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Robust gain-scheduled output feedback H 2 controller synthesis with reduced conservativeness: An application to EMS system

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This article investigates the design problem of gain-scheduled output feedback (GSOF) H 2 controller exploiting uncertain scheduling parameters for continuous-time linear parameter-varying (LPV) systems. The problem of coexistence of absolute… Click to show full abstract

This article investigates the design problem of gain-scheduled output feedback (GSOF) H 2 controller exploiting uncertain scheduling parameters for continuous-time linear parameter-varying (LPV) systems. The problem of coexistence of absolute and proportional uncertainties on the scheduling parameters is considered to address more practical situations. This challenging issue has been tackled by introducing a novel admissible region for the actual and measured scheduling parameters. Furthermore, all the system matrices of the LPV system are assumed to be polynomially dependent on the scheduling parameters with arbitrary degrees. Both Lyapunov and auxiliary matrices are considered to be parameter-dependent. The merit of the proposed method lies in its less conservativeness in comparison with the available approaches. The design method is presented in terms of solutions to a set of parameter-dependent linear matrix inequalities (LMIs) including parameter searches for two scalar values. The application of the provided method on an electromagnetic suspension (EMS) system is considered to demonstrate the applicability and benefits of the proposed approach for practical systems.

Keywords: system; scheduling parameters; ems system; gain scheduled; output feedback; scheduled output

Journal Title: Transactions of the Institute of Measurement and Control
Year Published: 2022

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