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OMI NO2 for AQ Management Applications

Rudolf Husar, CAPITA, Washington UniversityNO2 Workshop, EPA HQ, Oct 30, 2007

Regulatory Support:

Exceptional Event Quantification

Policy Development:

Hemispherical Pollutant Transport

Hemispheric Transport of Air Pollutants (HTAP)Data Network:

TF HTAP Workshop Forshungszentrum Juelich, Oct 17-19, 2007, Juelich, Germay

Application Examples for NOx Analysis

Collaborators:

Rudolf Husar, Washington U. St. Louis

Stefan Falke, Northrop, Wash U.

Greg Leptoukh, NASA, Goddard

Martin Schultz, FZJ, Juelich

2009 HTAP Assessment

• Seek the reconciliation of models, observations, emissions

Model Outputs

Observations

EmissionsEmission Integration

Emission comparisons, reconciliation

Model Comparisons

Model-model comparison, ensemble,

Data Integration

Data homogenization and integration

Iterative Air Pollution Analysis

• In the past, these activities were conducted separately; little mutual support

• Iterative linking would characterize the pollutants and create understanding

Models

Observations

Emissions Characterization

Understanding

Inverse Modeling

Emissions retrieval from observations;

Model Evaluation

Performance testing, improved formulation

Forward Modeling

Process-based simulation; source-receptor relationship

Reanalysis

Forward model with assimilated observations

Data Interpretation

Use of previous & tacit knowledge to explain data

Data Integration

Data homogenization and integration

Emission Integration

Emission comparisons, reconciliation

Model Comparisons

Model-model comparison, ensemble,

GOAL:

Knowledge Creation

Characterization of pattern; understating of processes

Initial HTAP Data Flow NetworkLoosely Coupled Data Network of Autonomous Nodes

OGC WCS Data Access Protocol

Tropospheric OMI NO2 Average

Model

Obs.

Emiss.

OMI NO2 – Mobil Emissions

Model

Obs.

Emiss.

Tropospheric OMI NO2 Average

Model

Obs.

Emiss.

OMI NO2 – Point Emissions

Model

Obs.

Emiss.

Single Point Sources

Power Plants

Model

Obs.

Emiss.

Single Point Sources

Model

Obs.

Emiss.

Georgia Sweetwater Fire

Model

Obs.

Emiss.

Sweat Water fire in S. Georgia (May 2007)

Georgia Sweetwater Fire

Model

Obs.

Emiss.

Sweat Water fire in S. Georgia (May 2007)

Friday/Sunday Ratio

Biomass Burning

Sunday

Smoke

Model

Obs.

Emiss.

OMI/NEI Emission Ratios

• Ohio River OMI/Emiss = 1 • Northeast OMI/Emiss = 1.4

US NEI NOx Emission OMI Tropo NO2

Model

Obs.

Emiss.

Total, Tropospheric, Upper

Total Column NO2

Stratospheric NO2

Tropo NO2

????

Model

Obs.

Emiss.

Model Surface NO2

OMI NO2 Model

Obs.

Emiss.

NOx Data on the NetworkEmission Aerosol Nitrate Ozone

Precipitation NitrateEmission

Surface Obs.Model

Seasonal

Weekly

Secular

Diurnal

Model

Obs.

Emiss.

Exceptional Event Analysis

Goal:Understand, quantify AQ impact of

Events

Approach:• Community, collaboration• ‘Harvesting’, aggregating

resources in a wiki workspace

• Communal and individual analyses

October 2007 Southern California Fires

Dust

Dust

Smoke Santa Ana Winds

Southern California Fires

• The hi-res OMI data provides columnar NO2 and Aerosol Index• The difference of their spatial pattern indicates smoke age(??)

OMI/TOMS - Absorbing Aerosol Index

OMI/TOMS – Tropospheric NO2

Oct 21, 2007 Oct 22, 2007 Oct 23, 2007 Oct 24, 2007

• Consoles are multi-view panels of space-time synchronized data views• On Oct 21, note the burst of smoke, dust between 11 AM and 1:30PM

• By Oct 25, the smoke has drifted inland, toward N-NE• The NAAPS model forecasted the smoke, the other models did not

Thank You

Models

Observations

Emissions

Looking forward networking with you

• Collecting EPA - Relevant Data

• Performing Iterative Analyses

• Characterize and ‘Understand’ NO2

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