In climate science, collections of climate model output, usually referred to as ensembles, are commonly used devices to study uncertainty in climate model experiments. The ensemble members may reflect variation in initial conditions, different physics implementations, or even entirely different climate models. However, there is a need to deliver a unified product based on the ensemble members that reflects the information contained in whole of the ensemble. We propose a technique for creating linear combinations of ensemble members where the weights are constructed from estimates of variation and correlation both within and between ensemble members. At the heart of this approach is a Bayesian hierarchical model that allows for estimation of...
A Bayesian statistical model is proposed that combines information from a multi-model ensemble of at...
Global Climate Models are the main tools for climate projections. Since many models exist, it is com...
We describe a method for eliminating double counting in multi-model ensemble forecasts. The method i...
End users studying impacts and risks caused by human-induced climate change are often presented with...
Multi-model ensembles are commonly used in climate prediction to create a set of independent estimat...
This is the final version of the article. Available from the American Meteorological Society via the...
The representation of physical processes by a climate model depends on its structure, numerical sche...
Recent coordinated efforts, in which numerous general circulation climate models have been run for a...
A Bayesian statistical model is proposed that combines information from a multimodel ensemble of atm...
This thesis is concerned with uncertainty quantification when interpreting ensembles of climate mode...
PublishedJournal ArticleWe investigate the performance of the newest generation multi-model ensemble...
Can today's global climate model ensembles characterize the 21st century climate in their own 'model...
AbstractFuture water availability or crop yield studies, tied to statistics of river flow, precipita...
The Bayesian model averaging (BMA) method has been widely used for generating probabilistic climate ...
A Bayesian statistical model is proposed that combines information from a multi-model ensemble of at...
A Bayesian statistical model is proposed that combines information from a multi-model ensemble of at...
Global Climate Models are the main tools for climate projections. Since many models exist, it is com...
We describe a method for eliminating double counting in multi-model ensemble forecasts. The method i...
End users studying impacts and risks caused by human-induced climate change are often presented with...
Multi-model ensembles are commonly used in climate prediction to create a set of independent estimat...
This is the final version of the article. Available from the American Meteorological Society via the...
The representation of physical processes by a climate model depends on its structure, numerical sche...
Recent coordinated efforts, in which numerous general circulation climate models have been run for a...
A Bayesian statistical model is proposed that combines information from a multimodel ensemble of atm...
This thesis is concerned with uncertainty quantification when interpreting ensembles of climate mode...
PublishedJournal ArticleWe investigate the performance of the newest generation multi-model ensemble...
Can today's global climate model ensembles characterize the 21st century climate in their own 'model...
AbstractFuture water availability or crop yield studies, tied to statistics of river flow, precipita...
The Bayesian model averaging (BMA) method has been widely used for generating probabilistic climate ...
A Bayesian statistical model is proposed that combines information from a multi-model ensemble of at...
A Bayesian statistical model is proposed that combines information from a multi-model ensemble of at...
Global Climate Models are the main tools for climate projections. Since many models exist, it is com...
We describe a method for eliminating double counting in multi-model ensemble forecasts. The method i...