Model order reduction (MOR) methods that are designed to preserve structural features of a given full order model (FOM) often suffer from a lower accuracy when compared to their non-structure-preserving counterparts. In this paper, we present a framework for structure-preserving MOR, which allows to compute structured reduced order models (ROMs) with a much higher accuracy. The framework is based on parameter optimization, i.e., the elements of the system matrices of the ROM are iteratively varied to minimize an objective functional that measures the difference between the FOM and the ROM. The structural constraints can be encoded in the parametrization of the ROM. The method only depends on frequency response data and can thus be applied to a wide range of dynamical systems. We illustrate the effectiveness of our method on a port-Hamiltonian and on a symmetric second-order system in a comparison with other structure-preserving MOR algorithms.
翻译:设计用于保存特定全序模型结构特征的模型减少订单方法(MOR),与非结构保存模型相比,其精确度往往较低。在本文件中,我们提出了一个结构保护模型框架,以便能够以更精确得多的精确度计算结构缩减订单模型(ROM),该框架以参数优化为基础,即对ROM系统矩阵的元素进行迭接式变化,以最大限度地降低测量FOM和ROM之间差异的客观功能。结构限制可以在ROM的对称中进行编码。方法仅取决于频率响应数据,因此可以适用于广泛的动态系统。我们用其他结构保持MOR算法比较,说明我们的方法在港-Hamiltonian和对称二阶系统上的有效性。