International audienceTemperature estimation methods usually involve regression followed by kriging of residuals (residual kriging). Despite the performance of such models, there is invariably a residual which is not necessarily unpredictable because it may still be correlated in time. We set out to analyse such residuals through resort to autoregressive processes. It is shown that the optimal period varies depending on whether it is identified by functions of the form resd = f(resd−1, resd−2, ..., resd−p) or by partial correlations. Autoregressive processes significantly improve estimates, which are evaluated by cross-validations. Finally, the two following points are discussed: (1) the assumptions of the autoregressive model on the residu...
This paper analyzes the validity of temperature maps obtained by means of single and mixed interpola...
In order to identify systematic changes in regional and global mean temperatures, it is important to...
Abstract: We compare two different modelling strategies for continuous space discrete time data. The...
International audienceTemperature estimation methods usually involve regression followed by kriging ...
We propose a new Kalman filter algorithm to provide a formal statistical analysis of space–time data...
We propose a spatial-temporal stochastic model for daily average temperature data. First we build a ...
We propose a model to describe the mean function as well as the spatio-temporal covariance structur...
From previous analysis of the daily minimum, meam and maximum temperatures in Modena, Italy, over mo...
We propose a spatial-temporal stochastic model for daily average surface temperature data. First, we...
We propose a model to describe the mean function as well as the spatio-temporal covariance structure...
Part 1 presented a hierarchical Bayesian approach to reconstructing the spa-tial pattern of a climat...
This study suggests a stochastic model for time series of daily zonal (circumpolar) mean stratospher...
In this article we are interested in the time series modeling of the average monthly maximum tempera...
The current study is intended to investigate the applicability of a special class of time series mod...
In this thesis, spatio-temporal temperature trends are estimated based on monthly average temperatur...
This paper analyzes the validity of temperature maps obtained by means of single and mixed interpola...
In order to identify systematic changes in regional and global mean temperatures, it is important to...
Abstract: We compare two different modelling strategies for continuous space discrete time data. The...
International audienceTemperature estimation methods usually involve regression followed by kriging ...
We propose a new Kalman filter algorithm to provide a formal statistical analysis of space–time data...
We propose a spatial-temporal stochastic model for daily average temperature data. First we build a ...
We propose a model to describe the mean function as well as the spatio-temporal covariance structur...
From previous analysis of the daily minimum, meam and maximum temperatures in Modena, Italy, over mo...
We propose a spatial-temporal stochastic model for daily average surface temperature data. First, we...
We propose a model to describe the mean function as well as the spatio-temporal covariance structure...
Part 1 presented a hierarchical Bayesian approach to reconstructing the spa-tial pattern of a climat...
This study suggests a stochastic model for time series of daily zonal (circumpolar) mean stratospher...
In this article we are interested in the time series modeling of the average monthly maximum tempera...
The current study is intended to investigate the applicability of a special class of time series mod...
In this thesis, spatio-temporal temperature trends are estimated based on monthly average temperatur...
This paper analyzes the validity of temperature maps obtained by means of single and mixed interpola...
In order to identify systematic changes in regional and global mean temperatures, it is important to...
Abstract: We compare two different modelling strategies for continuous space discrete time data. The...