AIJul 8, 2024

Change-Point Detection in Industrial Data Streams based on Online Dynamic Mode Decomposition with Control

arXiv:2407.05976v22 citationsh-index: 10
AI Analysis

This addresses timely and accurate change-point detection for safety-critical industrial systems with non-uniform data streams, though it appears incremental as an enhancement of existing dynamic mode decomposition approaches.

The authors tackled change-point detection in industrial data streams by proposing a method based on online Dynamic Mode Decomposition with control, which dynamically adapts to system changes and detects changes in spatial, temporal, and spectral patterns. Their results show intuitive and improved detection compared to an SVD-based method, validated on synthetic and real-world benchmark datasets.

We propose a novel change-point detection method based on online Dynamic Mode Decomposition with control (ODMDwC). Leveraging ODMDwC's ability to find and track linear approximation of a non-linear system while incorporating control effects, the proposed method dynamically adapts to its changing behavior due to aging and seasonality. This approach enables the detection of changes in spatial, temporal, and spectral patterns, providing a robust solution that preserves correspondence between the score and the extent of change in the system dynamics. We formulate a truncated version of ODMDwC and utilize higher-order time-delay embeddings to mitigate noise and extract broad-band features. Our method addresses the challenges faced in industrial settings where safety-critical systems generate non-uniform data streams while requiring timely and accurate change-point detection to protect profit and life. Our results demonstrate that this method yields intuitive and improved detection results compared to the Singular-Value-Decomposition-based method. We validate our approach using synthetic and real-world data, showing its competitiveness to other approaches on complex systems' benchmark datasets. Provided guidelines for hyperparameters selection enhance our method's practical applicability.

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