Evaluation of the recursive model approach for estimating particulate matter infiltration efficiencies using continuous light scattering data

被引:0
|
作者
Ryan Allen
Lance Wallace
Timothy Larson
Lianne Sheppard
Lee-Jane Sally Liu
机构
[1] Faculty of Health Sciences,Department of Environmental and Occupational Health Sciences
[2] Simon Fraser University,Department of Civil & Environmental Engineering
[3] University of Washington,Department of Biostatistics
[4] United States Environmental Protection Agency (retired),undefined
[5] University of Washington,undefined
[6] University of Washington,undefined
[7] Institute of Social & Preventive Medicine,undefined
[8] University of Basel,undefined
关键词
particulate matter; infiltration; recursive model; light scattering; sulfur;
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学科分类号
摘要
Quantifying particulate matter (PM) infiltration efficiencies (Finf) in individual homes is an important part of PM exposure assessment because individuals spend the majority of time indoors. While Finf of fine PM has most commonly been estimated using tracer species such as sulfur, here we evaluate an alternative that does not require particle collection, weighing and compositional analysis, and can be applied in situations with indoor sources of sulfur, such as environmental tobacco smoke, gas pilot lights, and humidifier use. This alternative method involves applying a recursive mass balance model (recursive model, RM) to continuous indoor and outdoor concentration measurements (e.g., light scattering data from nephelometers). We show that the RM can reliably estimate Finf, a crucial parameter for determining exposure to particles of outdoor origin. The RM Finf estimates showed good agreement with the conventional filter-based sulfur tracer approach. Our simulation results suggest that the RM Finf estimates are minimally impacted by measurement error. In addition, the average light scattering response per unit mass concentration was greater indoors than outdoors; after correcting for differences in light scattering response the median deviation from sulfur Finf was reduced from 15 to 11%. Thus, we have verified the RM applied to light scattering data. We show that the RM method is unable to provide satisfactory estimates of the individual components of Finf (penetration efficiency, air exchange rate, and deposition rate). However, this approach may allow Finf to be estimated in more residences, including those with indoor sources of sulfur. We show that individual homes vary in their infiltration efficiencies, thereby contributing to exposure misclassification in epidemiological studies that assign exposures using ambient monitoring data. This variation across homes indicates the need for home-specific estimation methods, such as the RM or sulfur tracer, instead of techniques that give average estimates of infiltration across homes.
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页码:468 / 477
页数:9
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