Impact of AIRS Radiances and Profiles on WRF Forecasts Fifth Meeting of the Science Advisory Committee 18-20 November, 2009 Bradley Zavodsky Shih-Hung.

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Impact of AIRS Radiances and Profiles on WRF Forecasts Fifth Meeting of the Science Advisory Committee November, 2009 Bradley Zavodsky Shih-Hung Chou William McCarty (GMAO) transitioning unique NASA data and research technologies to operations National Space Science and Technology Center, Huntsville, AL

transitioning unique NASA data and research technologies to operations Relevance to NASA/SPoRT SPoRT focuses on improvements to short-term, regional weather forecasts using unique NASA products and capabilities One method to improve forecasts is through assimilation of satellite observations – Atmospheric Infrared Sounder (AIRS) is NASA’s most state-of-the-art sounder – Assimilation of AIRS data improves global forecasts (JCSDA, GSFC) – Limited work to show utility on regional scale forecasts Radiances can support national modeling centers that run regional models Profiles can support smaller, regional modeling centers – Not enough expertise to run radiance assimilation – Not enough computational resources to run complex radiative transfer algorithms Use of profiles and radiances in regional modeling systems may influence operational centers (such as NCEP) – Positive results may cause them to pursue use of observations they otherwise might have ignored – SPoRT will likely not transition code or capabilities to these centers Lessons learned can be applied to current and future hyperspectral sounders such as IASI (EUMETSAT) or CrIS (NOAA/NASA)

transitioning unique NASA data and research technologies to operations Profile Accomplishments Since 2007 SAC “SPoRT should migrate away from ADAS as soon as possible; GSI or something more mainstream would definitely be preferable” – Began using WRF-Var in autumn/winter 2007 “SPoRT should take into consideration their computing resources” – Use Goddard NCCS Discover supercomputer for processing “SPoRT took SAC’s recommendation to move from the Pacific to their domain, but there has only been one case” – Continue to use CONUS domain with SEUS emphasis – 37-day case study period from 17 January – 22 February 2007 AIRS profiles yield improved precipitation, temperature, and moisture forecasts Conference Papers – 2007 EUMETSAT (Amsterdam) – 2008, 2009 WRF User’s Conferences (Boulder) – 2009 AMS (Phoenix) Draft of journal paper revealed some limitations to the methodology

transitioning unique NASA data and research technologies to operations Profiles Methodology AIRS QI’s for 17 Jan 2007 L2 Version 5 temperature and moisture profiles 28-level standard product Land and water soundings w/ separate errors Quality control using P best value in each profile Sensitivity study assimilating only AIRS profiles B-matrix from “gen_be” WRF initialized with 40-km NAM at 0000 UTC (cold start) 12-km analysis and model grid Short WRF forecast used as background for analysis BKGD AIRS water AIRS land Current Analysis Error Characteristics

transitioning unique NASA data and research technologies to operations Profile Precipitation Verification Combined forecast results for hr forecasts of precipitation Equitable Threat Score shows forecasted and observed precipitation matches –Improvement at all thresholds except lightest –Best results for moderate thresholds (28% at 12.7 mm/6h, 14% at mm/6h, 90% at 25.40) Bias score shows F/O –Improved (closer to 1) for all thresholds

transitioning unique NASA data and research technologies to operations Profile Comparison to NAM Analyses Temperature and height bias for combined h forecasts compared to NAM analyses Lower level warming; upper level cooling resulting in improved forecasts Geopotential height shifts throughout the entire troposphere –Improves mid- and upper-level heights; degrades low level heights –Larger than expected MSLP analysis increments the main culprit –Improve lower level heights/surface pressure to improve entire column bias CNTL AIRS

MSLP Analysis Increment (ALYS-BKGD)100 hPa Innovations (AIRS-BKGD) 100 hPa AIRS is cooler than the background (especially south of 30 o N) Analysis lower levels warm to compensate for upper-level cooling Temperature decrease leads to atmospheric expansion resulting in higher surface pressure and heights –Upper level AIRS profiles are too cold over Gulf of Mexico –Model vertical resolution too coarse near tropopause AIRS Profile Analysis Impact

WRF BKGD NAM ICs RAOB AIRS transitioning unique NASA data and research technologies to operations Cold AIRS Profiles Near Tropopause Consistent pattern in profiles for much of January-February 2007 timeframe AIRS is approximately 3-7 o C cooler than background over Gulf of Mexico at 100 hPa Impact from best part of profile (mid- troposphere) is reduced Others have not used profile data above 400 hPa (Auligne, personal communication), but there is valuable information at these levels Better handling of observations (and their errors) at upper levels is necessary Key West Soundings at 08 UTC on 17 January 2007

