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Prediction of heat transfer coefficients for forced convective boiling of N-2 -hydrocarbon mixtures at cryogenic conditions using artificial neural networks

机译:使用人工神经网络在低温条件下强制对流沸腾强制对流沸腾的传热系数预测

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摘要

A key problem faced in the design of heat exchangers, especially for cryogenic applications, is the determination of convective heat transfer coefficients in two-phase flow such as condensation and boiling of non-azeotropic refrigerant mixtures. This paper proposes and evaluates three models for estimating the convective coefficient during boiling. These models are developed using computational intelligence techniques. The performance of the proposed models is evaluated using the mean relative error (mre), and compared to two existing models: the modified Granryd's correlation and the Silver-Bell-Ghaly method. The three proposed models are distinguished by their architecture. The first is based on directly measured parameters (DMP-ANN), the second is based on equivalent Reynolds and Prandtl numbers (eq-ANN), and the third on effective Reynolds and Prandtl numbers (eff-ANN).
机译:换热器设计中面临的关键问题,特别是对于低温应用,是在两相流中测定与非共沸制冷剂混合物的缩合和沸腾的两相流流动传热系数。 本文提出并评估了三种模型,用于估计沸腾过程中的对流系数。 这些模型是使用计算智能技术开发的。 使用平均相对误差(MRE)来评估所提出的模型的性能,并与两个现有型号进行比较:改进的Granryd的相关性和银钟 - 地球法。 三种拟议的模型由其体系结构区分。 第一是基于直接测量的参数(DMP-ANN),第二个是基于等效的雷诺和普朗特数(EQ-ANN),以及第三个在有效的雷诺和普朗特数(EFF-ANN)上。

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