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Shape optimization of an axial compressor blade by multi-objective genetic algorithm

机译:基于多目标遗传算法的轴流压气机叶片形状优化

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摘要

In this study, a multi-objective optimization of an axial compressor rotor blade has been performed through genetic algorithm with total pressure and adiabatic efficiency as objective functions. The non-dominated sorting of genetic algorithm-II has been implemented and confidence check has been performed at k-means clustered points among all the Pareto-optimal solutions. Reynolds-averaged Navier-Stokes equations are solved to obtain the objective function and flow field inside the compressor annulus. The objective functions are used to generate Pareto-optimal front. The design variables are selected from blade lean and thickness through the Bezier polynomial formulation. By this optimization, maximum efficiency and total pressure are increased by 1.76 and 0.41 per cent, respectively, when two extreme clustered points are considered as optimal designs. [PUBLICATION ABSTRACT]
机译:在这项研究中,通过遗传算法以总压力和绝热效率为目标函数,对轴流压气机转子叶片进行了多目标优化。已经实现了遗传算法II的非支配排序,并且已在所有Pareto最优解中的k均值聚类点执行了置信度检查。求解雷诺平均的Navier-Stokes方程,以获得目标函数和压缩机环内部的流场。目标函数用于生成帕累托最优前沿。通过贝塞尔多项式公式从叶片倾斜度和厚度中选择设计变量。通过这种优化,将两个极端聚类的点视为最佳设计时,最大效率和总压力分别提高了1.76%和0.41%。 [出版物摘要]

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