基于自动微分和CFD的气动优化

Tetsushi Takemiya, D. Mavris
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引用次数: 0

摘要

对于基于梯度的优化研究,通过源代码转换进行自动区分是一种非常强大的策略。但是,如果不做任何修改就使用转换后的代码,内存分配就是一个重大挑战,因为自动区分需要巨大的内存空间。本文提出了一种利用自动微分法解析计算CFD解的导数的通用策略。通过明智地修改由自动微分生成的代码,并为修改后的代码提供一组收敛的解决方案,可以避免内存分配问题。通过比较自动微分法和有限微分法计算的导数,验证了该策略的有效性。概念验证应用是利用在线通用CFD软件对跨声速区翼型形状进行优化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Aerodynamic Optimization through Automatic Differentiation and CFD
Automatic differentiation through source code transformation is a very powerful strategy for gradient-based optimization studies. However, memory allocation is a significant challenge if the transformed code is used without any modifications because automatic differentiation requires huge memory space. A general strategy to calculate derivatives of CFD solutions analytically through automatic differentiation without the memory problem is proposed in this paper. The problem of memory allocation is avoided by wisely modifying the code generated by automatic differentiation, and by feeding a set of converged solutions to the modified code. This strategy is validated by comparing derivatives computed through automatic differentiation and finite differentiation. The proof of concept application is the optimization of airfoil shape in transonic speed regime using a general CFD software available on line.
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