Fig. 1. The Durango River Basin, Colorado and grids
Fig. 2. Example of MOSCEM Algorithm by 2 variabes
Fig. 3. The parameterization for model parameters using soil type and land use
Fig. 4. The Paretosets, the Best Paretoset, Compromised Solution
Fig. 5. The parameter estimations for snow and water balance components
Fig. 6. The snow melt time-series measured at 3 SNOTEL stations for model calibration
Fig. 7. The streamflow time-series measured at USGS station for model calibration
Fig. 8. The snow melt time-series measured at USGS station for model validation
Fig. 9. The streamflow time-series measured at USGS station for model validation
Table 1. The parameters of SNOW 17 Model to be calibrated in HL-RDHM
Table 2. The parameters of SAC-SEA Model to be calibrated in HL-RDHM
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