Yin, Yanyan; Liu, Yanqing; Teo, Kok Lay; Wang, Song Event-triggered probabilistic robust control of linear systems with input constrains: by scenario optimization approach. (English) Zbl 1387.93176 Int. J. Robust Nonlinear Control 28, No. 1, 144-153 (2018). Summary: This paper addresses the problem of probabilistic robust stabilization for uncertain systems subject to input saturation. A new probabilistic solution framework for robust control analysis and synthesis problems is addressed by a scenario optimization approach, in which the uncertainties are not assumed to be norm bounded. Furthermore, by expressing the saturated linear feedback law on a convex hull of a group of auxiliary linear feedback laws, we establish conditions under which the closed-loop system is probabilistic stable. Based on these conditions, the problem of designing the state feedback gains for achieving the largest size of the domain of attraction is formulated and solved as a constrained optimization problem with linear matrix inequality constraints. The results are then illustrated by a numerical example. Cited in 8 Documents MSC: 93E15 Stochastic stability in control theory 93C65 Discrete event control/observation systems 93B35 Sensitivity (robustness) 93C05 Linear systems in control theory Keywords:actuator saturation; event-triggering control; probabilistic robust stabilization; scenario optimization; uncertainties PDFBibTeX XMLCite \textit{Y. Yin} et al., Int. J. Robust Nonlinear Control 28, No. 1, 144--153 (2018; Zbl 1387.93176) Full Text: DOI