Data-driven machine learning approaches have been rapidly developed in the past 10 to 20 years and applied to various problems in the field of hydrology. To investigate the capability of data-driven approaches in rainfall-runoff modeling in comparison to theory-driven models, we conducted a comparative study of simulated monthly surface runoff at 203 watersheds across the contiguous USA using a conceptual model, the proportionality hydrologic model, and a data-driven Gaussian process regression model. With the same input variables of precipitation and mean monthly aridity index, the two models showed similar performance. We then introduced two more input variables in the data-driven model: potential evaporation and the normalized difference...
A comprehensive data driven modeling experiment is presented in a two-part paper. In this first part...
This study reports model performance calculations for three event-based rainfall-runoff models on bo...
The proportionality hypothesis, originating from the curve number method at the event scale, is exte...
Data-driven machine learning approaches have been rapidly developed in the past 10 to 20 years and a...
In the past decade, machine learning methods for empirical rainfall–runoff modeling have seen ...
Historically and recently, many people have suffered from severe droughts and/or flooding due to cli...
2021 Spring.Includes bibliographical references.Accurate rainfall–runoff simulation is essential for...
Extreme weather conditions like floods and droughts call for careful planning and management of wate...
One of the frequently adopted hybridizations within the scope of rainfall-runoff modeling rests on d...
The growing menace of global warming and restrictions on access to water in each region is a huge th...
189 pagesThe recent advances in sensing technology and machine learning have offered new opportuniti...
The availability of data is a major problem for the widespread application of rainfall-runoff models...
Hydrology Modeling using HEC-HMS (Hydrological Engineering Centre-Hydrologic Modeling System) is acc...
Hydrologic modeling is heavily used in water resources for advancing scientific process understandin...
xi, 246 p. : ill. (some col.) ; 30 cm.PolyU Library Call No.: [THS] LG51 .H577P CSE 2010 WuData-driv...
A comprehensive data driven modeling experiment is presented in a two-part paper. In this first part...
This study reports model performance calculations for three event-based rainfall-runoff models on bo...
The proportionality hypothesis, originating from the curve number method at the event scale, is exte...
Data-driven machine learning approaches have been rapidly developed in the past 10 to 20 years and a...
In the past decade, machine learning methods for empirical rainfall–runoff modeling have seen ...
Historically and recently, many people have suffered from severe droughts and/or flooding due to cli...
2021 Spring.Includes bibliographical references.Accurate rainfall–runoff simulation is essential for...
Extreme weather conditions like floods and droughts call for careful planning and management of wate...
One of the frequently adopted hybridizations within the scope of rainfall-runoff modeling rests on d...
The growing menace of global warming and restrictions on access to water in each region is a huge th...
189 pagesThe recent advances in sensing technology and machine learning have offered new opportuniti...
The availability of data is a major problem for the widespread application of rainfall-runoff models...
Hydrology Modeling using HEC-HMS (Hydrological Engineering Centre-Hydrologic Modeling System) is acc...
Hydrologic modeling is heavily used in water resources for advancing scientific process understandin...
xi, 246 p. : ill. (some col.) ; 30 cm.PolyU Library Call No.: [THS] LG51 .H577P CSE 2010 WuData-driv...
A comprehensive data driven modeling experiment is presented in a two-part paper. In this first part...
This study reports model performance calculations for three event-based rainfall-runoff models on bo...
The proportionality hypothesis, originating from the curve number method at the event scale, is exte...