Show simple item record

AuthorNashed, M.S.
AuthorRenno, J.
AuthorMohamed, M.S.
AuthorReuben, R.L.
Available date2024-06-02T06:20:08Z
Publication Date2023
Publication NameExpert Systems with Applications
ResourceScopus
Identifierhttp://dx.doi.org/10.1016/j.eswa.2023.120684
ISSN9574174
URIhttp://hdl.handle.net/10576/55696
AbstractCompared to vibration monitoring, acoustic emission (AE) monitoring in gas turbines is highly sensitive to changes that do not involve whole-body motion, such as wear, rubbing, and fluid-induced faults. AE signals captured by suitably mounted sensors can potentially provide early indications of abnormal turbine operation before such abnormalities manifest in structural vibration or emitted airborne noise. However, developing an online fault detection system requires extensive real-time data treatment to extract appropriate features and indicators from raw AE records. To build such a system for industrial turbines, researchers need to understand the AE-generating mechanisms associated with turbine operation and the sources of background noise. In this study, we aim to develop such an understanding using a small-scale turbine whose operational conditions can be modified safely to reflect both normal and faulty conditions. Our signal processing approach involves first extracting a time-series envelope using an averaging time selected to enhance major features and eliminate irrelevant noise. We then generate time-frequency features using a continuous wavelet transform, which are used to train a deep convolutional neural network to classify gas turbine conditions. The resulting model demonstrates high accuracy in classifying two normal running conditions and two faulty conditions at various turbine speeds. Overall, the proposed methodology offers a powerful tool for gas turbine condition monitoring, and we make all associated data available in open-source format to facilitate further research in this field.4
SponsorFinancial support for this research was graciously provided by Qatar National Research Fund (a member of Qatar Foundation) via the National Priorities Research Program under Grant no. NPRP-11S-1220-170112. Open Access funding was graciously provided by the Qatar National Library
Languageen
PublisherElsevier
SubjectAcoustic emissions
Continuous wavelet transformation
Convolutional neural networks
Fault classification
Gas turbine
TitleGas turbine failure classification using acoustic emissions with wavelet analysis and deep learning
TypeArticle
Pagination-
Volume Number232


Files in this item

Thumbnail

This item appears in the following Collection(s)

Show simple item record