Please use this identifier to cite or link to this item: https://doi.org/10.21256/zhaw-1562
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dc.contributor.authorStenzel, Ole-
dc.contributor.authorPecho, Omar-
dc.contributor.authorHolzer, Lorenz-
dc.contributor.authorNeumann, Matthias-
dc.contributor.authorSchmidt, Volker-
dc.date.accessioned2018-01-18T10:38:18Z-
dc.date.available2018-01-18T10:38:18Z-
dc.date.issued2017-
dc.identifier.issn1547-5905de_CH
dc.identifier.issn0001-1541de_CH
dc.identifier.urihttps://digitalcollection.zhaw.ch/handle/11475/2113-
dc.description.abstractThe analysis of big data is changing industries, businesses and research as large amounts of data are available nowadays. In the area of microstructures, acquisition of (3-D tomographic image) data is difficult and time-consuming. It is shown that large amounts of data representing the geometry of virtual, but realistic 3-D microstructures can be generated using stochastic microstructure modeling. Combining the model output with physical simulations and data mining techniques, microstructure-property relationships can be quantitatively characterized. Exemplarily, we aim to predict effective conductivities given the microstructure characteristics volume fraction, mean geodesic tortuosity, and constrictivity. Therefore, we analyze 8119 microstructures generated by two different stochastic 3-D microstructure models. This is – to the best of our knowledge – by far the largest set of microstructures that has ever been analyzed. Fitting artificial neural networks, random forests and classical equations, the prediction of effective conductivities based on geometric microstructure characteristics is possible.de_CH
dc.language.isoende_CH
dc.publisherWileyde_CH
dc.relation.ispartofAIChE Journalde_CH
dc.rightsLicence according to publishing contractde_CH
dc.subjectMapde_CH
dc.subject.ddc005: Computerprogrammierung, Programme und Datende_CH
dc.subject.ddc530: Physikde_CH
dc.titleBig data for microstructure-property relationships : a case study of predicting effective conductivitiesde_CH
dc.typeBeitrag in wissenschaftlicher Zeitschriftde_CH
dcterms.typeTextde_CH
zhaw.departementSchool of Engineeringde_CH
zhaw.organisationalunitInstitute of Computational Physics (ICP)de_CH
dc.identifier.doi10.21256/zhaw-1562-
dc.identifier.doi10.1002/aic.15757de_CH
zhaw.funding.euNode_CH
zhaw.issue9de_CH
zhaw.originated.zhawYesde_CH
zhaw.pages.end4232de_CH
zhaw.pages.start4224de_CH
zhaw.publication.statuspublishedVersionde_CH
zhaw.volume63de_CH
zhaw.publication.reviewPeer review (Publikation)de_CH
Appears in collections:Publikationen School of Engineering

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Stenzel, O., Pecho, O., Holzer, L., Neumann, M., & Schmidt, V. (2017). Big data for microstructure-property relationships : a case study of predicting effective conductivities. AIChE Journal, 63(9), 4224–4232. https://doi.org/10.21256/zhaw-1562
Stenzel, O. et al. (2017) ‘Big data for microstructure-property relationships : a case study of predicting effective conductivities’, AIChE Journal, 63(9), pp. 4224–4232. Available at: https://doi.org/10.21256/zhaw-1562.
O. Stenzel, O. Pecho, L. Holzer, M. Neumann, and V. Schmidt, “Big data for microstructure-property relationships : a case study of predicting effective conductivities,” AIChE Journal, vol. 63, no. 9, pp. 4224–4232, 2017, doi: 10.21256/zhaw-1562.
STENZEL, Ole, Omar PECHO, Lorenz HOLZER, Matthias NEUMANN und Volker SCHMIDT, 2017. Big data for microstructure-property relationships : a case study of predicting effective conductivities. AIChE Journal. 2017. Bd. 63, Nr. 9, S. 4224–4232. DOI 10.21256/zhaw-1562
Stenzel, Ole, Omar Pecho, Lorenz Holzer, Matthias Neumann, and Volker Schmidt. 2017. “Big Data for Microstructure-Property Relationships : A Case Study of Predicting Effective Conductivities.” AIChE Journal 63 (9): 4224–32. https://doi.org/10.21256/zhaw-1562.
Stenzel, Ole, et al. “Big Data for Microstructure-Property Relationships : A Case Study of Predicting Effective Conductivities.” AIChE Journal, vol. 63, no. 9, 2017, pp. 4224–32, https://doi.org/10.21256/zhaw-1562.


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