Skill metrics for confronting global upper ocean ecosystem-biogeochemistry models against field and remote sensing data

Scott C. Doney, Ivan Lima, J. Keith Moore, Keith Lindsay, Michael J. Behrenfeld, Toby K. Westberry, Natalie Mahowald, David M. Glover, Taro Takahashi

Research output: Contribution to journalArticlepeer-review

179 Scopus citations

Abstract

We present a generalized framework for assessing the skill of global upper ocean ecosystem-biogeochemical models against in-situ field data and satellite observations. We illustrate the approach utilizing a multi-decade (1979-2004) hindcast experiment conducted with the Community Climate System Model (CCSM-3) ocean carbon model. The CCSM-3 ocean carbon model incorporates a multi-nutrient, multi-phytoplankton functional group ecosystem module coupled with a carbon, oxygen, nitrogen, phosphorus, silicon, and iron biogeochemistry module embedded in a global, three-dimensional ocean general circulation model. The model is forced with physical climate forcing from atmospheric reanalysis and satellite data products and time-varying atmospheric dust deposition. Data-based skill metrics are used to evaluate the simulated time-mean spatial patterns, seasonal cycle amplitude and phase, and subannual to interannual variability. Evaluation data include: sea surface temperature and mixed layer depth; satellite-derived surface ocean chlorophyll, primary productivity, phytoplankton growth rate and carbon biomass; large-scale climatologies of surface nutrients, pCO2, and air-sea CO2 and O2 flux; and time-series data from the Joint Global Ocean Flux Study (JGOFS). Where the data is sufficient, we construct quantitative skill metrics using: model-data residuals, time-space correlation, root mean square error, and Taylor diagrams.

Original languageEnglish
Pages (from-to)95-112
Number of pages18
JournalJournal of Marine Systems
Volume76
Issue number1-2
DOIs
StatePublished - Feb 20 2009

Keywords

  • Biogeochemistry
  • Evaluation
  • Marine ecology
  • Modeling
  • Skill

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