Certified Approximate Reachability (CARe): Formal Error Bounds on Deep Learning of Reachable Sets

Conference Paper (2025)
Author(s)

P. Solanki (TU Delft - Control & Simulation)

Nikolaus Vertovec (University of Oxford)

Yannik Schnitzer (University of Oxford)

J.J. van Beers (TU Delft - Control & Simulation)

C.C. de Visser (TU Delft - Control & Simulation)

Alessandro Abate (University of Oxford)

Research Group
Control & Simulation
DOI related publication
https://doi.org/10.1109/CDC57313.2025.11312709
More Info
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Publication Year
2025
Language
English
Research Group
Control & Simulation
Bibliographical Note
Green Open Access added to TU Delft Institutional Repository 'You share, we take care!' - Taverne project https://www.openaccess.nl/en/publishing/publisher-deals Otherwise as indicated in the copyright section: the publisher is the copyright holder of this work and the author uses the Dutch legislation to make this work public.@en
Pages (from-to)
3907-3912
Publisher
IEEE
ISBN (electronic)
979-8-3315-2627-6
Reuse Rights

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Abstract

Recent approaches to leveraging deep learning for computing reachable sets of continuous-time dynamical systems have gained popularity over traditional level-set methods, as they overcome the curse of dimensionality. However, as with level-set methods, considerable care needs to be taken in limiting approximation errors, particularly since no guarantees are provided during training on the accuracy of the learned reachable set. To address this limitation, we introduce an ϵ-approximate Hamilton-Jacobi partial differential equation (HJ-PDE), which establishes a relationship between training loss and accuracy of the true reachable set. To formally certify this approximation, we leverage Satisfiability Modulo Theories (SMT) solvers to bound the residual error of the HJ-based loss function across the domain of interest. Leveraging Counter Example Guided Inductive Synthesis (CEGIS), we close the loop around learning and verification, by fine-tuning the neural network on counterexamples found by the SMT solver, thus improving the accuracy of the learned reachable set. To the best of our knowledge, Certified Approximate Reachability (CARe) is the first approach to provide soundness guarantees on learned reachable sets of continuous dynamical systems.

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