News & updates from the group
ACE AI & Data Talk
Data-driven models in predictive control: Uncertainty quantification and robust designs
Talk in the ACE AI & Data Talk series on data-driven approaches in predictive control, focusing on uncertainty quantification and robust design methods.
Recording available online:
New preprint
Certainty-equivalent adaptive MPC for uncertain nonlinear systems
We developed an adaptive model predictive control (MPC) scheme with online learning for time-varying systems. The method enables online adaptation while maintaining robustness and guarantees on tracking performance and constraint satisfaction.
New preprint
Finite-sample bounds for multi-output system identification
Léo Simpson, Katrin Baumgärtner, Johannes Köhler, Moritz Diehl
The paper derives finite-sample confidence bounds for linear regression in the multi-output setting. The results extend self-normalized martingale bounds beyond scalar outputs and provide tighter confidence sets for system identification.
New L-CSS paper
Exponential stability of data-driven nonlinear MPC using input/output models
Lea Bold, Irene Schimperna, Karl Worthmann, and Johannes Köhler, IEEE Control Systems Letters (L-CSS)
The work shows that learned surrogate models can enable model predictive control with exponential stability guarantees for unknown nonlinear systems.
New L-CSS paper
Our group at European Control Conference (ECC) 2026
Tutorial session
Safe-by-design control using robust MPC
Workshop presentations
Stochastic and data-driven MPC
Invited session (organiser)
Advances in MPC: safe decision-making under uncertainty
Conference talk
MPC with reduced-order models
New preprint
New TCST paper
Robust Convex Model Predictive Control With Collision Avoidance Guarantees for Robot Manipulators
Bernhard Wullt, Johannes Köhler, Per Mattsson, Mikael Norrlöf, and Thomas B. Schön,
IEEE Transactions on Control Systems Technology (TCST)
The work presents a robust motion planning for robot manipulators, enabling real-time re-planning with rigorous safety guarantees despite model uncertainties.