2013
DOI: 10.5194/hess-17-721-2013
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Role of climate forecasts and initial conditions in developing streamflow and soil moisture forecasts in a rainfall–runoff regime

Abstract: Abstract. Skillful seasonal streamflow forecasts obtained from climate and land surface conditions could significantly improve water and energy management. Since climate forecasts are updated on a monthly basis, we evaluate the potential in developing operational monthly streamflow forecasts on a continuous basis throughout the year. Further, basins in the rainfall-runoff regime critically depend on the forecasted precipitation in the upcoming months as opposed to snowmelt regimes where initial hydrological co… Show more

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Cited by 41 publications
(49 citation statements)
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“…proposed the uncertainty framework that rigorously incorporates uncertainties in initial 5 conditions and input variables (Li et al, 2009;Sinha and Sankarasubramanian, 2013;Yossef et al, 2013). We proposed an uncertainty framework that estimates the restoration time of groundwater and surface water systems by comparing the distribution of streamflow under "nopumping" with the streamflow obtained under "pumping".…”
Section: Discussion and Concluding Remarksmentioning
confidence: 99%
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“…proposed the uncertainty framework that rigorously incorporates uncertainties in initial 5 conditions and input variables (Li et al, 2009;Sinha and Sankarasubramanian, 2013;Yossef et al, 2013). We proposed an uncertainty framework that estimates the restoration time of groundwater and surface water systems by comparing the distribution of streamflow under "nopumping" with the streamflow obtained under "pumping".…”
Section: Discussion and Concluding Remarksmentioning
confidence: 99%
“…Spatial variability of initial conditions can induce uncertainties on hydrologic variables especially for short-term simulation (e.g., a year simulation or less) (Moradkhani et al, 2005) Initial conditions of land surface models also influence streamflow forecasts development (Li and Sankarasubramanian., 2012;Sinha and Sankarasubramanian, 2013;Yossef et al, 2013;Li et 20 al., 2016). Given that a small difference in initial conditions such as soil moisture and groundwater storage could substantially alter the estimated groundwater time, we propose here an uncertainty estimation framework that perturbs the initial conditions under "no-pumping" 3) Uncertainty envelope on streamflow and groundwater level were then estimated as the difference between the base simulation series and each perturbed series obtained with 10 different initial conditions.…”
Section: Uncertainty Envelope Estimation By Perturbing Initial Conditmentioning
confidence: 99%
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“…This may be because the precipitation amount and variation are both low in the dry regions, leading to the weak influence of precipitation to the hydrological estimates (e.g., runoff and soil moisture) (Mo and Lettenmaier, 2014). In addition, the influence of ICs to seasonal hydrological predictability has an obvious interannual variability, e.g., with more important role in neutral years than in El Niño-Southern Oscillation (ENSO)-dominant years (Yuan et al, 2013b;Sinha and Sankarasubramanian, 2013). Through an assessment during the hydrological extremes, the role of ICs differs on the phase of hydrological extremes.…”
Section: Seasonal Hydrological Forecastingmentioning
confidence: 99%
“…One common approach is utilizing statistical methods to examine the linkage between indicator variables (including initial moisture states and climate precursors) and the target predictand (e.g., streamflow, soil moisture) [7,8]. Alternatively, a few studies have attempted to assess the role of climate forecasts by comparing the climate model-based hydrological forecasts with the parallel ensemble streamflow prediction (ESP), which utilizes the daily climate traces from history as model forcings [9][10][11][12][13], or to quantify the contributions (isolated and combined) of soil moisture and snowpack initialization to predictive skill by conducting a set of numerical modeling experiments [14,15]. In contrast with these model-based analyses, Wood and Lettenmaier [16] proposed a theoretical ESP/reverse-ESP (revESP) framework to partition the relative roles of ICs and CFs in streamflow forecasts over two basins in western U.S. [16], mainly by comparing two sets of artificial experiments: (1) the ESP forecasts with assumed realistic estimates of initial moisture conditions but random climate forcings; and (2) the parallel revESP with prescribed observed climate forcings but random estimates of initial moisture conditions.…”
Section: Introductionmentioning
confidence: 99%