Certified Learning of Incremental ISS Controllers for Unknown Nonlinear Polynomial Dynamics
Journal:
arXiv
Published Date:
Dec 5, 2024
Abstract
Incremental input-to-state stability (delta-ISS) offers a robust framework to
ensure that small input variations result in proportionally minor deviations in
the state of a nonlinear system. This property is essential in practical
applications where input precision cannot be guaranteed. However, analyzing
delta-ISS demands detailed knowledge of system dynamics to assess the state's
incremental response to input changes, posing a challenge in real-world
scenarios where mathematical models are unknown. In this work, we develop a
data-driven approach to design delta-ISS Lyapunov functions together with their
corresponding delta-ISS controllers for continuous-time input-affine nonlinear
systems with polynomial dynamics, ensuring the delta-ISS property is achieved
without requiring knowledge of the system dynamics. In our data-driven scheme,
we collect only two sets of input-state trajectories from sufficiently excited
dynamics, as introduced by Willems et al.'s fundamental lemma. By fulfilling a
specific rank condition, we design delta-ISS controllers using the collected
samples through formulating a sum-of-squares optimization program. The
effectiveness of our data-driven approach is evidenced by its application on a
physical case study.