This paper discusses the use of robust geostatistical methods on a data set of rainfall measurements in Switzerland. The variables are detrended via non-parametric estimation penalized with a smoothing parameter. The optimal trend is computed with a smoothing parameter based on cross-validation. Then, the variogram is estimated by a highly robust estimator of scale. The parametric variogram model is fitted by generalized least squares, thus taking account of the variance-covariance structure of the variogram estimates. Comparison of kriging with the initial measurements is completed and yields interesting results. All these computations are done with the software S+SpatialStats, extended with new functions in S+ that are made available
Abstract: Application of geostatistical techniques that should improve rainfall estimation by integr...
The areal modeling of the extremes of a natural process such as rainfall or temperature is important...
The areal modeling of the extremes of a natural process such as rainfall or temperature is important...
Rainfall can be modeled as a spatially correlated random field superimposed on a background mean val...
Rainfall can be modeled as a spatially correlated random field superimposed on a background mean val...
Geostatistics is a popular class of statistical methods for estimating, or predicting, the value of ...
This paper introduces the geostatistical method. Originally devised to treat problems that arise whe...
Modelling spatial covariance is an essential part of all geostatistical methods. Traditionally, para...
peer reviewedSpatial interpolation of precipitation data is of great importance for hydrological mod...
<p>this paper was to develop different algorithms of spatial interpolation for daily rainfall on 1 k...
In this study we develop a method to estimate the spatially averaged rainfall intensity together wit...
This work provides a class of non-Gaussian spatial Matern fields which are useful for analysing geos...
In this study we develop a method to estimate the spatially averaged rainfall intensity together wit...
In this study we develop a method to estimate the spatially averaged rainfall intensity together wit...
Geostatistical methods have been widely used for quantitative precipitation estimation (QPE) based o...
Abstract: Application of geostatistical techniques that should improve rainfall estimation by integr...
The areal modeling of the extremes of a natural process such as rainfall or temperature is important...
The areal modeling of the extremes of a natural process such as rainfall or temperature is important...
Rainfall can be modeled as a spatially correlated random field superimposed on a background mean val...
Rainfall can be modeled as a spatially correlated random field superimposed on a background mean val...
Geostatistics is a popular class of statistical methods for estimating, or predicting, the value of ...
This paper introduces the geostatistical method. Originally devised to treat problems that arise whe...
Modelling spatial covariance is an essential part of all geostatistical methods. Traditionally, para...
peer reviewedSpatial interpolation of precipitation data is of great importance for hydrological mod...
<p>this paper was to develop different algorithms of spatial interpolation for daily rainfall on 1 k...
In this study we develop a method to estimate the spatially averaged rainfall intensity together wit...
This work provides a class of non-Gaussian spatial Matern fields which are useful for analysing geos...
In this study we develop a method to estimate the spatially averaged rainfall intensity together wit...
In this study we develop a method to estimate the spatially averaged rainfall intensity together wit...
Geostatistical methods have been widely used for quantitative precipitation estimation (QPE) based o...
Abstract: Application of geostatistical techniques that should improve rainfall estimation by integr...
The areal modeling of the extremes of a natural process such as rainfall or temperature is important...
The areal modeling of the extremes of a natural process such as rainfall or temperature is important...