真正的非线性模型降阶技术

S. Mijalkovic
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引用次数: 2

摘要

模型阶数约简(MOR)旨在自动创建紧凑且足够精确的大规模仿真模型近似,以实现有效的系统设计和优化。虽然MOR在线性系统领域已经趋于成熟,但非线性MOR的应用仍然相当稀少。现有的非线性MOR方法大多采用非线性模型算子的多项式逼近,这限制了所得到的约简模型的适用性。本文的目的是介绍一类真正的非线性MOR技术,它在MOR子空间投影过程中不改变原有的非线性模型公式。分别讨论了精确子空间生成和高效非线性投影的现有技术和新技术
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Truly Nonlinear Model-Order Reduction Techniques
Model-order reduction (MOR) aims at automatic creation of compact and sufficiently accurate approximations of large-scale simulation models for efficient system design and optimization. While MOR is reaching the maturity in the area of linear system, nonlinear MOR applications are still quite sparse. Most of the existing nonlinear MOR approaches employ polynomial approximation of the nonlinear model operator that limits the applicability of the resulting reduced models. The objective of this paper is to introduce a class of truly nonlinear MOR techniques that do not alter the original nonlinear model formulation in the process of MOR subspace projection. The existing and new techniques for the accurate subspace creation and efficient nonlinear projection are discussed separately
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