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Identification of gas-liquid flow regimes using a non-intrusive Doppler ultrasonic sensor and virtual flow regime maps

机译:使用非侵入式多普勒超声波传感器和虚拟流动制度映射识别气体流动制度

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The accurate prediction of flow regimes is vital for the analysis of behaviour and operation of gas/liquid two-phase systems in industrial processes. This paper investigates the feasibility of a non-radioactive and non-intrusive method for the objective identification of two-phase gas/liquid flow regimes using a Doppler ultrasonic sensor and machine learning approaches. The experimental data is acquired from a 16.2-m long S-shaped riser, connected to a 40-m horizontal pipe with an internal diameter of 50.4 mm. The tests cover the bubbly, slug, churn and annular flow regimes. The power spectral density (PSD) method is applied to the flow modulated ultrasound signals in order to extract frequency-domain features of the two-phase flow. Principal Component Analysis (PCA) is then used to reduce the dimensionality of the data so as to enable visualisation in the form of a virtual flow regime map. Finally, a support vector machine (SVM) is deployed to develop an objective classifier in the reduced space. The classifier attained 85.7% accuracy on training samples and 84.6% accuracy on test samples. Our approach has shown the success of the ultrasound sensor, PCA-SVM, and virtual flow regime maps for objective two-phase flow regime classification on pipeline-riser systems, which is beneficial to operators in industrial practice. The use of a non-radioactive and non-intrusive sensor also makes it more favorable than other existing techniques.
机译:对流动制度的精确预测对于工业过程中气/液两相系统的行为和运行至关重要。本文研究了使用多普勒超声波传感器和机器学习方法对非放射性和非侵入性方法的可行性,用于客观识别两相气/液体流动制度。实验数据从16.2米长的长形立管中获取,连接到40米的水平管,内径为50.4mm。该测试覆盖起泡,块,搅拌和环形流动状态。功率谱密度(PSD)方法应用于流量调制的超声信号,以提取两相流的频域特征。然后使用主成分分析(PCA)来降低数据的维度,以便以虚拟流动制度映射的形式启用可视化。最后,部署了支持向量机(SVM)以在降低空间中开发目标分类器。分类器对训练样品的准确性85.7%达到85.7%,测试样品精度为84.6%。我们的方法表明了超声波传感器,PCA-SVM和虚拟流动制度图的成功,用于管道 - 立式系统上的客观两相流量调集,这对工业实践中的运营商有利于运营商。使用非放射性和非侵入式传感器也使其比其他现有技术更有利。

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