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Forecast of daily mean, maximum and minimum temperature time series by three artificial neural network methods



Forecast of daily mean, maximum and minimum temperature time series by three artificial neural network methods



Meteorological Applications 15(4): 431-445




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Accession: 022669527

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DOI: 10.1002/met.83


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