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Observational Data for Next-Generation Climate Model Evaluation: Requirements, Considerations, and Best Practices

  • Rebecca L. Beadling
  • , Ranjini Swaminathan
  • , Romain Beucher
  • , Ed Blockley
  • , Swen Brands
  • , Birgit Hassler
  • , Dora Hegedűs
  • , Forrest M. Hoffman
  • , Jiwoo Lee
  • , Jared Lewis
  • , Jianhua Lu
  • , Elizaveta Malinina
  • , Brian Medeiros
  • , Enrico Scoccimarro
  • , Jerry Tjiputra
  • , Briony Turner
  • , Duncan Watson-Parris
  • Temple University
  • University of Reading
  • Australian Climate Simulator (ACCESS-NRI)
  • Met Office
  • Instituto de Física de Cantabria (CSIC UC)
  • German Aerospace Center
  • Rutherford Appleton Laboratory
  • European Space Agency - ESA
  • Oak Ridge National Laboratory
  • Lawrence Livermore National Laboratory
  • Climate Resource
  • Southern Marine Science and Engineering Guangdong Laboratory - Guanzhou
  • Université Laval and Environment and Climate Change Canada
  • National Center for Atmospheric Research
  • Euro-Mediterranean Center on Climate Change
  • Bjerknes Centre for Climate Research
  • University of California at San Diego

Research output: Contribution to journalArticlepeer-review

Abstract

Climate model simulations are an important source of information about our planet’s climate system and also enable informed decision-making under different future scenarios. As a new archive of results from the next generation of climate models is anticipated to become available with the Coupled Model Intercomparison Project phase 7 (CMIP7), the need to develop efficient and robust methods to evaluate models is paramount. Observations are an integral part of model evaluation, providing a means to quantify and understand the degree to which climate models can faithfully reproduce Earth system processes. Such analysis is critical for constraining climate projections, identifying areas of focus for model development, and assisting analysts in deciphering the utility of models for specific applications. Observations of Earth system come from a diversity of sources, span different space–time domains, and are produced by different communities, and each dataset features different data structures and formats, metadata standards, and its own unique uncertainties. Uncertainties in an observational dataset may stem from gaps in temporal and spatial coverage, instrumentation errors, or assumptions in retrieval and processing methods. How then does one ensure that observational data are ready for use and utilized in the most appropriate way for robust, rapid, and routine climate model evaluation? The CMIP7 Model Benchmarking Task Team with input from the broader climate modeling, model evaluation, and observational data communities present a vision and considerations for best practices toward the optimal and appropriate use of observational data to support next-generation climate model evaluation.

Original languageEnglish
Pages (from-to)E813-E835
JournalBulletin of the American Meteorological Society
Volume107
Issue number4
DOIs
StatePublished - Apr 2026
Externally publishedYes

Keywords

  • Climate models
  • Climate records
  • Diagnostics
  • Model evaluation/performance
  • Satellite observations
  • Surface observations

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