Spatial Analysis to Quantify Numerical Model Bias and Dependence
- 1 September 2008
- journal article
- Published by Taylor & Francis in Journal of the American Statistical Association
- Vol. 103 (483) , 934-947
- https://doi.org/10.1198/016214507000001265
Abstract
A limited number of complex numerical models that simulate the Earth's atmosphere, ocean, and land processes are the primary tool to study how climate may change over the next century due to anthropogenic emissions of greenhouse gases. A standard assumption is that these climate models are random samples from a distribution of possible models centered around the true climate. This implies that agreement with observations and the predictive skill of climate models will improve as more models are added to an average of the models. In this article we present a statistical methodology to quantify whether climate models are indeed unbiased and whether and where model biases are correlated across models. We consider the simulated mean state and the simulated trend over the period 1970–1999 for Northern Hemisphere summer and winter temperature. The key to the statistical analysis is a spatial model for the bias of each climate model and the use of kernel smoothing to estimate the correlations of biases across di...Keywords
This publication has 1 reference indexed in Scilit:
- Kernel Smoothing of Data With Correlated ErrorsJournal of the American Statistical Association, 1990