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Validation of sea ice models using an uncertainty‐based distance metric for multiple model variables
Author(s) -
UrregoBlanco Jorge R.,
Hunke Elizabeth C.,
Urban Nathan M.,
Jeffery Nicole,
Turner Adrian K.,
Langenbrunner James R.,
Booker Jane M.
Publication year - 2017
Publication title -
journal of geophysical research: oceans
Language(s) - English
Resource type - Journals
eISSN - 2169-9291
pISSN - 2169-9275
DOI - 10.1002/2016jc012602
Subject(s) - metric (unit) , parametric statistics , statistic , parametric model , variance (accounting) , computer science , variable (mathematics) , statistics , statistical model , probabilistic logic , mathematics , econometrics , engineering , mathematical analysis , operations management , accounting , business
We implement a variance‐based distance metric ( D n ) to objectively assess skill of sea ice models when multiple output variables or uncertainties in both model predictions and observations need to be considered. The metric compares observations and model data pairs on common spatial and temporal grids improving upon highly aggregated metrics (e.g., total sea ice extent or volume) by capturing the spatial character of model skill. The D n metric is a gamma‐distributed statistic that is more general than the χ 2 statistic commonly used to assess model fit, which requires the assumption that the model is unbiased and can only incorporate observational error in the analysis. The D n statistic does not assume that the model is unbiased, and allows the incorporation of multiple observational data sets for the same variable and simultaneously for different variables, along with different types of variances that can characterize uncertainties in both observations and the model. This approach represents a step to establish a systematic framework for probabilistic validation of sea ice models. The methodology is also useful for model tuning by using the D n metric as a cost function and incorporating model parametric uncertainty as part of a scheme to optimize model functionality. We apply this approach to evaluate different configurations of the standalone Los Alamos sea ice model (CICE) encompassing the parametric uncertainty in the model, and to find new sets of model configurations that produce better agreement than previous configurations between model and observational estimates of sea ice concentration and thickness.