Empirical correction of a toy climate model.

@article{Allgaier2012EmpiricalCO,
  title={Empirical correction of a toy climate model.},
  author={N. Allgaier and K. D. Harris and C. Danforth},
  journal={Physical review. E, Statistical, nonlinear, and soft matter physics},
  year={2012},
  volume={85 2 Pt 2},
  pages={
          026201
        }
}
Improving the accuracy of forecast models for physical systems such as the atmosphere is a crucial ongoing effort. The primary focus of recent research on these highly nonlinear systems has been errors in state estimation, but as that error has been successfully diminished, the role of model error in forecast uncertainty has duly increased. The present study is an investigation of an empirical model correction procedure involving the comparison of short forecasts with a reference "truth" system… Expand
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Article history: Received 24 May 2013 Received in revised form 17 June 2013 Accepted 17 June 2013 Available online 9 July 2013
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