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Parametric Reduced-Order Models for Probabilistic Analysis of Unsteady Aerodynamic Applications

机译:非定常空气动力学应用的概率分析参数缩小阶模型

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Methodology is presented to derive reduced-order models for large-scale parametric applications in unsteady aerodynamics. The specific case considered in this paper is a computational fluid dynamic (CFD) model with parametric dependence that arises from geometric shape variations. The first key contribution of the methodology is the derivation of a linearized model that permits the effects of geometry variations to be represented with an explicit afflne function. The second key contribution is an adaptive sampling method that utilizes an optimization formulation to derive a reduced basis that spans the space of geometric input parameters. The method is applied to derive efficient reduced-order models for probabilistic analysis of the effects of blade geometry variation for a two-dimensional model problem governed by the Euler equations. Reduced-order models that achieve three orders of magnitude reduction in the number of states are shown to accurately reproduce CFD Monte Carlo simulation results at a fraction of the computational cost.
机译:提出了方法论以导出在不稳定的空气动力学中的大规模参数应用的减少级模型。本文考虑的具体情况是计算流体动态(CFD)模型,具有从几何形状变化产生的参数依赖性。方法的第一关键贡献是导出线性化模型的衍生,该模型允许用明确的屡描现功能表示几何变化。第二关键贡献是一种自适应采样方法,其利用优化配方来导出跨越几何输入参数空间的减少的基础。应用该方法以推导出有效的减少模型,用于漏洞几何变化对由欧拉方程治理的二维模型问题的效果的概率分析。达到达到状态数量的三个级别减少的阶数模型,以准确地再现CFD Monte Carlo仿真结果,以计算成本的一小部分。

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