Carbon monoxide concentration forecasting in santiago, chile

Perez, P.; Palacios R.; Castillo A.

Abstract

In the city of Santiago, Chile, air quality is defined in terms of particulate matter with an aerodynamic diameter ?10 ?m (PM10) concentrations. An air quality forecasting model based on past concentrations of PM10 and meteorological conditions currently is used by the metropolitan agency for the environment, which allows restrictions to emissions to be imposed in advance. This model, however, fails to forecast between 40 and 50% of the days considered to be harmful for the inhabitants every year. Given that a high correlation between particulate matter and carbon monoxide (CO) concentrations is observed at monitoring stations in the city, a model for CO concentration forecasting would be a useful tool to complement information about expected air quality in the city. Here, the results of a neural network-based model aimed to forecast maximum values of the 8-hr moving average of CO concentrations for the next day are presented. Forecasts from the neural network model are compared with those produced with linear regressions. The neural network model seems to leave more room to adjust free parameters with 1-yr data to predict the following year's values. We have worked with 3 yr of data measured at the monitoring station located in the zone with the worst air quality in the city of Santiago, Chile.

Más información

Título según WOS: Carbon monoxide concentration forecasting in santiago, chile
Título según SCOPUS: Carbon monoxide concentration forecasting in Santiago, Chile
Título de la Revista: JOURNAL OF THE AIR WASTE MANAGEMENT ASSOCIATION
Volumen: 54
Número: 8
Editorial: AIR & WASTE MANAGEMENT ASSOC
Fecha de publicación: 2004
Página de inicio: 908
Página final: 913
Idioma: English
Notas: ISI, SCOPUS