html5-img
1 / 37

MAGICC/SCENGEN Hands On Tutorial

MAGICC/SCENGEN Hands On Tutorial. By Joel B. Smith Stratus Consulting Inc. Jsmith@stratusconsulting.com NCAR Summer 2006 Colloquium on Climate and Health July 18, 2006. Outline. Brief Introduction on Climate Change Scenarios

Download Presentation

MAGICC/SCENGEN Hands On Tutorial

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. MAGICC/SCENGEN Hands On Tutorial By Joel B. Smith Stratus Consulting Inc. Jsmith@stratusconsulting.com NCAR Summer 2006 Colloquium on Climate and Health July 18, 2006

  2. Outline • Brief Introduction on Climate Change Scenarios • Then, we’ll spend most of the time on the tutorial on MAGICC/SCENGEN

  3. Why Use Climate Change Scenarios? • We are unsure exactly how regional climate will change • Scenarios are plausible combinations of variables consistent with what we know about human-induced climate change • One can think of them as the prediction of a model, contingent upon the greenhouse gas emissions scenario • Since estimates of regional change by models differ substantially, an individual model estimate should be treated more as a scenario

  4. What Are Reasonable Scenarios? • Scenarios should be: • Consistent with our understanding of the anthropogenic effects on climate • Internally consistent • e.g., clouds, temperature, precipitation • Scenarios are a communication tool about what is known and not known about climate change • Should reflect plausible range for key variables

  5. Scenarios for Impacts Analysis • Need to be at a scale necessary for analysis • Spatial • e.g., to watershed or farm level • Temporal • Monthly • Daily • Sub-daily

  6. Regional Climate Change Scenarios • Present range of possible regional changes in climate • Two roles • Use ranges of climate changes to help understand sensitivity of affected systems • Use ranges to communicate what is known and not known about regional climate change • Temperature rise and range of precipitation changes

  7. Tools for Assessing Regional Model Output • We’ll learn how to use a tool that enables us to examine output from a number of climate models • Can see degree to which models agree and disagree about regional changes

  8. Sources of Uncertainty on Regional Climate Change • GHG Emissions • Greenhouse Gas Concentrations • Climate Sensitivity, e.g., 2xCO2 • Regional pattern of climate change • Distribution of changes in temperature and precipitation • Climate Variability

  9. GHG Emissions and Concentrations Projections Source: Houghton et al., 2001.

  10. Projections of Global Mean Temperature Change Source: Houghton et al., 2001.

  11. Normalized Annual-Mean Temperature Changes in CMIP2 Greenhouse Warming Experiments

  12. MAGICC/SCENGEN • User can: • Select GHG emission scenarios e.g., from IPCC SRES • Can select CO2 concentration • Select climate sensitivity • Select GCMs to examine • Regional pattern is hard wired in • Can examine change in seasonal variability • Not interannual or daily

  13. MAGICC/SCENGEN • MAGICC is a simple model of global T and SLR • Used in IPCC TAR • SCENGEN uses pattern scaling for 17 GCMs • Yield • Model by model changes • Mean change • Intermodel SD • Interannual variability changes • Current and future climate on 5 x 5°grid

  14. Using MAGICC/SCENGEN

  15. MAGICC: Selecting Scenarios

  16. SO2 Scenarios

  17. MAGICC: Selecting Scenarios (continued)

  18. MAGICC: Selecting Forcings

  19. MAGICC: Displaying Results

  20. MAGICC: Displaying Results (continued)

  21. SCENGEN

  22. Normalizing GCM Output • Expresses regional change relative to an increase of 1°C in mean global temperature • This is a way to avoid high sensitivity models dominating results • It allows us to compare GCM output based on relative regional change • Normalized temperature change = ΔTRGCM/ΔTGMTGCM • Normalized precipitation change = ΔPRGCM/ΔTGMTGCM

