SVD-Krylov based Sparsity-preserving Techniques for Riccati-based Feedback Stabilization of Unstable Power System Models

M. Uddin, M. Uddin, M. A. H. Khan, M. T. Hossain
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引用次数: 3

Abstract

We propose an efficient sparsity-preserving reduced-order modelling approach for index-1 descriptor systems extracted from large-scale power system models through two-sided projection techniques. The projectors are configured by utilizing Gramian based singular value decomposition (SVD) and Krylov subspace-based reduced-order modelling. The left projector is attained from the observability Gramian of the system by the low-rank alternating direction implicit (LR-ADI) technique and the right projector is attained by the iterative rational Krylov algorithm (IRKA). The classical LR-ADI technique is not suitable for solving Riccati equations and it demands high computation time for convergence. Besides, in most of the cases, reduced-order models achieved by the basic IRKA are not stable and the Riccati equations connected to them have no finite solution. Moreover, the conventional LR-ADI and IRKA approach not preserves the sparse form of the index-1 descriptor systems, which is an essential requirement for feasible simulations. To overcome those drawbacks, the fitting of LR-ADI and IRKA based projectors from left and right sides, respectively, desired reduced-order systems attained. So that, finite solution of low-rank Riccati equations, and corresponding feedback matrix can be executed. Using the mechanism of inverse projection, the Riccati-based optimal feedback matrix can be computed to stabilize the unstable power system models. The proposed approach will maintain minimized ℌ2 -norm of the error system for reduced-order models of the target models.
基于SVD-Krylov的不稳定电力系统模型riccti反馈镇定稀疏保持技术
针对从大型电力系统模型中提取的索引-1描述子系统,利用双边投影技术提出了一种有效的保持稀疏性的降阶建模方法。利用基于Gramian的奇异值分解(SVD)和基于Krylov子空间的降阶建模来配置投影仪。通过低秩交替方向隐式(LR-ADI)技术从系统的可观测格律中获得左投影,通过迭代理性Krylov算法(IRKA)获得右投影。经典的LR-ADI方法不适合求解Riccati方程,且收敛需要较高的计算时间。此外,在大多数情况下,由基本IRKA得到的降阶模型是不稳定的,与之相连的Riccati方程没有有限解。此外,传统的LR-ADI和IRKA方法不能保留索引-1描述符系统的稀疏形式,这是可行仿真的基本要求。为了克服这些缺点,分别从左侧和右侧拟合基于LR-ADI和IRKA的投影仪,实现了期望的降阶系统。从而可以执行低秩Riccati方程的有限解,以及相应的反馈矩阵。利用逆投影机制,计算基于riccati的最优反馈矩阵,使不稳定的电力系统模型趋于稳定。该方法对目标模型的降阶模型保持最小的误差系统的 2范数。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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