Demonstration of a low-cost multi-pollutant network to quantify intra-urban spatial variations in air pollutant source impacts and to evaluate environmental justice

Tanzer, R; Malings, C; Hauryliuk, A; Subramanian, R; Presto, AA

HERO ID

7496139

Reference Type

Journal Article

Year

2019

Language

English

PMID

31311099

HERO ID 7496139
In Press No
Year 2019
Title Demonstration of a low-cost multi-pollutant network to quantify intra-urban spatial variations in air pollutant source impacts and to evaluate environmental justice
Authors Tanzer, R; Malings, C; Hauryliuk, A; Subramanian, R; Presto, AA
Journal International Journal of Environmental Research and Public Health
Volume 16
Issue 14
Page Numbers 2523
Abstract Air quality monitoring has traditionally been conducted using sparsely distributed, expensive reference monitors. To understand variations in PM2.5 on a finely resolved spatiotemporal scale a dense network of over 40 low-cost monitors was deployed throughout and around Pittsburgh, Pennsylvania, USA. Monitor locations covered a wide range of site types with varying traffic and restaurant density, varying influences from local sources, and varying socioeconomic (environmental justice, EJ) characteristics. Variability between and within site groupings was observed. Concentrations were higher near the source-influenced sites than the Urban or Suburban Residential sites. Gaseous pollutants (NO2 and SO2) were used to differentiate between traffic (higher NO2 concentrations) and industrial (higher SO2 concentrations) sources of PM2.5. Statistical analysis proved these differences to be significant (coefficient of divergence > 0.2). The highest mean PM2.5 concentrations were measured downwind (east) of the two industrial facilities while background level PM2.5 concentrations were measured at similar distances upwind (west) of the point sources. Socioeconomic factors, including the fraction of non-white population and fraction of population living under the poverty line, were not correlated with increases in PM2.5 or NO2 concentration. The analysis conducted here highlights differences in PM2.5 concentration within site groupings that have similar land use thus demonstrating the utility of a dense sensor network. Our network captures temporospatial pollutant patterns that sparse regulatory networks cannot.
Doi 10.3390/ijerph16142523
Pmid 31311099
Wosid WOS:000480659300076
Is Certified Translation No
Dupe Override No
Is Public Yes
Language Text English
Keyword PM2.5; lower-cost sensor network; near-source.
Is Peer Review Yes