首页> 外文期刊>International Communications in Heat and Mass Transfer >A correlation development for predicting the pressure drop of various refrigerants during condensation and evaporation in horizontal smooth and micro-fin tubes
【24h】

A correlation development for predicting the pressure drop of various refrigerants during condensation and evaporation in horizontal smooth and micro-fin tubes

机译:用于预测水平光滑和微翅片管冷凝和蒸发过程中各种制冷剂的压降的相关性发展

获取原文
获取原文并翻译 | 示例
       

摘要

This paper predicts the condensation and evaporation pressure drops of R32, R125, R410A, R134a, R22, R502, R507a, R32/R134a (25/75 by wt%), R407C and R12 flowing inside various horizontal smooth and micro-fin tubes by means of the numerical techniques of artificial neural networks (ANNs) and non-linear least squares (NLS). In its analyses, this paper used experimental data from the National Institute of Standards and Technology (NIST) and Eckels and Pate, as presented in Choi et al.'s study provided by NIST. In their experimental setups, the horizontal test sections have 1.587, 3.78, 3.81 and 3.97 m long countercurrent flow double tube heat exchangers with refrigerant flowing in the inner smooth (8, 8.01 and 11.1 mm i.d.) and micro-fin (4.339, 5.45, 7.43 and 8.443 mm i.d.) copper tubes and cooling water flowing in the annulus. Their test runs cover a wide range saturation temperatures, vapor qualities and mass fluxes. The pressure drops are calculated with 1485 measured data points, together with analyses of artificial neural networks and non-linear least squares numerically. Inputs of the ANNs of the best correlation are the measured values of the test sections, such as mass flux, tube length, inlet and outlet vapor qualities, critical pressure, latent heat of condensation, mass fraction of liquid and vapor phases, dynamic viscosities of liquid and vapor phases, hydraulic diameter, two-phase density and the outputs of the ANNs, which comprise the experimental total pressure drops of the evaporation and condensation data from independent laboratories. The total pressure drops of in-tube condensation and in-tube evaporation tests are modeled using the artificial neural network (ANN) method of multi-layer perceptron (MLP) with 12-40-1 architecture. Its average error rate is 7.085%, which came from the cross validation tests of 1485 evaporation and condensation data points. Dependency of the output of the ANNs from 12 numbers of input values is also shown in detail, and new ANN based empirical pressure drop correlations are developed separately for the conditions of condensation and evaporation in smooth and micro-fin tubes as a result of the analyses. In addition, a single empirical correlation for the determination of both evaporation and condensation pressure drops in smooth and micro-fin tubes is proposed with an error rate of 14.556%.
机译:本文通过以下方法预测了R32,R125,R410A,R134a,R22,R502,R507a,R32 / R134a(25/75 wt%),R407C和R12在各种水平光滑和微翅片管内流动的冷凝和蒸发压降。人工神经网络(ANN)和非线性最小二乘(NLS)数值技术的一种方法。在分析中,本文使用了美国国家标准与技术研究院(NIST)和Eckels and Pate的实验数据,这些数据是由NIST提供的Choi等人的研究得出的。在其实验装置中,水平测试部分具有1.587、3.78、3.81和3.97 m长的逆流双管换热器,制冷剂在内部光滑区域(内径为8、8.01和11.1 mm)和微翅片(4.339、5.45,内径为7.43和8.443毫米)的铜管和冷却水在环空中流动。他们的测试涵盖了广泛的饱和温度,蒸汽质量和质量通量。通过1485个测量数据点以及人工神经网络和非线性最小二乘法的分析来计算压降。具有最佳相关性的人工神经网络的输入是测试部分的测量值,例如质量通量,管长,入口和出口蒸气质量,临界压力,冷凝潜热,液相和蒸气相的质量分数,动态粘度。液相和汽相,水力直径,两相密度和人工神经网络的输出,其中包括来自独立实验室的蒸发和冷凝数据的实验总压降。管内冷凝和管内蒸发测试的总压降使用具有12-40-1结构的多层感知器(MLP)的人工神经网络(ANN)方法进行建模。它的平均错误率为7.085%,这是通过对1485个蒸发和凝结数据点的交叉验证测试得出的。分析还详细显示了ANN的输出与12个输入值之间的依存关系,并通过分析得出了新的基于ANN的经验压降相关性,用于光滑管和微翅片管中的冷凝和蒸发条件。此外,提出了用于确定光滑管和微翅片管中蒸发压力和冷凝压力下降的单一经验相关性,误差率为14.556%。

著录项

  • 来源
  • 作者单位

    Computer Engineering Department, Yildiz Technical University, Yildiz, Besiktas, Istanbul 34349, Turkey;

    Heat and Thermodynamics Division, Department of Mechanical Engineering, Yildiz Technical University (YTU), Yildiz, Besiktas, Istanbul 34349, Turkey;

    Heat and Thermodynamics Division, Department of Mechanical Engineering, Yildiz Technical University (YTU), Yildiz, Besiktas, Istanbul 34349, Turkey;

    Heat and Thermodynamics Division, Department of Mechanical Engineering, Yildiz Technical University (YTU), Yildiz, Besiktas, Istanbul 34349, Turkey;

    Fluid Mechanics, Thermal Engineering and Multiphase Flow Research Lab. (FUTURE), Department of Mechanical Engineering, King Mongkut's University of Technology Thonburi,Bangmod, Bangkok 10140, Thailand The Academy of Science, The Royal Institute of Thailand, Sanam Suea Pa, Dusit, Bangkok 10300, Thailand;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    artificial neural network (ANN); multi-layer perceptron (MLP); non-linear least squares (NLS); condensation; evaporation; correlation development; micro-fin; pressure drop;

    机译:人工神经网络(ANN);多层感知器(MLP);非线性最小二乘法(NLS);缩合;蒸发;相关发展;微鳍压力下降;
  • 入库时间 2022-08-18 00:19:53

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号