Author:
Suman Santosh Kumar,Kumar Awadhesh
Abstract
A simplified approach for model order reduction (MOR) idea is planned for better understanding and explanation of large- scale linear dynamical (LSLD) system. Such approaches are designed to well understand the description of the LSLD system based upon the Balanced Singular Perturbation Approximation (BSPA) approach. BSPA is tested for minimum / non-minimal and continuous/discrete-time systems valid for linear time-invariant (LTI) systems. The reduced-order model (ROM) is designed to preserved complete parameters with reasonable accuracy employing MOR. The Proposed approach is based upon retaining the dominant modes (may desirable states) of the system and eliminating comparatively the less significant eigenvalues. As the ROM has been derived from retaining the dominant modes of the large- scale linear dynamical stable system, which preserves stability. The strong aspect of the balanced truncation (BT) method is that the steady-state values of the ROM do not match with the original system (OS). The singular perturbation approximation approach (SPA) has been used to remove this drawback. The BSPA has been efficaciously applied on a large-scale system and the outcomes obtained show the efficacy of the approach. The time and frequency response of an approximated system has been also demonstrated by the proposed approach, which proves to be an excellent match as compared to the response obtained by other methods in the literature review with the original system.
Publisher
International Journal of Mathematical, Engineering and Management Sciences plus Mangey Ram
Subject
General Engineering,General Business, Management and Accounting,General Mathematics,General Computer Science
Reference64 articles.
1. Al-Saggaf, U.M., & Franklin, G.F. (1988). Model reduction via balanced realizations: an extension and frequency weighting techniques. IEEE Transactions on Automatic Control, 33(7), 687-692.
2. Antoulas, A.C., Benner, P., & Feng, L. (2018). Model reduction by iterative error system approximation. Mathematical and Computer Modelling of Dynamical Systems, 24(2), 103-118.
3. Antoulas, A.C. (2005). Approximation of large-scale dynamical systems (Vol. 6). SIAM. ISBN: 978-0-89871-529-3.
4. Antoulas, A.C. (2004). Approximation of large-scale dynamical systems: an overview. IFAC Proceedings Volumes, 37(11), 19-28.
5. Benner, P., & Schneider, A. (2010, July). Balanced truncation model order reduction for LTI systems with many inputs or outputs. In Proceedings of the 19th international symposium on Mathematical Theory of Networks and Systems–MTNS (Vol. 5, pp. 1971-1974). Budapest, Hungary.
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