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Model evaluation of short-lived climate forcers for the Arctic Monitoring and Assessment Programme: A multi-species, multi-model study

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DOI

  • Cynthia H. Whaley, Environment Canada
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  • Rashed Mahmood, Barcelona Supercomputing Center, University of Montreal
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  • Knut Von Salzen, Environment Canada
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  • Barbara Winter, Environment Canada
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  • Sabine Eckhardt, Norwegian Institute for Air Research
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  • Stephen Arnold, University of Leeds
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  • Stephen Beagley, Environment Canada
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  • Silvia Becagli, Norwegian Meteorological Institute
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  • Rong You Chien, University of Tennessee, Knoxville
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  • Jesper Christensen
  • Sujay Manish Damani, Environment Canada
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  • Xinyi Dong, University of Tennessee, Knoxville
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  • Konstantinos Eleftheriadis, Demokritos National Centre for Scientific Research
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  • Nikolaos Evangeliou, Norwegian Institute for Air Research
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  • Gregory Faluvegi, NASA Goddard Institute for Space Studies, Center for Climate Systems Research
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  • Mark Flanner, University of Michigan, Ann Arbor
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  • Joshua S. Fu, University of Tennessee, Knoxville
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  • Michael Gauss, Norwegian Meteorological Institute
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  • Fabio Giardi, University of Florence
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  • Wanmin Gong, Environment Canada
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  • Jens Liengaard Hjorth
  • Lin Huang, Environment Canada
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  • Ulas Im
  • Yugo Kanaya, Japan Agency for Marine-Earth Science and Technology
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  • Srinath Krishnan, Centre for International Climate and Environmental Research
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  • Zbigniew Klimont, International Institute for Applied Systems Analysis, Laxenburg
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  • Thomas Kühn, University of Eastern Finland, Finnish Meteorological Institute
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  • Joakim Langner, Swedish Meteorological and Hydrological Institute
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  • Kathy S. Law, Sorbonne Université
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  • Louis Marelle, Sorbonne Université
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  • Andreas Massling
  • Dirk Olivié, Norwegian Meteorological Institute
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  • Tatsuo Onishi, Sorbonne Université
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  • Naga Oshima, Meteorological Research Institute
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  • Yiran Peng, Tsinghua University
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  • David A. Plummer, Environment Canada
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  • Olga Popovicheva, Lomonosov Moscow State University
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  • Luca Pozzoli, European Commission Joint Research Centre Institute
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  • Jean Christophe Raut, Sorbonne Université
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  • Maria Sand, Centre for International Climate and Environmental Research
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  • Laura N. Saunders, University of Toronto
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  • Julia Schmale, Swiss Federal Institute of Technology Lausanne
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  • Sangeeta Sharma, Environment Canada
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  • Ragnhild Bieltvedt Skeie, Centre for International Climate and Environmental Research
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  • Henrik Skov
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  • Fumikazu Taketani, Japan Agency for Marine-Earth Science and Technology
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  • Manu A. Thomas, Swedish Meteorological and Hydrological Institute
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  • Rita Traversi, University of Florence
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  • Kostas Tsigaridis, NASA Goddard Institute for Space Studies, Center for Climate Systems Research
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  • Svetlana Tsyro, Norwegian Meteorological Institute
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  • Steven Turnock, University of Leeds, Met Office
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  • Vito Vitale, European Commission Joint Research Centre Institute
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  • Kaley A. Walker, University of Toronto
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  • Minqi Wang, Tsinghua University
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  • Duncan Watson-Parris, University of Oxford
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  • Tahya Weiss-Gibbons, Environment Canada

While carbon dioxide is the main cause for global warming, modeling short-lived climate forcers (SLCFs) such as methane, ozone, and particles in the Arctic allows us to simulate near-term climate and health impacts for a sensitive, pristine region that is warming at 3 times the global rate. Atmospheric modeling is critical for understanding the long-range transport of pollutants to the Arctic, as well as the abundance and distribution of SLCFs throughout the Arctic atmosphere. Modeling is also used as a tool to determine SLCF impacts on climate and health in the present and in future emissions scenarios. In this study, we evaluate 18 state-of-the-art atmospheric and Earth system models by assessing their representation of Arctic and Northern Hemisphere atmospheric SLCF distributions, considering a wide range of different chemical species (methane, tropospheric ozone and its precursors, black carbon, sulfate, organic aerosol, and particulate matter) and multiple observational datasets. Model simulations over 4 years (2008-2009 and 2014- 2015) conducted for the 2022 Arctic Monitoring and Assessment Programme (AMAP) SLCF assessment report are thoroughly evaluated against satellite, ground, ship, and aircraft-based observations. The annual means, seasonal cycles, and 3-D distributions of SLCFs were evaluated using several metrics, such as absolute and percent model biases and correlation coefficients. The results show a large range in model performance, with no one particular model or model type performing well for all regions and all SLCF species. The multi-model mean (mmm) was able to represent the general features of SLCFs in the Arctic and had the best overall performance. For the SLCFs with the greatest radiative impact (CH4, O3, BC, and SO2-4 ), the mmm was within ±25% of the measurements across the Northern Hemisphere. Therefore, we recommend a multi-model ensemble be used for simulating climate and health impacts of SLCFs. Of the SLCFs in our study, model biases were smallest for CH4 and greatest for OA. For most SLCFs, model biases skewed from positive to negative with increasing latitude. Our analysis suggests that vertical mixing, long-range transport, deposition, and wildfires remain highly uncertain processes. These processes need better representation within atmospheric models to improve their simulation of SLCFs in the Arctic environment. As model development proceeds in these areas, we highly recommend that the vertical and 3-D distribution of SLCFs be evaluated, as that information is critical to improving the uncertain processes in models.

Original languageEnglish
JournalAtmospheric Chemistry and Physics
Volume22
Issue9
Pages (from-to)5775-5828
Number of pages54
ISSN1680-7316
DOIs
Publication statusPublished - May 2022

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