Articles | Volume 10, issue 4
https://doi.org/10.5194/gmd-10-1789-2017
https://doi.org/10.5194/gmd-10-1789-2017
Methods for assessment of models
 | 
27 Apr 2017
Methods for assessment of models |  | 27 Apr 2017

Tuning without over-tuning: parametric uncertainty quantification for the NEMO ocean model

Daniel B. Williamson, Adam T. Blaker, and Bablu Sinha

Related authors

Emulation of high-resolution land surface models using sparse Gaussian processes with application to JULES
Evan Baker, Anna B. Harper, Daniel Williamson, and Peter Challenor
Geosci. Model Dev., 15, 1913–1929, https://doi.org/10.5194/gmd-15-1913-2022,https://doi.org/10.5194/gmd-15-1913-2022, 2022
Short summary

Related subject area

Climate and Earth system modeling
G6-1.5K-SAI: a new Geoengineering Model Intercomparison Project (GeoMIP) experiment integrating recent advances in solar radiation modification studies
Daniele Visioni, Alan Robock, Jim Haywood, Matthew Henry, Simone Tilmes, Douglas G. MacMartin, Ben Kravitz, Sarah J. Doherty, John Moore, Chris Lennard, Shingo Watanabe, Helene Muri, Ulrike Niemeier, Olivier Boucher, Abu Syed, Temitope S. Egbebiyi, Roland Séférian, and Ilaria Quaglia
Geosci. Model Dev., 17, 2583–2596, https://doi.org/10.5194/gmd-17-2583-2024,https://doi.org/10.5194/gmd-17-2583-2024, 2024
Short summary
Modeling the effects of tropospheric ozone on the growth and yield of global staple crops with DSSAT v4.8.0
Jose Rafael Guarin, Jonas Jägermeyr, Elizabeth A. Ainsworth, Fabio A. A. Oliveira, Senthold Asseng, Kenneth Boote, Joshua Elliott, Lisa Emberson, Ian Foster, Gerrit Hoogenboom, David Kelly, Alex C. Ruane, and Katrina Sharps
Geosci. Model Dev., 17, 2547–2567, https://doi.org/10.5194/gmd-17-2547-2024,https://doi.org/10.5194/gmd-17-2547-2024, 2024
Short summary
A one-dimensional urban flow model with an eddy-diffusivity mass-flux (EDMF) scheme and refined turbulent transport (MLUCM v3.0)
Jiachen Lu, Negin Nazarian, Melissa Anne Hart, E. Scott Krayenhoff, and Alberto Martilli
Geosci. Model Dev., 17, 2525–2545, https://doi.org/10.5194/gmd-17-2525-2024,https://doi.org/10.5194/gmd-17-2525-2024, 2024
Short summary
DCMIP2016: the tropical cyclone test case
Justin L. Willson, Kevin A. Reed, Christiane Jablonowski, James Kent, Peter H. Lauritzen, Ramachandran Nair, Mark A. Taylor, Paul A. Ullrich, Colin M. Zarzycki, David M. Hall, Don Dazlich, Ross Heikes, Celal Konor, David Randall, Thomas Dubos, Yann Meurdesoif, Xi Chen, Lucas Harris, Christian Kühnlein, Vivian Lee, Abdessamad Qaddouri, Claude Girard, Marco Giorgetta, Daniel Reinert, Hiroaki Miura, Tomoki Ohno, and Ryuji Yoshida
Geosci. Model Dev., 17, 2493–2507, https://doi.org/10.5194/gmd-17-2493-2024,https://doi.org/10.5194/gmd-17-2493-2024, 2024
Short summary
Interactions between atmospheric composition and climate change – progress in understanding and future opportunities from AerChemMIP, PDRMIP, and RFMIP
Stephanie Fiedler, Vaishali Naik, Fiona M. O'Connor, Christopher J. Smith, Paul Griffiths, Ryan J. Kramer, Toshihiko Takemura, Robert J. Allen, Ulas Im, Matthew Kasoar, Angshuman Modak, Steven Turnock, Apostolos Voulgarakis, Duncan Watson-Parris, Daniel M. Westervelt, Laura J. Wilcox, Alcide Zhao, William J. Collins, Michael Schulz, Gunnar Myhre, and Piers M. Forster
Geosci. Model Dev., 17, 2387–2417, https://doi.org/10.5194/gmd-17-2387-2024,https://doi.org/10.5194/gmd-17-2387-2024, 2024
Short summary

Cited articles

Beck, J. and Guillas, S.: Sequential design with Mutual Information for Computer Experiments (MICE): Emulation of a Tsunami model, arXiv, 2015.
Brynjarsdottir, J. and O'Hagan, A.: Learning about physical parameters: The importance of model discrepancy, Inverse Prob., 30, 114007 24 pp., 2014.
Conti, S., Gosling, J. P., Oakley, J. E., and O'Hagan, A.: Gaussian process emulation of dynamic computer codes, Biometrika, 96, 663–676, 2009.
Craig, P. S., Goldstein, M., Seheult, A. H., and Smith, J. A.: Bayes Linear Strategies for Matching Hydrocarbon Reservoir History, in: Bayesian Statistics 5, edited by: Bernado, J. M., Berger, J. O., Dawid, A. P., and Smith, A. F. M., Oxford University Press, 69–95, 1996.
Download
Short summary
We present a method from the statistical science literature to assist in the tuning of global climate models submitted to CMIP. We apply the method to the NEMO ocean model and find choices of its free parameters that lead to improved representations of depth integrated global mean temperature and salinity. We argue against automatic tuning procedures that involve optimising certain outputs of a model and explain why our method avoids common difficulties with/arguments against automatic tuning.