Simultaneous prediction of remaining-useful-life and failure-likelihood with GRU-based deep networks for predictive maintenance analysis

buir.contributor.authorKaleli, Ali Yücel
buir.contributor.authorÜnal, Aras Fırat
buir.contributor.authorÖzer, Sedat
dc.citation.epage304en_US
dc.citation.spage301en_US
dc.contributor.authorKaleli, Ali Yücel
dc.contributor.authorÜnal, Aras Fırat
dc.contributor.authorÖzer, Sedat
dc.coverage.spatialBrno, Czech Republicen_US
dc.date.accessioned2022-02-09T06:32:11Z
dc.date.available2022-02-09T06:32:11Z
dc.date.issued2021-08-30
dc.departmentDepartment of Computer Engineeringen_US
dc.descriptionConference Name: 2021 44th International Conference on Telecommunications and Signal Processing (TSP)en_US
dc.descriptionDate of Conference: 26-28 July 2021en_US
dc.description.abstractPredictive maintenance (PdM) has been an integral part of large industrial sites collecting data from multiple sensors to reduce the maintenance power and costs with the advent of Industry 4.0. Two of the major problems in PdM used at large industrial sites are: (i) the prediction of remaining useful life (RUL); (ii) the prediction of the likelihood of failing within a predefined time period. While data oriented maintenance predictions were heavily focused on using classical techniques for such problems, recent interest shifted towards utilizing AI based solutions due to the better generalization capabilities of deep solutions. Among the time-sequence based deep networks, RNN, GRU and LSTM based networks are the most frequently used solutions. GRUs have demonstrated their faster learning capabilities with near or better prediction performance on certain tasks already. However, predicting multiple PdM tasks including both RUL and failure detection, simultaneously within the same network in an end to end manner with GRUs has not been much studied in the literature before. In this paper, we introduce a solution to predict those two tasks simultaneously within the same network based on GRUs. In our experiments we compare the performance of GRU layers to LSTM and RNN layers and report their performance on NASA dataset.en_US
dc.description.provenanceSubmitted by Betül Özen (ozen@bilkent.edu.tr) on 2022-02-09T06:32:11Z No. of bitstreams: 1 Simultaneous_Prediction_of_Remaining-Useful-Life_and_Failure-Likelihood_with_GRU-based_Deep_Networks_for_Predictive_Maintenance_Analysis.pdf: 4624432 bytes, checksum: 4e8eef2b618fdce14fea33e4a1910ec8 (MD5)en
dc.description.provenanceMade available in DSpace on 2022-02-09T06:32:11Z (GMT). No. of bitstreams: 1 Simultaneous_Prediction_of_Remaining-Useful-Life_and_Failure-Likelihood_with_GRU-based_Deep_Networks_for_Predictive_Maintenance_Analysis.pdf: 4624432 bytes, checksum: 4e8eef2b618fdce14fea33e4a1910ec8 (MD5) Previous issue date: 2021-08-30en
dc.identifier.doi10.1109/TSP52935.2021.9522592en_US
dc.identifier.eisbn978-1-6654-2933-7
dc.identifier.isbn978-1-6654-2934-4
dc.identifier.urihttp://hdl.handle.net/11693/77143
dc.language.isoEnglishen_US
dc.publisherIEEEen_US
dc.relation.isversionofhttps://dx.doi.org/10.1109/TSP52935.2021.9522592en_US
dc.source.titleInternational Conference on Telecommunications and Signal Processing (TSP)en_US
dc.subjectGRUsen_US
dc.subjectRemaining useful life predictionen_US
dc.subjectFailure predictionen_US
dc.subjectPredictive maintenanceen_US
dc.subjectTime-sequence analysisen_US
dc.titleSimultaneous prediction of remaining-useful-life and failure-likelihood with GRU-based deep networks for predictive maintenance analysisen_US
dc.typeConference Paperen_US

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