This research develops an extension of the Model Conditional Processor (MCP), which merges clusters with Gaussian mixture models to offer an alternative solution to manage heteroscedastic errors. The new method is called the Gaussian mixture clustering post-processor (GMCP). The results of the proposed post-processor were compared to the traditional MCP and MCP using a truncated Normal distribution (MCPt) by applying multiple deterministic and probabilistic verification indices. This research also assesses the GMCP’s capacity to estimate the predictive uncertainty of the monthly streamflow under different climate conditions in the “Second Workshop on Model Parameter Estimation Experiment” (MOPEX) catchments distributed in the SE part of the...
<p>Uncertainty in rainfall forecasts affects the level of quality and assurance for decisions made t...
Streamflow prediction in ungauged basins (PUB) is a process generating streamflow time series at ung...
This study introduces a method to quantify the conditional predictive uncertainty in hydrological po...
ABSTRACT: This research develops an extension of the Model Conditional Processor (MCP), which merges...
Hydrologic model predictions are often biased and subject to heteroscedastic errors originating from...
Streamflow forecasting plays a critical role in nearly all aspects of water resources planning and m...
Streamflow forecasting plays a critical role in nearly all aspects of water resources planning and m...
Keywords: Gaussian Process Regression Machine learning theory Water/energy interactions Probabilisti...
Understanding the uncertainties associated with streamflow prediction in hydrological modelling has ...
The work aims at discussing the role of predictive uncertainty in flood forecasting and flood emerge...
Due to the inherent non-stationary and nonlinear characteristics of original streamflow and the comp...
Ensemble streamflow forecasts obtained by using hydrological models with ensemble weather products a...
Quantification of predictive uncertainty in hydrological modelling is often made by post-processing ...
In a previous paper, a number of potential models for short-term water demand (STWD) prediction have...
International audienceIn addition to the uncertainty in future boundary conditions of precipitation ...
<p>Uncertainty in rainfall forecasts affects the level of quality and assurance for decisions made t...
Streamflow prediction in ungauged basins (PUB) is a process generating streamflow time series at ung...
This study introduces a method to quantify the conditional predictive uncertainty in hydrological po...
ABSTRACT: This research develops an extension of the Model Conditional Processor (MCP), which merges...
Hydrologic model predictions are often biased and subject to heteroscedastic errors originating from...
Streamflow forecasting plays a critical role in nearly all aspects of water resources planning and m...
Streamflow forecasting plays a critical role in nearly all aspects of water resources planning and m...
Keywords: Gaussian Process Regression Machine learning theory Water/energy interactions Probabilisti...
Understanding the uncertainties associated with streamflow prediction in hydrological modelling has ...
The work aims at discussing the role of predictive uncertainty in flood forecasting and flood emerge...
Due to the inherent non-stationary and nonlinear characteristics of original streamflow and the comp...
Ensemble streamflow forecasts obtained by using hydrological models with ensemble weather products a...
Quantification of predictive uncertainty in hydrological modelling is often made by post-processing ...
In a previous paper, a number of potential models for short-term water demand (STWD) prediction have...
International audienceIn addition to the uncertainty in future boundary conditions of precipitation ...
<p>Uncertainty in rainfall forecasts affects the level of quality and assurance for decisions made t...
Streamflow prediction in ungauged basins (PUB) is a process generating streamflow time series at ung...
This study introduces a method to quantify the conditional predictive uncertainty in hydrological po...