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Efficacy of Low-Cost Sensor Networks at Detecting Fine-Scale Variations in Particulate Matter in Urban Environments

The negative health impacts of air pollution are well documented. Not as well-documented, however, is how particulate matter varies at the hyper-local scale, and the role that proximal sources play in influencing neighborhood-scale patterns. We examined PM(2.5) variations in one airshed within India...

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Autores principales: Heintzelman, Asrah, Filippelli, Gabriel M., Moreno-Madriñan, Max J., Wilson, Jeffrey S., Wang, Lixin, Druschel, Gregory K., Lulla, Vijay O.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9915248/
https://www.ncbi.nlm.nih.gov/pubmed/36767298
http://dx.doi.org/10.3390/ijerph20031934
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author Heintzelman, Asrah
Filippelli, Gabriel M.
Moreno-Madriñan, Max J.
Wilson, Jeffrey S.
Wang, Lixin
Druschel, Gregory K.
Lulla, Vijay O.
author_facet Heintzelman, Asrah
Filippelli, Gabriel M.
Moreno-Madriñan, Max J.
Wilson, Jeffrey S.
Wang, Lixin
Druschel, Gregory K.
Lulla, Vijay O.
author_sort Heintzelman, Asrah
collection PubMed
description The negative health impacts of air pollution are well documented. Not as well-documented, however, is how particulate matter varies at the hyper-local scale, and the role that proximal sources play in influencing neighborhood-scale patterns. We examined PM(2.5) variations in one airshed within Indianapolis (Indianapolis, IN, USA) by utilizing data from 25 active PurpleAir (PA) sensors involving citizen scientists who hosted all but one unit (the control), as well as one EPA monitor. PA sensors report live measurements of PM(2.5) on a crowd sourced map. After calibrating the data utilizing relative humidity and testing it against a mobile air-quality unit and an EPA monitor, we analyzed PM(2.5) with meteorological data, tree canopy coverage, land use, and various census variables. Greater proximal tree canopy coverage was related to lower PM(2.5) concentrations, which translates to greater health benefits. A 1% increase in tree canopy at the census tract level, a boundary delineated by the US Census Bureau, results in a ~0.12 µg/m(3) decrease in PM(2.5), and a 1% increase in “heavy industry” results in a 0.07 µg/m(3) increase in PM(2.5) concentrations. Although the overall results from these 25 sites are within the annual ranges established by the EPA, they reveal substantial variations that reinforce the value of hyper-local sensing technologies as a powerful surveillance tool.
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spelling pubmed-99152482023-02-11 Efficacy of Low-Cost Sensor Networks at Detecting Fine-Scale Variations in Particulate Matter in Urban Environments Heintzelman, Asrah Filippelli, Gabriel M. Moreno-Madriñan, Max J. Wilson, Jeffrey S. Wang, Lixin Druschel, Gregory K. Lulla, Vijay O. Int J Environ Res Public Health Article The negative health impacts of air pollution are well documented. Not as well-documented, however, is how particulate matter varies at the hyper-local scale, and the role that proximal sources play in influencing neighborhood-scale patterns. We examined PM(2.5) variations in one airshed within Indianapolis (Indianapolis, IN, USA) by utilizing data from 25 active PurpleAir (PA) sensors involving citizen scientists who hosted all but one unit (the control), as well as one EPA monitor. PA sensors report live measurements of PM(2.5) on a crowd sourced map. After calibrating the data utilizing relative humidity and testing it against a mobile air-quality unit and an EPA monitor, we analyzed PM(2.5) with meteorological data, tree canopy coverage, land use, and various census variables. Greater proximal tree canopy coverage was related to lower PM(2.5) concentrations, which translates to greater health benefits. A 1% increase in tree canopy at the census tract level, a boundary delineated by the US Census Bureau, results in a ~0.12 µg/m(3) decrease in PM(2.5), and a 1% increase in “heavy industry” results in a 0.07 µg/m(3) increase in PM(2.5) concentrations. Although the overall results from these 25 sites are within the annual ranges established by the EPA, they reveal substantial variations that reinforce the value of hyper-local sensing technologies as a powerful surveillance tool. MDPI 2023-01-20 /pmc/articles/PMC9915248/ /pubmed/36767298 http://dx.doi.org/10.3390/ijerph20031934 Text en © 2023 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Heintzelman, Asrah
Filippelli, Gabriel M.
Moreno-Madriñan, Max J.
Wilson, Jeffrey S.
Wang, Lixin
Druschel, Gregory K.
Lulla, Vijay O.
Efficacy of Low-Cost Sensor Networks at Detecting Fine-Scale Variations in Particulate Matter in Urban Environments
title Efficacy of Low-Cost Sensor Networks at Detecting Fine-Scale Variations in Particulate Matter in Urban Environments
title_full Efficacy of Low-Cost Sensor Networks at Detecting Fine-Scale Variations in Particulate Matter in Urban Environments
title_fullStr Efficacy of Low-Cost Sensor Networks at Detecting Fine-Scale Variations in Particulate Matter in Urban Environments
title_full_unstemmed Efficacy of Low-Cost Sensor Networks at Detecting Fine-Scale Variations in Particulate Matter in Urban Environments
title_short Efficacy of Low-Cost Sensor Networks at Detecting Fine-Scale Variations in Particulate Matter in Urban Environments
title_sort efficacy of low-cost sensor networks at detecting fine-scale variations in particulate matter in urban environments
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9915248/
https://www.ncbi.nlm.nih.gov/pubmed/36767298
http://dx.doi.org/10.3390/ijerph20031934
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