Probabilistic Bearing Fault Diagnosis Using Gaussian Process with
Tailored Feature Extraction
- URL: http://arxiv.org/abs/2109.09189v1
- Date: Sun, 19 Sep 2021 18:34:29 GMT
- Title: Probabilistic Bearing Fault Diagnosis Using Gaussian Process with
Tailored Feature Extraction
- Authors: Mingxuan Liang, Kai Zhou
- Abstract summary: Rolling bearings are subject to various faults due to its long-time operation under harsh environment.
Current deep learning methods perform the bearing fault diagnosis in the form of deterministic classification.
We develop a probabilistic fault diagnosis framework that can account for the uncertainty effect in prediction.
- Score: 10.064000794573756
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Rolling bearings are subject to various faults due to its long-time operation
under harsh environment, which will lead to unexpected breakdown of machinery
system and cause severe accidents. Deep learning methods recently have gained
growing interests and extensively applied in the data-driven bearing fault
diagnosis. However, current deep learning methods perform the bearing fault
diagnosis in the form of deterministic classification, which overlook the
uncertainties that inevitably exist in actual practice. To tackle this issue,
in this research we develop a probabilistic fault diagnosis framework that can
account for the uncertainty effect in prediction, which bears practical
significance. This framework fully leverages the probabilistic feature of
Gaussian process classifier (GPC). To facilitate the establishment of
high-fidelity GPC, the tailored feature extraction with dimensionality
reduction method can be optimally determined through the cross validation-based
grid search upon a prespecified method pool consisting of various kernel
principal component analysis (KPCA) methods and stacked autoencoder. This
strategy can ensure the complex nonlinear relations between the features and
faults to be adequately characterized. Furthermore, the sensor fusion concept
is adopted to enhance the diagnosis performance. As compared with the
traditional deep learning methods, this proposed framework usually requires
less labeled data and less effort for parameter tuning. Systematic case studies
using the publicly accessible experimental rolling bearing dataset are carried
out to validate this new framework. Various influencing factors on fault
diagnosis performance also are thoroughly investigated.
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