Establishing material hygrothermal characteristics via long-term monitoring and best-fit numerical models

Numerical models of heat and moisture transfer for performance forecast of lightweight insulating assemblies require many inputs. These include exterior climate data (i.e. temperature, relative humidity, solar radiation), interior climate data or standard models, transfer coefficients, correct initi...

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Main Authors: Birjukovs Mihails, Apine Inga, Jakovics Andris
Format: Article
Language:English
Published: EDP Sciences 2020-01-01
Series:E3S Web of Conferences
Online Access:https://www.e3s-conferences.org/articles/e3sconf/pdf/2020/32/e3sconf_nsb2020_17009.pdf
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spelling doaj-37abc3f18b354bb2adb3c46b041ddc692021-04-02T14:10:01ZengEDP SciencesE3S Web of Conferences2267-12422020-01-011721700910.1051/e3sconf/202017217009e3sconf_nsb2020_17009Establishing material hygrothermal characteristics via long-term monitoring and best-fit numerical modelsBirjukovs Mihails0Apine Inga1Jakovics Andris2University of Latvia, Institute of Numerical ModellingUniversity of Latvia, Botanical gardenUniversity of Latvia, Institute of Numerical ModellingNumerical models of heat and moisture transfer for performance forecast of lightweight insulating assemblies require many inputs. These include exterior climate data (i.e. temperature, relative humidity, solar radiation), interior climate data or standard models, transfer coefficients, correct initial conditions, etc. Most importantly, one needs reliable material models. A material model includes porosity, density, heat capacity, but also non-constant properties, such as thermal conductivity, vapor/liquid water diffusivity, sorption curves. These are, in general, difficult to determine, and material database entries often are incomplete, or simply non-existent. However, if one performs long-term monitoring of temperature and relative humidity dynamics within building envelopes, there is a way to determine hygrothermal curves and properties of the underlying materials. This can be done by performing simulations and finding the set of optimal hygrothermal curves and coefficients such that the experimental data is matched sufficiently well. Despite the appeal, this best-fit model approach is fraught with perils due to many unknowns and must be used carefully. In this article, we demonstrate the application of this method to insulating assemblies for which 6+ years' worth of experimental data is available, and showcase our results obtained using WUFI Pro 6.3 and the derived and verified material models.https://www.e3s-conferences.org/articles/e3sconf/pdf/2020/32/e3sconf_nsb2020_17009.pdf
collection DOAJ
language English
format Article
sources DOAJ
author Birjukovs Mihails
Apine Inga
Jakovics Andris
spellingShingle Birjukovs Mihails
Apine Inga
Jakovics Andris
Establishing material hygrothermal characteristics via long-term monitoring and best-fit numerical models
E3S Web of Conferences
author_facet Birjukovs Mihails
Apine Inga
Jakovics Andris
author_sort Birjukovs Mihails
title Establishing material hygrothermal characteristics via long-term monitoring and best-fit numerical models
title_short Establishing material hygrothermal characteristics via long-term monitoring and best-fit numerical models
title_full Establishing material hygrothermal characteristics via long-term monitoring and best-fit numerical models
title_fullStr Establishing material hygrothermal characteristics via long-term monitoring and best-fit numerical models
title_full_unstemmed Establishing material hygrothermal characteristics via long-term monitoring and best-fit numerical models
title_sort establishing material hygrothermal characteristics via long-term monitoring and best-fit numerical models
publisher EDP Sciences
series E3S Web of Conferences
issn 2267-1242
publishDate 2020-01-01
description Numerical models of heat and moisture transfer for performance forecast of lightweight insulating assemblies require many inputs. These include exterior climate data (i.e. temperature, relative humidity, solar radiation), interior climate data or standard models, transfer coefficients, correct initial conditions, etc. Most importantly, one needs reliable material models. A material model includes porosity, density, heat capacity, but also non-constant properties, such as thermal conductivity, vapor/liquid water diffusivity, sorption curves. These are, in general, difficult to determine, and material database entries often are incomplete, or simply non-existent. However, if one performs long-term monitoring of temperature and relative humidity dynamics within building envelopes, there is a way to determine hygrothermal curves and properties of the underlying materials. This can be done by performing simulations and finding the set of optimal hygrothermal curves and coefficients such that the experimental data is matched sufficiently well. Despite the appeal, this best-fit model approach is fraught with perils due to many unknowns and must be used carefully. In this article, we demonstrate the application of this method to insulating assemblies for which 6+ years' worth of experimental data is available, and showcase our results obtained using WUFI Pro 6.3 and the derived and verified material models.
url https://www.e3s-conferences.org/articles/e3sconf/pdf/2020/32/e3sconf_nsb2020_17009.pdf
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AT jakovicsandris establishingmaterialhygrothermalcharacteristicsvialongtermmonitoringandbestfitnumericalmodels
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