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Optimal time-weighted H_2 model reduction for Markovian jump systems

Optimal time-weighted H_2 model reduction for Markovian jump systems
Optimal time-weighted H_2 model reduction for Markovian jump systems
This article addresses the optimal time-weighted H 2 model reduction problem for Markovian jump linear systems. That is, for a given mean square stable Markovian jump system, our aim is to find a mean square stable jump system of lower order such that the time-weighted H 2 norm of the corresponding error system is minimised. The time-weighted H 2 norm of the system is first defined, and then a computational method is constructed. The computation requires the solution of two sets of recursive Lyapunov-type linear matrix equations associated with the Markovian jump system. To solve the optimal time-weighted H 2 model reduction problem, we propose a gradient flow method for its solution. A necessary condition for minimality is derived, and a computational procedure is provided to obtain the minimising reduced-order model. The necessary condition generalises the standard result for systems when Markov jumps and the time-weighting term do not appear. Finally, two numerical examples are given to demonstrate the effectiveness of the proposed approach.
0020-3270
613-628
Sun, Minhui
ebfaf884-e564-46f2-a477-27cfd10ae031
Lam, James
3eea3836-efda-430c-9ad4-ae4f3d4b8c4a
Xu, Shengyuan
83315174-029e-4b79-89ae-0e9b5b195351
Shu, Zhan
ea5dc18c-d375-4db0-bbcc-dd0229f3a1cb
Sun, Minhui
ebfaf884-e564-46f2-a477-27cfd10ae031
Lam, James
3eea3836-efda-430c-9ad4-ae4f3d4b8c4a
Xu, Shengyuan
83315174-029e-4b79-89ae-0e9b5b195351
Shu, Zhan
ea5dc18c-d375-4db0-bbcc-dd0229f3a1cb

Sun, Minhui, Lam, James, Xu, Shengyuan and Shu, Zhan (2012) Optimal time-weighted H_2 model reduction for Markovian jump systems. International Journal of Control, 85 (6), 613-628. (doi:10.1080/00207179.2012.661081).

Record type: Article

Abstract

This article addresses the optimal time-weighted H 2 model reduction problem for Markovian jump linear systems. That is, for a given mean square stable Markovian jump system, our aim is to find a mean square stable jump system of lower order such that the time-weighted H 2 norm of the corresponding error system is minimised. The time-weighted H 2 norm of the system is first defined, and then a computational method is constructed. The computation requires the solution of two sets of recursive Lyapunov-type linear matrix equations associated with the Markovian jump system. To solve the optimal time-weighted H 2 model reduction problem, we propose a gradient flow method for its solution. A necessary condition for minimality is derived, and a computational procedure is provided to obtain the minimising reduced-order model. The necessary condition generalises the standard result for systems when Markov jumps and the time-weighting term do not appear. Finally, two numerical examples are given to demonstrate the effectiveness of the proposed approach.

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Published date: June 2012
Organisations: Mechatronics

Identifiers

Local EPrints ID: 344757
URI: http://eprints.soton.ac.uk/id/eprint/344757
ISSN: 0020-3270
PURE UUID: e3d343f8-9929-4175-86b0-df23c4811627
ORCID for Zhan Shu: ORCID iD orcid.org/0000-0002-5933-254X

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Date deposited: 01 Nov 2012 13:23
Last modified: 14 Mar 2024 12:17

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Contributors

Author: Minhui Sun
Author: James Lam
Author: Shengyuan Xu
Author: Zhan Shu ORCID iD

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