Performance assessment of demand controlled ventilation controls concerning indoor VOC exposure based on a dynamic VOC emission model

The performance assessment of ventilation systems often focusses only on CO2 and humidity levels. The indoor Volatile Organic Compounds (VOC) emissions of building materials or other products is thereby overlooked. The new generation of ventilation systems, Demand Controlled Ventilation (DCV), are s...

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Main Authors: De Jonge Klaas, Janssens Arnold, Laverge Jelle
Format: Article
Language:English
Published: EDP Sciences 2019-01-01
Series:E3S Web of Conferences
Online Access:https://www.e3s-conferences.org/articles/e3sconf/pdf/2019/37/e3sconf_clima2019_01051.pdf
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spelling doaj-491bf11663d94b95b4faab8a4347d41e2021-02-02T02:40:36ZengEDP SciencesE3S Web of Conferences2267-12422019-01-011110105110.1051/e3sconf/201911101051e3sconf_clima2019_01051Performance assessment of demand controlled ventilation controls concerning indoor VOC exposure based on a dynamic VOC emission modelDe Jonge Klaas0Janssens Arnold1Laverge Jelle2Research group of Building Physics, Construction and Climate Control, Ghent UniversityResearch group of Building Physics, Construction and Climate Control, Ghent UniversityResearch group of Building Physics, Construction and Climate Control, Ghent UniversityThe performance assessment of ventilation systems often focusses only on CO2 and humidity levels. The indoor Volatile Organic Compounds (VOC) emissions of building materials or other products is thereby overlooked. The new generation of ventilation systems, Demand Controlled Ventilation (DCV), are systems that do not supply the nominal airflow continuously but are controlled by CO2 or humidity sensors in order to save energy. This poses potential problems for exposure to VOCs. In this study, a dynamic VOC model, which takes into account changing temperature and humidity that was derived from literature, is implemented in a CONTAM model of the Belgian reference apartment. The impact of a DCV system on the indoor VOC levels is investigated. Results show that the use of a dynamic model is necessary compared to the previously used approximation of a constant emission. Furthermore, on a system level, the influence of the ventilation system control on the indoor VOC levels shows. The overall VOC concentration in the different rooms will be higher because of lowered ventilation rates. Especially in rooms that are often unoccupied during the day, the accumulation of VOCs shows. In the development of DCV system controls, the aspect of VOC exposure should not be overlooked to be able to benefit from both the energy savings and improved Indoor Air Quality (IAQ).https://www.e3s-conferences.org/articles/e3sconf/pdf/2019/37/e3sconf_clima2019_01051.pdf
collection DOAJ
language English
format Article
sources DOAJ
author De Jonge Klaas
Janssens Arnold
Laverge Jelle
spellingShingle De Jonge Klaas
Janssens Arnold
Laverge Jelle
Performance assessment of demand controlled ventilation controls concerning indoor VOC exposure based on a dynamic VOC emission model
E3S Web of Conferences
author_facet De Jonge Klaas
Janssens Arnold
Laverge Jelle
author_sort De Jonge Klaas
title Performance assessment of demand controlled ventilation controls concerning indoor VOC exposure based on a dynamic VOC emission model
title_short Performance assessment of demand controlled ventilation controls concerning indoor VOC exposure based on a dynamic VOC emission model
title_full Performance assessment of demand controlled ventilation controls concerning indoor VOC exposure based on a dynamic VOC emission model
title_fullStr Performance assessment of demand controlled ventilation controls concerning indoor VOC exposure based on a dynamic VOC emission model
title_full_unstemmed Performance assessment of demand controlled ventilation controls concerning indoor VOC exposure based on a dynamic VOC emission model
title_sort performance assessment of demand controlled ventilation controls concerning indoor voc exposure based on a dynamic voc emission model
publisher EDP Sciences
series E3S Web of Conferences
issn 2267-1242
publishDate 2019-01-01
description The performance assessment of ventilation systems often focusses only on CO2 and humidity levels. The indoor Volatile Organic Compounds (VOC) emissions of building materials or other products is thereby overlooked. The new generation of ventilation systems, Demand Controlled Ventilation (DCV), are systems that do not supply the nominal airflow continuously but are controlled by CO2 or humidity sensors in order to save energy. This poses potential problems for exposure to VOCs. In this study, a dynamic VOC model, which takes into account changing temperature and humidity that was derived from literature, is implemented in a CONTAM model of the Belgian reference apartment. The impact of a DCV system on the indoor VOC levels is investigated. Results show that the use of a dynamic model is necessary compared to the previously used approximation of a constant emission. Furthermore, on a system level, the influence of the ventilation system control on the indoor VOC levels shows. The overall VOC concentration in the different rooms will be higher because of lowered ventilation rates. Especially in rooms that are often unoccupied during the day, the accumulation of VOCs shows. In the development of DCV system controls, the aspect of VOC exposure should not be overlooked to be able to benefit from both the energy savings and improved Indoor Air Quality (IAQ).
url https://www.e3s-conferences.org/articles/e3sconf/pdf/2019/37/e3sconf_clima2019_01051.pdf
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AT lavergejelle performanceassessmentofdemandcontrolledventilationcontrolsconcerningindoorvocexposurebasedonadynamicvocemissionmodel
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