Geostatistical Space-Time Models, Stationarity, Separability, and Full Symmetry 论文
2006Monographs on statistics and applied probability引用 272
Spatial and Panel Data AnalysisSoil Geostatistics and MappingGeochemistry and Geologic Mapping
摘要
Geostatistical approaches to modeling spatio-temporal data rely on parametric covariance models and rather stringent assumptions, such as stationarity, separability and full symmetry. This paper reviews recent advances in the literature on space-time covariance functions in light of the aforementioned notions, which are illustrated using wind data from Ireland. Experiments with time-forward kriging predictors suggest that the use of more complex and more realistic covariance models results in improved predictive performance.