We propose an unsupervised anomaly detection model that is able to identify abnormal behavior by analysing streaming data coming from IoT sensors installed on critical devices. The proposed model is based on a Siamese neural network which embeds time series windows in a latent space, thus generating distance-based clusters of normal behavior. We experiment the proposed model on a case study aimed at the predictive maintenance of elevators where specific sensors measure the oscillations of the lift during its daily use. The experiments show that the proposed model successfully isolates anomalous oscillations thus correlating them to prospective malfunctions and thus preventing possible faults.

A Deep Learning Approach for Unsupervised Failure Detection in Smart Industry (Discussion Paper)

Angelica Liguori;Giuseppe Manco;Ettore Ritacco;
2021

Abstract

We propose an unsupervised anomaly detection model that is able to identify abnormal behavior by analysing streaming data coming from IoT sensors installed on critical devices. The proposed model is based on a Siamese neural network which embeds time series windows in a latent space, thus generating distance-based clusters of normal behavior. We experiment the proposed model on a case study aimed at the predictive maintenance of elevators where specific sensors measure the oscillations of the lift during its daily use. The experiments show that the proposed model successfully isolates anomalous oscillations thus correlating them to prospective malfunctions and thus preventing possible faults.
2021
Inglese
Proceedings of the 29th Italian Symposium on Advanced Database Systems (SEBD)
5-9/09/2021
Pizzo Calabro (VV), Italy
Anomaly detection
Failure detection
Fault detection
Time-series analysis
Emb
Siamese networks
5
none
Liguori, Angelica; Manco, Giuseppe; Ritacco, Ettore; Ruffolo, Massimilano; Iiritano, Salvatore
273
info:eu-repo/semantics/conferenceObject
04 Contributo in convegno::04.01 Contributo in Atti di convegno
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/20.500.14243/430066
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