Title of article :
Prediction of sulfur dioxide concentrations at a site near downtown Santiago, Chile
Author/Authors :
Patricio Pérez، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2001
Abstract :
We have analyzed the possibility to predict hourly averages of sulfur dioxide concentrations in the atmosphere at a site not far from the downtown area in the city of Santiago, Chile. We have compared the forecasts produced assuming persistence, linear regressions and feed forward neural networks. The effect of meteorological conditions is included by using forecasted values of temperature, relative humidity and wind speed at the time of the intended prediction as inputs to the different models. The best predictions for hourly averages are obtained with a three-layer neural network that has hourly averages of sulfur dioxide concentrations every 6 h on the previous day plus the actual values of the meteorological variables as input. Training the network with 1995 data, error in 8 h in advance prediction for 1996 data is of the order of 30%.
Keywords :
sulfur dioxide , Air pollution prediction , Persistence , Neural networks , Meteorology forecast
Journal title :
Atmospheric Environment
Journal title :
Atmospheric Environment