This paper employs Adaptive Neuro-Fuzzy Inference System (ANFIS) to predict water level that leads to flood in coastal areas. ANFIS combines the verbal power of fuzzy logic and numerical power of neural network for its action. Meteorological and astronomical data of Santa Monica, a coastal area in California, U. S. A., were obtained. A portion of the data was used to train the ANFIS network, while other portions were used to check and test the generalization ability of the ANFIS model. Water level predictions were made for 24 hours, 48 hours and 72 hours, in which training, checking and testing of the model were performed for each of the prediction periods. The model results from the training, checking and testing data groups show that 48 h...
There are several methods that can be used to predict discharge some future time, but the results st...
Accurate forecasting of sediment is an important issue for reservoir design and water pollution cont...
Selection of the right modeling technique is always a challenging issue because every model can prod...
Accurate prediction of the water level in a reservoir is crucial to optimizing the management of wat...
Results of a study investigating the applicability of Adaptive Networked-based Fuzzy Inference Syste...
Real-time forecasting of high water levels at the mouth section of the Odra river is important for t...
In the last decades, several data-driven models have been developed to perform the real time flood f...
Despite the importance of dams for water distribution of various uses, adequate forecasting on a day...
The paper presents an adaptive neuro fuzzy inference system for predicting sea level considering tid...
Reliable water level forecasts are particularly important for warning against dangerous flood and in...
In this study three data-driven water level forecasting models are presented and discussed. One is b...
A new procedure for water level (or discharge) forecasting under uncertainty using artificial neural...
The use of data-driven modelling (DDM) in hydrological forecasting has been in practice since decad...
Abstract Sea level prediction is essential for the design of coastal structures and harbor operatio...
Forecasting changes in level of the reservoir are important in Construction, design and estimate the...
There are several methods that can be used to predict discharge some future time, but the results st...
Accurate forecasting of sediment is an important issue for reservoir design and water pollution cont...
Selection of the right modeling technique is always a challenging issue because every model can prod...
Accurate prediction of the water level in a reservoir is crucial to optimizing the management of wat...
Results of a study investigating the applicability of Adaptive Networked-based Fuzzy Inference Syste...
Real-time forecasting of high water levels at the mouth section of the Odra river is important for t...
In the last decades, several data-driven models have been developed to perform the real time flood f...
Despite the importance of dams for water distribution of various uses, adequate forecasting on a day...
The paper presents an adaptive neuro fuzzy inference system for predicting sea level considering tid...
Reliable water level forecasts are particularly important for warning against dangerous flood and in...
In this study three data-driven water level forecasting models are presented and discussed. One is b...
A new procedure for water level (or discharge) forecasting under uncertainty using artificial neural...
The use of data-driven modelling (DDM) in hydrological forecasting has been in practice since decad...
Abstract Sea level prediction is essential for the design of coastal structures and harbor operatio...
Forecasting changes in level of the reservoir are important in Construction, design and estimate the...
There are several methods that can be used to predict discharge some future time, but the results st...
Accurate forecasting of sediment is an important issue for reservoir design and water pollution cont...
Selection of the right modeling technique is always a challenging issue because every model can prod...