4.7 Article

A land use regression model for explaining spatial variation in air pollution levels using a wind sector based approach

Journal

SCIENCE OF THE TOTAL ENVIRONMENT
Volume 630, Issue -, Pages 1324-1334

Publisher

ELSEVIER
DOI: 10.1016/j.scitotenv.2018.02.317

Keywords

Land use regression; Wind direction; Air pollution; GIS; Population exposure

Funding

  1. Science, Technology, Research and Innovation for the Environment (STRIVE) Programme [2013_EH-FS-7]
  2. Irish Government
  3. Environmental Protection Agency Ireland (EPA) [2013-EH-FS-7] Funding Source: Environmental Protection Agency Ireland (EPA)

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Estimating pollutant concentrations at a local and regional scale is essential in environmental and health policy decision making. Here we present a novel land use regression (LUR) modelling methodology that exploits the high temporal resolution of fixed-site monitoring (ISM) to produce a national-scale air quality model for the key pollutant NO2. The methodology partitions concentration time series from a national ISM network into wind-dependent sectors or wedges. A LUR model is derived using predictor variables calculated within the directional wind sectors, and compared against the long-term average concentrations within each sector. Validation results, based on 15 ISM training sites, show that the model captured 78% of the spatial variability in NO2 across the Republic of Ireland. This compares favourably to traditional LUR models based on purpose-designed monitoring campaigns despite using approximately half the number of monitoring points. Results also demonstrate the value of incorporating the relative position of emission source and receptor into the empirical LUR model structure. We applied the model at a high-resolution across the Republic of Ireland to enable applications such as the study of environmental exposure and human health, assessing representativeness of air quality monitoring networks and informing environmental management and policy makers. While the study focuses on Ireland, the methodology also has potential applicability for other ciiteria pollutants where appropriate FSM and meteorological networks exist. (C) 2018 Published by Elscvier B.V.

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