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Robust Design of a Supersonic Natural Laminar Flow Wing-Body

机译:超音速自然层流机翼的稳健设计

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The robust design of a natural laminar flow wingbody for a supersonic business jet is here described. The pursued goal is to obtain a wing shape whose performance is influenced as least as possible by geometrical uncertainties. The starting point is a supersonic business jet wing-body that was already optimized for natural laminar flow using a deterministic objective function formulation. The definition of the optimization goal is based on special risk functions, namely Value-at-Risk (VaR) and Conditional Value-at-Risk (CVaR), that are widely used in financial engineering community and that offer interesting advantages with respect to more classical approaches based on expectation or variance risk functions. VaR and CVaR are used in conjunction with two different stochastic optimization algorithms, namely the Covariance Matrix Adaptation Evolution Strategy (CMA-ES) and the Surrogate-based Local Optimization (SBLO). These risk functions are computed using a very coarse sample set and their confidence intervals are computed using the bootstrap computational statistics technique. The results illustrate the feasibility of such a robust optimization approach for the application to industrial class robust design optimization problems in aerospace.
机译:本文描述了用于超音速公务机的天然层流机翼的坚固设计。追求的目标是获得一种机翼形状,其性能受几何不确定性的影响尽可能小。起点是超音速商务喷气机机体,它已经使用确定性目标函数公式针对自然层流进行了优化。优化目标的定义基于特殊的风险函数,即风险价值(VaR)和条件风险价值(CVaR),它们在金融工程界广泛使用,并且在更多方面具有有趣的优势。基于期望或方差风险函数的经典方法。 VaR和CVaR与两种不同的随机优化算法结合使用,即协方差矩阵适应进化策略(CMA-ES)和基于代理的局部优化(SBLO)。这些风险函数是使用非常粗糙的样本集来计算的,而它们的置信区间是使用自举计算统计技术来计算的。结果表明,这种鲁棒性优化方法适用于航空航天工业级鲁棒性设计优化问题的可行性。

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