Artificial neural networks are functional alternative techniques in modelling the intricate vehicular exhaust emission dispersion phenomenon. Pollutant predictions are notoriously complex when using either deterministic or stochastic models, which explains why this model was developed using a neural network. Neural networks have the ability to learn about non-linear relationships between the used variables. In this paper a recurrent neural network (Elman model) based forecaster for the prediction of daily maximum concentrations of SO2, O3, PM10, NO2, CO in the city of Palermo is proposed. The effectiveness of the presented forecaster was tested using a time series recorded between 1 January 2003 to 31 December 2004 in eight monitoring stati...
AbstractWe present a simple neural network and data pre–selection framework, discriminating the most...
In this chapter, we present a cyclostationary neural network (CNN) architecture to model and estimat...
In this chapter, we present a cyclostationary neural network (CNN) architecture to model and estimat...
Artificial neural networks are functional alternative techniques in modelling the intricate vehicula...
Indoor air quality near the industrial site is tightly joined to pollutant concentration level, sinc...
Indoor air quality near the industrial site is tightly joined to pollutant concentration level, sinc...
Indoor air quality near the industrial site is tightly joined to pollutant concentration level, sinc...
Indoor air quality near the industrial site is tightly joined to pollutant concentration level, sinc...
Procedures based on artificial neural network (ANN) have been applied with success to forecast level...
Procedures based on artificial neural network (ANN) have been applied with success to forecast level...
Procedures based on artificial neural network (ANN) have been applied with success to forecast level...
According to the protocols for the reduction of the production of the gases responsible of the green...
Atmospheric pollutants concentration forecasting is an important issue in air quality monitoring. Qu...
This paper presents the application of feed-forward multilayer perceptron networks to forecast hourl...
The aim of the present work is to provide a methodological procedure to forecast Ozone concentration...
AbstractWe present a simple neural network and data pre–selection framework, discriminating the most...
In this chapter, we present a cyclostationary neural network (CNN) architecture to model and estimat...
In this chapter, we present a cyclostationary neural network (CNN) architecture to model and estimat...
Artificial neural networks are functional alternative techniques in modelling the intricate vehicula...
Indoor air quality near the industrial site is tightly joined to pollutant concentration level, sinc...
Indoor air quality near the industrial site is tightly joined to pollutant concentration level, sinc...
Indoor air quality near the industrial site is tightly joined to pollutant concentration level, sinc...
Indoor air quality near the industrial site is tightly joined to pollutant concentration level, sinc...
Procedures based on artificial neural network (ANN) have been applied with success to forecast level...
Procedures based on artificial neural network (ANN) have been applied with success to forecast level...
Procedures based on artificial neural network (ANN) have been applied with success to forecast level...
According to the protocols for the reduction of the production of the gases responsible of the green...
Atmospheric pollutants concentration forecasting is an important issue in air quality monitoring. Qu...
This paper presents the application of feed-forward multilayer perceptron networks to forecast hourl...
The aim of the present work is to provide a methodological procedure to forecast Ozone concentration...
AbstractWe present a simple neural network and data pre–selection framework, discriminating the most...
In this chapter, we present a cyclostationary neural network (CNN) architecture to model and estimat...
In this chapter, we present a cyclostationary neural network (CNN) architecture to model and estimat...