Long‐range seasonal streamflow forecasting over the I berian P eninsula using large‐scale atmospheric and oceanic information

Identifying the relationship between large‐scale climate signals and seasonal streamflow may provide a valuable tool for long‐range seasonal forecasting in regions under water stress, such as the Iberian Peninsula (IP). The skill of the main teleconnection indices as predictors of seasonal streamflo...

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Veröffentlicht in:Water resources research 2015-05, Vol.51 (5), p.3543-3567
Hauptverfasser: Hidalgo‐Muñoz, J. M., Gámiz‐Fortis, S. R., Castro‐Díez, Y., Argüeso, D., Esteban‐Parra, M. J.
Format: Artikel
Sprache:eng
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Zusammenfassung:Identifying the relationship between large‐scale climate signals and seasonal streamflow may provide a valuable tool for long‐range seasonal forecasting in regions under water stress, such as the Iberian Peninsula (IP). The skill of the main teleconnection indices as predictors of seasonal streamflow in the IP was evaluated. The streamflow database used was composed of 382 stations, covering the period 1975–2008. Predictions were made using a leave‐one‐out cross‐validation approach based on multiple linear regression, combining Variance Inflation Factor and Stepwise Backward selection to avoid multicollinearity and select the best subset of predictors. Predictions were made for four forecasting scenarios, from one to four seasons in advance. The correlation coefficient (RHO), Root Mean Square Error Skill Score (RMSESS), and the Gerrity Skill Score (GSS) were used to evaluate the forecasting skill. For autumn streamflow, good forecasting skill (RHO>0.5, RMSESS>20%, GSS>0.4) was found for a third of the stations located in the Mediterranean Andalusian Basin, the North Atlantic Oscillation of the previous winter being the main predictor. Also, fair forecasting skill (RHO>0.44, RMSESS>10%, GSS>0.2) was found in stations in the northwestern IP (16 of these located in the Douro and Tagus Basins) with two seasons in advance. For winter streamflow, fair forecasting skill was found for one season in advance in 168 stations, with the Snow Advance Index as the main predictor. Finally, forecasting was poorer for spring streamflow than for autumn and winter, since only 16 stations showed fair forecasting skill in with one season in advance, particularly in north‐western of IP. Evaluation of teleconnection indices as predictors of lagged seasonal streamflow October snow advance index as main predictor of following winter streamflow Skills in autumn and spring streamflow forecasting with two seasons in advance
ISSN:0043-1397
1944-7973
DOI:10.1002/2014WR016826