Literature DB >> 32742283

Tropospheric ozone in CCMI models and Gaussian process emulation to understand biases in the SOCOLv3 chemistry-climate model.

Laura E Revell1,2,3, Andrea Stenke2, Fiona Tummon2,4, Aryeh Feinberg2, Eugene Rozanov2,5, Thomas Peter2, N Luke Abraham6,7, Hideharu Akiyoshi8, Alexander T Archibald6,7, Neal Butchart9, Makoto Deushi10, Patrick Jöckel11, Douglas Kinnison12, Martine Michou13, Olaf Morgenstern14, Fiona M O'Connor9, Luke D Oman15, Giovanni Pitari16, David A Plummer17, Robyn Schofield18,19, Kane Stone18,19,20, Simone Tilmes12, Daniele Visioni16, Yousuke Yamashita8,21, Guang Zeng14.   

Abstract

Previous multi-model intercomparisons have shown that chemistry-climate models exhibit significant biases in tropospheric ozone compared with observations. We investigate annual-mean tropospheric column ozone in 15 models participating in the SPARC/IGAC (Stratosphere-troposphere Processes and their Role in Climate/International Global Atmospheric Chemistry) Chemistry-Climate Model Initiative (CCMI). These models exhibit a positive bias, on average, of up to 40-50% in the Northern Hemisphere compared with observations derived from the Ozone Monitoring Instrument and Microwave Limb Sounder (OMI/MLS), and a negative bias of up to ~30% in the Southern Hemisphere. SOCOLv3.0 (version 3 of the Solar-Climate Ozone Links CCM), which participated in CCMI, simulates global-mean tropospheric ozone columns of 40.2 DU - approximately 33% larger than the CCMI multi-model mean. Here we introduce an updated version of SOCOLv3.0, "SOCOLv3.1", which includes an improved treatment of ozone sink processes, and results in a reduction in the tropospheric column ozone bias of up to 8 DU, mostly due to the inclusion of N2O5 hydrolysis on tropospheric aerosols. As a result of these developments, tropospheric column ozone amounts simulated by SOCOLv3.1 are comparable with several other CCMI models. We apply Gaussian process emulation and sensitivity analysis to understand the remaining ozone bias in SOCOLv3.1. This shows that ozone precursors (nitrogen oxides (NOx), carbon monoxide, methane and other volatile organic compounds) are responsible for more than 90% of the variance in tropospheric ozone. However, it may not be the emissions inventories themselves that result in the bias, but how the emissions are handled in SOCOLv3.1, and we discuss this in the wider context of the other CCMI models. Given that the emissions data set to be used for phase 6 of the Coupled Model Intercomparison Project includes approximately 20% more NOx than the data set used for CCMI, further work is urgently needed to address the challenges of simulating sub-grid processes of importance to tropospheric ozone in the current generation of chemistry-climate models.

Entities:  

Year:  2018        PMID: 32742283      PMCID: PMC7394122          DOI: 10.5194/acp-18-16155-2018

Source DB:  PubMed          Journal:  Atmos Chem Phys        ISSN: 1680-7316            Impact factor:   6.133


  2 in total

1.  Large contribution of natural aerosols to uncertainty in indirect forcing.

Authors:  K S Carslaw; L A Lee; C L Reddington; K J Pringle; A Rap; P M Forster; G W Mann; D V Spracklen; M T Woodhouse; L A Regayre; J R Pierce
Journal:  Nature       Date:  2013-11-07       Impact factor: 49.962

2.  FUTURE GLOBAL MORTALITY FROM CHANGES IN AIR POLLUTION ATTRIBUTABLE TO CLIMATE CHANGE.

Authors:  Raquel A Silva; J Jason West; Jean-François Lamarque; Drew T Shindell; William J Collins; Greg Faluvegi; Gerd A Folberth; Larry W Horowitz; Tatsuya Nagashima; Vaishali Naik; Steven T Rumbold; Kengo Sudo; Toshihiko Takemura; Daniel Bergmann; Philip Cameron-Smith; Ruth M Doherty; Beatrice Josse; Ian A MacKenzie; David S Stevenson; Guang Zeng
Journal:  Nat Clim Chang       Date:  2017-07-31
  2 in total

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