A Robust Topological Framework for Detecting Regime Changes in Multi-Trial Experiments with Application to Predictive Maintenance
Anass B. El-Yaagoubi, Jean-Marc Freyermuth, Hernando Ombao

TL;DR
This paper introduces a flexible topological framework for detecting regime changes across multiple trials in complex data, improving early fault detection in predictive maintenance applications.
Contribution
It presents a novel approach that analyzes topological changes in time-frequency spectra across trials, accommodating various statistical assumptions and non-stationarities.
Findings
Effective detection of regime changes in simulated autoregressive data.
Accurate identification of bearing failures in NASA dataset.
Demonstrates robustness across different experimental conditions.
Abstract
We present a general and flexible framework for detecting regime changes in complex, non-stationary data across multi-trial experiments. Traditional change point detection methods focus on identifying abrupt changes within a single time series (single trial), targeting shifts in statistical properties such as the mean, variance, and spectrum over time within that sole trial. In contrast, our approach considers changes occurring across trials, accommodating changes that may arise within individual trials due to experimental inconsistencies, such as varying delays or event duration. By leveraging diverse metrics to analyze time-frequency characteristics specifically topological changes in the spectrum and spectrograms, our approach offers a comprehensive framework for detecting such variations. Our approach can handle different scenarios with various statistical assumptions, including…
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Taxonomy
TopicsComputational Drug Discovery Methods
