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首页> 外文期刊>International Journal of Refrigeration >Modified neural network correlation of refrigerant mass flow rates through adiabatic capillary and short tubes: Extension to CO_2 transcritical flow
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Modified neural network correlation of refrigerant mass flow rates through adiabatic capillary and short tubes: Extension to CO_2 transcritical flow

机译:通过绝热毛细管和短管的制冷剂质量流量的修正神经网络相关性:扩展到CO_2跨临界流

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摘要

This paper presents a modified dimensionless neural network correlation of refrigerant mass flow rates through adiabatic capillary tubes and short tube orifices. In particular, CO_2 transcritical flow is taken into account. The definition of neural network input and output dimensionless parameters is grounded on the homogeneous equilibrium model and extended to supercritical inlet conditions. 2000 sets of experimental mass flow-rate data of R12, R22, R134a, R404A, R407C, R410A, R600a and CO_2 (R744) in the open literature covering capillary and short tube geometries, subcritical and supercritical inlet conditions are collected for neural network training and testing. The comparison between the trained neural network and experimental data reports 0.65% average and 8.2% standard deviations; 85% data fall into ±10% error band. Particularly for CO_2, the average and standard deviations are -2.5% and 6.0%, respectively. 90% data fall into ±10% error band.
机译:本文提出了一种通过绝热毛细管和短管孔的制冷剂质量流量修正的无量纲神经网络相关性。特别地,考虑了CO_2跨临界流。神经网络输入和输出无量纲参数的定义基于均质平衡模型,并扩展到超临界入口条件。在公开文献中涵盖毛细管和短管几何形状,亚临界和超临界入口条件的2000组R12,R22,R134a,R404A,R407C,R410A,R600a和CO_2(R744)的实验质量流量数据进行了神经网络训练和测试。训练后的神经网络与实验数据之间的比较报告了0.65%的平均值和8.2%的标准偏差。 85%的数据落入±10%的误差带。特别是对于CO_2,平均偏差和标准偏差分别为-2.5%和6.0%。 90%的数据落入±10%的误差带。

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