Atmospheric dispersion models are widely applied to simulate pollutant concentrations such as PM2.5 for use in long- and short-term health studies. A significant proportion of PM2.5 originates outside urban areas in which many people live. It is important to reflect this ‘background’ component in the modelling process in order to provide an accurate representation of the total pollution load experienced by human populations. To be credible, model outputs must be verified against available monitoring data, which, in the case of PM2.5, may be limited to a small number of monitoring sites across a large urban area. Here we evaluate four different approaches to representing background PM2.5 in an atmospheric dispersion model (ADMS-Urban) for No...
Abstract: In many countries emissions of particulate matter from urban sources, such as traffic and ...
The present study examines the behaviour of the ADMS-Urban air quality forecasting model in predicti...
Abstract Reliable and self-consistent data on air quality are needed for an extensive period of time...
Atmospheric dispersion models are widely applied to simulate pollutant concentrations such as PM2.5 ...
Exposure studies rely on detailed characterization of air quality, either from sparsely located rout...
Atmospheric dispersion models are being increasingly used by local authorities in the United Kingdom...
A coupled regional-to-local modelling system comprising a regional chemistry–climate model with 5km ...
The use of background concentrations in air pollution modelling is usually a critical issue and a so...
Ultrafine particles (UFPs) are respirable particles with a diameter less than 100 nm, which some stu...
Air pollution modelling is necessary and widely used tool for air quality management in urban areas....
Aim of the work is modelling the present and future scenarios of urban air quality, using an urban d...
The role of atmospheric dispersion models is becoming increasingly relevant to assess air pollution ...
Reliable and self-consistent data on air quality are needed for an extensive period of time for con...
© 2019 Elsevier Ltd. All rights reserved. This manuscript is licensed under the Creative Commons Att...
Urban area air pollution results from local air pollutants (from different sources) and horizontal t...
Abstract: In many countries emissions of particulate matter from urban sources, such as traffic and ...
The present study examines the behaviour of the ADMS-Urban air quality forecasting model in predicti...
Abstract Reliable and self-consistent data on air quality are needed for an extensive period of time...
Atmospheric dispersion models are widely applied to simulate pollutant concentrations such as PM2.5 ...
Exposure studies rely on detailed characterization of air quality, either from sparsely located rout...
Atmospheric dispersion models are being increasingly used by local authorities in the United Kingdom...
A coupled regional-to-local modelling system comprising a regional chemistry–climate model with 5km ...
The use of background concentrations in air pollution modelling is usually a critical issue and a so...
Ultrafine particles (UFPs) are respirable particles with a diameter less than 100 nm, which some stu...
Air pollution modelling is necessary and widely used tool for air quality management in urban areas....
Aim of the work is modelling the present and future scenarios of urban air quality, using an urban d...
The role of atmospheric dispersion models is becoming increasingly relevant to assess air pollution ...
Reliable and self-consistent data on air quality are needed for an extensive period of time for con...
© 2019 Elsevier Ltd. All rights reserved. This manuscript is licensed under the Creative Commons Att...
Urban area air pollution results from local air pollutants (from different sources) and horizontal t...
Abstract: In many countries emissions of particulate matter from urban sources, such as traffic and ...
The present study examines the behaviour of the ADMS-Urban air quality forecasting model in predicti...
Abstract Reliable and self-consistent data on air quality are needed for an extensive period of time...