
Ikusi/ Ireki
Izenburua
The role of local urban traffic and meteorological conditions in air pollution: a data-based case study in Madrid, SpainEgilea
Departamentua
Business Data AnayticsBeste erakundeak
https://ror.org/02fv8hj62https://ror.org/000xsnr85
https://ror.org/03b21sh32
https://ror.org/03n6nwv02
Bertsioa
PreprintaDokumentu-mota
ArtikuluaHizkuntza
IngelesaEskubideak
@ 2016 The authors, Published by Elsevier Ltd.Sarbidea
Sarbide irekiaArgitaratzailearen bertsioa
http://dx.doi.org/10.1016/j.atmosenv.2016.09.052Non argitaratua
Atmospheric Environment Issue 145 (2016)Lehenengo orria
424Azken orria
438Argitaratzailea
ElsevierGako-hitzak
Urban air pollution
Traffic flow
Metereological conditions
Supervised learning ... [+]
Traffic flow
Metereological conditions
Supervised learning ... [+]
Urban air pollution
Traffic flow
Metereological conditions
Supervised learning
Random Forest [-]
Traffic flow
Metereological conditions
Supervised learning
Random Forest [-]
Gaia (UNESCO Tesauroa)
Poluzio atmosferikoaLaburpena
Urban air pollution is a matter of growing concern for both public administrations and citizens. Road
traffic is one of the main sources of air pollutants, though topography characteristics and meteo ... [+]
Urban air pollution is a matter of growing concern for both public administrations and citizens. Road
traffic is one of the main sources of air pollutants, though topography characteristics and meteorological
conditions can make pollution levels increase or diminish dramatically. In this context an upsurge of
research has been conducted towards functionally linking variables of such domains to measured
pollution data, with studies dealing with up to one-hour resolution meteorological data. However, the
majority of such reported contributions do not deal with traffic data or, at most, simulate traffic conditions
jointly with the consideration of different topographical features. The aim of this study is to
further explore this relationship by using high-resolution real traffic data. This paper describes a
methodology based on the construction of regression models to predict levels of different pollutants (i.e.
CO, NO, NO2, O3 and PM10) based on traffic data and meteorological conditions, from which an estimation
of the predictive relevance (importance) of each utilized feature can be estimated by virtue of their
particular training procedure. The study was made with one hour resolution meteorological, traffic and
pollution historic data in roadside and background locations of the city of Madrid (Spain) captured over
2015. The obtained results reveal that the impact of vehicular emissions on the pollution levels is
overshadowed by the effects of stable meteorological conditions of this city. [-]


















