Understanding catchment response to rainfall events is important for accurate runoff estimation in many water-related applications, including water resources management. This study introduced a hybrid model, the Tank-LSSVM, that incorporated intermediate state variables from a conceptual Tank model within the least squared support vector machine (LSSVM) framework in order to describe aspects of the rainfall-runoff (RR) process. The efficacy of the Tank-LSSVM model was demonstrated with hydro-meteorological data measured in the Yongdam Catchment between 2007-2016, South Korea. We first explored the role of satellite soil moisture (SM) data (i.e., ESA CCI) in the rainfall-runoff modeling. Results indicated that the SM states inferred from the...
A hydrological model is a useful tool to study the effects of human activities and climate change on...
Climate change refers to a statistically significant change in the average state of the climate or a...
An increased understanding of the uncertainties present in rainfall time series can lead to improved...
This paper proposes a novel hybrid forecasting model known as GLSSVM, which combines the group metho...
Hydrology Modeling using HEC-HMS (Hydrological Engineering Centre-Hydrologic Modeling System) is acc...
Over the past decade, artificial neural networks (ANN) have been widely used in the runoff modeling ...
Historically and recently, many people have suffered from severe droughts and/or flooding due to cli...
© 2015 Dr. Camila AlvarezThis thesis explores the assimilation of remotely-sensed soil moisture (SM-...
This paper investigates the ability of a least-squares support vector machine (LSSVM) model to impro...
Modeling stream flows is vital for water resource planning and flood and drought management. In this...
Precise and reliable hydrological runoff prediction plays a significant role in the optimal manageme...
One of the frequently adopted hybridizations within the scope of rainfall-runoff modeling rests on d...
Accurate and timely monitoring of streamflow and its variation is crucial for water resources manage...
The accurate prediction of runoff features such as water level and flow is valuable for planning and...
Rainfall-Runoff simulation is the backbone of all hydrological and climate change studies. This stud...
A hydrological model is a useful tool to study the effects of human activities and climate change on...
Climate change refers to a statistically significant change in the average state of the climate or a...
An increased understanding of the uncertainties present in rainfall time series can lead to improved...
This paper proposes a novel hybrid forecasting model known as GLSSVM, which combines the group metho...
Hydrology Modeling using HEC-HMS (Hydrological Engineering Centre-Hydrologic Modeling System) is acc...
Over the past decade, artificial neural networks (ANN) have been widely used in the runoff modeling ...
Historically and recently, many people have suffered from severe droughts and/or flooding due to cli...
© 2015 Dr. Camila AlvarezThis thesis explores the assimilation of remotely-sensed soil moisture (SM-...
This paper investigates the ability of a least-squares support vector machine (LSSVM) model to impro...
Modeling stream flows is vital for water resource planning and flood and drought management. In this...
Precise and reliable hydrological runoff prediction plays a significant role in the optimal manageme...
One of the frequently adopted hybridizations within the scope of rainfall-runoff modeling rests on d...
Accurate and timely monitoring of streamflow and its variation is crucial for water resources manage...
The accurate prediction of runoff features such as water level and flow is valuable for planning and...
Rainfall-Runoff simulation is the backbone of all hydrological and climate change studies. This stud...
A hydrological model is a useful tool to study the effects of human activities and climate change on...
Climate change refers to a statistically significant change in the average state of the climate or a...
An increased understanding of the uncertainties present in rainfall time series can lead to improved...