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A non-intrusive approach for the reconstruction of POD modal coefficients through active subspaces

机译:一种非侵扰性方法,用于通过活动子空间重建POD模态系数

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Reduced order modeling (ROM) provides an efficient framework to compute solutions of parametric problems. Basically, it exploits a set of precomputed high-fidelity solutions- computed for properly chosen parameters, using a full-order model-in order to find the low dimensional space that contains the solution manifold. Using this space, an approximation of the numerical solution for new parameters can be computed in realtime response scenario, thanks to the reduced dimensionality of the problem. In a ROM framework, the most expensive part from the computational viewpoint is the calculation of the numerical solutions using the full-order model. Of course, the number of collected solutions is strictly related to the accuracy of the reduced order model. In this work, we aim at increasing the precision of the model also for few input solutions by coupling the proper orthogonal decomposition with interpolation (PODI)-a data-driven reduced order method-with the active subspace (AS) property, an emerging tool for reduction in parameter space. The enhanced ROM results in a reduced number of input solutions to reach the desired accuracy. In this contribution, we present the numerical results obtained by applying this method to a structural problem and in a fluid dynamics one. (C) 2019 Academie des sciences. Published by Elsevier Masson SAS. All rights reserved.
机译:减少的订单建模(ROM)提供了一个有效的框架来计算参数问题的解决方案。基本上,它利用一组预先计算的高保真解决方案,用于使用完整的型号 - 为了找到包含解决方案歧管的低维空间。使用此空间,由于问题的减少,可以在实时响应场景中计算用于新参数的数值解决方案的近似值。在ROM框架中,来自计算观点的最昂贵的部分是使用全阶模型计算数值解决方案。当然,收集的解决方案的数量与减少订单模型的准确性严格相关。在这项工作中,我们的目的旨在增加模型的精度也通过耦合与插值(PODI)-A数据驱动的减少的顺序方法 - 有源子空间(AS)属性,新兴工具来增加少数输入解决方案用于减少参数空间。增强型ROM导致减少的输入解决方案以达到所需的精度。在这一贡献中,我们通过将该方法应用于结构问题和流体动力学,提出了通过将该方法应用获得的数值结果。 (c)2019年Academie Des Sciences。由Elsevier Masson SA出版。版权所有。

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