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dc.contributor.author
Kraus, Mathias
dc.contributor.author
Feuerriegel, Stefan
dc.date.accessioned
2019-09-10T13:54:50Z
dc.date.available
2019-07-09T22:22:50Z
dc.date.available
2019-07-10T08:56:00Z
dc.date.available
2019-07-19T13:16:38Z
dc.date.available
2019-07-24T10:26:54Z
dc.date.available
2019-09-10T13:54:50Z
dc.date.issued
2019-10
dc.identifier.issn
0167-9236
dc.identifier.issn
1873-5797
dc.identifier.other
10.1016/j.dss.2019.113100
en_US
dc.identifier.uri
http://hdl.handle.net/20.500.11850/352450
dc.identifier.doi
10.3929/ethz-b-000352450
dc.description.abstract
Predicting the remaining useful life of machinery, infrastructure, or other equipment can facilitate preemptive maintenance decisions, whereby a failure is prevented through timely repair or replacement. This allows for a better decision support by considering the anticipated time-to-failure and thus promises to reduce costs. Here a common baseline may be derived by fitting a probability density function to past lifetimes and then utilizing the (conditional) expected remaining useful life as a prognostic. This approach finds widespread use in practice because of its high explanatory power. A more accurate alternative is promised by machine learning, where forecasts incorporate deterioration processes and environmental variables through sensor data. However, machine learning largely functions as a black-box method and its forecasts thus forfeit most of the desired interpretability. As our primary contribution, we propose a structured-effect neural network for predicting the remaining useful life which combines the favorable properties of both approaches: its key innovation is that it offers both a high accountability and the flexibility of deep learning. The parameters are estimated via variational Bayesian inferences. The different approaches are compared based on the actual time-to-failure for aircraft engines. This demonstrates the performance and superior interpretability of our method, while we finally discuss implications for decision support.
en_US
dc.format
application/pdf
en_US
dc.language.iso
en
en_US
dc.publisher
Elsevier
en_US
dc.rights.uri
http://creativecommons.org/licenses/by/4.0/
dc.subject
Forecasting
en_US
dc.subject
Remaining useful life
en_US
dc.subject
Machine learning
en_US
dc.subject
Neural networks
en_US
dc.subject
Deep learning
en_US
dc.title
Forecasting remaining useful life: Interpretable deep learning approach via variational Bayesian inferences
en_US
dc.type
Journal Article
dc.rights.license
Creative Commons Attribution 4.0 International
dc.date.published
2019-07-19
ethz.journal.title
Decision Support Systems
ethz.journal.volume
125
en_US
ethz.journal.abbreviated
Decis. support syst.
ethz.pages.start
113100
en_US
ethz.size
13 p.
en_US
ethz.version.deposit
publishedVersion
en_US
ethz.grant
Design and Evaluation of a Vehicle Hypoaglycemia Warning System in Diabetes (HEADWIND Project)
en_US
ethz.identifier.wos
ethz.identifier.scopus
ethz.publication.place
Amsterdam
en_US
ethz.publication.status
published
en_US
ethz.leitzahl
ETH Zürich::00002 - ETH Zürich::00012 - Lehre und Forschung::00007 - Departemente::02120 - Dep. Management, Technologie und Ökon. / Dep. of Management, Technology, and Ec.::09623 - Feuerriegel, Stefan (ehemalig) / Feuerriegel, Stefan (former)
en_US
ethz.leitzahl.certified
ETH Zürich::00002 - ETH Zürich::00012 - Lehre und Forschung::00007 - Departemente::02120 - Dep. Management, Technologie und Ökon. / Dep. of Management, Technology, and Ec.::09623 - Feuerriegel, Stefan (ehemalig) / Feuerriegel, Stefan (former)
en_US
ethz.grant.agreementno
183569
ethz.grant.fundername
SNF
ethz.grant.funderDoi
10.13039/501100001711
ethz.grant.program
Sinergia
ethz.date.deposited
2019-07-09T22:23:02Z
ethz.source
FORM
ethz.eth
yes
en_US
ethz.availability
Open access
en_US
ethz.rosetta.installDate
2019-09-10T13:55:02Z
ethz.rosetta.lastUpdated
2022-03-28T23:37:20Z
ethz.rosetta.versionExported
true
ethz.COinS
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