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Flow regime transition criteria for co-current downward two-phase flow

机译:并流向下两相流的流态转换准则

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Downward two-phase flow is observed in light water reactor accident scenarios such as loss of coolant accident (LOCA) and loss of heat sink accident (LOHS) due to loss of feed water or a secondary pipe break, and so, it is vital to have a thorough understanding of the flow mechanisms and regimes. With this point of view, flow regime transition criteria for vertical downward flow for a range of pipe diameters of 24-101.6 mm has been developed. Several models looked at the radial distribution of the bubbles and the wake effect of leading bubbles while others looked into the Kelvin -Helmholtz instability seen at the gas-liquid interface. The newly developed criteria have been compared to flow regime maps obtained via subjective and objective means, consisting of air-water data at atmospheric conditions as well as at an elevated pressure of 0.2 MPa. The new model is also compared to flow regime maps developed with different inlet conditions. Overall, the present model showed good agreements with the available data, with the exception of several 50.8 mm ID flow regime maps of different inlet conditions as well as a self-organizing neural network. This study also highlights the need for a more objective and consistent flow regime map data for large diameter pipes, the identification of cap-bubbly and churn-turbulent flows in these maps, and the deviations observed between a supervised and self-organizing neural network (SONN).
机译:在轻水反应堆事故场景中观察到向下的两相流,例如由于给水损失或二次管道破裂而导致的冷却剂损失事故(LOCA)和散热器事故(LOHS)损失,因此对于对流动机制和制度有透彻的了解。从这个角度出发,已经开发出了在直径范围为24-101.6 mm的管道中垂直向下流动的流态转换准则。一些模型研究了气泡的径向分布和前导气泡的尾流效应,而其他模型则研究了在气液界面处的开尔文-亥姆霍兹不稳定性。已将新开发的标准与通过主观和客观手段获得的流态图进行比较,该流态图由大气条件以及0.2 MPa的高压下的空气-水数据组成。还将新模型与在不同入口条件下开发的流态图进行比较。总体而言,本模型显示了与可用数据的良好一致性,但不同入口条件的几个50.8 mm内径流态图以及一个自组织神经网络除外。这项研究还强调了大直径管道需要更客观,一致的流态图数据,在这些图中识别瓶盖气泡流和搅动湍流以及监督和自组织神经网络之间观察到的偏差( SONN)。

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