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Bayesian Structural Learning for an Improved Diagnosis of Cyber-Physical Systems

Authors :
Olivain, Nicolas
Tiefenbacher, Philipp
Kohl, Jens
Publication Year :
2021

Abstract

The diagnosis of cyber-physical systems aims to detect faulty behaviour, its root cause and a mitigation or even prevention policy. Therefore, diagnosis relies on a representation of the system's functional and faulty behaviour combined with observations of the system taken at runtime. The main challenges are the time-intensive building of a model, possible state-explosion while searching for the root cause and interpretability of the results. In this paper we propose a scalable algorithm tackling these challenges. We use a Bayesian network to learn a structured model automatically and optimise the model by a genetic algorithm. Our approach differs from existing work in two aspects: instead of selecting features prior to the analysis we learn a global representation using all available information which is then transformed to a smaller, label-specific one and we focus on interpretability to facilitate repairs. The evaluation shows that our approach is able to learn a model with equal performance to state-of-the-art algorithms while giving better interpretability and having a reduced size.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2104.00987
Document Type :
Working Paper