A Hierarchal Bayesian model is presented for one season-ahead forecasts of summer rainfall and streamflow using exogenous climate variables for east central China. The model provides estimates of the posterior forecasted probability distribution for 12 rainfall and 2 streamflow stations considering parameter uncertainty, and cross-site correlation. The model has a multi-level structure with regression coefficients modeled from a common multi-variate normal distribution resulting in partial pooling of information across multiple stations and better representation of parameter and posterior distribution uncertainty. Covariance structure of the residuals across stations is explicitly modeled. Model performance is tested under leave-10-out cros...
Long-term hydrological projections can vary substantially depending on the combination of meteorolog...
Due to the inherent non-stationary and nonlinear characteristics of original streamflow and the comp...
International audienceA nonhomogeneous hidden Markov model (NHMM) is used to stochastically simulate...
Abstract The frequent occurrence of floods during the rainy season is one of the threats in rainfed ...
In terms of climate change and precipitation, there is large interest in how large-scale climatic fe...
In terms of climate change and precipitation, there is large interest in how large-scale climatic fe...
We consider stochastic weather models originally developed for rainfall simulations to build a hiera...
Warm season heavy rainfall events over the Huaihe River Valley (HRV) of China are amongst the top ca...
Understanding the uncertainties associated with streamflow prediction in hydrological modelling has ...
Statistical post-processing for multi-model grand ensemble (GE) hydrologic predictions is necessary,...
Abstract This paper explores the potential for seasonal prediction of hydrological variables that ar...
s u m m a r y Hierarchical Bayesian (HB) modeling allows for multiple sources of uncertainty by fact...
One challenge that faces hydrologists in water resources planning is to predict the catchment's resp...
There is an increasing focus on the usefulness of climate model-based seasonal precipitation forecas...
This is the second paper of a two-part series on introducing an experimental seasonal hydrological f...
Long-term hydrological projections can vary substantially depending on the combination of meteorolog...
Due to the inherent non-stationary and nonlinear characteristics of original streamflow and the comp...
International audienceA nonhomogeneous hidden Markov model (NHMM) is used to stochastically simulate...
Abstract The frequent occurrence of floods during the rainy season is one of the threats in rainfed ...
In terms of climate change and precipitation, there is large interest in how large-scale climatic fe...
In terms of climate change and precipitation, there is large interest in how large-scale climatic fe...
We consider stochastic weather models originally developed for rainfall simulations to build a hiera...
Warm season heavy rainfall events over the Huaihe River Valley (HRV) of China are amongst the top ca...
Understanding the uncertainties associated with streamflow prediction in hydrological modelling has ...
Statistical post-processing for multi-model grand ensemble (GE) hydrologic predictions is necessary,...
Abstract This paper explores the potential for seasonal prediction of hydrological variables that ar...
s u m m a r y Hierarchical Bayesian (HB) modeling allows for multiple sources of uncertainty by fact...
One challenge that faces hydrologists in water resources planning is to predict the catchment's resp...
There is an increasing focus on the usefulness of climate model-based seasonal precipitation forecas...
This is the second paper of a two-part series on introducing an experimental seasonal hydrological f...
Long-term hydrological projections can vary substantially depending on the combination of meteorolog...
Due to the inherent non-stationary and nonlinear characteristics of original streamflow and the comp...
International audienceA nonhomogeneous hidden Markov model (NHMM) is used to stochastically simulate...