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Research on detection and recognition methods of gas pipelines based on acoustic signal feature analysis

Liu, Enbin, Wen, Zhaorong, Guo, Bingyan, Yu, Bin and Chen, Qikun 2023. Research on detection and recognition methods of gas pipelines based on acoustic signal feature analysis. Journal of Vibration and Control 29 (11-12) , pp. 2579-2592. 10.1177/10775463221082754

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Abstract

In the process of reconstruction and expansion of gas pipeline, it is easy to destroy in-service gas pipeline and cause safety accidents. In order to realize the detection of in-service pipelines, based on the characteristics of low sound pressure level and easy attenuation of acoustic signals of gas pipelines, the detection and identification method of gas pipelines based on acoustic signal feature analysis was studied by using Hilebert–Huang transform algorithm and optimized Back Propagation (BP) neural network. This method takes the gas pipeline flow noise signals obtained by numerical simulation and experimental verification as the research object, and the underwater acoustic signals are collected for comparative analysis. Empirical Mode Decomposition (EMD) was used to decompose the two signals, and the time-domain waveform of Intrinsic Mode Functions (IMF) component was obtained, and the characteristic parameters of peak value and peak frequency were determined. The energy characteristic parameters of Hilbert marginal spectrum were calculated, and the characteristic database of gas pipeline flow noise signal was obtained. The optimized BP neural network was used for pattern recognition. The results show that the identification rate of gas pipeline acoustic signal can reach 97.5% by using this method, which verifies the effectiveness of the gas pipeline detection and identification method in this paper.

Item Type: Article
Date Type: Publication
Status: Published
Schools: Engineering
Publisher: SAGE Publications
ISSN: 1077-5463
Last Modified: 06 Jul 2023 12:25
URI: https://orca.cardiff.ac.uk/id/eprint/151226

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