Identification of gas-liquid two-phase flow patterns in a horizontal pipe based on ultrasonic echoes and RBF neural network
This paper proposes a novel flow pattern identification method using ultrasonic echo signals within the pipe wall. A two-dimensional acoustic pressure numerical model is established to investigate the ultrasonic pulse transmission behavior between the wall-gas and wall-liquid interface. Experiments...
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Veröffentlicht in: | Flow measurement and instrumentation 2021-06, Vol.79, p.101960, Article 101960 |
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Format: | Artikel |
Sprache: | eng |
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Zusammenfassung: | This paper proposes a novel flow pattern identification method using ultrasonic echo signals within the pipe wall. A two-dimensional acoustic pressure numerical model is established to investigate the ultrasonic pulse transmission behavior between the wall-gas and wall-liquid interface. Experiments were also carried out at a horizontal air-water two-phase flow loop to measure the ultrasonic echo pulse signals of stratified flow, slug flow, and annular flow. It is interesting to find that the attenuation of the ultrasonic pulse at the wall-liquid interface is faster than the attenuation at the wall-gas interface. An RBF neural network is constructed for online flow pattern identification. The normalized envelop area and the area ratios of the echo spectrum are selected as the input parameters. The results show that the stratified flow, slug flow, and annular flow can be identified with an accuracy of 94.0%.
•A Novel flow pattern identification method is proposed.•A two-dimension acoustic pressure numerical model is developed.•Echo pulse signals reflected from wall-fluid interface at three flow patterns are obtained.•The normalized envelop area and the area ratios of the echo spectrum are selected as flow pattern indicator.•A RBF neural network is proposed for online flow pattern identification. |
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ISSN: | 0955-5986 1873-6998 |
DOI: | 10.1016/j.flowmeasinst.2021.101960 |