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Optimal shape design of a minichannel heat sink applying multi-objective optimization algorithm and three-dimensional numerical method

机译:多足道散热器应用多目标优化算法和三维数值方法的最佳形状设计

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摘要

In the present study, an optimal laminar flow minichannel heat sink (MCHS) has been determined through three-dimensional simulations and the multi-objective optimization algorithm. The cross-sectional shape described by six variables is optimized by the multi-objective genetic algorithm (MOGA) and multi-objective particle swarm optimization (MOPSO). During the optimization, the thermal resistance theta and pumping power P are two conflicting objectives for evaluating the performances of the MCHS. After obtaining the non-inferior solutions, the technique for order preference by similarity to an ideal solution (TOPSIS) is applied as a decision-making method to determine the best compromise one. Results indicate that the TOPSIS can effectively reduce the P of the Pareto solutions without significantly increasing theta. Compared with the straight channel, the TOPSIS optimal solution could reduce theta by 7.47% or P by 31.54%. Meanwhile, the mechanism of performance improvement is analyzed by comparing the TOPSIS optimal solution and the straight channel with the same P. It is observed that the optimized channel shape changes the fluid distribution by increasing the heat transfer coefficient slightly and the heat transfer area by 12.22%, respectively.
机译:在本研究中,通过三维仿真和多目标优化算法确定了最佳层流量散热器散热器(MCH)。通过多目标遗传算法(MOGA)和多目标粒子群优化(MOPSO)优化了六个变量描述的横截面形状。在优化期间,热阻θ和泵浦功率P是评估MCH的性能的两个矛盾的目标。在获得非劣质溶液之后,通过与理想解决方案(TOPSIS)相似的顺序偏好技术作为决策方法来确定最佳的折衷方法。结果表明,Topsis可以有效地减少Pareto解决方案的P,而不会显着增加θ。与直通道相比,Topsis最佳溶液可将θ降低7.47%或p×31.54%。同时,通过将Topsis最佳溶液和具有相同P的直通道进行比较来分析性能改善机制。观察到通过将传热系数略微增加和传热面积,优化的通道形状通过12.22增加传热系数来改变流体分布。 %, 分别。

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