A methodology to predict PM10 concentrations in urban outdoor environments is developed based on the generalized linear models (GLMs). The methodology is based on the relationship developed between atmospheric concentrations of air pollutants (i.e. CO, NO2,NOx, VOCs, SO2) and meteorological variables (i.e. ambient temperature, relative humidity (RH) and wind speed) for acity (Barreiro) of Portugal. The model uses air pollution and meteorological data from thePortuguese monitoring air quality station networks. The developed GLM considers PM10 concentrations as a dependent variable, and both the gaseous pollutants and meteorological variables as explanatory independent variables. A logarithmic link function was considered with a Poisson proba...
This paper presented the levels of PM2.5 and PM10 in different stations at the city of Sabzevar, Ira...
AbstractSalamanca has been ranked as one of the most polluted cities in Mexico. The industry in the ...
Spatiotemporal particulate matter (PM) concentration prediction using MODIS AOD with significant PM ...
A methodology to predict PM10 concentrations in urban outdoor environments is developed based on the...
Air pollution modelling is necessary and widely used tool for air quality management in urban areas....
In the last years, there has been an increase of scientific studies confirming that long- and short-...
Within the general framework of the development of high resolution air quality maps over the cities ...
Abstract: ARPA Piemonte performs yearly air quality assessment running a modelling system based on a...
The expressive population growth of the Uberlândia city, in the last four decades, in a disordered w...
The City of Viana do Castelo in Portugal has developed an air quality program, which includes pre...
One of the main problems that arise in the assessment of air quality in an area is to estimate the n...
We present a simple framework to easily pre-select the most essential data for accurately forecastin...
A statistical modelling of PM10 concentration (2006–2015) is applied to understand the behaviour, t...
Different forecasting methodologies, classified into parametric and nonparametric, were studied in ...
The accuracy of air quality modelling studies is signifi cantly infl uenced by the values adopted fo...
This paper presented the levels of PM2.5 and PM10 in different stations at the city of Sabzevar, Ira...
AbstractSalamanca has been ranked as one of the most polluted cities in Mexico. The industry in the ...
Spatiotemporal particulate matter (PM) concentration prediction using MODIS AOD with significant PM ...
A methodology to predict PM10 concentrations in urban outdoor environments is developed based on the...
Air pollution modelling is necessary and widely used tool for air quality management in urban areas....
In the last years, there has been an increase of scientific studies confirming that long- and short-...
Within the general framework of the development of high resolution air quality maps over the cities ...
Abstract: ARPA Piemonte performs yearly air quality assessment running a modelling system based on a...
The expressive population growth of the Uberlândia city, in the last four decades, in a disordered w...
The City of Viana do Castelo in Portugal has developed an air quality program, which includes pre...
One of the main problems that arise in the assessment of air quality in an area is to estimate the n...
We present a simple framework to easily pre-select the most essential data for accurately forecastin...
A statistical modelling of PM10 concentration (2006–2015) is applied to understand the behaviour, t...
Different forecasting methodologies, classified into parametric and nonparametric, were studied in ...
The accuracy of air quality modelling studies is signifi cantly infl uenced by the values adopted fo...
This paper presented the levels of PM2.5 and PM10 in different stations at the city of Sabzevar, Ira...
AbstractSalamanca has been ranked as one of the most polluted cities in Mexico. The industry in the ...
Spatiotemporal particulate matter (PM) concentration prediction using MODIS AOD with significant PM ...