Topology-driven identification of repetitions in multi-variate time series
Many multi-variate time series obtained in the natural sciences and engineering possess a repetitive behavior, as for instance state-space trajectories of industrial machines in discrete automation. Recovering the times of recurrence from such a multi-variate time series is of a fundamental importance for many monitoring and control tasks. For a periodic time series this is equivalent to determining its period length. In this work we present a persistent homology framework to estimate recurrence times in multi-variate time series with different generalizations of cyclic behavior (periodic, repetitive, and recurring). To this end, we provide three specialized methods within our framework that are provably stable and validate them using real-world data, including a new benchmark dataset from an injection molding machine.
View on arXiv@article{schindler2025_2505.10004, title={ Topology-driven identification of repetitions in multi-variate time series }, author={ Simon Schindler and Elias Steffen Reich and Saverio Messineo and Simon Hoher and Stefan Huber }, journal={arXiv preprint arXiv:2505.10004}, year={ 2025 } }