transitioning unique NASA data and research technologies to operations Vertical Resolution of Analysis Grid 37-level resolution not adequate to capture all features in initial conditions (ICs) Interpolation of NAM initial conditions to WRF led to the background field being 2-3 o C too warm –analysis balance compensates cold change aloft by warming other levels –large changes to surface pressure –Higher heights throughout vertical column as seen in bias shift Select model levels that are representative of both initial conditions and observations to reduce interpolation errors Model/Ob Soundings near Key West 1/17/07 NAM ICs WRF BKGD RAOB 37 Sigma Levels50 Sigma Levels

transitioning unique NASA data and research technologies to operations Radiance Accomplishments Since 2007 SAC Outlined AIRS radiance in regional forecasting system project at 2007 SAC Meeting Completed one-week case study from April 2007 Implemented CO 2 Sorting technique in version of operational GSI/NAM – Channel selection for usable radiances above cloud level – Test impact of less conservative cloud top detection algorithm within Conference Papers/Publications – 2007 EUMETSAT (Amsterdam) – Journal of Geophysical Research (2009) CO 2 Sorting Technique Selection of Usable Channels

transitioning unique NASA data and research technologies to operations Methodology (Radiances) Run on operational 12-km NAM grid (WRF-NMM) Gridpoint Statistical Interpolation (GSI) 3D-Var analysis 3-hr forecast cycling 48-hour forecasts run every 6 hours 103 (red) of the 151 operational channels (green) used in the global system NAM model top is 2 hPa, so no ozone or 4μm channels are used Control forecasts (CNTL) use conventional obs, sat winds, GOES radiances, HIRS, microwave sounder radiances, and radar data AIRS forecasts (AIRS) use same data sets as CNTL but add in AIRS radiances

Analysis validation against GOES-11 brightness temperatures Correlation between clear-sky observed brightness temperatures and brightness temperatures calculated from the analysis Positive improvement in correlation among all channels with notable improvements to – Sounder channel 1 (stratosphere CO 2 ) – Sounder channel 2 (upper-troposphere CO 2 ) – Sounder channel 12 (upper troposphere H 2 O v ) transitioning unique NASA data and research technologies to operations Comparison to Independent Dataset Correlation GOES-11 Channel CNTL AIRS

Height anomaly is defined as: – : geopotential height at grid point – : latitudinal mean of geopotential height Calculated as the correlation between a forecasts and their corresponding analyses Forecast improvements (at 48 hours) of: –2.4 hours at 500 hPa –1.9 hours at 1000 hPa transitioning unique NASA data and research technologies to operations Height Anomaly Correlation 500 hPa Z-Anomaly Correlations 1000 hPa Z-Anomaly Correlations

transitioning unique NASA data and research technologies to operations Radiance Precipitation Verification Results combine all forecasts Bias scores show – < 5% improvement/degradation to for all thresholds < 25mm/6h –Improvement for the 25mm/6h threshold (7%) Equitable Threat Scores show – Negligible impact for thresholds < 15mm/6h – Significant improvements of 6%, 6%, and 8% for the three thresholds ≥ 15mm/6h

Validation Dataset – Separation Point, a nonphysical quantity, is difficult to validate directly from MODIS or CloudSat – Manually created for a variety of environments derived from short- term NAM forecasts – January 2006 Distributions – Calculated separation point biased towards high clouds, but shows some skill for low clouds (top right) – Validation data shows notable peak for low separation point (high clouds) (bottom left) Conservative with reduced skill at lower cloud heights (top left; bottom right) transitioning unique NASA data and research technologies to operations CO 2 Sorting Verification Calculated - Validation Separation Points CO 2 Sorting Separation Points Validation Separation Points Joint Histogram

transitioning unique NASA data and research technologies to operations Summary/Conclusions SPoRT seeks to improvement short-term, regional weather forecasts using unique NASA products and capabilities SPoRT uses profiles and radiances from NASA’s AIRS hyperspectral sounder to determine the impact of these instruments on sensible weather parameters Assimilation of profiles into WRF-Var produced improvements in precipitation and lower-level temperature forecasts but some inconsistencies must be further investigated Assimilation of radiances into GSI produced improved height anomaly correlations and precipitation forecasts; use of CO 2 sorting technique yielded improved forecast results over inherent technique Use of profiles and radiances in regional modeling systems may influence operational centers (such as NCEP)

transitioning unique NASA data and research technologies to operations Future Work AIRS profile work will use lessons learned for a final experiment to be concluded no later than summer 2010 (peer-reviewed journal article draft already prepared) June 2007 SAC recommended focus on IASI as a legacy instrument for CrIS – Lessons learned from work with AIRS will be applied to IASI – Investigate quality of IASI profiles – Begin using GSI for IASI profile assimilation activities for more consistency with operational centers – Proposal to JCSDA to investigate direct (i.e. “apples-to-apples” comparison of IASI profiles and radiances on operational forecasting) Development of a 3D analysis product incorporating AIRS and IASI data over the oceans that can be used for nowcasting or for initializing local forecast runs Lessons learned and code infrastructure developed from both AIRS and IASI can be applied to CrIS upon launch