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Identification of liquid-gas flow regime in a pipeline using gamma-ray absorption technique and computational intelligence methods

机译:使用伽马射线吸收技术和计算智能方法识别管道中的液体气流状态

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Liquid-gas flows in pipelines occur frequently in the mining, nuclear, and oil industry. One of the non-contact techniques useful for studying such flows is the gamma ray absorption method. An analysis of the signals from scintillation detectors allows us to determine the number of flow parameters and to identify the flow structure.& para;& para;In this work, four types of liquid-gas flow regimes as a slug, plug, bubble, and transitional plug - bubble were evaluated using computational intelligence methods. The experiments were carried out for water-air flow through a horizontal pipeline. A sealed Am-241 gamma ray source and a NaI(Tl) scintillation detector were used in the research. Based on the measuring signal analysis in the time domain, nine features were extracted which were used at the input of the classifier. Six computational intelligence methods (K-means clustering algorithm, single decision tree, probabilistic neural network, multilayer perceptron, radial basic function neural network and support vector machine) were used for a two-phase flow structure identification. It was found that all the methods give good recognition results for the types of flow examined. These results confirm the usefulness of gamma ray absorption in combination with artificial intelligence methods for liquid-gas flow regime classification.
机译:管道中的液体气体频繁发生在采矿,核和石油工业中。可用于研究这种流量的非接触技术之一是伽马射线吸收方法。来自闪烁探测器的信号的分析允许我们确定流量参数的数量并识别流动结构。¶¶在这项工作中,四种类型的液体气流制度作为块,插头,泡沫,使用计算智能方法评估和过渡插头泡沫。通过水平管道进行实验进行水 - 空气流量。在研究中使用了密封的AM-241γ射线源和NaI(TL)闪烁探测器。基于时域中的测量信号分析,提取九个特征,用于分类器的输入。六种计算智能方法(K-Means Clustering算法,单决定树,概率神经网络,多层Perceptron,径向基本功能神经网络和支持向量机)用于两相流结构识别。结果发现,所有方法都为所检查的流量提供良好的识别结果。这些结果证实了伽马射线吸收与液体气流制度分类的人工智能方法的用途。

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