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2020 vision: Modelling the near future tropospheric composition

2020 vision: Modelling the near future tropospheric composition. David Stevenson Institute of Atmospheric and Environmental Science School of GeoSciences The University of Edinburgh Thanks to: Ruth Doherty (Univ. Edinburgh) Dick Derwent (rdscientific)

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2020 vision: Modelling the near future tropospheric composition

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  1. 2020 vision:Modelling the near future tropospheric composition David Stevenson Institute of Atmospheric and Environmental ScienceSchool of GeoSciencesThe University of Edinburgh Thanks to: Ruth Doherty (Univ. Edinburgh) Dick Derwent (rdscientific) Mike Sanderson, Colin Johnson, Bill Collins (Met Office) Frank Dentener (JRC Ispra), Markus Amann (IIASA)

  2. Talk Structure • Chemistry-climate model: STOCHEM-UM • Several transient runs: 1990 → 2030 • the 1990s • how modellers use observations • comparisons with ozone-sonde data • the 2020s • what is needed to predict the future? • a believable model (hence the first bit) • a computationally efficient model • future emissions • climate change • other things? • What are the results telling us?

  3. STOCHEM • Global Lagrangian 3-D chemistry-climate model • Meteorology: HadAM3 + prescribed SSTs • GCM grid: 3.75° x 2.5° x 19 levels • CTM: 50,000 air parcels, 1 hour timestep • CTM output: 5° x 5° x 9 levels • Detailed tropospheric chemistry • CH4-CO-NOx-hydrocarbons • detailed oxidant photochemistry • Interactive lightning NOx, C5H8 from veg. • ~1 year/day on 36 processors (Cray T3E)

  4. Model experiments • Several transient runs: 1990 → 2030 • Driving meteorology • Fixed SSTs (mean of 1978-1996) • SSTs from a climate change scenario (is92a) • shows ~1K surface warming 1990s-2020s • Shorter run with observed SSTs 1990-2002 • New IIASA* global emissions scenarios: • Business as usual (BAU) • Maximum reductions feasible (MRF) • Stratospheric O3 is a fixed climatology • Vegetation (land-use) also a fixed climatology *IIASA: International Institute for Applied Systems Analysis (Austria)

  5. IIASA Emissions scenarios Global totals – there are significant regional variations Courtesy of Markus Amann (IIASA) & Frank Dentener (JRC)

  6. Compare with 1990s obs Model experiments BAU, observed SSTs 1990-2002 BAU, fixed SSTs 1990-2030 MRF, fixed SSTs 1990-2030 BAU, is92a SSTs 1990-2030 2030 1990

  7. Chemical tropopause (O3=150 ppbv) Hohenpeissenberg Ozone-sonde model vs observations (monthly data for the 1990s) Ozone-sonde data from Logan et al. (1999 - JGR)

  8. Chemical tropopause (O3=150 ppbv) Hohenpeissenberg Ozone-sonde model vs observations (monthly data for the 1990s) Ozone-sonde data from Logan et al. (1999 - JGR)

  9. Chemical tropopause (O3=150 ppbv) Hohenpeissenberg Ozone-sonde model vs observations (monthly data for the 1990s) Model> obs Model< obs Ozone-sonde data from Logan et al. (1999 - JGR)

  10. Chemical tropopause (O3=150 ppbv) ±1 std dev in obs Hohenpeissenberg Ozone-sonde model vs observations (monthly data for the 1990s) Ozone-sonde data from Logan et al. (1999 - JGR)

  11. Chemical tropopause (O3=150 ppbv) ±1 std dev in obs ±1 std dev in model Hohenpeissenberg Ozone-sonde model vs observations (monthly data for the 1990s) Ozone-sonde data from Logan et al. (1999 - JGR)

  12. Chemical tropopause (O3=150 ppbv) Hohenpeissenberg Ozone-sonde model vs observations (monthly data for the 1990s) Model overestimatesby >1 std dev Model underestimatesby >1 std dev Ozone-sonde data from Logan et al. (1999 - JGR)

  13. Chemical tropopause (O3=150 ppbv) Hohenpeissenberg Ozone-sonde model vs observations (monthly data for the 1990s) Model overestimatesby >1 std dev Identify where andwhen the model iswrong Model underestimatesby >1 std dev Ozone-sonde data from Logan et al. (1999 - JGR)

  14. Model O3 too low in lower tropospherefor all seasons except spring Ny Alesund (79N, 12E), Spitzbergen Ozone-sonde data from Logan et al. (1999 - JGR)

  15. Model O3 too low in boundary layerin summer - autumn Resolute (75N, 95W), Canada Ozone-sonde data from Logan et al. (1999 - JGR)

  16. Surface O3 generally too high Mid-troposphere in summer too low Sapporo (43N, 141E), Japan Ozone-sonde data from Logan et al. (1999 - JGR)

  17. Mid- & upper-troposphericO3 too low in summer Wallops Island (38N, 76W), Eastern USA Ozone-sonde data from Logan et al. (1999 - JGR)

  18. Major O3 underestimate intropical mid-troposphere –too much destruction?or not enough sources? OK at surface, but… Ascension (8S, 14W), Mid-Atlantic Ozone-sonde data from Thompson et al. (2003 - JGR)

  19. The model has some skill at simulating tropospheric ozone, but is far from perfect. • Careful comparisons with other gases (NOx, NOy, etc.) also needed, but there is much less data. • For climate-chemistry model validation, lengthy climatologies, including vertical profiles are most useful. • If you want modellers to uses the data, provide it in easy-to-use formats (we’re lazy!) • MOZAIC (operational aircraft data) and satellite data are examples of the sort of datasets needed. • If you trust the model, it may be useful for future predictions…

  20. Compare with 1990s obs Compare changes betweenthe 1990s and 2020s Model experiments BAU, observed SSTs 1990-2002 BAU, fixed SSTs 1990-2030 MRF, fixed SSTs 1990-2030 BAU, is92a SSTs 1990-2030 2030 1990

  21. 1990s Decadal mean values

  22. BAU 2020s

  23. +2 to 4 ppbv over N. Atlantic/Pacific >+10 ppbvIndia A large fraction is due to ship NOx Change in surface O3, BAU 2020s-1990s BAU

  24. MRF 2020s

  25. Up to -10 ppbvover continents Change in surface O3, MRF 2020s-1990s MRF BAU

  26. BAU+climate change 2020s

  27. Look at the difference between these two to see influence of climate change Change in surface O3, BAUcc 2020s-1990s MRF BAU BAU+cc

  28. ΔO3 from climate change Warmertemperatures & higher humidities increase O3 destruction over the oceans But also a role from increases in isoprene emissions from vegetation?

  29. Zonal mean O3 & ΔO3 (2020s-1990s) BAU ΔO3 1990s MRF ΔO3 BAUcc ΔO3

  30. Zonal mean OH & ΔOH(2020s-1990s) BAU ΔOH 1990s MRF ΔOH BAUcc ΔOH

  31. CH4, CH4 & OH trajectories 1990-2030 Current CH4 trend looks like MRF – coincidence? All scenarios show increasing OH

  32. Conclusions • Model development and validation is ongoing, & is guided by observations • Anthropogenic emissions will be the main determinant of future tropospheric O3 • Ship NOx looks important • Climate change will introduce feedbacks that modify air quality • We can estimate the radiative forcing implications of air quality control measures • NB: Many processes still missing

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