Modeling and forecasting air pollutants using artificial neural network approach

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2003
Coşkuner, Refia Tansel

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Citation Formats
R. T. Coşkuner, “Modeling and forecasting air pollutants using artificial neural network approach,” M.S. - Master of Science, Middle East Technical University, 2003.