Chadha, Gavneet Singh; Islam, Intekhab; Schwung, Andreas; Ding, Steven X.:
Deep convolutional clustering-based time series anomaly detection
In: Sensors, Jg. 21 (2021), Heft 16, Artikel 5488
2021Artikel/Aufsatz in ZeitschriftOA Gold
ElektrotechnikFakultät für Ingenieurwissenschaften » Elektrotechnik und Informationstechnik » Automatisierungstechnik und komplexe Systeme
Damit verbunden: 1 Publikation(en)
Titel in Englisch:
Deep convolutional clustering-based time series anomaly detection
Autor*in:
Chadha, Gavneet Singh
ORCID
0000-0002-9374-9074ORCID iD
Sonstiges
korrespondierende*r Autor*in
;
Islam, Intekhab
;
Schwung, Andreas
;
Ding, Steven X.UDE
GND
134302427
LSF ID
2347
ORCID
0000-0002-5149-5918ORCID iD
Sonstiges
der Hochschule zugeordnete*r Autor*in
Erscheinungsjahr:
2021
Open Access?:
OA Gold
Web of Science ID
PubMed ID
Scopus ID
Notiz:
CA extern
Sprache des Textes:
Englisch
Schlagwort, Thema:
Anomaly detection ; Deep convolutional autoencoder ; Top-K K-means clustering ; Unsupervised learning
Ressourcentyp:
Text

Abstract in Englisch:

This paper presents a novel approach for anomaly detection in industrial processes. The system solely relies on unlabeled data and employs a 1D-convolutional neural network-based deep autoencoder architecture. As a core novelty, we split the autoencoder latent space in discriminative and reconstructive latent features and introduce an auxiliary loss based on k-means clustering for the discriminatory latent variables. We employ a Top-K clustering objective for separating the latent space, selecting the most discriminative features from the latent space. We use the approach to the benchmark Tennessee Eastman data set to prove its applicability. We provide different ablation studies and analyze the method concerning various downstream tasks, including anomaly detection, binary and multi-class classification. The obtained results show the potential of the approach to improve downstream tasks compared to standard autoencoder architectures.