We introduce a Bayesian multivariate hierarchical framework to estimate a space-time process model for a joint series of monthly extreme temperatures and amounts of rainfall. Data are available for 360 monitoring stations over 60 years, with missing data affecting almost all series. Model components account for spatio-temporal correlation and annual cycles, dependence on covariates and between responses. Spatio-temporal dependence is modeled by the nearest neighbor Gaussian process, response multivariate dependencies are represented by the linear model of coregionalization and effects of annual cycles are included by a circular representation of time. The proposed approach allows imputation of missing values and interpolation of clim...
Statistical Climatology investigates the application of statistics to atmospheric and climate scien...
A large number of hydrological phenomena may be regarded as realizations of space-time random functi...
The paper proposes a Bayesian hierarchical model to scale down and adjust deterministic weather mod...
Circular data arise in many areas of application. Recently, there has been interest in looking at c...
Climate and meteorological data are characterised by many different scales of spatial and temporal v...
The interest for spatial interpolating climatic variables available by means of point measurements, ...
Environmental processes, including climatic impacts in cold regions, are typically acting at multipl...
Classification of meteorological time series is important for the analysis of the climate variabilit...
Knowledge of the spatial and temporal patterns of meteoclimatic variables is one of the crucial poin...
Reconstructing climatic variables in the pre-instrumental period is important to get a correct under...
Despite the fact that the amount of datasets containing long economic time series with a spatial ref...
The aim of this work is to find individual and joint change-points in a large multivariate database ...
Classification of meteorological time series is important for the analysis of the climate variabilit...
The paper proposes a Bayesian hierarchical model to scale down and adjusts deterministic weather mod...
Numerical output from coupled atmosphere-ocean general circulation models is a key tool to investiga...
Statistical Climatology investigates the application of statistics to atmospheric and climate scien...
A large number of hydrological phenomena may be regarded as realizations of space-time random functi...
The paper proposes a Bayesian hierarchical model to scale down and adjust deterministic weather mod...
Circular data arise in many areas of application. Recently, there has been interest in looking at c...
Climate and meteorological data are characterised by many different scales of spatial and temporal v...
The interest for spatial interpolating climatic variables available by means of point measurements, ...
Environmental processes, including climatic impacts in cold regions, are typically acting at multipl...
Classification of meteorological time series is important for the analysis of the climate variabilit...
Knowledge of the spatial and temporal patterns of meteoclimatic variables is one of the crucial poin...
Reconstructing climatic variables in the pre-instrumental period is important to get a correct under...
Despite the fact that the amount of datasets containing long economic time series with a spatial ref...
The aim of this work is to find individual and joint change-points in a large multivariate database ...
Classification of meteorological time series is important for the analysis of the climate variabilit...
The paper proposes a Bayesian hierarchical model to scale down and adjusts deterministic weather mod...
Numerical output from coupled atmosphere-ocean general circulation models is a key tool to investiga...
Statistical Climatology investigates the application of statistics to atmospheric and climate scien...
A large number of hydrological phenomena may be regarded as realizations of space-time random functi...
The paper proposes a Bayesian hierarchical model to scale down and adjust deterministic weather mod...