Webinar: Data-Driven Output Regulation of Continuous-Time Linear Time-Invariant Systems
Alessandro Bosso – University of Bologna, Italy
Over the past decades, the control community has increasingly turned its attention to data-driven approaches, moving away from traditional model-based methods. Early developments originated in system identification and adaptive control, while recent efforts have been strongly influenced by reinforcement learning. In this context, a popular modern trend is to compute controllers directly from data via linear matrix inequalities (LMIs), bypassing the need for explicit system identification.
Building on this LMI-based paradigm, the talk will introduce the problem of designing a controller for asymptotic reference tracking and disturbance rejection from a single experiment — in short, data-driven output regulation. The approach will be presented for multivariable continuous-time linear time-invariant systems, using tools that connect with modern nonlinear estimation methods and reinterpret classical adaptive observers in a state-space setting. The talk will conclude with a discussion of open research questions related to the proposed approach.
Bio sketch: Alessandro Bosso received the Ph.D. degree in automatic control from the University of Bologna, Bologna, Italy, in 2020. Currently, he is a Tenure-Track Researcher at the Department of Electrical, Electronic, and Information Engineering (DEI), University of Bologna. He has been a visiting scholar at The Ohio State University and at the University of California, Santa Barbara. His research interests include nonlinear adaptive control, hybrid dynamical systems, and the control of mechatronic systems. He is the recipient of a Marie Skłodowska-Curie Postdoctoral Fellowship.

Location
Montréal Québec
Canada