Cristin-resultat-ID: 2132902
Sist endret: 30. januar 2024, 14:52
NVI-rapporteringsår: 2023
Resultat
Vitenskapelig artikkel
2023

Unsupervised Anomaly Detection for IoT-Based Multivariate Time Series: Existing Solutions, Performance Analysis and Future Directions

Bidragsytere:
  • Mohammed Ayalew Belay
  • Sindre Stenen Blakseth
  • Adil Rasheed og
  • Pierluigi Salvo Rossi

Tidsskrift

Sensors
ISSN 1424-8220
e-ISSN 1424-8220
NVI-nivå 1

Om resultatet

Vitenskapelig artikkel
Publiseringsår: 2023
Publisert online: 2023
Volum: 23
Hefte: 5
Artikkelnummer: 2844
Open Access

Importkilder

Scopus-ID: 2-s2.0-85149757739

Beskrivelse Beskrivelse

Tittel

Unsupervised Anomaly Detection for IoT-Based Multivariate Time Series: Existing Solutions, Performance Analysis and Future Directions

Sammendrag

The recent wave of digitalization is characterized by the widespread deployment of sensors in many different environments, e.g., multi-sensor systems represent a critical enabling technology towards full autonomy in industrial scenarios. Sensors usually produce vast amounts of unlabeled data in the form of multivariate time series that may capture normal conditions or anomalies. Multivariate Time Series Anomaly Detection (MTSAD), i.e., the ability to identify normal or irregular operative conditions of a system through the analysis of data from multiple sensors, is crucial in many fields. However, MTSAD is challenging due to the need for simultaneous analysis of temporal (intra-sensor) patterns and spatial (inter-sensor) dependencies. Unfortunately, labeling massive amounts of data is practically impossible in many real-world situations of interest (e.g., the reference ground truth may not be available or the amount of data may exceed labeling capabilities); therefore, robust unsupervised MTSAD is desirable. Recently, advanced techniques in machine learning and signal processing, including deep learning methods, have been developed for unsupervised MTSAD. In this article, we provide an extensive review of the current state of the art with a theoretical background about multivariate time-series anomaly detection. A detailed numerical evaluation of 13 promising algorithms on two publicly available multivariate time-series datasets is presented, with advantages and shortcomings highlighted. Keywords: anomaly detection; IoT; multivariate time series; sensor networks

Bidragsytere

Mohammed Ayalew Belay

  • Tilknyttet:
    Forfatter
    ved Institutt for elektroniske systemer ved Norges teknisk-naturvitenskapelige universitet

Sindre Stenen Blakseth

  • Tilknyttet:
    Forfatter
    ved Gassteknologi ved SINTEF Energi AS
  • Tilknyttet:
    Forfatter
    ved Institutt for matematiske fag ved Norges teknisk-naturvitenskapelige universitet
Aktiv cristin-person

Adil Rasheed

  • Tilknyttet:
    Forfatter
    ved Institutt for teknisk kybernetikk ved Norges teknisk-naturvitenskapelige universitet

Pierluigi Salvo Rossi

  • Tilknyttet:
    Forfatter
    ved Institutt for elektroniske systemer ved Norges teknisk-naturvitenskapelige universitet
  • Tilknyttet:
    Forfatter
    ved Gassteknologi ved SINTEF Energi AS
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