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Flow Regime Identification for Wet Gas Flow Based on WPT and RBFN

机译:基于WPT和RBFN的湿气流流型识别。

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A novel noninvasive approach to the on-line flow regime identification for wet gas flow in a horizontally mounted pipeline is proposed in this paper. Research into the flow-induced vibration response for the wet gas flow with the conditions of pipe diameter 50mm, pressure from 0.25MPa to 0.35MPa, Lockhart-Martinelli parameter from 0.02 to 0.6, and gas Froude Number from 0.5 to 2.7, was conducted. The flow-induced vibration signals were measured by a vibration transducer installed by outside wall of pipe, and then the features from the vibration signals were extracted though wavelet package transform (WPT). A radial basis function network (RBFN) classifier with Gaussian basis function and the extracted features as inputs was developed to identify the three typical flow regimes including stratified wavy flow, annular mist flow, and slug flow for wet gas flow. The results show that the method can identify flow patterns effectively and its identification accuracy arrives at above 89%.
机译:本文提出了一种新的非侵入性方法,用于水平安装管道中的湿气流的在线流动调节识别。用管径50mm的条件研究湿气流的流动振动响应,从0.25MPa到0.35MPa,0.02〜0.6的锁骨 - Martinelli参数,以及0.5至2.7的气体Froude数。通过由管外壁安装的振动换能器测量流动诱导的振动信号,然后通过小波封装变换(WPT)提取来自振动信号的特征。开发了一种具有高斯基础函数的径向基函数网络(RBFN)分类器和提取的特征作为输入,以识别包括用于湿气流的分层波浪流,环形雾流和块状流的三个典型的流动制度。结果表明,该方法可以有效地识别流动模式,其识别精度到达89%以上。

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