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Model Evaluation with Satellite Data: NO 2, HCHO, and Beyond Monica Harkey Tracey Holloway Alex Cohan Rob Kaleel.

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Presentation on theme: "Model Evaluation with Satellite Data: NO 2, HCHO, and Beyond Monica Harkey Tracey Holloway Alex Cohan Rob Kaleel."— Presentation transcript:

1 Model Evaluation with Satellite Data: NO 2, HCHO, and Beyond Monica Harkey Tracey Holloway Alex Cohan Rob Kaleel

2 Air Quality from Space Witman, Holloway, and Reddy (2014)

3 Past CAMx Evaluation vs. Ground-Based Observations Mean Normalized Bias Past work evaluated hourly ground-based NO 2 from model and measurements May – September 2011 in many locations, modeled NO 2 > observed

4 Satellite Data to Assess Model Perfomance NO 2 evaluation based on Harkey and Holloway (in review) Formaldehyde-to-NO 2 ratio (FNR) evaluation based on Duncan et al. (2010), Witman, Holloway, and Reddy (2014) Jin and Holloway (in press)

5 Comparing Satellite and Model Data Apples and Oranges! satellite views a “swath” model represents data on a fixed grid ≠

6 Comparing Satellite and Model Data Apples and Oranges! satellite views a “swath” model represents data on a fixed grid SOLUTION: apply Wisconsin Horizontal Interpolation Program for Satellites (WHIPS) to satellite data, uses regional intersection to grid data to any specified grid

7 Comparing Satellite and Model Data Apples and Oranges! satellite sees total column but is more sensitive to “signal” from some altitudes than other altitudes sum of model layers = total column, but...

8 Comparing Satellite and Model Data Apples and Oranges! satellite sees total column but is more sensitive to “signal” from some altitudes than other altitudes sum of model layers = total column, but... SOLUTION: apply the satellite sensitivity factors (“averaging kernel” or “weighting function”) to model layers

9 Formaldehyde and NO 2 OMI NO 2 and HCHO averaging kernels applied to model column interpolated to 1 pm local time only use data where satellite data also exists—same sample size CB6R2 chemistry 2011 NEI version 1 and BEIS no lightning or forest fire emissions NO 2 DOMINO product HCHO NASA product Level 2 data gridded through WHIPS 2011 warm season (May – September) average OMICAMx

10 OMI & CAMx NO 2 10 15 molecules/cm 2 OMI CAMx OMI average = 1.52 x 10 15 molecules/cm 2 CAMx average = 2.43 x 10 15 molecules/cm 2 CAMx 60% higher than OMI CAMx captures overall pattern and urban-rural differences

11 OMI & CAMx NO 2 -- how are they correlated? time 10 15 molecules/cm 2 OMI CAMx

12 OMI & CAMx NO 2 -- how are they correlated? negative positive 10 15 molecules/cm 2 OMI CAMx time

13 average temporal correlation 0.18 mean bias0.97 mean error1.20 RMSE1.86 (x 10 15 molecules/cm 2 ) OMI & CAMx NO 2 model * values higher than observed * captures day-to-day variability

14 OMI & CAMx HCHO 10 15 molecules/cm 2 OMI CAMx OMI average = 8.19 x 10 15 molecules/cm 2 CAMx average = 10.2 x 10 15 molecules/cm 2 CAMx 24% higher than OMI CAMx captures overall pattern with highest values in southeastern US

15 OMI & CAMx HCHO average temporal correlation 0.16 mean bias2.6 mean error6.3 RMSE12.3 (x 10 15 molecules/cm 2 ) model * values higher than observed * captures day-to-day variability

16 What controls ozone production? FNR > 2, FNR-stddev > 1 = NOx-limited FNR ~ 1 = transitional FNR < 1, FNR+stddev < 2 = VOC-limited HCHO as a marker for VOCs

17 Compared to OMI, CAMx overestimates HCHO, NO 2 mean bias of HCHO twice that of NO 2 CAMx sees more NO X -limited areas OMI & CAMx FNR OMI CAMx

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20 HCHO month-by-month: May CAMx OMI OMI average = 6.71 CAMx average = 6.83 average temporal correlation 0.13 mean bias0.87 mean error4.98 RMSE8.92 (x 10 15 molecules/cm 2 )

21 HCHO month-by-month: June CAMx OMI OMI average = 7.81 CAMx average = 9.82 average temporal correlation 0.13 mean bias2.93 mean error6.45 RMSE11.17 (x 10 15 molecules/cm 2 )

22 HCHO month-by-month: July CAMx OMI OMI average = 9.72 CAMx average = 11.92 average temporal correlation 0.12 mean bias2.60 mean error6.66 RMSE12.28 (x 10 15 molecules/cm 2 )

23 HCHO month-by-month: August OMI average = 8.83 CAMx average = 11.99 average temporal correlation 0.10 mean bias3.63 mean error7.40 RMSE16.29 (x 10 15 molecules/cm 2 ) CAMx OMI

24 HCHO month-by-month: September OMI average = 7.31 CAMx average = 9.56 average temporal correlation 0.15 mean bias2.48 mean error5.83 RMSE10.14 (x 10 15 molecules/cm 2 ) CAMx OMI

25 BEIS configuration 2011 meteorology from WRF - North American Model (NAM) used as initial conditions with Group for High Resolution Sea Surface Temperatures (GHRSST, 1 km horizontal resolution) - National Land Cover Database 2006 - Kain-Fritcsh cumulus parameterization - analysis nudging of T, q, u, v above PBL -> WRF configuration shown to have cool bias (< 1 C) in summer daytime temperatures, slightly overestimate precipitation in southeastern states in July, and overpredict downwelling shortwave (~PAR) in late morning/early afternoon in summer months (up to 100 W/m 2 ) Land-use from Biogenic Emissions Land Use Database version 3 (BELD3) - 1990 US Cenus Data - 1992 Agricultural Census Data -> BEIS shown to overpredict formaldehyde compared to MEGAN


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