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dc.contributor.advisorSun, Ying
dc.contributor.authorMeng, Rui
dc.date.accessioned2016-05-19T08:09:35Z
dc.date.available2016-05-19T08:09:35Z
dc.date.issued2016-05-15
dc.identifier.doi10.25781/KAUST-85F27
dc.identifier.urihttp://hdl.handle.net/10754/609833
dc.description.abstractThe thesis consists of two coherent projects. The first project presents the results of evaluating salinity tolerance in barley using growth curve analysis where different growth trajectories are observed within barley families. The study of salinity tolerance in plants is crucial to understanding plant growth and productivity. Because fully-automated smarthouses with conveyor systems allow non-destructive and high-throughput phenotyping of large number of plants, it is now possible to apply advanced statistical tools to analyze daily measurements and to study salinity tolerance. To compare different growth patterns of barley variates, we use functional data analysis techniques to analyze the daily projected shoot areas. In particular, we apply the curve registration method to align all the curves from the same barley family in order to summarize the family-wise features. We also illustrate how to use statistical modeling to account for spatial variation in microclimate in smarthouses and for temporal variation across runs, which is crucial for identifying traits of the barley variates. In our analysis, we show that the concentrations of sodium and potassium in leaves are negatively correlated, and their interactions are associated with the degree of salinity tolerance. The second project studies change-points detection methods in extremes when multiple time series data are available. Motived by the scientific question of whether the chances to experience extreme weather are different in different seasons of a year, we develop a change-points detection model to study changes in extremes or in the tail of a distribution. Most of existing models identify seasons from multiple yearly time series assuming a season or a change-point location remains exactly the same across years. In this work, we propose a random effect model that allows the change-point to vary from year to year, following a given distribution. Both parametric and nonparametric methods are developed for detecting single and multiple change-points, and their performance is compared by simulation studies. The proposed method is illustrated using sea surface temperature data and the tail distributions before and after the change-point from two models, with and without random effects are compared.
dc.language.isoen
dc.subjectfunctional data
dc.subjectfitting
dc.subjectfunctional data registration
dc.subjectANOVA model
dc.subjectalgorithm
dc.subjectEM
dc.titleGrowth Curve Analysis and Change-Points Detection in Extremes
dc.typeThesis
dc.contributor.departmentComputer, Electrical and Mathematical Sciences and Engineering (CEMSE) Division
dc.contributor.departmentApplied Mathematics and Computational Science Program
thesis.degree.grantorKing Abdullah University of Science and Technology
dc.contributor.committeememberGenton, Marc G.
dc.contributor.committeememberHuser, Raphaël
dc.contributor.committeememberTester, Mark A.
thesis.degree.disciplineApplied Mathematics and Computational Science
thesis.degree.nameMaster of Science
refterms.dateFOA2018-06-13T17:15:57Z


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