguished rolling bearings testing data after learning the highdimensional features from the training data.…”
Section: Introductionmentioning
confidence: 99%