Patrick Buchfink , Silke Glas , Bernard Haasdonk , Benjamin Unger
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引用次数: 0
摘要
在模型缩减(MOR)中使用非线性投影和保留结构是当前活跃的研究领域。在本文中,我们为光滑流形上的模型还原提供了一个新颖的微分几何框架,它强调了相关对象的几何性质。其中的关键要素是构建低维子流形的嵌入和兼容的还原图,我们讨论了几种选择。我们的总体框架允许捕捉和概括现有的几种 MOR 技术,例如拉格朗日或哈密尔顿动力学的结构保持,以及使用非线性投影,例如与传输主导问题相关的非线性投影。联合抽象可用于推导不同方法的共享理论属性,如精确再现结果。为了将我们的框架与该领域的现有工作联系起来,我们证明了我们的框架可以包含各种数据驱动的非线性投影构建技术。
Model reduction on manifolds: A differential geometric framework
Using nonlinear projections and preserving structure in model order reduction (MOR) are currently active research fields. In this paper, we provide a novel differential geometric framework for model reduction on smooth manifolds, which emphasizes the geometric nature of the objects involved. The crucial ingredient is the construction of an embedding for the low-dimensional submanifold and a compatible reduction map, for which we discuss several options. Our general framework allows capturing and generalizing several existing MOR techniques, such as structure preservation for Lagrangian- or Hamiltonian dynamics, and using nonlinear projections that are, for instance, relevant in transport-dominated problems. The joint abstraction can be used to derive shared theoretical properties for different methods, such as an exact reproduction result. To connect our framework to existing work in the field, we demonstrate that various techniques for data-driven construction of nonlinear projections can be included in our framework.