LGSep 24, 2025

Pi-Transformer: A Physics-informed Attention Mechanism for Time Series Anomaly Detection

arXiv:2509.19985v1h-index: 3Has Code
Originality Highly original
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This work addresses the problem of detecting anomalies in complex multivariate systems for applications like monitoring and diagnostics, offering a calibrated and robust approach.

The paper tackles anomaly detection in multivariate time series by introducing Pi-Transformer, which uses physics-informed attention mechanisms to improve detection accuracy, achieving state-of-the-art or competitive F1 scores across five benchmarks.

Anomalies in multivariate time series often arise from temporal context and cross-channel coordination rather than isolated outliers. We present Pi-Transformer, a physics-informed transformer with two attention pathways: a data-driven series attention and a smoothly evolving prior attention that encodes temporal invariants such as scale-related self-similarity and phase synchrony. The prior acts as a stable reference that calibrates reconstruction error. During training, we pair a reconstruction objective with a divergence term that encourages agreement between the two attentions while keeping them meaningfully distinct; the prior is regularised to evolve smoothly and is lightly distilled towards dataset-level statistics. At inference, the model combines an alignment-weighted reconstruction signal (Energy) with a mismatch signal that highlights timing and phase disruptions, and fuses them into a single score for detection. Across five benchmarks (SMD, MSL, SMAP, SWaT, and PSM), Pi-Transformer achieves state-of-the-art or highly competitive F1, with particular strength on timing and phase-breaking anomalies. Case analyses show complementary behaviour of the two streams and interpretable detections around regime changes. Embedding physics-informed priors into attention yields a calibrated and robust approach to anomaly detection in complex multivariate systems. Code is publicly available at this GitHub repository\footnote{https://github.com/sepehr-m/Pi-Transformer}.

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