自然对流冷凝传热的数值和实验研究

IF 1.7 4区 工程技术 Q3 MECHANICS
Bing Tan, Jiejin Cai
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引用次数: 0

摘要

自然对流冷凝具有可靠性高、无需复杂机械传动结构等优点,被广泛应用于化工、核电、汽车等工业领域。本研究旨在利用人工神经网络(ANN)方法、相关预测和基于边界理论的代码研究自然对流冷凝的传热机理并评估其性能。在压力范围为 0.2 MPa -0.6 MPa、过冷温度范围为 11 K-45 K、空气质量分数范围为 0.0049-0.69 的运行条件下,根据目前的实验数据提出了经验相关性。根据综合数据库对经验相关性进行了验证,91% 的数据重现在 30% 的误差范围内。利用目前的实验数据提出了一个经过训练、验证和测试的 ANN 模型,该模型在目前的测试数据中产生的误差为 5%。当利用训练好的模型再现额外的数据库时,所有数据的误差都在()11%的范围内。最后,对这些快速计算方法的传热系数再现进行了并列比较,结果表明 ANN 模型的性能最好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Numerical and experimental research on natural convection condensation heat transfer

Numerical and experimental research on natural convection condensation heat transfer

Natural convection condensation, with the advantage of high reliability and not requiring complex mechanical drive structures, is broadly used in industrial fields, such as chemical, nuclear power, automotive, etc. This work aims to investigate the heat transfer mechanism and evaluate the performance of natural convection condensation with the artificial neural network (ANN) method, correlation predictions, and the code based on the boundary theory. An empirical correlation was proposed based on the present experimental data with operating conditions in the pressure range of 0.2 MPa -0.6 MPa, subcooled temperature range of 11 K–45 K, and air mass fraction range of 0.0049–0.69. The empirical correlation was validated against a consolidated database, with 91% of the data reproduction falling within the error band of \(\pm\) 30%. An ANN model was put forward with training, validation, and testing using the present experimental data, which yields an error of \(\pm\) 5% in the present test data. When the trained model was utilized to reproduce the additional database, all the data fell within an \(\pm\) 11% error band. Finally, a side-by-side comparison in heat transfer coefficient reproduction was conducted among those rapidly computational methods, and the ANN model turned out to have the best performance.

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来源期刊
Heat and Mass Transfer
Heat and Mass Transfer 工程技术-力学
CiteScore
4.80
自引率
4.50%
发文量
148
审稿时长
8.0 months
期刊介绍: This journal serves the circulation of new developments in the field of basic research of heat and mass transfer phenomena, as well as related material properties and their measurements. Thereby applications to engineering problems are promoted. The journal is the traditional "Wärme- und Stoffübertragung" which was changed to "Heat and Mass Transfer" back in 1995.
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