Automata-based explainable representation for a complex system of multivariate times series

IC Kaadoud, L Fahed, T Tian… - IC3K 2022: 14th …, 2022 - imt-atlantique.hal.science
IC3K 2022: 14th International Joint Conference on Knowledge …, 2022imt-atlantique.hal.science
Complex systems represented by multivariate time series are ubiquitous in many
applications, especially in industry. Understanding a complex system, its states and their
evolution over time is a challenging task. This is due to the permanent change of contextual
events internal and external to the system. We are interested in representing the evolution of
a complex system in an intelligible and explainable way based on knowledge extraction. We
propose XR-CSB (eXplainable Representation of Complex System Behavior) based on …
Complex systems represented by multivariate time series are ubiquitous in many applications, especially in industry. Understanding a complex system, its states and their evolution over time is a challenging task. This is due to the permanent change of contextual events internal and external to the system. We are interested in representing the evolution of a complex system in an intelligible and explainable way based on knowledge extraction. We propose XR-CSB (eXplainable Representation of Complex System Behavior) based on three steps: (i) a time series vertical clustering to detect system states, (ii) an explainable visual representation using unfolded finite-state automata and (iii) an explainable pre-modeling based on an enrichment via exploratory metrics. Four representations adapted to the expertise level of domain experts for acceptability issues are proposed. Experiments show that XR-CSB is scalable. Qualitative evaluation by experts of different expertise levels shows that XR-CSB meets their expectations in terms of explainability, intelligibility and acceptability.
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