Modeling and computations of multivariate datasets in space and time

dc.contributor.authorDemel, Samuel Seth
dc.date.accessioned2013-04-24T19:28:23Z
dc.date.available2013-04-24T19:28:23Z
dc.date.graduationmonthMayen_US
dc.date.issued2013-04-24
dc.date.published2013en_US
dc.description.abstractSpatio-temporal and/or multivariate dependence naturally occur in datasets obtained in various disciplines; such as atmospheric sciences, meteorology, engineering and agriculture. There is a great deal of need to effectively model the complex dependence and correlated structure exhibited in these datasets. For this purpose, this dissertation studies methods and application of the spatio-temporal modeling and multivariate computation. First, a collection of spatio-temporal functions is proposed to model spatio-temporal processes which are continuous in space and discrete over time. Theoretically, we derived the necessary and sufficient conditions to ensure the model validity. On the other hand, the possibility of taking the advantage of well-established time series and spatial statistics tools makes it relatively easy to identify and fit the proposed model in practice. The spatio-temporal models with some ARMA discrete temporal margin are fitted to Kansas precipitation and Irish wind datasets for estimation or prediction, and compared with some general existing parametric models in terms of likelihood and mean squared prediction error. Second, to deal with the immense computational burden of statistical inference for multi- ple attributes recorded at a large number of locations, we develop Wendland-type compactly supported covariance matrix function models and propose multivariate covariance tapering technique with those functions for computation reduction. Simulation studies and US tem- perature data are used to illustrate applications of the proposed multivariate tapering and computational gain in spatial cokriging. Finally, to study the impact of weather change on corn yield in Kansas, we develop a spatial functional linear regression model accounting for the fact that weather data were recorded daily or hourly as opposed to the yearly crop yield data and the underlying spatial autocorrelation. The parameter function is estimated under the functional data analysis framework and its characteristics are investigated to show the influential factor and critical period of weather change dictating crop yield during the growing season.en_US
dc.description.advisorJuan Duen_US
dc.description.degreeDoctor of Philosophyen_US
dc.description.departmentDepartment of Statisticsen_US
dc.description.levelDoctoralen_US
dc.identifier.urihttp://hdl.handle.net/2097/15578
dc.language.isoen_USen_US
dc.publisherKansas State Universityen
dc.subjectSpatio-temporal covariance modelingen_US
dc.subjectMultivariate taperingen_US
dc.subjectSpatial functional linear modelen_US
dc.subject.umiStatistics (0463)en_US
dc.titleModeling and computations of multivariate datasets in space and timeen_US
dc.typeDissertationen_US

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