This dissertation presents a reliable probabilistic forecasting system designed to predict inflows to hydroelectric reservoirs. Forecasts are derived from a Member-to-Member (M2M) ensemble in which an ensemble of distributed hydrologic models is driven by the gridded output of an ensemble of numerical weather prediction (NWP) models. Multiple parameter sets for each hydrologic model are optimized using objective functions that favour different aspects of forecast performance. On each forecast day, initial conditions for each differently-optimized hydrologic model are updated using meteorological observations. Thus, the M2M ensemble explicitly samples inflow forecast uncertainty caused by errors in the hydrologic models, their parameterizati...
The research assesses the value of forecast information in operating a hydro-electric project with a...
During an extreme event, having accurate inflow forecasting with enough lead time helps reservoir op...
Producing and improving hydrological and hydrodynamic forecasts while accounting for uncertainty thr...
This dissertation presents a reliable probabilistic forecasting system designed to predict inflows t...
Summarization: Accurate and reliable flow forecasting in complex Canadian prairie watersheds has bee...
This paper contributes to forecasting of renewable infeed for use in dispatch scheduling and power s...
The present study examines the value of conceptual hydrologic forecasting in the operation of a hydr...
Accuracy of reservoir inflow forecasts is instrumental for maximizing the value of water resources a...
Probabilistic forecasting aims at producing a predictive distribution of the quantity of interest in...
Two economic models are employed to perform a value assessment of short-range ensemble forecasts of ...
This dissertation describes research designed to enhance hydrometeorological forecasts. The objectiv...
Inflow forecasts play an integral role in the management and operations of hydropower reservoirs. In...
Inflow forecasts play an integral role in the management and operations of hydropower reservoirs. In...
In data-scarce regions, seasonal hydropower planning is hindered by the unavailability of reliable l...
Accurate and reliable short-term streamflow forecast systems are beneficial for non-storage hydroele...
The research assesses the value of forecast information in operating a hydro-electric project with a...
During an extreme event, having accurate inflow forecasting with enough lead time helps reservoir op...
Producing and improving hydrological and hydrodynamic forecasts while accounting for uncertainty thr...
This dissertation presents a reliable probabilistic forecasting system designed to predict inflows t...
Summarization: Accurate and reliable flow forecasting in complex Canadian prairie watersheds has bee...
This paper contributes to forecasting of renewable infeed for use in dispatch scheduling and power s...
The present study examines the value of conceptual hydrologic forecasting in the operation of a hydr...
Accuracy of reservoir inflow forecasts is instrumental for maximizing the value of water resources a...
Probabilistic forecasting aims at producing a predictive distribution of the quantity of interest in...
Two economic models are employed to perform a value assessment of short-range ensemble forecasts of ...
This dissertation describes research designed to enhance hydrometeorological forecasts. The objectiv...
Inflow forecasts play an integral role in the management and operations of hydropower reservoirs. In...
Inflow forecasts play an integral role in the management and operations of hydropower reservoirs. In...
In data-scarce regions, seasonal hydropower planning is hindered by the unavailability of reliable l...
Accurate and reliable short-term streamflow forecast systems are beneficial for non-storage hydroele...
The research assesses the value of forecast information in operating a hydro-electric project with a...
During an extreme event, having accurate inflow forecasting with enough lead time helps reservoir op...
Producing and improving hydrological and hydrodynamic forecasts while accounting for uncertainty thr...