首页> 外文期刊>Applied radiation and isotopes: including data, instrumentation and methods for use in agriculture, industry and medicine >The comparison of different multilayer perceptron and General Regression Neural Networks for volume fraction prediction using MCNPX code
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The comparison of different multilayer perceptron and General Regression Neural Networks for volume fraction prediction using MCNPX code

机译:使用MCNPX代码对不同多层的Perceptron和一般回归神经网络的比较

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This research presents a methodology for volume fraction predictions in water-gas-oil multiphase systems based on gamma-ray densitometry and artificial neural networks. The simulated geometry uses a dual-energy gamma-ray source and dual-modality (transmitted and scattered beams). The Am-241 and Cs-137 sources and two NaI (T1) detectors have been used in this methodology. Different data from the pulse height distribution were used to train the artificial neural network to evaluate the volume fraction prediction. The MCNPX code has been used to develop the theoretical model for stratified regime and to provide data for the artificial neural network. 5-layers feed-forward multilayer perceptron using backpropagation training algorithm and General Regression Neural Networks has been used with different designs. The artificial neural network design that presented the best results of volume fraction prediction has a mean relative error below 2.0%.
机译:该研究提出了一种基于伽马射线密度测定和人工神经网络的水 - 油多相体系中的体积分数预测方法。 模拟几何形状使用双能伽马射线源和双模(传输和散射光束)。 AM-241和CS-137源和两个NAI(T1)探测器已用于该方法中。 来自脉冲高度分布的不同数据用于训练人工神经网络以评估体积分数预测。 MCNPX代码已被用于开发分层制度的理论模型,并为人工神经网络提供数据。 使用Backpropagation训练算法和一般回归神经网络的5层前馈多层Perceptron已被使用不同的设计。 呈现的体积分数预测最佳结果的人工神经网络设计具有低于2.0%的平均相对误差。

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