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Biomass Smoke Aerosol: Spatial and Temporal Pattern over the US October 2005 [email_address]
Estimation of Smoke Mass ,[object Object],[object Object],[object Object],[object Object],[object Object],[object Object]
Smoke Quantification using Chemical Data ,[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object]
Smoke Excess OC – EC  Calibration of Smoke Composition ,[object Object],[object Object],[object Object], PM25  EC  OC Smoke:  EC/  OC  = 0.08  PM25/  OC  = 1.5 EC/OC Ratio
OC–EC Non-Smoke Calibration by Iteration ,[object Object],[object Object],[object Object],EC/OC Non-Smoke = 0.15 EC/OC Non-Smoke = 0.2 EC/OC Non-Smoke = 1 EC/OC Non-Smoke = 0.4 Negative Smoke – not Possible Maybe?? Maybe?? Too little non-smoke too much smoke Smoke OC Non Smoke OC
Measured and Reconstructed PM25 Mass ,[object Object]
OCS, OCNS and PM25 Seasonal Pattern Average over 2000-2004 period PM25Mass OCS Smoke OCNS NonSmoke Day of Year Mexican Smoke Agricultural Smoke Urban NonSmoke Carbon
OC Smoke Spatial Pattern Dec Jan Feb Sep Oct Nov Mar Apr May Jun Jul Aug
EC NonSmoke Dec Jan Feb Sep Oct Nov Mar Apr May Jun Jul Aug
PM2.5 (blue) and ‘SmokeMass’ (red) Smoke Events Kansas Ag Smoke
Example OC ‘Smoke’ Events Smoke Events
Seasonality of OC Percentiles ,[object Object],Great Smoky Mtn: Episodic OC in  the Fall season Chattanooga:: Elevated and Persistent OC
GRSM Seasonal Pattern of Percentiles PM25 OC SO4 Soil Episodic Episodic OC in Fall dominates episodicity -  Smoke Organics?
Monthly Maps of Fire Pixels ,[object Object],[object Object],NOAA HMS – S. Falke Jan Feb Mar Apr Aug Jun Jul May Sep Oct Nov Dec Smoke Kansas Ag Smoke No Smoke
Summary ,[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object]

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0507 Event Analysis Reports Biomass Smoke Aerosol

  • 1. Biomass Smoke Aerosol: Spatial and Temporal Pattern over the US October 2005 [email_address]
  • 2.
  • 3.
  • 4.
  • 5.
  • 6.
  • 7. OCS, OCNS and PM25 Seasonal Pattern Average over 2000-2004 period PM25Mass OCS Smoke OCNS NonSmoke Day of Year Mexican Smoke Agricultural Smoke Urban NonSmoke Carbon
  • 8. OC Smoke Spatial Pattern Dec Jan Feb Sep Oct Nov Mar Apr May Jun Jul Aug
  • 9. EC NonSmoke Dec Jan Feb Sep Oct Nov Mar Apr May Jun Jul Aug
  • 10. PM2.5 (blue) and ‘SmokeMass’ (red) Smoke Events Kansas Ag Smoke
  • 11. Example OC ‘Smoke’ Events Smoke Events
  • 12.
  • 13. GRSM Seasonal Pattern of Percentiles PM25 OC SO4 Soil Episodic Episodic OC in Fall dominates episodicity - Smoke Organics?
  • 14.
  • 15.