Data-driven design of predictive controllers
Andrea Sassella
DEIB PHD Student
DEIB - Conference Room "E. Gatti" (Building 20)
July 10th, 2023
11.30 am
Contacts:
Lorenzo Fagiano
Simone Formentin
Research Line:
Control systems
DEIB PHD Student
DEIB - Conference Room "E. Gatti" (Building 20)
July 10th, 2023
11.30 am
Contacts:
Lorenzo Fagiano
Simone Formentin
Research Line:
Control systems
Sommario
On July 10th, 2023 at 11.30 am Andrea Sassella, DEIB PHD Student, will give a seminar on "Data-driven design of predictive controllers" in DEIB Conference Room.
Control theory is now a rapidly evolving field. Data are having a substantial impact on modern research in the automation field. In many applications, retrieving a model is considered a challenging task. Learning a model that fits available data is the crucial passage required in model-based control design. Moreover, the model is not obtained with a control-oriented purpose, and it is a time-consuming task. For these reasons, data-driven methods have known significant interests. They allow to skip the model identification step and directly exploit data for the controller design. The presentation will discuss methods to exploit data for the direct design of controllers. Many real-world systems have performance limitations, such as safety constraints or actuators' saturations, which have to be appropriately accounted for in the design of efficacious controllers. Few data-driven methods are available to exploiting data for directly designing controllers while explicitly accounting for constraints. In this context, the presentation will focus on methodologies to account for constraints in the direct design of controllers.
Control theory is now a rapidly evolving field. Data are having a substantial impact on modern research in the automation field. In many applications, retrieving a model is considered a challenging task. Learning a model that fits available data is the crucial passage required in model-based control design. Moreover, the model is not obtained with a control-oriented purpose, and it is a time-consuming task. For these reasons, data-driven methods have known significant interests. They allow to skip the model identification step and directly exploit data for the controller design. The presentation will discuss methods to exploit data for the direct design of controllers. Many real-world systems have performance limitations, such as safety constraints or actuators' saturations, which have to be appropriately accounted for in the design of efficacious controllers. Few data-driven methods are available to exploiting data for directly designing controllers while explicitly accounting for constraints. In this context, the presentation will focus on methodologies to account for constraints in the direct design of controllers.