This paper presents results on the application of various optimization algorithms for the training of artificial neural network rainfall-runoff models. Multilayered feed-forward networks for forecasting discharge from two mesoscale catchments in different climatic regions have been developed for this purpose. The performances of the multiobjective algorithms Multi Objective Shuffled Complex Evolution Metropolis–University of Arizona (MOSCEM-UA) and Nondominated Sorting Genetic Algorithm II (NSGA-II) have been compared to the single-objective Levenberg-Marquardt and Genetic Algorithm for training of these models. Performance has been evaluated by means of a number of commonly applied objective functions and also by investigating the internal...
Rainfall and surface runoff are the driving forces behind all stormwater studies and designs. The re...
The use of metaheuristic optimization techniques in obtaining the optimal weights of neural network ...
A study investigating the forecast of runoff for an overland flow using the artificial neural networ...
This paper presents results on the application of various optimization algorithms for the training o...
[1] This paper presents results on the application of various optimization algorithms for the traini...
The rainfall-runoff relationship is one of the most complex hydrological phenomena. In recent years,...
This paper presents the application of an improved particle swarm optimization (PSO) technique for t...
Author name used in this publication: Kwokwing Chau2003-2004 > Academic research: refereed > Publica...
Abstract. Since the last decade, several studies have shown the ability of Artificial Neural Network...
Developing trustworthy rainfall-runoff (R-R) models can offer serviceable information for planning a...
A systematic comparison of two basic types of neural network, static and dynamic, is presented in th...
Abstract: The present study aims to utilize an Artificial Neural Network (ANN) to modeling the rainf...
<p>Artificial neural networks (ANNs) become widely used for runoff forecasting in numerous studies. ...
Rainfall-runoff relationships are among the most complex hydrologic phenomena. The conceptual models...
Owing to the complexity o f the hydrological process, Backpropagation Neural Network (BPNN) is the s...
Rainfall and surface runoff are the driving forces behind all stormwater studies and designs. The re...
The use of metaheuristic optimization techniques in obtaining the optimal weights of neural network ...
A study investigating the forecast of runoff for an overland flow using the artificial neural networ...
This paper presents results on the application of various optimization algorithms for the training o...
[1] This paper presents results on the application of various optimization algorithms for the traini...
The rainfall-runoff relationship is one of the most complex hydrological phenomena. In recent years,...
This paper presents the application of an improved particle swarm optimization (PSO) technique for t...
Author name used in this publication: Kwokwing Chau2003-2004 > Academic research: refereed > Publica...
Abstract. Since the last decade, several studies have shown the ability of Artificial Neural Network...
Developing trustworthy rainfall-runoff (R-R) models can offer serviceable information for planning a...
A systematic comparison of two basic types of neural network, static and dynamic, is presented in th...
Abstract: The present study aims to utilize an Artificial Neural Network (ANN) to modeling the rainf...
<p>Artificial neural networks (ANNs) become widely used for runoff forecasting in numerous studies. ...
Rainfall-runoff relationships are among the most complex hydrologic phenomena. The conceptual models...
Owing to the complexity o f the hydrological process, Backpropagation Neural Network (BPNN) is the s...
Rainfall and surface runoff are the driving forces behind all stormwater studies and designs. The re...
The use of metaheuristic optimization techniques in obtaining the optimal weights of neural network ...
A study investigating the forecast of runoff for an overland flow using the artificial neural networ...