English

Fault Trees from Data: Efficient Learning with an Evolutionary Algorithm

Formal Languages and Automata Theory 2019-09-16 v1 Systems and Control Systems and Control

Abstract

Cyber-physical systems come with increasingly complex architectures and failure modes, which complicates the task of obtaining accurate system reliability models. At the same time, with the emergence of the (industrial) Internet-of-Things, systems are more and more often being monitored via advanced sensor systems. These sensors produce large amounts of data about the components' failure behaviour, and can, therefore, be fruitfully exploited to learn reliability models automatically. This paper presents an effective algorithm for learning a prominent class of reliability models, namely fault trees, from observational data. Our algorithm is evolutionary in nature; i.e., is an iterative, population-based, randomized search method among fault-tree structures that are increasingly more consistent with the observational data. We have evaluated our method on a large number of case studies, both on synthetic data, and industrial data. Our experiments show that our algorithm outperforms other methods and provides near-optimal results.

Keywords

Cite

@article{arxiv.1909.06258,
  title  = {Fault Trees from Data: Efficient Learning with an Evolutionary Algorithm},
  author = {Alexis Linard and Doina Bucur and Marielle Stoelinga},
  journal= {arXiv preprint arXiv:1909.06258},
  year   = {2019}
}

Comments

This paper is an extended version of the SETTA 2019 paper, Springer-Verlag