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Automatic Remaining Useful Life Estimation Framework with Embedded Convolutional LSTM as the Backbone

Zhou, Yexu; Hefenbrock, Michael; Huang, Yiran ORCID iD icon; Riedel, Till ORCID iD icon; Beigl, Michael

Abstract (englisch):

An essential task in predictive maintenance is the prediction of the Remaining Useful Life (RUL) through the analysis of multivariate time series. Using the sliding window method, Convolutional Neural Network (CNN) and conventional Recurrent Neural Network (RNN) approaches have produced impressive results on this matter, due to their ability to learn optimized features. However, sequence information is only partially modeled by CNN approaches. Due to the flatten mechanism in conventional RNNs, like Long Short Term Memories (LSTM), the temporal information within the window is not fully preserved. To exploit the multi-level temporal information, many approaches are proposed which combine CNN and RNN models. In this work, we propose a new LSTM variant called embedded convolutional LSTM (ECLSTM). In ECLSTM a group of different 1D convolutions is embedded into the LSTM structure. Through this, the temporal information is preserved between and within windows. Since the hyper-parameters of models require careful tuning, we also propose an automated prediction framework based on the Bayesian optimization with hyperband optimizer, which allows for efficient optimization of the network architecture. ... mehr

DOI: 10.1007/978-3-030-67667-4_28
Zitationen: 7
Zitationen: 10
Zugehörige Institution(en) am KIT Institut für Telematik (TM)
Publikationstyp Proceedingsbeitrag
Publikationsjahr 2021
Sprache Englisch
Identifikator ISBN: 978-3-030-67666-7
ISSN: 0302-9743, 1611-3349
KITopen-ID: 1000130578
Erschienen in Machine Learning and Knowledge Discovery in Databases: Applied Data Science Track : European Conference, ECML PKDD 2020, Ghent, Belgium, September 14–18, 2020, Proceedings, Part IV. Ed.: Y. Dong
Veranstaltung European Conference on Machine Learning and Principles and Practice of Knowledge Discovery in Databases (2020), Online, 14.09.2020 – 18.09.2020
Auflage 1st ed.
Verlag Springer International Publishing
Seiten 461–477
Serie Lecture Notes in Artificial Intelligence ; 12460
Projektinformation SDSC-BW++ (MWK, 34-0272.1445-3/14/2)
SDI-C (BMBF, 01IS19030A)
Vorab online veröffentlicht am 25.02.2021
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