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Condition monitoring

About: Condition monitoring is a research topic. Over the lifetime, 13911 publications have been published within this topic receiving 201649 citations.


Papers
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Journal ArticleDOI
TL;DR: In this paper, a review of current progress in condition monitoring of wind turbine gearboxes and generators is presented, as an input to the design of a new continuous condition monitoring system with automated warnings based on a combination of vibrational and acoustic emission (AE) analysis.

100 citations

Journal ArticleDOI
TL;DR: Condition-based fault tree analysis (CBFTA) starts with the known FTA and recalculates periodically the top event (TE) failure rate (I»TE) thus determining the likelihood of system failure and the probability of successful system operation.

100 citations

Journal ArticleDOI
TL;DR: A novel approach, namely physics-based convolutional neural network (PCNN), for fault diagnosis of rolling element bearings is proposed and the performance of PCNN in machinery fault diagnosis is compared with that of traditional machine learning- and deep learning-based approaches reported in the literature.
Abstract: During the past few years, deep learning has been recognized as a useful tool in condition monitoring and fault detection of rolling element bearings. Although existing deep learning approaches are able to intelligently detect and classify the faults in bearings, they still face one or both of the following challenges: 1) most of these approaches rely exclusively on data and do not incorporate physical knowledge into the learning and prediction processes and 2) the approaches often focus on the fault diagnosis of a single bearing in a rotating machine, while in reality, a rotating machine may contain multiple bearings. To address these challenges, this paper proposes a novel approach, namely physics-based convolutional neural network (PCNN), for fault diagnosis of rolling element bearings. In PCNN, an exclusively data-driven deep learning approach, called CNN, is carefully modified to incorporate useful information from physical knowledge about bearings and their fault characteristics. To this end, the proposed approach 1) utilizes spectral kurtosis and envelope analysis to extract sidebands from raw sensor signals and minimize non-transient components of the signals and 2) feeds the information about the fault characteristics into the CNN model. With the capability to process signals from multiple sensors, the proposed PCNN approach is capable of concurrently monitoring multiple bearings and detecting faults in these bearings. The performance of PCNN in machinery fault diagnosis is compared with that of traditional machine learning- and deep learning-based approaches reported in the literature.

100 citations

Journal ArticleDOI
TL;DR: A transfer learning-convolutional neural network (TLCNN) based on AlexNet is proposed for bearing fault diagnosis that has higher accuracy and has much better robustness against noise than other deep learning and traditional methods.
Abstract: Traditional methods used for intelligent condition monitoring and diagnosis significantly depend on manual feature extraction and selection. To address this issue, a transfer learning-convolutional neural network (TLCNN) based on AlexNet is proposed for bearing fault diagnosis. Firstly, a 2D image representation method converts vibration signals to 2D time-frequency images. Secondly, the proposed TLCNN model extracts the features of the 2D time-frequency images and achieves the classification conditions of the bearing, which is faster to train and more accurate. Thirdly, t-distributed stochastic neighbor embedding (t-SNE) is applied to visualize the feature learning process to demonstrate the feature learning ability of the proposed model. The experimental results verify that the proposed fault diagnosis model has higher accuracy and has much better robustness against noise than other deep learning and traditional methods.

100 citations

Journal ArticleDOI
TL;DR: This paper describes a large-scale evaluation of several different automatic bearing monitoring methods using 103 laboratory and industrial environment test signals and concludes that wavelets are especially well suited for this task.

99 citations


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Performance
Metrics
No. of papers in the topic in previous years
YearPapers
2023164
2022413
2021798
2020927
2019936
2018906