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Precise gamma based two-phase flow meter using frequency feature extraction and only one detector

机译:基于精确的基于伽马的两相流量计,使用频率特征提取和仅一个检测器

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摘要

Flow regime information can be used to enhance measurement accuracy of flowmeters. Void fraction measurement and regime identification of two-phase flows including, liquid and gas phases are crucial issues in oil and gas industries. In this study, three different regimes including annular, stratified and homogeneous in the range of 5%-90% void fractions, were simulated by Monte Carlo N-Particle (MCNP) Code. In simulated structure, a Cesium 137 source and only one Nat detector were used to record received transmitted photons. Fast Fourier Transform (FFT) was applied to the registered signals of the detector in order to analyze in the frequency domain. Several features of signals in the frequency domain were extracted. These features were the average value of fast Fourier transform, the amplitude of dominant frequency, variance, Kurtosis and RMS (root mean square). Different combinations of these features were investigated in order to find the best features with the best separation ability for using as the inputs of Artificial Neural Network (ANNs). Two different Multi-Layer Perceptron (MLP) neural networks were used to recognize flow regimes and predict the void fraction. In regime identification procedure, all of the three mentioned regimes were recognized correctly and in the volume fractions prediction procedure, the void fraction was also estimated with a Mean Relative Error (MRE) percentage of less than 0.5%. In all of the previous studies, at least two detectors were used. Using the proposed method in this paper, number of detectors was reduced to one.
机译:流动制度信息可用于增强流量计的测量精度。两相流量的空隙分数测量和制度鉴定,包括液体和气相阶段是石油和天然气行业的关键问题。在本研究中,通过蒙特卡罗N-粒子(MCNP)代码模拟了三种不同的制度,包括环形,分层和均匀的空隙级分的范围。在模拟结构中,使用铯137源和仅一个NAT检测器来记录接收的传输的光子。将快速傅里叶变换(FFT)应用于检测器的注册信号,以便在频域中分析。提取频域中信号的几个特征。这些特征是快速傅里叶变换的平均值,显性频率,方差,峰和RMS(均均线)。研究了这些特征的不同组合,以找到具有最佳分离能力的最佳特征,作为人工神经网络的输入(ANNS)。两种不同的多层Perceptron(MLP)神经网络用于识别流动制度并预测空隙率。在制度识别程序中,所有三个提到的制度都被正确识别,并且在体积分数预测过程中,还估计空隙部分,其平均相对误差(MRE)百分比小于0.5%。在以前的所有研究中,使用至少两个探测器。在本文中使用所提出的方法,探测器数量减少到一个。

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