In terms of climate change and precipitation, there is large interest in how large-scale climatic features affect regional rainfall amount and rainfall occurrence. Large-scale climate elements need to be downscaled to the regional level for hydrologic applications. Here, a new Nonhomogeneous Hidden Markov Model (NHMM) called the Bayesian-NHMM is presented for downscaling and predicting of multisite daily rainfall during rainy season over the Huaihe River Basin (HRB). The Bayesian-NHMM provides a Bayesian method for parameters estimation. The model avoids the risk to have no solutions for parameter estimation, which often occurs in the traditional NHMM that uses point estimates of parameters. The Bayesian-NHMM accurately captures seasonality...
A Hierarchal Bayesian model is presented for one season-ahead forecasts of summer rainfall and strea...
Downscaled rainfall projections for the Indian summer monsoon are generated using a non-homogeneous ...
We consider stochastic weather models originally developed for rainfall simulations to build a hiera...
In terms of climate change and precipitation, there is large interest in how large-scale climatic fe...
International audienceAmong the statistical downscaling tools available for regional climate simulat...
International audienceA nonhomogeneous hidden Markov model (NHMM) is used to stochastically simulate...
The seasonal predictability of daily rainfall characteristics is examined over 21 hydrologic units i...
The Nonhomogeneous Hidden Markov Model is an established technique that usually provides excellent r...
The non-homogeneous hidden Markov model (NHMM) generates the rainfall observation depends on few wea...
The non-homogeneous hidden Markov model (NHMM) generates the rainfall observation depends on few wea...
Statistical modeling of rainfall in space-time scales is essential in providing information on the b...
Warm season heavy rainfall events over the Huaihe River Valley (HRV) of China are amongst the top ca...
Two new spatio-temporal hidden Markov models (HMM) are introduced in this thesis, with the purpose o...
Knowledge Innovation Program KZCX2-XB2-03;Key Direction Project of Innovation Program KZCX2-YW-127...
Three statistical downscaling methods (conditional resampling statistical downscaling model: CR-SDSM...
A Hierarchal Bayesian model is presented for one season-ahead forecasts of summer rainfall and strea...
Downscaled rainfall projections for the Indian summer monsoon are generated using a non-homogeneous ...
We consider stochastic weather models originally developed for rainfall simulations to build a hiera...
In terms of climate change and precipitation, there is large interest in how large-scale climatic fe...
International audienceAmong the statistical downscaling tools available for regional climate simulat...
International audienceA nonhomogeneous hidden Markov model (NHMM) is used to stochastically simulate...
The seasonal predictability of daily rainfall characteristics is examined over 21 hydrologic units i...
The Nonhomogeneous Hidden Markov Model is an established technique that usually provides excellent r...
The non-homogeneous hidden Markov model (NHMM) generates the rainfall observation depends on few wea...
The non-homogeneous hidden Markov model (NHMM) generates the rainfall observation depends on few wea...
Statistical modeling of rainfall in space-time scales is essential in providing information on the b...
Warm season heavy rainfall events over the Huaihe River Valley (HRV) of China are amongst the top ca...
Two new spatio-temporal hidden Markov models (HMM) are introduced in this thesis, with the purpose o...
Knowledge Innovation Program KZCX2-XB2-03;Key Direction Project of Innovation Program KZCX2-YW-127...
Three statistical downscaling methods (conditional resampling statistical downscaling model: CR-SDSM...
A Hierarchal Bayesian model is presented for one season-ahead forecasts of summer rainfall and strea...
Downscaled rainfall projections for the Indian summer monsoon are generated using a non-homogeneous ...
We consider stochastic weather models originally developed for rainfall simulations to build a hiera...