In various scientific fields properties are represented by functions varying over space. In this paper, we present a methodology to make spatial predictions at non-data locations when the data values are functions. In particular, we propose both an estimator of the spatial correlation and a functional kriging predictor. We adapt an optimization criterion used in multivariable spatial prediction in order to estimate the kriging parameters. The curves are pre-processed by a non-parametric fitting, where the smoothing parameters are chosen by cross-validation. The approach is illustrated by analyzing real data based on soil penetration resistances
In this survey we present various classical geostatistical prediction methods with a focus on interp...
Geostatistical techniques for functional data were introduced by Goulard and Voltz (1993), but have ...
Geostatistical techniques for functional data were introduced by Goulard and Voltz (1993), but have ...
In various scientific fields properties are represented by functions varying over space. In this pap...
We present a methodology to perform spatial prediction when measured data are curves. In particular...
We present a methodology to perform spatial prediction when measured data are curves. In particular,...
We present a methodology to perform spatial prediction when measured data are curves. In particular,...
Spatially correlated functional data is present in a wide range of environmental disciplines and, in...
Spatially correlated functional data is present in a wide range of environmental disciplines and, in...
Kriging and cokriging and their several related versions are techniques widely known and used in spa...
Kriging and cokriging and their several related versions are techniques widely known and used in spa...
Uncertainty evaluation for spatial prediction of curves remains an open issue in the functional data...
This report deals with Kriging, a spatial interpolation-method that enables making predictions of th...
This paper is focus on spatial functional variables whose observations are a set of spatially correl...
This paper is focus on spatial functional variables whose observations are a set of spatially correl...
In this survey we present various classical geostatistical prediction methods with a focus on interp...
Geostatistical techniques for functional data were introduced by Goulard and Voltz (1993), but have ...
Geostatistical techniques for functional data were introduced by Goulard and Voltz (1993), but have ...
In various scientific fields properties are represented by functions varying over space. In this pap...
We present a methodology to perform spatial prediction when measured data are curves. In particular...
We present a methodology to perform spatial prediction when measured data are curves. In particular,...
We present a methodology to perform spatial prediction when measured data are curves. In particular,...
Spatially correlated functional data is present in a wide range of environmental disciplines and, in...
Spatially correlated functional data is present in a wide range of environmental disciplines and, in...
Kriging and cokriging and their several related versions are techniques widely known and used in spa...
Kriging and cokriging and their several related versions are techniques widely known and used in spa...
Uncertainty evaluation for spatial prediction of curves remains an open issue in the functional data...
This report deals with Kriging, a spatial interpolation-method that enables making predictions of th...
This paper is focus on spatial functional variables whose observations are a set of spatially correl...
This paper is focus on spatial functional variables whose observations are a set of spatially correl...
In this survey we present various classical geostatistical prediction methods with a focus on interp...
Geostatistical techniques for functional data were introduced by Goulard and Voltz (1993), but have ...
Geostatistical techniques for functional data were introduced by Goulard and Voltz (1993), but have ...