Air pollution is today a serious problem, caused mainly by human activity. Classical methods are not considered able to efficiently model complex phenomena as meteorology and air pollution because, usually, they make approximations or too rigid schematisations. Our purpose is a more flexible architecture (artificial neural network model) to implement a short-term CO2 emission forecasting tool applied to the cereal sector in Apulia region – in Southern Italy - to determine how the introduction of cultural methods with less environmental impact acts on a possible pollution reduction
Abstract: Over recent years, the high levels of air pollution have become a quite im-portant problem...
AbstractLittle attention is given to applying the artificial neural network (ANN) modeling technique...
An early warning system for air quality control requires an accurate and dependable forecasting of p...
Air pollution is today a serious problem, caused mainly by human activity. Classical methods are not...
A very significant issue today concerns the problem of air pollution caused mainly by human activity...
Indoor air quality near the industrial site is tightly joined to pollutant concentration level, sinc...
In this chapter, we present a cyclostationary neural network (CNN) architecture to model and estimat...
According to the protocols for the reduction of the production of the gases responsible of the green...
Artificial neural networks are functional alternative techniques in modelling the intricate vehicula...
Procedures based on artificial neural network (ANN) have been applied with success to forecast level...
Atmospheric pollutants concentration forecasting is an important issue in air quality monitoring. Qu...
© 2018 Technical University of Wroclaw. All rights reserved. An example of artificial neural network...
This work shows an application based on neural networks to determine the prediction of air pollution...
Abstract: An artificial neural network (ANN) was used to forecast natural airborne dust as well as f...
The great human health implications of exposure to atmospheric pollution events can have repercussio...
Abstract: Over recent years, the high levels of air pollution have become a quite im-portant problem...
AbstractLittle attention is given to applying the artificial neural network (ANN) modeling technique...
An early warning system for air quality control requires an accurate and dependable forecasting of p...
Air pollution is today a serious problem, caused mainly by human activity. Classical methods are not...
A very significant issue today concerns the problem of air pollution caused mainly by human activity...
Indoor air quality near the industrial site is tightly joined to pollutant concentration level, sinc...
In this chapter, we present a cyclostationary neural network (CNN) architecture to model and estimat...
According to the protocols for the reduction of the production of the gases responsible of the green...
Artificial neural networks are functional alternative techniques in modelling the intricate vehicula...
Procedures based on artificial neural network (ANN) have been applied with success to forecast level...
Atmospheric pollutants concentration forecasting is an important issue in air quality monitoring. Qu...
© 2018 Technical University of Wroclaw. All rights reserved. An example of artificial neural network...
This work shows an application based on neural networks to determine the prediction of air pollution...
Abstract: An artificial neural network (ANN) was used to forecast natural airborne dust as well as f...
The great human health implications of exposure to atmospheric pollution events can have repercussio...
Abstract: Over recent years, the high levels of air pollution have become a quite im-portant problem...
AbstractLittle attention is given to applying the artificial neural network (ANN) modeling technique...
An early warning system for air quality control requires an accurate and dependable forecasting of p...