An Improved Wide-Kernel CNN for Classifying Multivariate Signals in Fault Diagnosis

Autor(en): Van Den Hoogen, J.O.D.
Bloemheuvel, S.D.
Atzmueller, M.
Herausgeber: Di Fatta, G.
Sheng, V.
Cuzzocrea, A.
Zaniolo, C.
Wu, X.
Stichwörter: Benchmarking; Case Western Reserve University; Classification (of information); Complex networks; Complex signal processing; Condition based maintenance; Convolutional neural networks; Deep Learning; Deep neural networks; Efficiency and performance; Failure analysis; Fault detection; Fault Diagnosis; Industrial Application; Large dataset; Large-scale applications; Learning systems; Machine learning applications; Multi-class classification, Data mining; Multivariate Signals; Signal processing, Automatic feature extraction; Time Series Data
Erscheinungsdatum: 2020
Herausgeber: IEEE Computer Society
Journal: IEEE International Conference on Data Mining Workshops, ICDMW
Volumen: 2020-November
Startseite: 275
Seitenende: 283
Zusammenfassung: 
Deep Learning (DL) provides considerable opportunities for increased efficiency and performance in fault diagnosis. The ability of DL methods for automatic feature extraction can reduce the need for time-intensive feature construction and prior knowledge on complex signal processing. In this paper, we propose two models that are built on the Wide-Kernel Deep Convolutional Neural Network (WDCNN) framework to improve performance of classifying fault conditions using multivariate time series data, also with respect to limited and/or noisy training data. In our experiments, we use the renowned benchmark dataset from the Case Western Reserve University (CWRU) bearing experiment [1] to assess our models' performance, and to investigate their usability towards large-scale applications by simulating noisy industrial environments. Here, the proposed models show an exceptionally good performance without any preprocessing or data augmentation and outperform traditional Machine Learning applications as well as state-of-the-art DL models considerably, even in such complex multi-class classification tasks. We show that both models are also able to adapt well to noisy input data, which makes them suitable for condition-based maintenance contexts. Furthermore, we investigate and demonstrate explainability and transparency of the models which is particularly important in large-scale industrial applications. © 2020 IEEE.
Beschreibung: 
Conference of 20th IEEE International Conference on Data Mining Workshops, ICDMW 2020 ; Conference Date: 17 November 2020 Through 20 November 2020; Conference Code:167213
ISBN: 9781728190129
ISSN: 23759232
DOI: 10.1109/ICDMW51313.2020.00046
Externe URL: https://www.scopus.com/inward/record.uri?eid=2-s2.0-85101331154&doi=10.1109%2fICDMW51313.2020.00046&partnerID=40&md5=bbadf13bf6797108430cf7b770b01c02

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