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Certifiable Deep Learning for Reachability Using a New Lipschitz Continuous Value Function

Authors :
Li, Jingqi
Lee, Donggun
Lee, Jaewon
Dong, Kris Shengjun
Sojoudi, Somayeh
Tomlin, Claire
Publication Year :
2024

Abstract

We propose a new reachability learning framework for high-dimensional nonlinear systems, focusing on reach-avoid problems. These problems require computing the reach-avoid set, which ensures that all its elements can safely reach a target set despite any disturbance within pre-specified bounds. Our framework has two main parts: offline learning of a newly designed reach-avoid value function and post-learning certification. Compared to prior works, our new value function is Lipschitz continuous and its associated Bellman operator is a contraction mapping, both of which improve the learning performance. To ensure deterministic guarantees of our learned reach-avoid set, we introduce two efficient post-learning certification methods. Both methods can be used online for real-time local certification or offline for comprehensive certification. We validate our framework in a 12-dimensional crazyflie drone racing hardware experiment and a simulated 10-dimensional highway takeover example.<br />Comment: Submitted, under review

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2408.07866
Document Type :
Working Paper