Neural networks are being increasingly used for efficient decision making in the aircraft domain. Given the safety-critical nature of the applications involved, stringent safety requirements must be met by these networks. In this work we present a formal study of two neural network-based systems developed by Boeing. The Venus verifier is used to analyse the conditions under which these systems can operate safely, or generate counterexamples that show when safety cannot be guaranteed. Our results confirm the applicability of formal verification to the settings considered
Contexte: la thèse a porté sur l'étude et la vérification de la sûreté de fonctionnement de systèmes...
Guidance for the Verification and Validation of Neural Networks is a supplement to the IEEE Standard...
Machine learning (ML) has demonstrated great success in numerous complicated tasks. Fueled by these ...
We demonstrate a unified approach to rigorous design of safety-critical autonomous systems using the...
ACAS Xu is an air-to-air collision avoidance system designed for unmanned aircraft that issues horiz...
Arti cial neural networks (ANNs) are used as an alternative to traditional models in the realm of c...
Neural networks are increasingly being used for dealing with complex real-world applications. Despit...
In this paper, we propose a system-level approach for verifying the safety of systems combining a co...
Neural networks have shown immense promise in solving a variety of challenging problems including co...
Neural networks(NNs) have been widely used over the past decade at the core of intelligentsystems fr...
Recent research has shown that adaptive neural based control systems are very effective in restoring...
Abstract. Artificial neural networks are employed in many areas of industry such as medicine and def...
Neural Networks (NNs) are popular machine learning models which have found successful application in...
The increasing use of deep neural networks in a variety of applications, including some safety-criti...
Forthcoming autonomous systems are expected to use machine learning techniques to implement their co...
Contexte: la thèse a porté sur l'étude et la vérification de la sûreté de fonctionnement de systèmes...
Guidance for the Verification and Validation of Neural Networks is a supplement to the IEEE Standard...
Machine learning (ML) has demonstrated great success in numerous complicated tasks. Fueled by these ...
We demonstrate a unified approach to rigorous design of safety-critical autonomous systems using the...
ACAS Xu is an air-to-air collision avoidance system designed for unmanned aircraft that issues horiz...
Arti cial neural networks (ANNs) are used as an alternative to traditional models in the realm of c...
Neural networks are increasingly being used for dealing with complex real-world applications. Despit...
In this paper, we propose a system-level approach for verifying the safety of systems combining a co...
Neural networks have shown immense promise in solving a variety of challenging problems including co...
Neural networks(NNs) have been widely used over the past decade at the core of intelligentsystems fr...
Recent research has shown that adaptive neural based control systems are very effective in restoring...
Abstract. Artificial neural networks are employed in many areas of industry such as medicine and def...
Neural Networks (NNs) are popular machine learning models which have found successful application in...
The increasing use of deep neural networks in a variety of applications, including some safety-criti...
Forthcoming autonomous systems are expected to use machine learning techniques to implement their co...
Contexte: la thèse a porté sur l'étude et la vérification de la sûreté de fonctionnement de systèmes...
Guidance for the Verification and Validation of Neural Networks is a supplement to the IEEE Standard...
Machine learning (ML) has demonstrated great success in numerous complicated tasks. Fueled by these ...