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首页> 外文期刊>Journal of Fluids Engineering: Transactions of the ASME >Flow Regime Identification in Boiling Two-Phase Flow in a Vertical Annulus
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Flow Regime Identification in Boiling Two-Phase Flow in a Vertical Annulus

机译:垂直环空沸腾两相流中流态的识别

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摘要

This work describes the application of an artificial neural network to process the signals measured by local conductivity probes and classify them into their corresponding global flow regimes. Experiments were performed in boiling upward two-phase flow in a vertical annulus. The inner and outer diameters of the annulus were 19.1 mm and 38.1 mm, respectively. The hydraulic diameter of the flow channel, D_(H), was 19.0 mm and the total length is 4.477 m. The test section was composed of an injection port and five instrumentation ports, the first three were in the heated section (z/D_(H) velence 52, 108 and 149 where z represents the axial position) and the upper ones in the unheated sections (z/D_(H) velence 189 and 230). Conductivity measurements were performed in nine radial positions for each of the five ports in order to measure the bubble chord length distribution for each flow condition. The measured experiment matrix comprised test cases at different inlet pressure, ranging from 200 kPa up to 950 kPa. A total number of 42 different flow conditions with superficial liquid velocities from 0.23 m/s to 2.5 m/s and superficial gas velocities from 0.002 m/s to 1.7 m/s and heat flux from 55 kW/m~(2) to 247 kW/m~(2) were measured in the five axial ports. The flow regime indicator has been chosen to be statistical parameters from the cumulative probability distribution function of the bubble chord length signals from the conductivity probes. Self-organized neural networks (SONN) have been used as the mapping system. The flow regime has been classified into three categories: bubbly, cap-slug and churn. A SONN has been first developed to map the local flow regime (LFR) of each radial position. The obtained LFR information, conveniently weighted with their corresponding significant area, was used to provide the global flow regime (GFR) classification. These final GFR classifications were then compared with different flow regime transition models.
机译:这项工作描述了人工神经网络的应用,以处理由局部电导率探针测量的信号并将其分类为相应的整体流动状态。在垂直环空中以沸腾向上的两相流进行实验。环的内径和外径分别为19.1毫米和38.1毫米。流道的水力直径D_(H)为19.0 mm,总长度为4.477 m。测试部分由一个注入端口和五个仪器端口组成,前三个位于加热区域(z / D_(H)速度52、108和149,其中z表示轴向位置),上部位于未加热区域(z / D_(H)速度189和230)。对五个端口中的每个端口在九个径向位置进行电导率测量,以便测量每种流动条件下的气泡弦长度分布。测得的实验矩阵包括在200 kPa至950 kPa的不同入口压力下的测试案例。共有42种不同的流动条件,表观液体速度从0.23 m / s至2.5 m / s,表层气体速度从0.002 m / s至1.7 m / s,热通量从55 kW / m〜(2)至247在五个轴向端口上测量kW / m〜(2)。根据来自电导率探针的气泡弦长度信号的累积概率分布函数,已将流动状态指示器选择为统计参数。自组织神经网络(SONN)已用作映射系统。流动状态分为三类:气泡状,帽塞状和搅动状。首先开发了SONN来绘制每个径向位置的局部流动状态(LFR)。获得的LFR信息(方便地对其相应的有效面积进行加权)可用于提供全局流态(GFR)分类。然后将这些最终的GFR分类与不同的流态转换模型进行比较。

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