M.S. University of Hawaii at Manoa 2011.Includes bibliographical references.The objective of this thesis is to build, calibrate and test nonlinear statistical models in an attempt to find the optimal relationship between large-scale atmospheric variables provided by coarse resolution global models and station specific heavy precipitation data on the island of Oahu, Hawaiʻi. The models will be calibrated using NCEP reanalysis II data and tested with an independent data set for model verification. After the models are adequately calibrated and tested, GCM data are used as input into the calibrated statistical models for the period 2011-2040. A BCa bootstrap resampling method is used to provide 95% confidence intervals of the storm frequency a...
General circulation models (GCMs) have been employed by climate agencies to predict future climate c...
Six statistical and two dynamical downscaling models were compared with regard to their ability to d...
AbstractIn this work we perform a statistical downscaling by applying a CDF transformation function ...
Hawaii’s high and steep topography leads to pronounced small scale variations in climate and this ma...
In this article, a dynamical downscaling (DD) procedure is proposed to downscale tropical cyclones (...
The pseudo-global-warming (PGW) method was applied to the Hawaii Regional Climate Model (HRCM) to dy...
Several statistical downscaling models have been developed in the past couple of decades to assess t...
Abstract: Future climate projections of Global Climate Models (GCMs) under different scenarios are u...
Over the past decade, statistical procedures have been employed to downscale the outputs from global...
ABSTRACT: To overcome poor spatial and physical problems of general circlulation models in the futur...
In this work we perform a statistical downscaling by applying a CDF transformation function to local...
Downscaling of climate projections is the most adapted method to assess the impacts of climate chang...
Water resource managers planning for the adaptation to future events of extreme precipitation now ha...
A 20-yr simulation with a fine-resolution regional atmospheric model for projected late twenty-first...
ABSTRACT: Trends of annual maximum 1-day precipitation in three major Hawaiian Islands are investiga...
General circulation models (GCMs) have been employed by climate agencies to predict future climate c...
Six statistical and two dynamical downscaling models were compared with regard to their ability to d...
AbstractIn this work we perform a statistical downscaling by applying a CDF transformation function ...
Hawaii’s high and steep topography leads to pronounced small scale variations in climate and this ma...
In this article, a dynamical downscaling (DD) procedure is proposed to downscale tropical cyclones (...
The pseudo-global-warming (PGW) method was applied to the Hawaii Regional Climate Model (HRCM) to dy...
Several statistical downscaling models have been developed in the past couple of decades to assess t...
Abstract: Future climate projections of Global Climate Models (GCMs) under different scenarios are u...
Over the past decade, statistical procedures have been employed to downscale the outputs from global...
ABSTRACT: To overcome poor spatial and physical problems of general circlulation models in the futur...
In this work we perform a statistical downscaling by applying a CDF transformation function to local...
Downscaling of climate projections is the most adapted method to assess the impacts of climate chang...
Water resource managers planning for the adaptation to future events of extreme precipitation now ha...
A 20-yr simulation with a fine-resolution regional atmospheric model for projected late twenty-first...
ABSTRACT: Trends of annual maximum 1-day precipitation in three major Hawaiian Islands are investiga...
General circulation models (GCMs) have been employed by climate agencies to predict future climate c...
Six statistical and two dynamical downscaling models were compared with regard to their ability to d...
AbstractIn this work we perform a statistical downscaling by applying a CDF transformation function ...