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Leak detection and size identification in fluid pipelines using a novel vulnerability index and 1-D convolutional neural network

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Abstract
This paper proposes a leak detection and size identification technique in fluid pipelines based on a new leak-sensitive feature called the vulnerability index (VI) and 1-D convolutional neural network (1D-CNN). The acoustic emission hit (AEH) features can differentiate between normal and leak operating conditions of the pipeline. However, the multiple sources of acoustic emission hits, such as fluid pressure on the joints, interference noises, flange vibrations, and leaks in the pipeline, make the features less sensitive toward leak size identification in the pipeline. To address this issue, acoustic emission hit features are first extracted from the acoustic emission (AE) signal using a sliding window with an adaptive threshold. Since the distribution of the acoustic emission hit features changes according to the pipeline working conditions, a newly developed multiscale Mann–Whitney test (MMU-Test) is applied to the acoustic emission hit features to obtain the new vulnerability index feature, which shows the pipeline's susceptibility to leak and changes according to the pipeline working conditions. Finally, the vulnerability index is provided as input to a 1-D-CNN for leak detection and size identification, whose experimental results show a higher accuracy as compared to the reference state-of-the-art methods under variable fluid pressure conditions.
Issued Date
2023
Zahoor Ahmad
Tuan-Khai Nguyen
Jong-Myon Kim
Type
Article
Keyword
Pipelinesacoustic emissionleak detection1-D convolutional neural network
DOI
10.1080/19942060.2023.2165159
URI
https://oak.ulsan.ac.kr/handle/2021.oak/17875
Publisher
Engineering Applications of Computational Fluid Mechanics
Language
영어
ISSN
1994-2060
Citation Volume
17
Citation Number
1
Citation Start Page
1
Citation End Page
16
Appears in Collections:
Engineering > IT Convergence
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