In this study three data-driven water level forecasting models are presented and discussed. One is based on the artificial neural networks approach, while the other two are based on the Mamdani and the Takagi-Sugeno fuzzy logic approaches, respectively. All of them are parameterised with reference to flood events alone, where water levels are higher than a selected threshold. The analysis of the three models is performed by using the same input and output variables. However, in order to evaluate their capability to deal with different levels of information, two different input sets are considered. The former is characterized by significant spatial and time aggregated rainfall information, while the latter considers rainfall information more...
This paper employs Adaptive Neuro-Fuzzy Inference System (ANFIS) to predict water level that leads t...
Soft Computing tools are becoming very popular in solving hydrological problems. These tools have im...
This paper proposes a new procedure for river stage forecasting under uncertainty based on the use o...
In the last decades, several data-driven models have been developed to perform the real time flood f...
International audienceIn this study three data-driven water level forecasting models are presented a...
A new procedure for water level (or discharge) forecasting under uncertainty using artificial neural...
Abstract—Over the last decade, neural network-based flood forecasts systems have been increasingly u...
Reliable water level forecasts are particularly important for warning against dangerous flood and in...
Reliable water level forecasting can help achieve efficient and optimum use of water resources and m...
Over the last decade, neural networks-based flood forecasts systems have been increasingly used in ...
Real-time forecasting of high water levels at the mouth section of the Odra river is important for t...
Flood forecasting models are a necessity, as they help in planning for flood events, and thus help p...
Artificial intelligent models (AIMs) have been successfully adopted in hydrological forecasting in a...
Despite the importance of dams for water distribution of various uses, adequate forecasting on a day...
Accurate prediction of the water level in a reservoir is crucial to optimizing the management of wat...
This paper employs Adaptive Neuro-Fuzzy Inference System (ANFIS) to predict water level that leads t...
Soft Computing tools are becoming very popular in solving hydrological problems. These tools have im...
This paper proposes a new procedure for river stage forecasting under uncertainty based on the use o...
In the last decades, several data-driven models have been developed to perform the real time flood f...
International audienceIn this study three data-driven water level forecasting models are presented a...
A new procedure for water level (or discharge) forecasting under uncertainty using artificial neural...
Abstract—Over the last decade, neural network-based flood forecasts systems have been increasingly u...
Reliable water level forecasts are particularly important for warning against dangerous flood and in...
Reliable water level forecasting can help achieve efficient and optimum use of water resources and m...
Over the last decade, neural networks-based flood forecasts systems have been increasingly used in ...
Real-time forecasting of high water levels at the mouth section of the Odra river is important for t...
Flood forecasting models are a necessity, as they help in planning for flood events, and thus help p...
Artificial intelligent models (AIMs) have been successfully adopted in hydrological forecasting in a...
Despite the importance of dams for water distribution of various uses, adequate forecasting on a day...
Accurate prediction of the water level in a reservoir is crucial to optimizing the management of wat...
This paper employs Adaptive Neuro-Fuzzy Inference System (ANFIS) to predict water level that leads t...
Soft Computing tools are becoming very popular in solving hydrological problems. These tools have im...
This paper proposes a new procedure for river stage forecasting under uncertainty based on the use o...