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Computer Science > Machine Learning

Title: Accurate and fast anomaly detection in industrial processes and IoT environments

Authors: Simone Tonini (1), Andrea Vandin (1), Francesca Chiaromonte (1 and 2), Daniele Licari (3), Fernando Barsacchi (4) ((1) L'EMbeDS and Institute of Economics, Sant'Anna School of Advanced Studies, Pisa, (2) Dept. of Statistics, The Pennsylvania State University, (3) L'EMbeDS, Sant'Anna School of Advanced Studies, (4) A. Celli Group, Lucca)
Abstract: We present a novel, simple and widely applicable semi-supervised procedure for anomaly detection in industrial and IoT environments, SAnD (Simple Anomaly Detection). SAnD comprises 5 steps, each leveraging well-known statistical tools, namely; smoothing filters, variance inflation factors, the Mahalanobis distance, threshold selection algorithms and feature importance techniques. To our knowledge, SAnD is the first procedure that integrates these tools to identify anomalies and help decipher their putative causes. We show how each step contributes to tackling technical challenges that practitioners face when detecting anomalies in industrial contexts, where signals can be highly multicollinear, have unknown distributions, and intertwine short-lived noise with the long(er)-lived actual anomalies. The development of SAnD was motivated by a concrete case study from our industrial partner, which we use here to show its effectiveness. We also evaluate the performance of SAnD by comparing it with a selection of semi-supervised methods on public datasets from the literature on anomaly detection. We conclude that SAnD is effective, broadly applicable, and outperforms existing approaches in both anomaly detection and runtime.
Subjects: Machine Learning (cs.LG); Applications (stat.AP)
Cite as: arXiv:2404.17925 [cs.LG]
  (or arXiv:2404.17925v1 [cs.LG] for this version)

Submission history

From: Simone Tonini [view email]
[v1] Sat, 27 Apr 2024 14:29:42 GMT (2395kb,D)

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