基于Jacobi-Davidson型特征解的大尺度动力系统模型降阶

P. Benner, M. Hochstenbach, Patrick Kurschner
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引用次数: 6

摘要

许多涉及物理和技术过程的应用都采用动力系统进行仿真。对更精确和详细地描述现实现象的日益增长的需求导致了高维动力系统,因此,模拟经常产生增加的计算工作量。因此,对这些大规模系统的近似,例如使用模型降阶技术,对于具有成本效益的模拟至关重要。研究了一种基于优势极点模态逼近的线性变时系统模型降阶方法。在那里,原始的大规模LTI系统被投影到对应于系统矩阵特征值的特定子集的左右特征空间上,即系统传递函数的主导极点。由于这些优势极点可以位于频谱中的任何位置,因此需要专门的特征值算法来计算大型稀疏矩阵的特征三元组。Jacobi-Davidson方法已被证明是解决各种特征值问题的合适且有竞争力的候选方法,因此,我们讨论了如何将其纳入这种模态截断方法。本文还研究了约简技术的推广及其在二阶系统中的应用。利用该模态近似得到的计算降阶模型可以与基于Krylov子空间或基于平衡截断的模型降阶方法相结合,以获得更高的精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Model order reduction of large-scale dynamical systems with Jacobi-Davidson style eigensolvers
Many applications concerning physical and technical processes employ dynamical systems for simulation purposes. The increasing demand for a more accurate and detailed description of realistic phenomena leads to high dimensional dynamical systems and hence, simulation often yields an increased computational effort. An approximation, e.g. with model order reduction techniques, of these large-scale systems becomes therefore crucial for a cost efficient simulation. This paper focuses on a model order reduction method for linear time in-variant (LTI) systems based on modal approximation via dominant poles. There, the original large-scale LTI system is projected onto the left and right eigenspaces corresponding to a specific subset of the eigenvalues of the system matrices, namely the dominant poles of the system's transfer function. Since these dominant poles can lie anywhere in the spectrum, specialized eigenvalue algorithms that can compute eigentriplets of large and sparse matrices are required. The Jacobi-Davidson method has proven to be a suitable and competitive candidate for the solution of various eigenvalue problems and hence, we discuss how it can be incorporated into this modal truncation approach. Generalizations of the reduction technique and the application of the algorithms to second-order systems are also investigated. The computed reduced order models obtained with this modal approximation can be combined with the ones constructed with Krylov subspace or balanced truncation based model order reduction methods to get even higher accuracies.
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