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Application of Genetic Algorithms and Neural Networks to Unsteady Flow Control Optimization

机译:遗传算法和神经网络在非定常流量控制优化中的应用

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Evolutionary algorithms have been successfully used as a design optimization tool in several engineering optimization problems. Here, a genetic algorithm is linked with a computational fluid dynamics code in a GA-CFD system to optimize the configuration of a dual synthetic jet arrangement. The test problem is a two-dimensional NACA 0012 at a high angle of attack. The optimal configuration significantly reduces the separation region over the airfoil, yielding higher lift and lower drag. The data generated from this evolution are also used to test a possible neural network replacement for CFD computations which if successful could significantly accelerate the GA-CFD process for these types of optimizations.
机译:进化算法已成功用作若干工程优化问题中的设计优化工具。这里,遗传算法与GA-CFD系统中的计算流体动力学代码相关联,以优化双合成喷射装置的配置。测试问题是高攻角的二维Naca 0012。最佳配置在翼型上显着降低了分离区域,从而产生更高的升力和降低阻力。该进化产生的数据也用于测试CFD计算的可能的神经网络替换,如果成功可以显着加速这些类型的优化的GA-CFD过程。

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