A neural network model to predict ozone concentration in the Sao Paulo Metropolitan Area was developed, based on average values of meteorological variables in the morning (8:00-12:00 hr) and afternoon (13:00-17: 00 hr) periods. Outputs are the maximum and average ozone concentrations in the afternoon (12:00-17:00 hr). The correlation coefficient between computed and measured values was 0.82 and 0.88 for the maximum and average ozone concentration, respectively. The model presented good performance as a prediction tool for the maximum ozone concentration. For prediction periods from 1 to 5 days 0 to 23% failures (95% confidence) were obtained.FAPESPFAPESPCAPESCAPE
Tropospheric (ground-level) ozone has adverse effects on human health and environment. In this study...
The prediction of near-surface ozone concentrations is important to support regulatory procedures fo...
Air pollution in urban atmosphere directly affects public-health; therefore, it is very essential to...
A neural network model to predict ozone concentration in the Sao Paulo Metropolitan Area was develop...
A neural network model to predict ozone concentration in the Sao Paulo Metropolitan Area was develop...
This paper presents an artificial neural network model that is able to predict ozone concentrations ...
The aim of the present work is to provide a methodological procedure to forecast Ozone concentration...
This paper presents the development of artificial neural network models for the prediction of the da...
Ground level ozone gives intensively concern of itsadverse effects towards human health and environm...
This study considers the usage of multilinear regression and artificial neural network modelling to ...
This study considers the usage of multilinear regression and artificial neural network modelling to ...
The estimation of the surface ozone concentration promotes the creation of data useful for plan-ning...
Atmospheric pollutants concentration forecasting is an important issue in air quality monitoring. Qu...
ABSTRACT: This work analyzes the results of a Neural Network model applied to air pollution data. In...
Modelling is important in air quality forecasting and control. Before applying an air quality model,...
Tropospheric (ground-level) ozone has adverse effects on human health and environment. In this study...
The prediction of near-surface ozone concentrations is important to support regulatory procedures fo...
Air pollution in urban atmosphere directly affects public-health; therefore, it is very essential to...
A neural network model to predict ozone concentration in the Sao Paulo Metropolitan Area was develop...
A neural network model to predict ozone concentration in the Sao Paulo Metropolitan Area was develop...
This paper presents an artificial neural network model that is able to predict ozone concentrations ...
The aim of the present work is to provide a methodological procedure to forecast Ozone concentration...
This paper presents the development of artificial neural network models for the prediction of the da...
Ground level ozone gives intensively concern of itsadverse effects towards human health and environm...
This study considers the usage of multilinear regression and artificial neural network modelling to ...
This study considers the usage of multilinear regression and artificial neural network modelling to ...
The estimation of the surface ozone concentration promotes the creation of data useful for plan-ning...
Atmospheric pollutants concentration forecasting is an important issue in air quality monitoring. Qu...
ABSTRACT: This work analyzes the results of a Neural Network model applied to air pollution data. In...
Modelling is important in air quality forecasting and control. Before applying an air quality model,...
Tropospheric (ground-level) ozone has adverse effects on human health and environment. In this study...
The prediction of near-surface ozone concentrations is important to support regulatory procedures fo...
Air pollution in urban atmosphere directly affects public-health; therefore, it is very essential to...