Using machine vision algorithms for characterizing gas-liquid slug flows in vertical pipes

IF 2.3 3区 工程技术 Q2 ENGINEERING, MECHANICAL Flow Measurement and Instrumentation Pub Date : 2024-08-17 DOI:10.1016/j.flowmeasinst.2024.102671
Dana Fadlalla , Shahriyar G. Holagh , Wael H. Ahmed , David Weales , Medhat Moussa
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Abstract

Slug flow, characterized by the distinctive interfacial structures of Taylor bubbles surrounded by liquid films and bridged by aerated liquid slugs, is a dynamically complex two-phase flow pattern exist in many oil and gas, and energy systems. Accurate and precise quantification of such complex flow behaviour is essential for optimal design, safe operation, and reliable modelling of these systems. Existing image-based measurement techniques mostly rely on offline image processing algorithms and are often limited to a narrow set of flow characteristics primarily focusing on Taylor bubbles. Such constraints not only impede real-time flow monitoring and regulation but also leave liquid slug characteristics unmeasured, resulting in an inability to accurately determine the flow characteristics and extract instantaneous void fraction signals. Present study examined the performance of adaptive thresholding (AT) and background subtraction (BS) algorithms in capturing slug flow characteristics. It was found that while the former excels in Taylor bubbles detection and the latter in small bubbles identification, neither individually addresses the accurate measurement of both flow structures' characteristics. This observation, along with the mentioned restrictions of existing algorithms are the main reason for developing the present combined machine vision-based algorithm. While unlocking the ability to extract instantaneous void fraction signals, this new approach facilitates online measurement of a wide range of key flow characteristics, including Taylor bubble length, velocity, void fraction, and surrounding liquid film thickness; liquid slug length and void fraction; and slug unit length, void fraction, and frequency. Parallel to the high-speed imaging, time-series void fraction data was collected using two capacitance sensors installed alongside the imaging area on the pipe, providing benchmark data essential for the validation of the new algorithm's accuracy. The comparisons demonstrated a high degree of accuracy and precision for the combined algorithm. Quantitatively, the new algorithm measured key unit cell characteristics with RMS errors ranging from 2 to 10 %, while the BS and AT algorithms exhibited wider RMS error ranges of 8–46 % and 2–53 %, respectively. This underscores the new algorithm's potential as a transformative tool for slug flow analysis.

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利用机器视觉算法表征垂直管道中的气液蛞蝓流
蛞蝓流的特点是泰勒气泡被液膜包围、充气液体蛞蝓架桥的独特界面结构,是许多油气和能源系统中存在的一种动态复杂的两相流动模式。准确和精确地量化这种复杂的流动行为对于这些系统的优化设计、安全运行和可靠建模至关重要。现有的基于图像的测量技术大多依赖于离线图像处理算法,而且通常局限于以泰勒气泡为重点的一组狭窄的流动特征。这种限制不仅妨碍了实时流量监测和调节,而且无法测量液体蛞蝓的特征,导致无法准确确定流量特征和提取瞬时空隙率信号。本研究考察了自适应阈值算法(AT)和背景减法算法(BS)在捕捉蛞蝓流动特征方面的性能。研究发现,虽然前者在泰勒气泡检测方面和后者在小气泡识别方面表现出色,但两者都无法单独准确测量这两种流动结构的特征。这一发现以及现有算法的上述限制是开发目前基于机器视觉的组合算法的主要原因。这种新方法不仅能提取瞬时空隙率信号,还能在线测量各种关键流动特征,包括泰勒气泡长度、速度、空隙率和周围液膜厚度;液体蛞蝓长度和空隙率;以及蛞蝓单位长度、空隙率和频率。在进行高速成像的同时,还使用安装在管道成像区域旁的两个电容传感器收集了时间序列空隙率数据,为验证新算法的准确性提供了重要的基准数据。比较结果表明,组合算法具有很高的准确性和精确度。从数量上看,新算法测量关键单元特征的有效值误差在 2% 到 10% 之间,而 BS 和 AT 算法的有效值误差范围更广,分别为 8% 到 46% 和 2% 到 53%。这凸显了新算法作为井口流分析变革工具的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Flow Measurement and Instrumentation
Flow Measurement and Instrumentation 工程技术-工程:机械
CiteScore
4.30
自引率
13.60%
发文量
123
审稿时长
6 months
期刊介绍: Flow Measurement and Instrumentation is dedicated to disseminating the latest research results on all aspects of flow measurement, in both closed conduits and open channels. The design of flow measurement systems involves a wide variety of multidisciplinary activities including modelling the flow sensor, the fluid flow and the sensor/fluid interactions through the use of computation techniques; the development of advanced transducer systems and their associated signal processing and the laboratory and field assessment of the overall system under ideal and disturbed conditions. FMI is the essential forum for critical information exchange, and contributions are particularly encouraged in the following areas of interest: Modelling: the application of mathematical and computational modelling to the interaction of fluid dynamics with flowmeters, including flowmeter behaviour, improved flowmeter design and installation problems. Application of CAD/CAE techniques to flowmeter modelling are eligible. Design and development: the detailed design of the flowmeter head and/or signal processing aspects of novel flowmeters. Emphasis is given to papers identifying new sensor configurations, multisensor flow measurement systems, non-intrusive flow metering techniques and the application of microelectronic techniques in smart or intelligent systems. Calibration techniques: including descriptions of new or existing calibration facilities and techniques, calibration data from different flowmeter types, and calibration intercomparison data from different laboratories. Installation effect data: dealing with the effects of non-ideal flow conditions on flowmeters. Papers combining a theoretical understanding of flowmeter behaviour with experimental work are particularly welcome.
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