2023
DOI: 10.2166/aqua.2023.319
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Unraveling air–water two-phase flow patterns in water pipelines based on multiple signals and convolutional neural networks

Peng Zhao,
Ziyang Xu,
Haixing Liu
et al.

Abstract: Flow pattern identification (FPI) is crucial for evaluating air entrapment in water pipelines and ensuring the safety of pipeline operations. The presence of two-phase flow in water pipelines not only leads to pressure fluctuations but also induces pipeline vibration. However, current research has primarily focused on using pressure-related signals for FPI, and the analysis of vibration signals in FPI is rare. In this study, FPI in water pipelines is investigated based on convolutional neural networks (CNNs) u… Show more

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