This paper discusses the working mechanism of ANFIS, the flow of research, the implementation and evaluation of ANFIS models, and discusses the pros and cons of each option of input parameters applied, in order to solve the problem of rainfall-runoff forecasting. The rainfall-runoff modelling considers time-series data of rainfall amount (in mm) and water discharge amount (in m3/s). For model parameters, the models apply three triangle membership functions for each input. Meanwhile, the accuracy of the data is measured using the Root Mean Square Error (RMSE). Models with good performance in training have low values of RMSE. Hence, the 4-input model data is the best model to measure prediction accurately with the value of RMSE as 22.157. It ...
Urbanization has significant impact on the hydrological processes that have caused an increase in ma...
Urbanization has significant impact on the hydrological processes that have caused an increase in ma...
The use of data-driven modelling (DDM) in hydrological forecasting has been in practice since decad...
Rainfall runoff modelling using adaptive neuro fuzzy inference system has been presented. In the pre...
Runoff prediction still represents an extremely important issue in applied hydrology. On the other h...
The effect of shifting lag time in forecasting rainfall runoff using the Artificial Neural Fuzzy Inf...
Population growth and transformation of agricultural or forest landscapes to built-up areas are the ...
Modeling the rainfall-runoff process is a significant task in hydrological modelling as it can be he...
Abstract—Rainfall runoff modelling using adaptive neuro fuzzy inference system has been presented. I...
Accurate prediction of future rainfall based on current conditions and historical events is importan...
Intelligent computing tools based on Fuzzy Logic and Artificial Neural Networks (ANN) have been used...
Population growth and transformation of agricultural or forest landscapes to built-up areas are the ...
Intelligent computing tools based on Fuzzy Logic and Artificial Neural Networks (ANN) have been used...
Recently, the frequency of severe storms increases in Korea. Severe storms occurring in a short time...
Rainfall is one of the factors involved in increasing soil moisture. Soil moisture, in turn, is a ke...
Urbanization has significant impact on the hydrological processes that have caused an increase in ma...
Urbanization has significant impact on the hydrological processes that have caused an increase in ma...
The use of data-driven modelling (DDM) in hydrological forecasting has been in practice since decad...
Rainfall runoff modelling using adaptive neuro fuzzy inference system has been presented. In the pre...
Runoff prediction still represents an extremely important issue in applied hydrology. On the other h...
The effect of shifting lag time in forecasting rainfall runoff using the Artificial Neural Fuzzy Inf...
Population growth and transformation of agricultural or forest landscapes to built-up areas are the ...
Modeling the rainfall-runoff process is a significant task in hydrological modelling as it can be he...
Abstract—Rainfall runoff modelling using adaptive neuro fuzzy inference system has been presented. I...
Accurate prediction of future rainfall based on current conditions and historical events is importan...
Intelligent computing tools based on Fuzzy Logic and Artificial Neural Networks (ANN) have been used...
Population growth and transformation of agricultural or forest landscapes to built-up areas are the ...
Intelligent computing tools based on Fuzzy Logic and Artificial Neural Networks (ANN) have been used...
Recently, the frequency of severe storms increases in Korea. Severe storms occurring in a short time...
Rainfall is one of the factors involved in increasing soil moisture. Soil moisture, in turn, is a ke...
Urbanization has significant impact on the hydrological processes that have caused an increase in ma...
Urbanization has significant impact on the hydrological processes that have caused an increase in ma...
The use of data-driven modelling (DDM) in hydrological forecasting has been in practice since decad...