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Papers/Efficient Verification of Neural Control Barrier Functions with Smooth Nonlinear Activations
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Efficient Verification of Neural Control Barrier Functions with Smooth Nonlinear Activations

May 8, 2026

arXiv
Abstract

Formal verification of neural control barrier functions (NCBFs) remains challenging, especially for neural networks with nonlinear activations like \(\tanh\). Existing CROWN-based methods rely on conservative linear relaxations for Jacobian bounds, limiting scalability. We propose LightCROWN, which computes tighter Jacobian bounds by exploiting the analytical properties of activation functions. Experiments on nonlinear control systems including the inverted pendulum, Dubins car, and planar quadrotor demonstrate that LightCROWN improves verification success rates up to 100\%, while enhancing speed and scalability. Our approach provides a generalizable improvement for CROWN-based frameworks, enabling more efficient verification of complex NCBFs. The code can be found at github.com/Autonomous-Systems-and-Control-Lab/verify-neural-CBF.

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Authors
Jun Zhang, Haibo Zhang, Chun Liu, Xiaofan Wang, Liang Xu
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arXiv:2605.07757