The identification of unknown dynamical systems using supervised learning
enables model-based control of systems that cannot be
modeled
based on first principles. While most control literature focuses
on the analysis of a static dataset, online learning control, where
data points are added while the controller is running, has rarely been studied
in depth. In this paper, we present a novel approach for online learning
control
based on Gaussian process models. To
avoid computational difficulties with growing datasets, we propose a
safe forgetting mechanism.
Using an entropy criterion, data points are evaluated with respect to the
future trajectory of the closed loop system and are ``forgotten'' if the
stability of the system can further be
guaranteed. The approach is evaluated in a simulation and in a robotic
experiment to show its real-time capability.
«
The identification of unknown dynamical systems using supervised learning
enables model-based control of systems that cannot be
modeled
based on first principles. While most control literature focuses
on the analysis of a static dataset, online learning control, where
data points are added while the controller is running, has rarely been studied
in depth. In this paper, we present a novel approach for online learning
control
based on Gaussian process models. To
avoid computatio...
»