no code implementations • 25 Jun 2024 • Marcel Menner, Eugene Lavretsky
In 1942, Prof. Mitio Nagumo published his seminal paper on the location of integral curves of ordinary differential equations.
no code implementations • 25 May 2023 • Marcel Menner, Karl Berntorp
In the proposed formulation, the residual model uncertainty consists of a nonlinear function and state-dependent noise.
no code implementations • 5 May 2023 • Sean Vaskov, Rien Quirynen, Marcel Menner, Karl Berntorp
The estimators output the estimate of the tire-friction model as well as the uncertainty of the estimate, which expresses the confidence in the model for different driving regimes.
no code implementations • 7 Sep 2022 • Alexander Schperberg, Yusuke Tanaka, Feng Xu, Marcel Menner, Dennis Hong
Achieving highly accurate dynamic or simulator models that are close to the real robot can facilitate model-based controls (e. g., model predictive control or linear-quadradic regulators), model-based trajectory planning (e. g., trajectory optimization), and decrease the amount of learning time necessary for reinforcement learning methods.
no code implementations • 17 May 2022 • Md Ferdous Pervej, Jianlin Guo, Kyeong Jin Kim, Kieran Parsons, Philip Orlik, Stefano Di Cairano, Marcel Menner, Karl Berntorp, Yukimasa Nagai, Huaiyu Dai
To take the high mobility of vehicles into account, we consider the delay as a learning parameter and restrict it to be less than a tolerable threshold.
no code implementations • 21 Nov 2021 • Marcel Menner, Karl Berntorp, Stefano Di Cairano
The control parameter calibration is driven by a training objective, which encompasses specifications on the performance of the dynamical system.
no code implementations • 6 May 2020 • Marcel Menner, Melanie N. Zeilinger
This paper discusses theoretic properties of the learning methods and presents simulation results that highlight the advantages of using the maximum likelihood formulation for learning objective functions.
no code implementations • IEEE Transactions on Control Systems Technology 2019 • Marcel Menner, Peter Worsnop, and Melanie N. Zeilinger
This brief presents an inverse optimal control methodology and its application to training a predictive model of human motor control from a manipulation task.