This paper presents a neural fuzzy network model for seasonal streamflow forecasting. The model is based on a constructive learning method where neurons groups compete when the network receives a new input, so that it learns the fuzzy rules and membership functions essential for modelling a fuzzy system. The model was applied to the problem of seasonal streamflow forecasting using a database of average monthly inflows of three Brazilian hydroelectric plants located at different river basins. The performance of the model developed was compared with conventional approaches used to forecast streamflows. The results show that the neural fuzzy network model provides a better one-step-ahead streamflow forecasting, with forecasting errors signific...
This study reports on the performance of two medium-range streamflow forecast models: (1) a multilay...
In this study, the applicability of an adaptive neuro-fuzzy inference system (ANFIS) to forecast for...
Modern unorganized machines - extreme learning machines and echo state networks - provide an elegant...
A class of neurofuzzy networks and a constructive, competition-based learning procedure is introduce...
Planning of hydroelectric systems is a complex and difficult task once it involves non-linear produc...
Planning of hydroelectric systems is a complex and difficult task once it involves non-linear produc...
O Sistema Elétrico é um dos pilares do desenvolvimento tecnológico e industrial de uma nação. Dessa ...
Resumo: O Sistema Elétrico é um dos pilares do desenvolvimento tecnológico e industrial de uma nação...
Inflow data plays an important role in water and energy resources planning and management. In genera...
The present study compares the performance of different architectures of recurrent neural networks i...
The modeling of seasonal and interannual streamflow forecasting at northeastern Brazil represents a ...
In this study, the applicability of an adaptive neuro-fuzzy inference system (ANFIS) to forecast for...
The present study proposes a new hybrid evolutionary Adaptive Neuro-Fuzzy Inference Systems (ANFIS) ...
This paper presents the application of a methodology for daily reservoir inflow forecasting in Brazi...
The Brazilian energy matrix is predominantly composed of hydroelectric plants. In this way, it is im...
This study reports on the performance of two medium-range streamflow forecast models: (1) a multilay...
In this study, the applicability of an adaptive neuro-fuzzy inference system (ANFIS) to forecast for...
Modern unorganized machines - extreme learning machines and echo state networks - provide an elegant...
A class of neurofuzzy networks and a constructive, competition-based learning procedure is introduce...
Planning of hydroelectric systems is a complex and difficult task once it involves non-linear produc...
Planning of hydroelectric systems is a complex and difficult task once it involves non-linear produc...
O Sistema Elétrico é um dos pilares do desenvolvimento tecnológico e industrial de uma nação. Dessa ...
Resumo: O Sistema Elétrico é um dos pilares do desenvolvimento tecnológico e industrial de uma nação...
Inflow data plays an important role in water and energy resources planning and management. In genera...
The present study compares the performance of different architectures of recurrent neural networks i...
The modeling of seasonal and interannual streamflow forecasting at northeastern Brazil represents a ...
In this study, the applicability of an adaptive neuro-fuzzy inference system (ANFIS) to forecast for...
The present study proposes a new hybrid evolutionary Adaptive Neuro-Fuzzy Inference Systems (ANFIS) ...
This paper presents the application of a methodology for daily reservoir inflow forecasting in Brazi...
The Brazilian energy matrix is predominantly composed of hydroelectric plants. In this way, it is im...
This study reports on the performance of two medium-range streamflow forecast models: (1) a multilay...
In this study, the applicability of an adaptive neuro-fuzzy inference system (ANFIS) to forecast for...
Modern unorganized machines - extreme learning machines and echo state networks - provide an elegant...