This letter presents a data-driven framework for the design of stabilizing controllers from input-output data in the continuous-time, linear, and time-invariant domain. Rather than relying on measurements or reliable estimates of input and output time derivatives, the proposed approach uses filters to derive a parameterization of the system dynamics. This parameterization is amenable to the application of linear matrix inequalities enabling the design of stabilizing output feedback controllers from input-output data and the knowledge of the order of the system.
Possieri, C. (2026). Derivative free data-driven stabilization of continuous-time linear systems from input-output data. IEEE CONTROL SYSTEMS LETTERS, 10, 67-72 [10.1109/LCSYS.2026.3658297].
Derivative free data-driven stabilization of continuous-time linear systems from input-output data
Possieri C.
2026-01-01
Abstract
This letter presents a data-driven framework for the design of stabilizing controllers from input-output data in the continuous-time, linear, and time-invariant domain. Rather than relying on measurements or reliable estimates of input and output time derivatives, the proposed approach uses filters to derive a parameterization of the system dynamics. This parameterization is amenable to the application of linear matrix inequalities enabling the design of stabilizing output feedback controllers from input-output data and the knowledge of the order of the system.| File | Dimensione | Formato | |
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