  23. Pattern Scaling • Is a technique for estimating change in regional climate using normalized patterns of change and changes in GMT • Pattern scaled temperature change: • ΔTRΔGMT = (ΔTRGCM/ΔTGMTGCM) x ΔGMT • Pattern scaled precipitation • ΔPRΔGMT = (ΔPRGCM/ΔTGMTGCM) x ΔGMT

  24. Running SCENGEN (continued)

  25. SCENGEN: Analysis

  26. SCENGEN: Model Selection

  27. SCENGEN: Area of Analysis

  28. SCENGEN: Select Variable

  29. SCENGEN: Scenario

  30. SCENGEN: Global Results

  31. SCENGEN: Map Results

  32. SCENGEN: Quantitative Results INTER-MOD S.D. : AREA AVERAGE = 5.186 % (FOR NORMALIZED GHG DATA) INTER-MOD SNR : AREA AVERAGE = -.067 (FOR NORMALIZED GHG DATA) PROB OF INCREASE : AREA AVERAGE = .473 (FOR NORMALIZED GHG DATA) GHG ONLY : AREA AVERAGE = -.411 % (FOR SCALED DATA) AEROSOL ONLY : AREA AVERAGE = -.277 % (FOR SCALED DATA) GHG AND AEROSOL : AREA AVERAGE = -.687 % (FOR SCALED DATA) *** SCALED AREA AVERAGE RESULTS FOR INDIVIDUAL MODELS *** (AEROSOLS INCLUDED) MODEL = BMRCD2 : AREA AVE = 2.404 (%) MODEL = CCC1D2 : AREA AVE = -5.384 (%) MODEL = CCSRD2 : AREA AVE = 6.250 (%) MODEL = CERFD2 : AREA AVE = -2.094 (%) MODEL = CSI2D2 : AREA AVE = 6.058 (%) MODEL = CSM_D2 : AREA AVE = 1.245 (%) MODEL = ECH3D2 : AREA AVE = .151 (%) MODEL = ECH4D2 : AREA AVE = -1.133 (%) MODEL = GFDLD2 : AREA AVE = 1.298 (%) MODEL = GISSD2 : AREA AVE = -3.874 (%) MODEL = HAD2D2 : AREA AVE = -5.442 (%) MODEL = HAD3D2 : AREA AVE = -.459 (%) MODEL = IAP_D2 : AREA AVE = -.088 (%) MODEL = LMD_D2 : AREA AVE = -6.548 (%) MODEL = MRI_D2 : AREA AVE = .065 (%) MODEL = PCM_D2 : AREA AVE = -3.451 (%) MODEL = MODBAR : AREA AVE = -.687 (%)

  33. SCENGEN: Global Analysis

  34. SCENGEN: Error Analysis

  35. SCENGEN Error Analysis (continued) UNWEIGHTED STATISTICS MODEL CORREL RMSE MEAN DIFF NUM PTS mm/day mm/day BMRCTR .632 1.312 1.026 20 CCC1TR .572 1.160 -.207 20 CCSRTR .587 .989 .322 20 CERFTR .634 1.421 -1.167 20 CSI2TR .553 1.112 -.306 20 CSM_TR .801 1.044 -.785 20 ECH3TR .174 1.501 -.649 20 ECH4TR .767 1.121 -.881 20 GFDLTR .719 .954 -.553 20 GISSTR .688 .799 .123 20 HAD2TR .920 .743 -.598 20 HAD3TR .923 .974 -.883 20 IAP_TR .599 1.408 -.734 20 LMD_TR .432 2.977 -2.103 20 MRI_TR .216 2.895 -2.026 20 PCM_TR .740 1.372 -1.041 20 MODBAR .813 .879 -.654 20

  36. What’s New (and Exciting) • SCENGEN is being updated • Have IPCC AR4 models • 2.5o resolution • May have other bells and whistles • Another very useful tool are the NCAR created PDFs

  37. Thank You! I’d be happy to take questions

More Related