Regional flood frequency analysis (RFFA) is widely used in practice to estimate flood quantiles in ungauged catchments. Most commonly adopted RFFA methods such as quantile regression technique (QRT) assume a log-linear relationship between the dependent and a set of predictor variables. As non-linear models and universal approximators, artificial neural networks (ANN) have been widely adopted in rainfall runoff modeling and hydrologic forecasting, but there have been relatively few studies involving the application of ANN to RFFA for estimating flood quantiles in ungauged catchments. This paper thus focuses on the development and testing of an ANN-based RFFA model using an extensive Australian database consisting of 452 gauged catchments....
Design flood estimation in small to medium sized ungauged catchments is frequently required in hydro...
Flood is one of the most destructive natural disasters, causing significant economic damage and loss...
Artificial neural networks (ANNs) have been applied within the field of hydrological modelling for o...
Flood estimation in ungauged catchments is often needed in hydrology. Regional flood frequency estim...
Most of the traditional regional flood frequency analysis (RFFA) methods are based on linear models....
This paper presents the results from a study on the application of an artificial neural network (ANN...
Regional flood frequency analysis (RFFA) is used to estimate design floods in ungauged and data poor...
In Australia, design flood estimation in small ungauged catchments is often carried out using the Pr...
Regional flood frequency analysis (RFFA) involves transfer of flood characteristics from gauged to u...
Design flood estimations at ungauged catchments are a challenging task in hydrology. Regional flood ...
This paper presents the development and validation of an artificial intelligence based regional floo...
This chapter focuses on the development of artificial intelligence based regional flood frequency an...
Flood is one of the worst natural disasters, which brings disruptions to services and damages to inf...
This paper focuses on the development and testing of the genetic algorithm (GA)-based regional flood...
In this study, we utilise Artificial Neural Network (ANN) models to estimate the 100- and 1500-year ...
Design flood estimation in small to medium sized ungauged catchments is frequently required in hydro...
Flood is one of the most destructive natural disasters, causing significant economic damage and loss...
Artificial neural networks (ANNs) have been applied within the field of hydrological modelling for o...
Flood estimation in ungauged catchments is often needed in hydrology. Regional flood frequency estim...
Most of the traditional regional flood frequency analysis (RFFA) methods are based on linear models....
This paper presents the results from a study on the application of an artificial neural network (ANN...
Regional flood frequency analysis (RFFA) is used to estimate design floods in ungauged and data poor...
In Australia, design flood estimation in small ungauged catchments is often carried out using the Pr...
Regional flood frequency analysis (RFFA) involves transfer of flood characteristics from gauged to u...
Design flood estimations at ungauged catchments are a challenging task in hydrology. Regional flood ...
This paper presents the development and validation of an artificial intelligence based regional floo...
This chapter focuses on the development of artificial intelligence based regional flood frequency an...
Flood is one of the worst natural disasters, which brings disruptions to services and damages to inf...
This paper focuses on the development and testing of the genetic algorithm (GA)-based regional flood...
In this study, we utilise Artificial Neural Network (ANN) models to estimate the 100- and 1500-year ...
Design flood estimation in small to medium sized ungauged catchments is frequently required in hydro...
Flood is one of the most destructive natural disasters, causing significant economic damage and loss...
Artificial neural networks (ANNs) have been applied within the field of hydrological modelling for o...