Determining Building Natural Ventilation Potential via IoT-Based Air Quality Sensors

Natural ventilation (NV) represents the most energy-efficient way to operate buildings and, in an attempt to reduce the built environment's global carbon footprint, represents a resource, the usage of which has to be maximized. This study demonstrated how a combination of an IoT environmental s...

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Main Authors: Maohui Luo, Yumeng Hong, Jovan Pantelic
Format: Article
Language:English
Published: Frontiers Media S.A. 2021-08-01
Series:Frontiers in Environmental Science
Subjects:
Online Access:https://www.frontiersin.org/articles/10.3389/fenvs.2021.634570/full
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spelling doaj-de7e8ebd9a0f4b409e91ea87b9d6d2bd2021-08-18T09:17:37ZengFrontiers Media S.A.Frontiers in Environmental Science2296-665X2021-08-01910.3389/fenvs.2021.634570634570Determining Building Natural Ventilation Potential via IoT-Based Air Quality SensorsMaohui Luo0Yumeng Hong1Jovan Pantelic2Jovan Pantelic3School of Mechanical Engineering, Tongji University, Shanghai, ChinaChina Academy of Art, Hangzhou, ChinaCentre for the Built Environment, University of California, Berkeley, Berkeley, CA, United StatesDepartment of Biosystems, KU Leuven, Leuven, BelgiumNatural ventilation (NV) represents the most energy-efficient way to operate buildings and, in an attempt to reduce the built environment's global carbon footprint, represents a resource, the usage of which has to be maximized. This study demonstrated how a combination of an IoT environmental sensing network implemented locally outdoors and indoors can help to determine the NV potential and actual utilization throughout the year with the consideration of outdoor climate variance, air pollution levels, and window open/closed status. An NV potential index was developed by analyzing indoor and outdoor PM2.5, and outdoor air temperature and air speed throughout the year at different spatial (from room scale to building level and local weather stations) and temporal (instantaneous, season, and annual) scales. The index was applied on a case building located in Berkeley, California, during the period of August 2018 to the end of 2019. Compared to the potential NV availability, the actual window opening time in typical rooms was less than 35%. These results point out that the actual window usage behavior was the key limiting factor in NV potential utilization. Even during periods when climate- and pollution-wise outdoor conditions allowed use of the NV, many occupants kept their windows closed. Keeping windows open or closed was significantly affected by outdoor climate condition and air pollution levels, especially during the wild-fire period.https://www.frontiersin.org/articles/10.3389/fenvs.2021.634570/fullnatural ventilationIoT-Internet of thingsindoor–outdoor Pollutionthermal comfortoccupant activitiesoccupant actions
collection DOAJ
language English
format Article
sources DOAJ
author Maohui Luo
Yumeng Hong
Jovan Pantelic
Jovan Pantelic
spellingShingle Maohui Luo
Yumeng Hong
Jovan Pantelic
Jovan Pantelic
Determining Building Natural Ventilation Potential via IoT-Based Air Quality Sensors
Frontiers in Environmental Science
natural ventilation
IoT-Internet of things
indoor–outdoor Pollution
thermal comfort
occupant activities
occupant actions
author_facet Maohui Luo
Yumeng Hong
Jovan Pantelic
Jovan Pantelic
author_sort Maohui Luo
title Determining Building Natural Ventilation Potential via IoT-Based Air Quality Sensors
title_short Determining Building Natural Ventilation Potential via IoT-Based Air Quality Sensors
title_full Determining Building Natural Ventilation Potential via IoT-Based Air Quality Sensors
title_fullStr Determining Building Natural Ventilation Potential via IoT-Based Air Quality Sensors
title_full_unstemmed Determining Building Natural Ventilation Potential via IoT-Based Air Quality Sensors
title_sort determining building natural ventilation potential via iot-based air quality sensors
publisher Frontiers Media S.A.
series Frontiers in Environmental Science
issn 2296-665X
publishDate 2021-08-01
description Natural ventilation (NV) represents the most energy-efficient way to operate buildings and, in an attempt to reduce the built environment's global carbon footprint, represents a resource, the usage of which has to be maximized. This study demonstrated how a combination of an IoT environmental sensing network implemented locally outdoors and indoors can help to determine the NV potential and actual utilization throughout the year with the consideration of outdoor climate variance, air pollution levels, and window open/closed status. An NV potential index was developed by analyzing indoor and outdoor PM2.5, and outdoor air temperature and air speed throughout the year at different spatial (from room scale to building level and local weather stations) and temporal (instantaneous, season, and annual) scales. The index was applied on a case building located in Berkeley, California, during the period of August 2018 to the end of 2019. Compared to the potential NV availability, the actual window opening time in typical rooms was less than 35%. These results point out that the actual window usage behavior was the key limiting factor in NV potential utilization. Even during periods when climate- and pollution-wise outdoor conditions allowed use of the NV, many occupants kept their windows closed. Keeping windows open or closed was significantly affected by outdoor climate condition and air pollution levels, especially during the wild-fire period.
topic natural ventilation
IoT-Internet of things
indoor–outdoor Pollution
thermal comfort
occupant activities
occupant actions
url https://www.frontiersin.org/articles/10.3389/fenvs.2021.634570/full
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AT yumenghong determiningbuildingnaturalventilationpotentialviaiotbasedairqualitysensors
AT jovanpantelic determiningbuildingnaturalventilationpotentialviaiotbasedairqualitysensors
AT jovanpantelic determiningbuildingnaturalventilationpotentialviaiotbasedairqualitysensors
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