Cristin-resultat-ID: 2269034
Sist endret: 16. mai 2024, 08:23
NVI-rapporteringsår: 2024
Resultat
Vitenskapelig artikkel
2024

MTAD: Multi-Objective Transformer Network for Unsupervised Multi-Sensor Anomaly Detection

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

Tidsskrift

IEEE Sensors Journal
ISSN 1530-437X
e-ISSN 1558-1748
NVI-nivå 2

Om resultatet

Vitenskapelig artikkel
Publiseringsår: 2024
Publisert online: 2024

Beskrivelse Beskrivelse

Tittel

MTAD: Multi-Objective Transformer Network for Unsupervised Multi-Sensor Anomaly Detection

Sammendrag

Multi-sensor anomaly detection plays a crucial role in several applications, including industrial monitoring, network intrusion detection, and healthcare monitoring. However, the task poses significant challenges due to the presence of massive unlabeled data, the difficulty of identifying normal patterns in the spatio-temporal data, and the inherent complexity of defining an anomaly. Moreover, noisy sensor measurements could potentially result in models erroneously detecting noise as an anomaly, and the existence of different types of anomalies adds to the complexity. Existing multi-sensor anomaly detection methods are mostly designed for labeled datasets and often disregard crucial factors such as spatio-temporal dependencies, noise presence in training data, and the existence of multiple types of anomalies; thus, their applicability is limited. In this paper, we propose a novel framework called multi-objective transformer networks for anomaly detection (MTAD) that leverages the power of transformer architectures and optimal truncated singular value decomposition (OT-SVD) for robust unsupervised multi-sensor anomaly detection. MTAD comprises a multi-head transformer encoder for effective time series representation learning, a convolutional decoder for reconstruction, and a memory network for predictive analysis. The model processes denoised (via OT-SVD) input through the network and computes both reconstruction and prediction losses. MTAD jointly optimizes the modules in an end-to-end mechanism to minimize the combined weighted loss. We compare MTAD with other state-of-the-art methods using several metrics and demonstrate that our approach outperforms existing solutions. Furthermore, we conducted an ablation to demonstrate the contribution of each module to the overall performance.

Bidragsytere

Mohammed Ayalew Belay

  • Tilknyttet:
    Forfatter
    ved Institutt for elektroniske systemer 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 Gassteknologi ved SINTEF Energi AS
  • Tilknyttet:
    Forfatter
    ved Institutt for elektroniske systemer ved Norges teknisk-naturvitenskapelige universitet
1 - 3 av 3