A New Strategy for Verifying Reach-Avoid Specifications in Neural Feedback Systems
By: Samuel I. Akinwande , Sydney M. Katz , Mykel J. Kochenderfer and more
Forward reachability analysis is the predominant approach for verifying reach-avoid properties in neural feedback systems (dynamical systems controlled by neural networks). This dominance stems from the limited scalability of existing backward reachability methods. In this work, we introduce new algorithms that compute both over- and under-approximations of backward reachable sets for such systems. We further integrate these backward algorithms with established forward analysis techniques to yield a unified verification framework for neural feedback systems.
Similar Papers
BURNS: Backward Underapproximate Reachability for Neural-Feedback-Loop Systems
Artificial Intelligence
Makes smart robots safer by checking their goals.
Neural Network-assisted Interval Reachability for Systems with Control Barrier Function-Based Safe Controllers
Systems and Control
Makes robots safer and more predictable.
Robust Verification of Controllers under State Uncertainty via Hamilton-Jacobi Reachability Analysis
Robotics
Makes self-driving robots safer by checking their "eyes."