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Adaptive sampling for nonlinear dimensionality reduction based on manifold learning

机译:基于流形学习的非线性降维自适应采样

摘要

We make use of the non-intrusive dimensionality reduction method Isomap in order to emulate nonlinear parametric flow problems that are governed by the Reynolds-averaged Navier-Stokes equations. Isomap is a manifold learning approach that provides a low-dimensional embedding space that is approximately isometric to the manifold that is assumed to be formed by the high-fidelity Navier-Stokes flow solutions under smooth variations of the inflow conditions. The focus of the work at hand is the adaptive construction and refinement of the Isomap emulator: We exploit the non-Euclidean Isomap metric to detect and fill up gaps in the sampling in the embedding space. The performance of the proposed manifold filling method will be illustrated by numerical experiments, where we consider nonlinear parameter-dependent steady-state Navier-Stokes flows in the transonic regime.
机译:我们使用非侵入式降维方法Isomap来模拟由雷诺平均Navier-Stokes方程控制的非线性参数流问题。 Isomap是一种流形学习方法,它提供了与流形近似等距的低维嵌入空间,该空间被假定是在流入条件平稳变化的情况下由高保真Navier-Stokes流动解决方案形成的。当前工作的重点是对Isomap仿真器的自适应构建和完善:我们利用非欧氏Isomap度量来检测和填充嵌入空间中的采样缺口。数值实验将说明所提出的歧管填充方法的性能,其中我们考虑跨音速状态下非线性参数相关的稳态Navier-Stokes流动。

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