一种用于检测多试验实验中状态变化的鲁棒拓扑框架及其在预测性维护中的应用

A Robust Topological Framework for Detecting Regime Changes in Multi‐Trial Experiments With Application to Predictive Maintenance

Journal of Time Series Analysis · 2025
被引 1
ABS 3

中文导读

提出一个通用框架,利用拓扑分析等方法检测跨试验的状态变化,适用于非平稳数据,并在NASA轴承数据集上验证了早期故障检测能力。

Abstract

ABSTRACT We present a general and adaptable framework for detecting regime changes in complex, non‐stationary data across multi‐trial experiments. While traditional change point detection methods focus on identifying abrupt changes within a single time series (single trial), our approach identifies changes that occur across trials, accommodating variations due to experimental inconsistencies, such as differing event timings or durations. By utilizing diverse metrics, including topological analysis of time‐frequency characteristics in the spectrum and spectrograms, our method provides a robust framework for detecting cross‐trial changes. This flexibility allows it to address a range of scenarios with varying statistical assumptions, including different levels of stationarity within and across trials. We validate our approach through simulations using time‐varying autoregressive processes exhibiting various regime changes. Our results highlight the method's effectiveness in detecting cross‐trial changes under varied conditions. Furthermore, we showcase its potential for practical applications by analyzing vibration signals from the NASA bearing dataset. Through time‐frequency analysis, our framework accurately identifies bearing failures, demonstrating its strong capability for early fault detection in predictive maintenance of mechanical systems.

时间序列分析状态变化检测预测性维护拓扑数据分析