Robustly Learning Regions of Attraction from Fixed Data
While stability analysis is a mainstay for control science, especially computing regions of attraction of equilibrium points, until recently most stability analysis tools always required explicit knowledge of the model or a high-fidelity simulator representing the system at hand. In this work, a new...
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Zusammenfassung: | While stability analysis is a mainstay for control science, especially
computing regions of attraction of equilibrium points, until recently most
stability analysis tools always required explicit knowledge of the model or a
high-fidelity simulator representing the system at hand. In this work, a new
data-driven Lyapunov analysis framework is proposed. Without using the model or
its simulator, the proposed approach can learn a piece-wise affine Lyapunov
function with a finite and fixed off-line dataset. The learnt Lyapunov function
is robust to any dynamics that are consistent with the off-line dataset, and
its computation is based on second order cone programming. Along with the
development of the proposed scheme, a slight generalization of classical
Lyapunov stability criteria is derived, enabling an iterative inference
algorithm to augment the region of attraction. |
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DOI: | 10.48550/arxiv.2305.12813 |