6533b835fe1ef96bd129f554
RESEARCH PRODUCT
model reduction for continuous-time Markovian jump systems with incomplete statistics of mode information
Mao WangYanling WeiJianbin QiuHamid Reza Karimisubject
Mathematical optimizationModel reductionbusiness.industryMarkovian jump systemsRegular polygonLinear matrix inequalityComputer Science Applications1707 Computer Vision and Pattern RecognitionLinear matrixLinear matrix inequalityTransition rate matrixIncomplete statistics of mode informationComputer Science ApplicationsTheoretical Computer ScienceMarkovian jump linear systemsMarkovian jumpSoftwareControl and Systems EngineeringStatisticsIncomplete statistics of mode information; Linear matrix inequality; Markovian jump systems; Model reduction; Control and Systems Engineering; Theoretical Computer Science; Computer Science Applications1707 Computer Vision and Pattern RecognitionDesign methodsbusinessMathematicsdescription
This paper investigates the problem of model reduction for a class of continuous-time Markovian jump linear systems with incomplete statistics of mode information, which simultaneously considers the exactly known, partially unknown and uncertain transition rates. By fully utilising the properties of transition rate matrices, together with the convexification of uncertain domains, a new sufficient condition for performance analysis is first derived, and then two approaches, namely, the convex linearisation approach and the iterative approach, are developed to solve the model reduction problem. It is shown that the desired reduced-order models can be obtained by solving a set of strict linear matrix inequalities (LMIs) or a sequential minimisation problem subject to LMI constraints, which are numerically efficient with commercially available software. Finally, an illustrative example is given to show the effectiveness of the proposed design methods.
year | journal | country | edition | language |
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2013-09-20 | International Journal of Systems Science |