Secure Safety Filter Design for Sampled-data Nonlinear Systems under Sensor Spoofing Attacks
Secure Safety Filter Design for Sampled-data Nonlinear Systems under Sensor Spoofing Attacks
This paper presents a secure safety filter design for nonlinear systems under sensor spoofing attacks. Existing approaches primarily focus on linear systems which limits their applications in real-world scenarios. In this work, we extend these results to nonlinear systems in a principled way. We introduce exact observability maps that abstract specific state estimation algorithms and extend them to a secure version capable of handling sensor attacks. Our generalization also applies to the relaxed observability case, with slightly relaxed guarantees. More importantly, we propose a secure safety filter design in both exact and relaxed cases, which incorporates secure state estimation and a control barrier function-enabled safety filter. The proposed approach provides theoretical safety guarantees for nonlinear systems in the presence of sensor attacks. We numerically validate our analysis on a unicycle vehicle equipped with redundant yet partly compromised sensors.
Pio Ong、Paulo Tabuada、Xiao Tan、Aaron D. Ames
安全科学自动化技术、自动化技术设备计算技术、计算机技术
Pio Ong,Paulo Tabuada,Xiao Tan,Aaron D. Ames.Secure Safety Filter Design for Sampled-data Nonlinear Systems under Sensor Spoofing Attacks[EB/OL].(2025-05-11)[2025-08-02].https://arxiv.org/abs/2505.06842.点此复制
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