HORUS -基于低矩匹配升级采样的高维模型降阶方法

J. Villena, L. M. Silveira
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引用次数: 3

摘要

本文描述了一种基于采样过程的多维参数化系统模型降阶算法,该算法将低阶矩匹配范式融入到基于多点的方法中。该过程寻求最大化由给定数量的样本生成的子空间,从初始候选集中选择。选择基于一个全局标准,该标准选择其相关向量向现有子空间添加更多信息的样本。然而,对于高维系统,初始候选集可能非常大,因此该过程可能代价高昂。为了提高效率,我们提出了一种以较小的额外代价将低阶矩信息合并到基中的方案,以便将逼近扩展到选定点周围更宽的区域。这将允许在不降低置信度的情况下减少初始候选集。我们进一步改进了这一过程,基于局部近似的组合生成了全局子空间。为了实现这一点,最初的候选对象将被分割成子集,这些子集将被视为独立的区域,在第一阶段,该过程在局部应用,从而提高了效率,并为几乎完美的并行化提供了框架。
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HORUS - high-dimensional Model Order Reduction via low moment-matching upgraded sampling
This paper describes a Model Order Reduction algorithm for multi-dimensional parameterized systems, based on a sampling procedure which incorporates a low order moment matching paradigm into a multi-point based methodology. The procedure seeks to maximize the subspace generated by a given number of samples, selected among an initial candidate set. The selection is based on a global criteria that chooses the sample whose associated vector adds more information to the existing subspace. However, the initial candidate set can be extremely large for high-dimensional systems, and thus the procedure can be costly. To improve efficiency we propose a scheme to incorporate information from low order moments to the basis with small extra cost, in order to extend the approximation to a wider region around the selected point. This will allow reduction of the initial candidate set without decreasing the level of confidence. We further improve the procedure by generating the global subspace based on the composition of local approximations. To achieve this, the initial candidates will be split into subsets that will be considered as independent regions, and in a first phase the procedure applied locally thus enabling improved efficiency and providing a framework for almost perfect parallelization.
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