Predicting machine failures from industrial time series data

F.J.M. Jansen, M.J. Holenderski, T. Ozcelebi, Paulien Dam, Bas Tijsma

Onderzoeksoutput: Hoofdstuk in Boek/Rapport/CongresprocedureConferentiebijdrageAcademicpeer review

2 Citaties (Scopus)

Uittreksel

This paper addresses the problem of predicting machine failures in an industrial manufacturing process based on multivariate time series data. A workflow is presented for cleaning and preprocessing the data, and for training and evaluating a predictive model. Its implementation is modular and extensible to support changes in the underlying produc- tion processes and the gathered data. Two predictive models are presented, based on Convolutional Neural Networks and Recurrent Neural Networks, and evaluated on data from an advanced machining process used for cutting complex shapes into metal pieces.
TaalEngels
Titel2018 5th International Conference on Control, Decision and Information Technologies (CoDIT)
Plaats van productiePiscataway
UitgeverijInstitute of Electrical and Electronics Engineers
Aantal pagina's6
ISBN van elektronische versie978-1-5386-5065-3
DOI's
StatusGepubliceerd - 2018
Evenement5th International Conference on Control, Decision and Information Technologies (CoDIT 2018) - Thessaloniki, Griekenland
Duur: 10 apr 201813 apr 2018

Congres

Congres5th International Conference on Control, Decision and Information Technologies (CoDIT 2018)
LandGriekenland
Stad Thessaloniki
Periode10/04/1813/04/18

Vingerafdruk

Time series
Recurrent neural networks
Cleaning
Machining
Neural networks
Metals

Citeer dit

Jansen, F. J. M., Holenderski, M. J., Ozcelebi, T., Dam, P., & Tijsma, B. (2018). Predicting machine failures from industrial time series data. In 2018 5th International Conference on Control, Decision and Information Technologies (CoDIT) [8394915] Piscataway: Institute of Electrical and Electronics Engineers. DOI: 10.1109/CoDIT.2018.8394915
Jansen, F.J.M. ; Holenderski, M.J. ; Ozcelebi, T. ; Dam, Paulien ; Tijsma, Bas. / Predicting machine failures from industrial time series data. 2018 5th International Conference on Control, Decision and Information Technologies (CoDIT) . Piscataway : Institute of Electrical and Electronics Engineers, 2018.
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Jansen, FJM, Holenderski, MJ, Ozcelebi, T, Dam, P & Tijsma, B 2018, Predicting machine failures from industrial time series data. in 2018 5th International Conference on Control, Decision and Information Technologies (CoDIT) ., 8394915, Institute of Electrical and Electronics Engineers, Piscataway, Thessaloniki, Griekenland, 10/04/18. DOI: 10.1109/CoDIT.2018.8394915

Predicting machine failures from industrial time series data. / Jansen, F.J.M.; Holenderski, M.J.; Ozcelebi, T.; Dam, Paulien; Tijsma, Bas.

2018 5th International Conference on Control, Decision and Information Technologies (CoDIT) . Piscataway : Institute of Electrical and Electronics Engineers, 2018. 8394915.

Onderzoeksoutput: Hoofdstuk in Boek/Rapport/CongresprocedureConferentiebijdrageAcademicpeer review

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Jansen FJM, Holenderski MJ, Ozcelebi T, Dam P, Tijsma B. Predicting machine failures from industrial time series data. In 2018 5th International Conference on Control, Decision and Information Technologies (CoDIT) . Piscataway: Institute of Electrical and Electronics Engineers. 2018. 8394915. Beschikbaar vanaf, DOI: 10.1109/CoDIT.2018.8394915