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An approach for robust PDE-constrained optimization with application to shape optimization of electrical engines and of dynamic elastic structures under uncertainty

机译:鲁棒的PDE约束优化方法及其在不确定性条件下的电动机和动态弹性结构的形状优化中的应用

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摘要

We present a robust optimization framework that is applicable to general nonlinear programs (NLP) with uncertain parameters. We focus on design problems with partial differential equations (PDE), which involve high computational cost. Our framework addresses the uncertainty with a deterministic worst-case approach. Since the resulting min–max problem is computationally intractable, we propose an approximate robust formulation that employs quadratic models of the involved functions that can be handled efficiently with standard NLP solvers. We outline numerical methods to build the quadratic models, compute their derivatives, and deal with high-dimensional uncertainties. We apply the presented approach to the parametrized shape optimization of systems that are governed by different kinds of PDE and present numerical results.
机译:我们提出了一个鲁棒的优化框架,适用于具有不确定参数的通用非线性程序(NLP)。我们关注偏微分方程(PDE)的设计问题,该问题涉及较高的计算成本。我们的框架采用确定性最坏情况方法来解决不确定性问题。由于由此产生的最小-最大问题在计算上是棘手的,因此我们提出了一种近似健壮的公式,该公式采用了所涉及函数的二次模型,可以使用标准的NLP求解器进行有效处理。我们概述了用于建立二次模型,计算其导数并处理高维不确定性的数值方法。我们将提出的方法应用于由不同种类的PDE控制的系统的参数化形状优化,并给出数值结果。

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