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A localized reduced-order modeling approach for PDEs with bifurcating solutions

机译:具有分叉解决方案的PDE的局部减少阶阶建模方法

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Reduced-order modeling (ROM) commonly refers to the construction, based on a few solutions (referred to as snapshots) of an expensive discretized partial differential equation (PDE), and the subsequent application of low-dimensional discretizations of partial differential equations (PDEs) that can be used to more efficiently treat problems in control and optimization, uncertainty quantification, and other settings that require multiple approximate PDE solutions. Although ROMs have been successfully used in many settings, ROMs built specifically for the efficient treatment of PDEs having solutions that bifurcate as the values of input parameters change have not received much attention. In such cases, the parameter domain can be subdivided into subregions, each of which corresponds to a different branch of solutions. Popular ROM approaches such as proper orthogonal decomposition (POD), results in a global low-dimensional basis that does not respect the often large differences in the PDE solutions corresponding to different subregions. In this work, we develop and test a new ROM approach specifically aimed at bifurcation problems. In the new method, the k-means algorithm is used to cluster snapshots so that within cluster snapshots are similar to each other and are dissimilar to those in other clusters. This is followed by the construction of local POD bases, one for each cluster. The method also can detect which cluster a new parameter point belongs to, after which the local basis corresponding to that cluster is used to determine a ROM approximation. Numerical experiments show the effectiveness of the method both for problems for which bifurcation cause continuous and discontinuous changes in the solution of the PDE. (C) 2019 Elsevier B. V. All rights reserved.
机译:降低阶建模(ROM)通常是指基于昂贵离散的部分微分方程(PDE)的少数解决方案(称为快照)的结构,以及后续应用部分微分方程的低维离散化(PDES可以用于更有效地在需要多个近似PDE解决方案的控制和优化,不确定性量化和其他设置中进行更有效地处理问题。虽然ROM已成功地在许多设置中使用,但专为有效处理PDE的PDE的ROM,虽然具有分叉作为输入参数的值的解决方案,但是没有受到很多关注。在这种情况下,参数域可以被细分为子区域,每个子区域对应于不同的解决方案分支。受欢迎的ROM方法,如适当的正交分解(POD),导致全局低维基础,其不尊重与不同子区域对应的PDE解决方案中的经常差异。在这项工作中,我们开发并测试专门针对分叉问题的新ROM方法。在新方法中,K-Means算法用于群集快照,以便在群集快照中彼此类似,并且与其他集群中的那些相似。其次是施工本地POD基地,每个群组一个。该方法还可以检测新参数点属于哪个集群,之后将使用与该群集对应的本地基础来确定ROM近似。数值实验表明了该方法的有效性,其中分叉对PDE的溶液中的连续和不连续变化发生的问题。 (c)2019 Elsevier B. V.保留所有权利。

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