TY - JOUR AU1 - Gholami, Hooman AU2 - Lotfirad, Morteza AU3 - Ashrafi, Seyed Mohammad AU4 - Biazar, Seyed Mostafa AU5 - Singh, Vijay P. AB - Formulation of sustainable development plans in the water sector requires reliable estimates of future hydrological conditions. The general circulation models (GCM) are usually used in the prediction of runoff in future periods but the predictions have large uncertainty. This study aimed to propose an approach for reducing the uncertainty of the results when using GCM models. To that end, the IHACRES hydrological model was first calibrated for the baseline period (1981–2005) in the Gharesu basin, Iran. The runoff corresponding to the GCM outputs of temperature and precipitation was then calculated in the historical period using the IHACRES. Twelve top GCMs suitable to the case study for the estimation of runoff were selected by the TOPSIS algorithm. The selected twelve GCMs were combined by the runoff hybrid approach (RHM), as an ensemble model, to reduce the uncertainty of hydrological modeling. The RHM model is formed by weighted integration of the calculated runoff based on the temperature and precipitation achieved from the selected GCMs. Results showed that the mean coefficient of variation (CV) of RHM was 0.76 and the uncertainty of runoff estimation by ensemble modeling was less than that of any single GCM. The RHM model under the RCP4.5 and RCP8.5 scenarios was used to predict runoff in the near future period P1 (2006–2030), mid-future period P2 (2031–2055), and far future period P3 (2056–2080). The annual runoff prediction for the Gharesu basin under scenario RCP4.5 showed an increase of about 1% in the near future period (P1), a decrease of -2.4% in the period P2, and a decrease of -10% in the period P3 relative to the baseline period. Runoff decreased by -7.8, -6.9, and − 1.9%, respectively, in periods P1, P2, and P3 under scenario RCP8.5. The results picture that the studied sub-basin of Karkheh will face more heavy rains and floods in the winter and will be drier than the past. That is an important alarm for water managers to adapte their management strategies. TI - Multi-GCM ensemble model for reduction of uncertainty in runoff projections JF - Stochastic Environmental Research and Risk Assessment DO - 10.1007/s00477-022-02311-1 DA - 2023-03-01 UR - https://www.deepdyve.com/lp/springer-journals/multi-gcm-ensemble-model-for-reduction-of-uncertainty-in-runoff-ByDdPLzDUf SP - 953 EP - 964 VL - 37 IS - 3 DP - DeepDyve ER -