| A MULTIVARIATE SEMIPARAMETRIC BAYESIAN SPATIAL MODELING FRAMEWORK FOR
HURRICANE SURFACE WIND FIELDS |
Brian Reich , Ph.D.
Department of Statistics, North Carolina State University
4:00 p.m.; February 8, 2008
ABSTRACT
Storm surge, the onshore rush of sea water caused by the high winds and
low pressure associated with a hurricane, can compound the effects of
inland flooding caused by rainfall, leading to loss of property and loss
of
life for residents of coastal areas. Numerical ocean models are essential
for creating storm surge forecasts for coastal areas. These models are
driven primarily by the surface wind forcings. Currently, the gridded wind
fields used by ocean models are specified by deterministic formulas that
are based on the central pressure and location of the storm center. While
these equations incorporate important physical knowledge about the
structure of hurricane surface wind fields, they cannot always capture the
asymmetric and dynamic nature of a hurricane. A new Bayesian multivariate
spatial statistical modeling framework is introduced combining data with
physical knowledge about the wind fields to improve the estimation of the
wind vectors. Many spatial models assume the data follow a Gaussian
distribution. However, this may be overly-restrictive for wind fields data
which often display erratic behavior, such as sudden changes in time or
space. In this paper we develop a semiparametric multivariate spatial
model for these data. Our model builds on the stick-breaking prior, which
is frequently used in Bayesian modeling to capture uncertainty in the
parametric form of an outcome. The stick-breaking prior is extended to the
spatial setting by assigning each location a different, unknown
distribution, and smoothing the distributions in space with a series
of kernel functions. This semiparametric spatial model is shown to improve
prediction compared to usual Bayesian Kriging methods for the wind field of
Hurricane Ivan.
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