Benchmarking IoT Time-Series AD with Event-Level Augmentations
Dmitry Zhevnenko, Ilya Makarov, Aleksandr Kovalenko, Fedor Meshchaninov, Anton Kozhukhov, Vladislav Travnikov, Makar Ippolitov, Kirill Yashunin, Iurii Katser

TL;DR
This paper introduces a comprehensive event-level evaluation protocol for IoT anomaly detection models, assessing their robustness under realistic perturbations across multiple datasets and revealing diverse model strengths and weaknesses.
Contribution
It proposes a unified evaluation framework with realistic augmentations and sensor-level analysis, providing new insights into model performance and robustness in IoT anomaly detection.
Findings
Graph models excel under dropout and long events.
Density/flow models are effective on stationary data but fragile to drift.
Spectral CNNs perform well with strong periodicity.
Abstract
Anomaly detection (AD) for safety-critical IoT time series should be judged at the event level: reliability and earliness under realistic perturbations. Yet many studies still emphasize point-level results on curated base datasets, limiting value for model selection in practice. We introduce an evaluation protocol with unified event-level augmentations that simulate real-world issues: calibrated sensor dropout, linear and log drift, additive noise, and window shifts. We also perform sensor-level probing via mask-as-missing zeroing with per-channel influence estimation to support root-cause analysis. We evaluate 14 representative models on five public anomaly datasets (SWaT, WADI, SMD, SKAB, TEP) and two industrial datasets (steam turbine, nuclear turbogenerator) using unified splits and event aggregation. There is no universal winner: graph-structured models transfer best under dropout…
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Taxonomy
TopicsAnomaly Detection Techniques and Applications · Data Stream Mining Techniques · Time Series Analysis and Forecasting
