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FLOW REGIME IDENTIFICATION OF GAS-WATER TWO-PHASE FLOW USING SVM

机译:基于SVM的气水两相流流型识别。

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摘要

The automatic and objective identification of gas-water two-phase regime has important industrial background and scientific significance. In this paper, the gas-water two-phase flow regime in horizontal tube was taken as experimental object. A novel powerful learning method called Support Vector Machine (SVM) is applied to identification of flow regimes. Support Vector Machine is an effective and general method for representing complex function in high dimensional space which is suitable for pattern recognition and function regression et al. According to the design theory presented in the paper, the experiment was carried out in the multifunctional flow equipment in Institute of Automation and instrument of Zhejiang University. The pressure difference signals on Venturi meter of measured tube segment were taken as experimental signals. Then autocovariance function (r(0),r(2)) and partial autocorrelation function of the pressure difference signals were taken as feature parameters and trained . RBF is adopted as kernel function. Then the two-phase flow regime in horizontal tube was identified by the method of pattern recognition. The result shows that this method has high precision for familiar flow regime identification, for example bubble flow, slug flow and churn flow et al.
机译:气水两相流态的自动客观识别具有重要的工业背景和科学意义。本文以水平管中气水两相流场为实验对象。一种新颖的功能强大的学习方法,称为支持向量机(SVM),用于识别流态。支持向量机是一种有效且通用的表示高维空间中复杂函数的方法,适用于模式识别和函数回归等。根据本文提出的设计理论,在浙江大学自动化仪表研究所多功能流量设备上进行了实验。将文丘里管测量管段上的压差信号作为实验信号。然后将压差信号的自协方差函数(r(0),r(2))和偏自相关函数作为特征参数并进行训练。采用RBF作为内核功能。然后通过模式识别方法确定水平管中的两相流态。结果表明,该方法对熟悉的流态识别具有很高的精度,例如气泡流,团状流和搅动流等。

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