首页> 外文会议>Proceedings of the 2002 ASME Joint U.S.-European Fluids Engineering Conference >IDENTIFICATION OF GAS-LIQUID FLOW REGIMES FROM A SPACE-FREQUENCY REPRESENTATION BY USE OF AN IMPEDANCE PROBE AND A NEURAL NETWORK
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IDENTIFICATION OF GAS-LIQUID FLOW REGIMES FROM A SPACE-FREQUENCY REPRESENTATION BY USE OF AN IMPEDANCE PROBE AND A NEURAL NETWORK

机译:通过使用阻抗探针和神经网络从空间频率表示中识别气液流动区

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The identification of two-phase flow patterns has been widely studied, and the diagnostic procedures are traditionally based on statistical or spectral signal analysis, while the spatial information related with the geometrical topology of the phase distribution in the pipe is never taken into account. The aim of this study is to demonstrate how the exploitation of both spectral and spatial information leads to an unambiguous identification of the flow patterns. Experiments are performed on a 30 meters long horizontal air-water loop. By simultaneously analyzing the power spectral density of the signals delivered by a multi-electrode impedance sensor, we obtain a space-frequency representation which exhibits particular features of the different flow regimes. They can be characterized by a set of 3 scalar parameters, quantifying respectively the localization in space, in frequency and the shape of the spectral content. The final demonstration of this space-frequency characterization is provided by the use of a multi-layer neural network, trained on a 80 tests database. This net exhibits a successful identification rate above 80% when used in blind real-time tests.
机译:两相流模式的识别已被广泛研究,诊断程序传统上是基于统计或频谱信号分析的,而从未考虑与管中相分布的几何拓扑有关的空间信息。这项研究的目的是证明频谱和空间信息的利用如何导致对流型的明确识别。实验是在30米长的水平空气-水环路上进行的。通过同时分析由多电极阻抗传感器传递的信号的功率谱密度,我们获得了一种空频表示,其表现出不同流态的特定特征。它们可以通过一组3个标量参数来表征,分别量化空间,频率和频谱内容的形状中的定位。通过使用在80个测试数据库上训练的多层神经网络,可以对这种空频特性进行最后的演示。当用于盲实时测试中时,该网的成功识别率超过80%。

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