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Artificial neural network modeling of a deflector in a grooved channel as well as optimization of its effective parameters

机译:沟槽通道内导流板的人工神经网络建模及其有效参数的优化

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摘要

One of methods available to increase the rate of heat transfer in channels with parallel plates is making grooves in them But, the fundamental problem of this method is the formation of stagnation zone in the grooves and as a result formation a zone with low energy transfer. In this paper, the effect of placing curved deflectors (geometries with elliptical forms) in channel on thermal and hydraulic characteristic of the fluid flow- with the aim of directing of the flow into the grooves and as a result increasing the rate of heat transfer in this zone- are investigated and heat transfer coefficient and pressure drop are calculated for different values of Reynolds number and geometrical parameters of the deflector (its small and large radiuses). The results show that the presence of the deflector in the channel significantly increases the heat transfer rate compare to the channel without deflector. Of course, it should be noted that this work also increases the pressure drop. So, finally in order to determine configurations of the deflector causing minimum pressure drop, maximum Nusselt number or a balance between them, optimization algorithm consisting of artificial neural network and multi-objective genetic algorithm was utilized to calculate the optimal values of these parameters.
机译:可用以增加具有平行板的通道中的传热速率的方法之一是在其上形成凹槽。但是,该方法的基本问题是在凹槽中形成停滞区,结果形成能量传递低的区。在本文中,在通道中放置弯曲的导流板(椭圆形的几何形状)对流体流动的热力和水力特性的影响-目的是将流体引导到凹槽中,从而提高流体的传热速率。对该区域进行了研究,并针对不同的雷诺数和导流板的几何参数(其小半径和大半径)计算了传热系数和压降。结果表明,与没有导流板的通道相比,导流板中通道的存在显着提高了传热速率。当然,应该注意的是,这项工作也会增加压降。因此,最后为了确定导致最小压力降,最大Nusselt数或它们之间平衡的偏转器的配置,利用由人工神经网络和多目标遗传算法组成的优化算法来计算这些参数的最佳值。

著录项

  • 来源
    《Heat and mass transfer》 |2018年第1期|59-68|共10页
  • 作者单位

    K. N. Toosi University of Technology, Tehran, Iran;

    K. N. Toosi University of Technology, Tehran, Iran;

    Faculty of Science of Guilan University, Rasht, Iran;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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