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

182 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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