Tracking climate models Journal Article uri icon

Overview

abstract

  • AbstractClimate models are complex mathematical models designed by meteorologists, geophysicists, and climate scientists, and run as computer simulations, to predict climate. There is currently high variance among the predictions of 20 global climate models, from various laboratories around the world, that inform the Intergovernmental Panel on Climate Change (IPCC). Given temperature predictions from 20 IPCC global climate models, and over 100 years of historical temperature data, we track the changing sequence of which model predicts best at any given time. We use an algorithm due to Monteleoni and Jaakkola that models the sequence of observations using a hierarchical learner, based on a set of generalized Hidden Markov Models, where the identity of the current best climate model is the hidden variable. The transition probabilities between climate models are learned online, simultaneous to tracking the temperature predictions.On historical global mean temperature data, our online learning algorithm's average prediction loss nearly matches that of the best performing climate model in hindsight. Moreover, its performance surpasses that of the average model prediction, which is the default practice in climate science, the median prediction, and least squares linear regression. We also experimented on climate model predictions through the year 2098. Simulating labels with the predictions of any one climate model, we found significantly improved performance using our online learning algorithm with respect to the other climate models and techniques. To complement our global results, we also ran experiments on IPCC global climate model temperature predictions for the specific geographic regions of Africa, Europe, and North America. On historical data, at both annual and monthly time‐scales, and in future simulations, our algorithm typically outperformed both the best climate model per region and linear regression. Notably, our algorithm consistently outperformed the average prediction over models, the current benchmark. © 2011 Wiley Periodicals, Inc. Statistical Analysis and Data Mining 4: 372–392, 2011

publication date

  • August 1, 2011

has restriction

  • closed

Date in CU Experts

  • December 21, 2021 4:20 AM

Full Author List

  • Monteleoni C; Schmidt GA; Saroha S; Asplund E

author count

  • 4

Other Profiles

International Standard Serial Number (ISSN)

  • 1932-1864

Electronic International Standard Serial Number (EISSN)

  • 1932-1872

Additional Document Info

start page

  • 372

end page

  • 392

volume

  • 4

issue

  • 4