TL;DR
This paper presents a novel method combining neural network verification and probabilistic model checking to provide safety guarantees for neural network controllers in safety-critical systems.
Contribution
It introduces an adaptive verification approach and a modified MDP model checking framework to generate probabilistic safety guarantees for neural network controllers.
Findings
Successfully applied to aircraft collision avoidance neural networks.
Provides meaningful probabilistic safety guarantees.
Reduces overapproximation error during verification.
Abstract
Neural networks serve as effective controllers in a variety of complex settings due to their ability to represent expressive policies. The complex nature of neural networks, however, makes their output difficult to verify and predict, which limits their use in safety-critical applications. While simulations provide insight into the performance of neural network controllers, they are not enough to guarantee that the controller will perform safely in all scenarios. To address this problem, recent work has focused on formal methods to verify properties of neural network outputs. For neural network controllers, we can use a dynamics model to determine the output properties that must hold for the controller to operate safely. In this work, we develop a method to use the results from neural network verification tools to provide probabilistic safety guarantees on a neural network controller.…
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