Virtual metering of gas-liquid two-phase flow in oil nozzles based on physical-data fusion

Objective Oil well production measurement is essential for assessing resource reserves and productivity, serving as a critical reference for resource development and management. The medium produced at the wellhead is typically a multiphase fluid. Current physical metering methods involve significant...

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Main Authors: Qing LI, Hongfei LIU, Manqing JIN, Ying ZHANG, Fachun LIANG
Format: Article
Language:zho
Published: Editorial Office of Oil & Gas Storage and Transportation 2024-11-01
Series:You-qi chuyun
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Online Access:https://yqcy.pipechina.com.cn/cn/article/doi/10.6047/j.issn.1000-8241.2024.11.010
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author Qing LI
Hongfei LIU
Manqing JIN
Ying ZHANG
Fachun LIANG
author_facet Qing LI
Hongfei LIU
Manqing JIN
Ying ZHANG
Fachun LIANG
author_sort Qing LI
collection DOAJ
description Objective Oil well production measurement is essential for assessing resource reserves and productivity, serving as a critical reference for resource development and management. The medium produced at the wellhead is typically a multiphase fluid. Current physical metering methods involve significant investment and complexity, while virtual metering requires numerous monitoring parameters, leading to implementation challenges and high computational costs. Methods The produced fluid undergoes both temperature and pressure drops as it passes through nozzle throttling. To enhance the accuracy of the single-well virtual metering system and the convenience of maintenance, a new method for oil and gas metering was proposed based on nozzle throttling, leveraging the characteristics of differential pressure fluctuations and temperature difference signals. The mechanism equation for nozzle throttling flow, incorporating differential pressure, flow rate, and gas mass fraction, was derived. A deep neural network was established using nine characteristics as input parameters, including throttling temperature difference, mean pressure difference and standard deviation, to facilitate data-driven inverse prediction of gas mass fraction. Taking a 10 mm real nozzle as the test object, the experimental tests were carried out on a gas-liquid two-phase flow loop. In the tests, the converted velocity range of gas phase was 1.73–12.09 m/s while that of liquid phase was 0.03–0.35 m/s. The flow patterns tested included stratified flow, wave flow, slug flow, and annular flow. Results The adaptive range of gas fraction was 0–100% for the mechanism equation, unaffected by changes in flow pattern, gas-liquid velocity, or system pressure. The errors in gas mass fraction and flow metering were within ±10%. Conclusion The virtual metering of gas-liquid two-phase flow in oil nozzles based on physical-data fusion enables the virtual metering of gas and liquid flow using only the existing temperature and pressure measurement systems, without requiring information on storage, wellbore, or gathering and transportation pipeline network, nor additional measuring instruments. Additionally, low costs for data acquisition and modeling enhance the method's potential for widespread adoption and application.
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spelling doaj-art-200e60c77f9e481aa8bfe54fa620accf2025-08-20T02:14:22ZzhoEditorial Office of Oil & Gas Storage and TransportationYou-qi chuyun1000-82412024-11-0143111285129310.6047/j.issn.1000-8241.2024.11.010yqcy-43-11-1285Virtual metering of gas-liquid two-phase flow in oil nozzles based on physical-data fusionQing LI0Hongfei LIU1Manqing JIN2Ying ZHANG3Fachun LIANG4PetroChina Planning & Engineering InstitutePetroChina Planning & Engineering InstituteCollege of Pipeline and Civil Engineering, China University of Petroleum(East China)Engineering Technology Research Institute of PetroChina Xinjiang Oilfield CompanyCollege of Pipeline and Civil Engineering, China University of Petroleum(East China)Objective Oil well production measurement is essential for assessing resource reserves and productivity, serving as a critical reference for resource development and management. The medium produced at the wellhead is typically a multiphase fluid. Current physical metering methods involve significant investment and complexity, while virtual metering requires numerous monitoring parameters, leading to implementation challenges and high computational costs. Methods The produced fluid undergoes both temperature and pressure drops as it passes through nozzle throttling. To enhance the accuracy of the single-well virtual metering system and the convenience of maintenance, a new method for oil and gas metering was proposed based on nozzle throttling, leveraging the characteristics of differential pressure fluctuations and temperature difference signals. The mechanism equation for nozzle throttling flow, incorporating differential pressure, flow rate, and gas mass fraction, was derived. A deep neural network was established using nine characteristics as input parameters, including throttling temperature difference, mean pressure difference and standard deviation, to facilitate data-driven inverse prediction of gas mass fraction. Taking a 10 mm real nozzle as the test object, the experimental tests were carried out on a gas-liquid two-phase flow loop. In the tests, the converted velocity range of gas phase was 1.73–12.09 m/s while that of liquid phase was 0.03–0.35 m/s. The flow patterns tested included stratified flow, wave flow, slug flow, and annular flow. Results The adaptive range of gas fraction was 0–100% for the mechanism equation, unaffected by changes in flow pattern, gas-liquid velocity, or system pressure. The errors in gas mass fraction and flow metering were within ±10%. Conclusion The virtual metering of gas-liquid two-phase flow in oil nozzles based on physical-data fusion enables the virtual metering of gas and liquid flow using only the existing temperature and pressure measurement systems, without requiring information on storage, wellbore, or gathering and transportation pipeline network, nor additional measuring instruments. Additionally, low costs for data acquisition and modeling enhance the method's potential for widespread adoption and application.https://yqcy.pipechina.com.cn/cn/article/doi/10.6047/j.issn.1000-8241.2024.11.010nozzlegas-liquid two-phase flowflow meteringdifferential pressuretemperature differencedeep neural network
spellingShingle Qing LI
Hongfei LIU
Manqing JIN
Ying ZHANG
Fachun LIANG
Virtual metering of gas-liquid two-phase flow in oil nozzles based on physical-data fusion
You-qi chuyun
nozzle
gas-liquid two-phase flow
flow metering
differential pressure
temperature difference
deep neural network
title Virtual metering of gas-liquid two-phase flow in oil nozzles based on physical-data fusion
title_full Virtual metering of gas-liquid two-phase flow in oil nozzles based on physical-data fusion
title_fullStr Virtual metering of gas-liquid two-phase flow in oil nozzles based on physical-data fusion
title_full_unstemmed Virtual metering of gas-liquid two-phase flow in oil nozzles based on physical-data fusion
title_short Virtual metering of gas-liquid two-phase flow in oil nozzles based on physical-data fusion
title_sort virtual metering of gas liquid two phase flow in oil nozzles based on physical data fusion
topic nozzle
gas-liquid two-phase flow
flow metering
differential pressure
temperature difference
deep neural network
url https://yqcy.pipechina.com.cn/cn/article/doi/10.6047/j.issn.1000-8241.2024.11.010
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AT hongfeiliu virtualmeteringofgasliquidtwophaseflowinoilnozzlesbasedonphysicaldatafusion
AT manqingjin virtualmeteringofgasliquidtwophaseflowinoilnozzlesbasedonphysicaldatafusion
AT yingzhang virtualmeteringofgasliquidtwophaseflowinoilnozzlesbasedonphysicaldatafusion
AT fachunliang virtualmeteringofgasliquidtwophaseflowinoilnozzlesbasedonphysicaldatafusion