Department of Statistics
439 West Hall, 1085 South University Ave., Ann Arbor, MI 48109-1107
Phone: 734.763.3519Fax: 734.763.4676
Bobby Yuen
PhD student, Department of Statistics, University of Michigan
Title: A Gauss-Pareto process model for spatial prediction of extreme precipitation
In order to develop adaptive strategies for dealing with consequences of extreme precipitation such as insufficient drainage and various aspects of flooding, it is necessary to be able to estimate extremes at unobserved sites. We introduce a hierarchical Gauss-Pareto model for spatial prediction of precipitation given nearby observations that are extreme. The model belongs to the max-domain of attraction of popular Brown-Resnick max-stable processes (Brown and Resnick, 1977; Kabluchko et al., 2009) and retains the essential dependence structure of their corresponding generalized Pareto processes (Ferreira and DeHaan, 2012). An MCMC algorithm is developed for inference. The algorithm allows for left censored data from precipitation that accumulates below instrument precision, which often happens despite nearby observations that are extreme. The model and methodology is applied to summer extreme 24 hour cumulative precipitation over south central Sweden. We discuss some extensions and challenges for future work.
For questions regarding the Statistics Student Seminar or if you are interested in presenting, please contact Joonha Park(joonhap@umich.edu) or Jingshen Wang(jshwang@umich.edu).