The Kalman filter (KF) updating method has been widely used as an efficient measure to assimilate real-time hydrological variables for reducing forecast uncertainty and providing improved forecasts. However, the accuracy of the KF relies much on the estimates of the state transition matrix and is limited due to the errors inherit from parameters and variables of the flood forecasting models. A new real-time updating approach (named KN2K) is produced by coupling the k-nearest neighbor (KNN) procedure with the KF for flood forecasting models. The nonparametric KNN algorithm, which can be utilized to predict the response of a system on the basis of the k most representative predictors, is still efficient when the descriptions for input-output ...
There is a growing interest in knowing the uncertainty in flood forecasting and the resulting flood ...
Different statistical, non-statistical and black-box methods have been used in forecasting processes...
In operational hydrology, understanding the behaviour of flood events and improving the forecast ski...
This study explores the performances of three real-time updating models in improving flood forecasti...
The subject of this study is rainfall-runoff forecasting and flood warning. Denote by (X(t),Y(t)) a ...
In flood forecasting, general flood forecasting models or empirical forecasts reflect the average op...
In non-structural measurement of flood control, hydrologic forecasting plays a very important role. ...
It is fundamentally challenging to quantify the uncertainty of data-driven flood forecasting. This s...
This paper discusses the modelling of rainfall-flow (rainfall-run-off) and flow-routeing processes i...
AbstractA real-time channel flood forecast model was developed to simulate channel flow in plain riv...
The purpose of this particular work was to explore the benefits and drawbacks of sequential state up...
There is a growing interest in understanding the uncertainty in flood forecasting and the resulting ...
Time-series analysis techniques for improving the real-time flood forecasts issued by a deterministi...
In [1], the IHACRES rainfall-runoff model is calibrated for the purpose of predicting streamflow dis...
In [1], the IHACRES rainfall-runoff model is calibrated for the purpose of predicting streamflow dis...
There is a growing interest in knowing the uncertainty in flood forecasting and the resulting flood ...
Different statistical, non-statistical and black-box methods have been used in forecasting processes...
In operational hydrology, understanding the behaviour of flood events and improving the forecast ski...
This study explores the performances of three real-time updating models in improving flood forecasti...
The subject of this study is rainfall-runoff forecasting and flood warning. Denote by (X(t),Y(t)) a ...
In flood forecasting, general flood forecasting models or empirical forecasts reflect the average op...
In non-structural measurement of flood control, hydrologic forecasting plays a very important role. ...
It is fundamentally challenging to quantify the uncertainty of data-driven flood forecasting. This s...
This paper discusses the modelling of rainfall-flow (rainfall-run-off) and flow-routeing processes i...
AbstractA real-time channel flood forecast model was developed to simulate channel flow in plain riv...
The purpose of this particular work was to explore the benefits and drawbacks of sequential state up...
There is a growing interest in understanding the uncertainty in flood forecasting and the resulting ...
Time-series analysis techniques for improving the real-time flood forecasts issued by a deterministi...
In [1], the IHACRES rainfall-runoff model is calibrated for the purpose of predicting streamflow dis...
In [1], the IHACRES rainfall-runoff model is calibrated for the purpose of predicting streamflow dis...
There is a growing interest in knowing the uncertainty in flood forecasting and the resulting flood ...
Different statistical, non-statistical and black-box methods have been used in forecasting processes...
In operational hydrology, understanding the behaviour of flood events and improving the forecast ski...