Control with Patterns: A D-learning Method
Abstract
Learning-based control policies are widely used in various tasks in the field of robotics and control. However, formal (Lyapunov) stability guarantees for learning-based controllers with nonlinear dynamical systems are difficult to obtain. We propose a novel control approach, namely Control with Patterns (CWP), to address the stability issue over data sets corresponding to nonlinear dynamical systems. For such data sets, we introduce a new definition, namely exponential attraction on data sets, to describe the nonlinear dynamical systems under consideration. The problem of exponential attraction on data sets is transformed into a problem of pattern classification one based on the data sets and parameterized Lyapunov functions. Furthermore, D-learning is proposed as a method to perform CWP without knowledge of the system dynamics. Finally, the effectiveness of CWP based on D-learning is demonstrated through simulations and real flight experiments. In these experiments, the position of the multicopter is stabilized using real-time images as feedback, which can be considered as an Image-Based Visual Servoing (IBVS) problem.
Keywords
Cite
@article{arxiv.2206.03809,
title = {Control with Patterns: A D-learning Method},
author = {Quan Quan and Kai-Yuan Cai and Chenyu Wang},
journal= {arXiv preprint arXiv:2206.03809},
year = {2026}
}
Comments
Accepted for publication at 8th Conference on Robot Learning (CoRL), Munich, Germany. 2024