随机变化下一般线性系统的宏观建模

Y. Ye, D. Spina, T. Dhaene, L. Knockaert, G. Antonini
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引用次数: 0

摘要

本文提出了一种随机建模方法,用于具有不确定参数的一般线性和被动系统的时域变异性分析。从散射参数的多项式混沌(PC)展开出发,采用伽辽金投影(GP)法建立了一个增广散射矩阵,该矩阵描述了输入输出端口信号对应的PC系数之间的关系。然后利用向量拟合(VF)算法得到该增广矩阵的稳定被动状态空间模型。因此,随机系统可以用一个等效的确定性宏观模型来描述,而时域变异性分析可以通过一个时域模拟来进行。通过与传统蒙特卡罗(MC)方法的比较,验证了该方法的可行性、有效性和准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Macromodeling of general linear systems under stochastic variations
In this paper, a stochastic modeling approach is proposed for time-domain variability analysis of general linear and passive systems with uncertain parameters. Starting from the polynomial chaos (PC) expansion of the scattering parameters, the Galerkin projections (GP) method is adopted to build an augmented scattering matrix which describes the relationship between the corresponding PC coefficients of the input and output port signals. The Vector Fitting (VF) algorithm is then used to obtain a stable and passive state-space model of such augmented matrix. As a result, a stochastic system is described by an equivalent deterministic macro model and the time-domain variability analysis can be performed by means of one time-domain simulation. The feasibility, efficiency and accuracy of the proposed technique are verified by comparison with conventional Monte Carlo (MC) approach for a suitable numerical example.
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