Artículos de revistas
Ground-level ozone prediction using a neural network model based on meteorological variables and applied to the metropolitan area of Sao Paulo
Date
2012Registration in:
INTERNATIONAL JOURNAL OF ENVIRONMENT AND POLLUTION, GENEVA, v. 49, n. 41306, supl. 1, Part 6, pp. 1-15, AUG, 2012
0957-4352
10.1504/IJEP.2012.049730
Author
Borges, Alessandro Santos
Andrade, Maria de Fatima
Guardani, Roberto
Institutions
Abstract
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.