In the following, we discuss a procedure for interpolating a spatial-temporal stochastic process. We stick to a particular, moderately general model but the approach can be easily transered to other similar problems. The original data, which motivated this work, are measurements of gas concentrations (SO2, NO, O2) and several meteorological parameters (temperature, sun radiation, procipitation, wind speed etc.). These date have been and are still recorded twice every hour at several irregularly located places in the forests of the state Rheinland-Pfalz as part of a program monitoring the air pollution in the forests
Prepared under support of the Dept. of Energy through M.I.T. Energy Laboratory and the Office of Sur...
Geostatistics is a popular class of statistical methods for estimating, or predicting, the value of ...
Short-term forecasts of air pollution levels in big cities are now reported in news-papers and other...
summary:This paper describes a modification of the kriging method for working with the square root t...
Prediction at an unobserved location for spatial and spatial time-series data, also known as Kriging...
This report deals with Kriging, a spatial interpolation-method that enables making predictions of th...
Abstract. A deficiency of kriging is the implicit assumption of second-order stationarity. We presen...
Modeling of spatio-temporal processes is critical in many fields such as environmental sciences, met...
AbstractIn this paper a Bayesian alternative to Kriging is developed. The latter is an important too...
Variograms are used to describe the spatial variability of environmental variables. In this study, t...
Many branches within geography deal with variables that vary not only in space but also in time. The...
We consider the problem of spatial interpolation and outline the theory behind kriging and more spec...
Kriging techniques are regression methods used for evaluation of continuous spatial processes. If th...
<p>We present new spatio-temporal geostatistical modelling and interpolation capabilities of the R p...
Spatiotemporal processes occur in many areas of earth sciences and engineering. However, most of the...
Prepared under support of the Dept. of Energy through M.I.T. Energy Laboratory and the Office of Sur...
Geostatistics is a popular class of statistical methods for estimating, or predicting, the value of ...
Short-term forecasts of air pollution levels in big cities are now reported in news-papers and other...
summary:This paper describes a modification of the kriging method for working with the square root t...
Prediction at an unobserved location for spatial and spatial time-series data, also known as Kriging...
This report deals with Kriging, a spatial interpolation-method that enables making predictions of th...
Abstract. A deficiency of kriging is the implicit assumption of second-order stationarity. We presen...
Modeling of spatio-temporal processes is critical in many fields such as environmental sciences, met...
AbstractIn this paper a Bayesian alternative to Kriging is developed. The latter is an important too...
Variograms are used to describe the spatial variability of environmental variables. In this study, t...
Many branches within geography deal with variables that vary not only in space but also in time. The...
We consider the problem of spatial interpolation and outline the theory behind kriging and more spec...
Kriging techniques are regression methods used for evaluation of continuous spatial processes. If th...
<p>We present new spatio-temporal geostatistical modelling and interpolation capabilities of the R p...
Spatiotemporal processes occur in many areas of earth sciences and engineering. However, most of the...
Prepared under support of the Dept. of Energy through M.I.T. Energy Laboratory and the Office of Sur...
Geostatistics is a popular class of statistical methods for estimating, or predicting, the value of ...
Short-term forecasts of air pollution levels in big cities are now reported in news-papers and other...