posted on 2017-08-02, 13:43authored byJasdeep S Anand, Paul S. Monks
Land use regression (LUR) models have been used in epidemiology to determine the fine-scale spatial variation in air pollutants such as nitrogen dioxide (NO2) in cities and larger regions. However, they are often limited in their temporal resolution, which may potentially be rectified by employing the synoptic coverage provided by satellite measurements. In this work a mixed-effects LUR model is developed to model daily surface NO2 concentrations over the Hong Kong SAR during the period 2005–2015. In situ measurements from the Hong Kong Air Quality Monitoring Network, along with tropospheric vertical column density (VCD) data from the OMI, GOME-2A, and SCIAMACHY satellite instruments were combined with fine-scale land use parameters to provide the spatiotemporal information necessary to predict daily surface concentrations. Cross-validation with the in situ data shows that the mixed-effects LUR model using OMI data has a high predictive power (adj. R2 = 0. 84), especially when compared with surface concentrations derived using the MACC-II reanalysis model dataset (adj. R2 = 0. 11). Time series analysis shows no statistically significant trend in NO2 concentrations during 2005–2015, despite a reported decline in NOx emissions. This study demonstrates the utility in combining satellite data with LUR models to derive daily maps of ambient surface NO2 for use in exposure studies.
Funding
The research leading to these results has received
funding from the European Union Seventh Framework Programme
([FP7/2007–2013]) under grant agreement no. 606719,
as part of the PArtnership with ChiNa on space DAta (PANDA)
project. Additional funding was also provided by the UK National
Environmental Research Council (NERC) under grant no.
NE/N006941/1, as part of An Integrated Study of AIR Pollution
PROcesses in Beijing (AIRPRO).
We acknowledge the use of OMI data made available
from the NASA MIRADOR service (http://disc.sci.gsfc.nasa.gov/Aura/data-holdings/OMI), as well as the use of
SCIAMACHY and GOME-2A data provided by the KNMI
TEMIS (http://www.temis.nl) service. The ERA-Interim and
MACC-II reanalysis datasets were provided by ECMWF
(http://www.ecmwf.int). The in situ NO2 measurements and NOx
emission inventory were provided by the Hong Kong Environmental
Protection Department (http://www.epd.gov.hk/epd/eindex.html).
OMI data gridding was made possible using software kindly provided
by Gerrit Kuhlmann, available at https://github.com/gkuhl.
This research used the SPECTRE High Performance Computing
Facility at the University of Leicester.
History
Citation
Atmospheric Chemistry and Physics , 2017, 17 (13), pp. 8211-8230 (20)
Author affiliation
/Organisation/COLLEGE OF SCIENCE AND ENGINEERING
Version
VoR (Version of Record)
Published in
Atmospheric Chemistry and Physics
Publisher
European Geosciences Union (EGU), Copernicus Publications