Evaluation of flow pattern recognition and void fraction measurement in two phase flow independent of oil pipeline's scale layer thickness
Author | Roshani, Mohammadmehdi |
Author | Phan, Giang T.T. |
Author | Jammal Muhammad Ali, Peshawa |
Author | Hossein Roshani, Gholam |
Author | Hanus, Robert |
Author | Duong, Trung |
Author | Corniani, Enrico |
Author | Nazemi, Ehsan |
Author | Kalmoun, El Mostafa |
Available date | 2024-07-21T06:24:19Z |
Publication Date | 2021 |
Publication Name | Alexandria Engineering Journal |
Resource | Scopus |
Identifier | http://dx.doi.org/10.1016/j.aej.2020.11.043 |
ISSN | 11100168 |
Abstract | The main objective of the present research is to combine the effect of scale thickness on the flow pattern and characteristics of two-phase flow that is used in oil industry. In this regard, an intelligent nondestructive technique based on combination of gamma radiation attenuation and artificial intelligence is proposed to determine the type of flow pattern and gas volume percentage in two phase flow independent of petroleum pipeline's scale layer thickness. The proposed system includes a dual energy gamma source, composed of Barium-133 and Cesium-137 radioisotopes, and two sodium iodide detectors for recording the transmitted and scattered photons. Support Vector Machine was implemented for regime identification and Multi-Layer Perceptron with Levenberg Marquardt algorithm was utilized for void fraction prediction. Total count in the scattering detector and counts under photo peaks of Barium-133 and Cesium-137 were assigned as the inputs of networks. The results show the ability of presented system to identify the annular regime and measure the void fraction independent of petroleum pipeline's scale layer thickness. |
Language | en |
Publisher | Elsevier |
Subject | Flow pattern Multi-layer perceptron Oil pipeline Scale layer Support vector machine |
Type | Article |
Pagination | 1955-1966 |
Issue Number | 1 |
Volume Number | 60 |
Check access options
Files in this item
This item appears in the following Collection(s)
-
Mathematics, Statistics & Physics [742 items ]