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Identification of flow regime and estimation of volume fraction independent of liquid phase density in gas-liquid two-phase flow

机译:气液两相流中流态的识别和体积分数的估计与液相密度无关

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摘要

Changes of fluid properties, especially density, strongly affect the performance of radiation-based multiphase flow meter and could cause error in volume fraction measuring. One solution in such situations is continuous recalibration of the system, which is a difficult and long time task. In this study, a new methodology is presented for identifying flow regime and estimating the void fraction in gas-liquid flows independent of liquid phase density changes. The approach is based on gamma-ray attenuation and scattering combined with artificial neural networks (ANNs). The detection system uses a fan beam geometry, comprised of one Cs-137 source and three Nal(T1) detectors. Two of these three detectors were implemented to measure transmitted photons and the third one was used to measure scattered photons. Also, four ANNs were used in this study, the first one for identifying the flow regime independent of liquid phase density changes and the other three ANNs for predicting void fraction independent of liquid phase density changes. Using this methodology, three flow regimes of annular, stratified and bubbly were correctly distinguished in liquid phase density changes range of 0.735-0.980 g/cm(3) and void fraction was predicted with a mean relative error (MRE) of less than 43%. (C) 2017 Elsevier Ltd. All rights reserved.
机译:流体特性(尤其是密度)的变化会严重影响基于辐射的多相流量计的性能,并可能导致体积分数测量出现误差。在这种情况下,一种解决方案是对系统进行连续重新校准,这是一项艰巨而长期的任务。在这项研究中,提出了一种新的方法,可用于识别流态并估算气液流中的空隙率,而与液相密度的变化无关。该方法基于伽马射线衰减和散射结合人工神经网络(ANN)。该检测系统使用的扇形光束几何形状由一个Cs-137源和三个Nal(T1)检测器组成。这三个检测器中的两个用于测量透射光子,第三个用于测量散射光子。同样,在这项研究中使用了四个ANN,第一个用于识别与液相密度变化无关的流动状态,而其他三个ANN用于预测与液相密度变化无关的空隙率。使用这种方法,可以正确区分环形,分层和气泡状的三种流动形式,其液相密度变化范围为0.735-0.980 g / cm(3),并且预测的空隙率平均相对误差(MRE)小于43% 。 (C)2017 Elsevier Ltd.保留所有权利。

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