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首页> 外文期刊>International Journal of Thermal Sciences >Optimization investigation on configuration parameters of serrated fin in plate-fin heat exchanger using genetic algorithm
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Optimization investigation on configuration parameters of serrated fin in plate-fin heat exchanger using genetic algorithm

机译:基于遗传算法的板翅式换热器锯齿形翅片结构参数优化研究

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摘要

In this paper the configuration of serrated fin in plate-fin heat exchange is optimized with genetic algorithm combined with Kriging response surface method. The fin height h, fin thickness t, fin space s and interrupted length 1 of serrated fins are considered as four optimization parameters, while the j factor, f factor and JF factor are considered as three single objective functions for a specified Reynolds. Meanwhile, maximum of j factor and minimum of f factor are optimized as two conflicting objective functions, in which a set of optimal solutions are obtained. The comparison between the optimal design and the common design for a specified mass flow rate under given space restriction is performed to demonstrate the effectiveness of optimization configuration. The results show that the heat transfer rate of the optimal heat exchanger increases by 145 W, while the power consumption decreases by 48.5%. In addition, compared with conventional genetic algorithm, a genetic algorithm combined with Kriging response surface method overcomes the dependence on empirical correlations. The optimizing method of this paper can be used to optimize various complex problems of engineering applications. Crown Copyright (C) 2015 Published by Elsevier Masson SAS. All rights reserved.
机译:本文采用遗传算法结合克里格响应面法优化了板翅式换热中锯齿形翅片的构型。翅片高度h,翅片厚度t,翅片空间s和锯齿状翅片的间断长度1被视为四个优化参数,而j因子,f因子和JF因子被视为指定雷诺的三个单一目标函数。同时,将j因子的最大值和f因子的最小值作为两个相互冲突的目标函数进行了优化,从而获得了一组最优解。在给定的空间限制下,针对指定质量流量的最佳设计和通用设计之间进行比较,以证明优化配置的有效性。结果表明,最佳换热器的传热速率提高了145 W,功耗降低了48.5%。另外,与常规遗传算法相比,遗传算法与克里格响应面法相结合克服了对经验相关性的依赖。本文的优化方法可用于优化工程应用中的各种复杂问题。 Crown版权所有(C)2015,由Elsevier Masson SAS发布。版权所有。

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