Modified Kernel Density Estimators for Gridded Estimation of Precipitation Climatologies

Gespeichert in:
Bibliographische Detailangaben
Titel: Modified Kernel Density Estimators for Gridded Estimation of Precipitation Climatologies
Autoren: Benton, Gregory
Quelle: Applied Mathematics Graduate Theses & Dissertations
Verlagsinformationen: CU Scholar
Publikationsjahr: 2018
Bestand: University of Colorado, Boulder: CU Scholar
Schlagwörter: gridded precipitation, kernel density, precipitation climatology, network, estimation, Applied Statistics, Hydrology
Beschreibung: Estimation of gridded precipitation is a major point of interest in climatological and hydro- logical research. Using a novel approach based around kernel density estimation we attempt to improve on a currently available estimators of gridded precipitation in both accuracy and under- standing uncertainty in predictions by generating robust precipitation climatologies. The method is constructed and validated using the United States Historical Climatology Network dataset covering the continental United States with sparse and irregular observation stations and accurate probability distributions that capture seasonal variance in the data are generated. Spatial estimates of local climatologies at arbitrary locations, both in and out of the observational network, are analyzed and an accurate method using generalized additive models is developed. Finally a preliminary analysis of gridded estimation is discussed and serves as a motivation for further research.
Publikationsart: text
Dateibeschreibung: application/pdf
Sprache: unknown
Relation: https://scholar.colorado.edu/appm_gradetds/111; https://scholar.colorado.edu/cgi/viewcontent.cgi?article=1121&context=appm_gradetds
Verfügbarkeit: https://scholar.colorado.edu/appm_gradetds/111
https://scholar.colorado.edu/cgi/viewcontent.cgi?article=1121&context=appm_gradetds
Dokumentencode: edsbas.2AB9F2D0
Datenbank: BASE