A spatial analysis of multivariate output from regional climate models
Climate models have become an important tool in the study of climate and climate change, and ensemble experiments consisting of multiple climate-model runs are used in studying and quantifying the uncertainty in climate-model output. However, there are often only a limited number of model runs available for a particular experiment, and one of the statistical challenges is to characterize the distribution of the model output. To that end, we have developed a multivariate hierarchical approach, at the heart of which is a new representation of a multivariate Markov random field. This approach allows for flexible modeling of the multivariate spatial dependencies, including the cross-dependencies between variables. We demonstrate this statistical model on an ensemble arising from a regional-climate-model experiment over the western United States, and we focus on the projected change in seasonal temperature and precipitation over the next 50 years.
document
http://n2t.net/ark:/85065/d7jm2bx9
eng
geoscientificInformation
Text
publication
2016-01-01T00:00:00Z
publication
2011-03-01T00:00:00Z
Copyright 2011 Institute of Mathematical Statistics
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