Projects per year
Abstract
A common approach to monitoring the status of physical and biological systems is through the regular measurement of various system parameters. Changes in a system’s underlying dynamics manifest as changes in the behaviour of the observed time series. For example, the transition from healthy cardiac activity to ventricular fibrillation results in erratic dynamics in measured electrocardiogram (ECG) signals. Identifying these transitions—change point detection—can be valuable in preparing responses to mitigate the effects of undesirable system changes. Here, we present a data-driven method of detecting change points using a phase space approach. Delay embedded trajectories are used to construct an ‘attractor network’, a discrete Markov-chain representation of the system’s attractor. Once constructed, the attractor network is used to assess the level of surprise of future observations where unusual movements in phase space are assigned high surprise scores. Persistent high surprise scores indicate deviations from the attractor and are used to infer change points. Using our approach, we find that the attractor network is effective in automatically detecting the onset of ventricular fibrillation (VF) from observed ECG data. We also test the flexibility of our method on artificial data sets and demonstrate its ability to distinguish between normal and surrogate time series.
Original language | English |
---|---|
Article number | 340 |
Number of pages | 14 |
Journal | Communications Physics |
Volume | 6 |
Issue number | 1 |
Early online date | 25 Nov 2023 |
DOIs | |
Publication status | Published - Dec 2023 |
Fingerprint
Dive into the research topics of 'Network representations of attractors for change point detection'. Together they form a unique fingerprint.Projects
- 2 Active
-
TSuNAMi: Time Series Network Animal Modelling
Walker, D. (Investigator 01), Small, M. (Investigator 02), Correa, D. (Investigator 03) & Blache, D. (Investigator 04)
ARC Australian Research Council
1/09/20 → 31/08/25
Project: Research
-
ARC Training Centre for Transforming Maintenance through Data Science
Rohl, A. (Investigator 01), Small, M. (Investigator 02), Hodkiewicz, M. (Investigator 03), Loxton, R. (Investigator 04), O'Halloran, K. (Investigator 05), Tan, T. (Investigator 06), Calo, V. (Investigator 07), Reynolds, M. (Investigator 08), Liu, W. (Investigator 09), While, R. (Investigator 10), French, T. (Investigator 11), Cripps, E. (Investigator 12), Cardell-Oliver, R. (Investigator 13) & Correa, D. (Investigator 14)
ARC Australian Research Council
1/01/19 → 24/02/25
Project: Research
Research output
- 1 Citations
- 1 Doctoral Thesis
-
Balancing structure and dynamics - dynamical networks and embedding as a modelling paradigm
Tan, E., 2024, (Unpublished)Research output: Thesis › Doctoral Thesis
File8 Downloads (Pure)