Forecasting Ambient Air So2 Concentrations Using Artificial Neural Networks
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Date
2006-07
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Publisher
Taylor and Francis Ltd.
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Abstract
An Artificial Neural Networks (ANNs) model is constructed to forecast SO 2 concentrations in Izmir air. The model uses meteorological variables (wind speed and temperature) and measured particulate matter concentrations as input variables. The correlation coefficient between observed and forecasted concentrations is 0.94 for the network that uses all three variables as input parameters. The root mean square error value of the model is 3.60 g/mt 3 . Considering the limited number of available input variables, model performances show that ANNs are a promising method of modeling to forecast ambient air SO 2 concentrations in Izmir.
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Keywords
Air pollution, Artificial neural networks, Forecasting, Sulfur dioxide, Correlation coefficient
Turkish CoHE Thesis Center URL
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Citation
Sofuoğlu, S. C., Sofuoğlu, A., Birgili, S., and Tayfur, G. (2006). Forecasting ambient air SO2 concentrations using artificial neural networks. Energy Sources, Part B: Economics, Planning and Policy, 1(2), 127-136. doi:10.1080/009083190881526
WoS Q
Q3
Scopus Q
Q2

OpenCitations Citation Count
15
Source
Energy Sources, Part B: Economics, Planning and Policy
Volume
1
Issue
2
Start Page
127
End Page
136
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22
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14
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1062
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662
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