An Initiative of

Supported by

logo
Brias

Date

29 MAY 2025

Entrance fee

Free

Time

12:15 PM - 2:30 PM

Address

Bv General Jacques 210 Building AB-0 1050 Ixelles Belgium

Register now!

BrIAS Seminar 13

Offline

Seminar 1: BrIAS Fellow Prof. Ilya Kolmanovsky
Title: Exploiting Supervisory Schemes and the Interplay Between Computations and Closed-Loop Properties in Model Predictive Control

Abstract: Model Predictive Control (MPC) leads to algorithmically defined nonlinear feedback laws for systems with pointwise-in-time state and control constraints. These feedback laws are defined by solutions to appropriately posed optimal control/trajectory optimization problems that are (typically) solved online. There is a growing interest in the use of MPC for practical applications, including as an enabling technology for control and trajectory generation in autonomous vehicles, including in aerospace, automotive and robotics domains. To enable MPC implementation, the solutions to MPC optimization problems must be computed reliably and within the available time. After describing several motivating applications in aerospace and automotive domains, the talk will reflect on recent research by the presenter and his students/collaborators into strategies for computing solutions in optimization problems arising in receding horizon and shrinking horizon MPC formulations. These strategies include methods for solving MPC problems inexactly, and the use of add-on supervisory schemes for MPC which reduce the computational time and enlarge the constrained closed-loop region of attraction. In particular, a Computational Governor (CG) will be described which maintains feasibility and bounds the suboptimality of the MPC warm-start by altering the reference command provided to the inexactly solved MPC problem. As it also turns out, the analysis of time distributed implementation of MPC based on fixed number of optimization algorithm iterations per time step and warm-starting benefits from the application of control-theoretic tools such as the small gain theorem; intriguingly, similar tools can be exploited in “control-aware” multi-disciplinary design optimization.

Seminar 2: BrIAS Fellow Prof. Paolo Falcone
Title: Cautious-by-design motion planning. The role of prediction

Abstract: Safety of passengers and surrounding road users is the most important challenge in the design and deployment of autonomous driving technologies. In fact, the highest Automotive Safety Integrity Level (ASIL-D) will likely be required for autonomous driving functionalities. While fulflling such safety requirements involves special design efforts at all levels of the autonomous driving stack, in this talk we will focus on the control design of a safe motion planner in urban environments.
We will start by illustrating a model-based control design approach to the vehicle motion
planning problem, in presence of human road users (pedestrians, cyclists, human-driven vehicles). We will show that, under mild assumptions, the vehicle behavior can be made cautious
in presence of road users and guaranteed to be persistently safe. Experimental results obtained with a passenger vehicle negotiating an intersection with a simulated pedestrian, will
be shown. An important ingredient of the proposed motion planning framework is a prediction model of the surrounding traffc. In the second part of the seminar, we will illustrate our onging research on humans’ intent prediction in traffc environments. We will show how the evolution of a traffc scene can be predicted using very simple models and motion data (position, velocity) of road users observed in similar traffc scenes.

Share