In recent years, a significant part of the studies on air pollutants has been devoted to improve statistical techniques for forecasting the values of their concentrations in the atmosphere. Reliable predictions of pollutant trends are essential not only for setting up preventive measures able to avoid risks for human health but also for helping stakeholders to take decision about traffic limitations. In this paper, we present an operating procedure, including both pollutant concentration measurements (CO, SO₂, NO₂, O₃, PM10) and meteorological parameters (hourly data of atmospheric pressure, relative humidity, wind speed), which improves the simple use of neural network for the prediction of pollutant concentration trends by means of the in...
Air pollution in urban atmosphere directly affects public-health; therefore, it is very essential to...
Air presence of particulate pollutants is an environmental problem with significant health issues. M...
In this paper, based on a sample selection rule and a Back Propagation (BP) neural network, a new mo...
In recent years, a significant part of the studies on air pollutants has been devoted to improve sta...
The modelling of urban air quality prediction is a difficult task because: i) the processes are cont...
AbstractLittle attention is given to applying the artificial neural network (ANN) modeling technique...
This work presents a neural network based model for inferring air quality from traffic measurements....
AbstractWe present a simple neural network and data pre–selection framework, discriminating the most...
Recently, a lot of attention was paid to the improvement of methods which are used to air quality fo...
The attempt to improve the effectiveness and the operational ability of classic statistical methods ...
Air quality in some developing countries is dominated by particulate matter, especially those with s...
Atmospheric pollutants concentration forecasting is an important issue in air quality monitoring. Qu...
This study considers the usage of multilinear regression and artificial neural network modelling to ...
Procedures based on artificial neural network (ANN) have been applied with success to forecast level...
ABSTRACT: This work analyzes the results of a Neural Network model applied to air pollution data. In...
Air pollution in urban atmosphere directly affects public-health; therefore, it is very essential to...
Air presence of particulate pollutants is an environmental problem with significant health issues. M...
In this paper, based on a sample selection rule and a Back Propagation (BP) neural network, a new mo...
In recent years, a significant part of the studies on air pollutants has been devoted to improve sta...
The modelling of urban air quality prediction is a difficult task because: i) the processes are cont...
AbstractLittle attention is given to applying the artificial neural network (ANN) modeling technique...
This work presents a neural network based model for inferring air quality from traffic measurements....
AbstractWe present a simple neural network and data pre–selection framework, discriminating the most...
Recently, a lot of attention was paid to the improvement of methods which are used to air quality fo...
The attempt to improve the effectiveness and the operational ability of classic statistical methods ...
Air quality in some developing countries is dominated by particulate matter, especially those with s...
Atmospheric pollutants concentration forecasting is an important issue in air quality monitoring. Qu...
This study considers the usage of multilinear regression and artificial neural network modelling to ...
Procedures based on artificial neural network (ANN) have been applied with success to forecast level...
ABSTRACT: This work analyzes the results of a Neural Network model applied to air pollution data. In...
Air pollution in urban atmosphere directly affects public-health; therefore, it is very essential to...
Air presence of particulate pollutants is an environmental problem with significant health issues. M...
In this paper, based on a sample selection rule and a Back Propagation (BP) neural network, a new mo...