A model for predicting gaseous air pollutants in Tabriz using neural network
Abstract
Air pollution is still a serious environmental challenge in the world. The problem is
much more severe in urban areas of developing countries, where it affects quality of life
and public health It is usually caused by industrial activities, energy production by
power plants, residential heating, fuel burning vehicles and natural disasters. Therefore,
forecasting of air pollutants has become a popular topic of environmental research
today. There are many methods for the forecasting of air pollutant concentrations. In
recent years, there has been considerable progress in the development of neural network
models for air pollution forecasting. In the current study, the artificial neural network
technique is widely use as a reliable method for forecasting air pollutant in urban areas.
On the other hand, the evolutionary polynomial regression(EPR) model has recently
been used models to forecasting tool in some environmental issue. In this research, we
compared the ability of these models to forecast carbon monoxide, sulfur dioxide and
nitrogen oxides concentrations in the urban area of Tabriz city. The dataset of CO, SO2
and NOx concentrations used in this study were obtained from five fixed monitoring
stations including S1, S2, S3, S4 and S5 operated by Tabriz Air Quality Control Co
(TAQCC) from 2008 to 2012. A feed forward multi layer perceptron network was used
to forecast CO, SO2 and NOx concentrations at the all stations mentioned above. The
data were divided into three subsets, namely training (70-80% of all), validation (10-
15% of all) and a test set (10-15% of all). In this thesis the number of hidden layers
varied between 1 and 4, too number of neurons in the hidden layers varied between 8
and 25.
The results showed the performance of ANN is more reliable in comparison with EPR.
using the ANN model, the correlation coefficient values at all monitoring stations were
obtained 0.91, whereas using the EPR model the correlation coefficients of the
polynomial evolution model 0.45.