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Salinity independent volume fraction prediction in annular and stratified (water-gas-oil) multiphase flows using artificial neural networks

机译:利用人工神经网络预测环形和分层(水-气-油)多相流中与盐度无关的体积分数

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This work investigates the response of attenuation gamma-rays in volume fraction prediction system for water-gas-oil multiphase flows considering variations in salinity of water. The approach is based on pulse height distributions pattern recognition by artificial neural network. The detection system uses fan beam geometry, comprised of a dual-energy gamma-ray source and two NaI(TI) detectors in order calculate transmitted and scattered beams. Theoretical models for annular and stratified flow regimes have been developed using MCNP-X code to provide data for the network. (C) 2014 Elsevier Ltd. All rights reserved.
机译:这项工作研究了考虑水盐度变化的水-气-油多相流体积分数预测系统中衰减伽马射线的响应。该方法基于通过人工神经网络的脉冲高度分布模式识别。该检测系统使用扇形光束几何形状,该几何形状由双能量伽马射线源和两个NaI(TI)检测器组成,以便计算透射光束和散射光束。已经使用MCNP-X代码开发了用于环形和分层流态的理论模型,以为网络提供数据。 (C)2014 Elsevier Ltd.保留所有权利。

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