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Efficient Approach for CFD-based Aerodynamic Optimization Using Multi-Stage Surrogate Model

机译:基于CFD的空气动力学优化使用多级代理模型的高效方法

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In order tofurther improve the efficiency of CFD-based aerodynamic optimization with pre-constructed surrogate model, an efficient approach using multi-stage surrogate model is proposed in this study. In the proposed approach, the initial surrogate model is constructed with quite scattered samples produced by Maximin Latin Hypercube Design (LHD) which evenly spread in the entire design space. During the optimization procedure, optimization is carried out using genetic algorithm (GA) based on current surrogate model, and new samples which locate near to the real optimal solution are successively added as to improve the approximation accuracy of surrogate model until the optimization converged. Radial basis function (RBF) is adopted for both pre-constructed and multi-stage surrogate models. Compared with pre-constructed surrogate model, multi-stage surrogate model concentrates accuracy in the meaningful region where the real optimal solution probably exists instead of the global accuracy in the entire design space, moreover, the validate procedure using extra samples is not required for multi-stage surrogate model. Thus, the scale of samples required in the efficient approach using multi-stage surrogate model is much less than the pre-constructed and the efficiency of CFD-based aerodynamic optimization is also improved. A CFD-based airfoil aerodynamic optimization is employed to validate the efficient approach using multi-stage surrogate model. The optimization results demonstrate that the optimization efficiency is greatly improved due to the proposed approach using multi-stage surrogate model.
机译:顺序提高了基于CFD的空气动力学优化与预构建的替代模型的效率,在本研究中提出了一种使用多级替代模型的有效方法。在所提出的方法中,初始替代模型由Maximin拉丁超立体设计(LHD)产生的相当散射的样本构成,该设计均匀地在整个设计空间中传播。在优化过程期间,使用基于当前替代模型的遗传算法(GA)进行优化,并且连续地增加了最佳解决方案附近的新样本,以提高代理模型的近似精度,直到优化融合。采用径向基函数(RBF)用于预构建和多级代理模型。与预构建的代理模型相比,多级代理模型集中精度在有意义的区域中,其中真正的最佳解决方案可能存在而不是整个设计空间中的全球准确性,而且多个模型不需要使用额外的样品 - 代理模型。因此,使用多级替代模型的有效方法所需的样品的规模远小于预构造的,并且还提高了基于CFD的空气动力学优化的效率。采用基于CFD的翼型空气动力学优化来验证使用多级代理模型的有效方法。优化结果表明,由于使用多级代理模型的方法,优化效率大大提高。

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