Artificial Intelligence Techniques for the Hydrodynamic Characterization of Two-Phase Liquid–Gas Flows: An Overview and Bibliometric Analysis

Fluids Pub Date : 2024-07-08 DOI:10.3390/fluids9070158
July Andrea Gómez Camperos, Marlon Mauricio Hernández Cely, Aldo Pardo García
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Abstract

Accurately and instantly estimating the hydrodynamic characteristics in two-phase liquid–gas flow is crucial for industries like oil, gas, and other multiphase flow sectors to reduce costs and emissions, boost efficiency, and enhance operational safety. This type of flow involves constant slippage between gas and liquid phases caused by a deformable interface, resulting in changes in gas volumetric fraction and the creation of structures known as flow patterns. Empirical and numerical methods used for prediction often result in significant inaccuracies during scale-up processes. Different methodologies based on artificial intelligence (AI) are currently being applied to predict hydrodynamic characteristics in two-phase liquid–gas flow, which was corroborated with the bibliometric analysis where AI techniques were found to have been applied in flow pattern recognition, volumetric fraction determination for each fluid, and pressure gradient estimation. The results revealed that a total of 178 keywords in 70 articles, 29 of which reached the threshold (machine learning, flow pattern, two-phase flow, artificial intelligence, and neural networks as the high predominance), were published mainly in Flow Measurement and Instrumentation. This journal has the highest number of published articles related to the studied topic, with nine articles. The most relevant author is Efteknari-Zadeh, E, from the Institute of Optics and Quantum Electronics.
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用于液气两相流流体动力学特征描述的人工智能技术:概述与文献计量分析
准确、即时地估算液气两相流的流体力学特性,对于石油、天然气等行业和其他多相流领域降低成本、减少排放、提高效率和运营安全至关重要。这种类型的流动涉及由可变形界面引起的气相和液相之间的持续滑动,从而导致气体体积分数的变化,并产生称为流动模式的结构。在放大过程中,用于预测的经验和数值方法往往会导致严重的误差。目前,基于人工智能(AI)的不同方法正被用于预测液气两相流的流体力学特性,文献计量分析证实了这一点,并发现人工智能技术已被应用于流动模式识别、每种流体的体积分数确定和压力梯度估算。结果显示,在 70 篇文章中共有 178 个关键词,其中 29 个达到了阈值(机器学习、流动模式、两相流、人工智能和神经网络占绝大多数),这些关键词主要发表在《流量测量与仪表》上。该期刊发表的与研究主题相关的文章数量最多,共有 9 篇。最相关的作者是来自光学和量子电子学研究所的 Efteknari-Zadeh,E。
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