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Evaluation of Urban PM 2.5 Emission Inventories across the U.S. Prakash Bhave, Adam Reff, Alexis Zubrow, Venkatesh Rao U.S. Environmental Protection Agency CMAS Conference Chapel Hill, NC October 15 – 17, 2012. PM 2.5 Components ( μ g m -3 ). SO 4. CMAQ v4.7. NO 3. OC.
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Evaluation of Urban PM2.5 Emission Inventories across the U.S. Prakash Bhave, Adam Reff, Alexis Zubrow, Venkatesh Rao U.S. Environmental Protection Agency CMAS Conference Chapel Hill, NC October 15 – 17, 2012
PM2.5 Components (μg m-3) SO4 CMAQ v4.7 NO3 OC IMPROVE Observations (2002 – 2006) Conclusions: CMAS 2010 • In the past decade, which modeling system refinements contributed most to PM2.5 performance improvement? • Meteorology inputs (2) • Emissions & deposition (4) • Atmospheric chemistry (2)
Background & Motivation U.S. has most detailed national inventory for PM2.5 Spatial resolution Source resolution Chemical resolution Inventory accuracy very difficult to check CTM is often used Can we find & fix gross inventory errors withoutrunning CMAQ? Reference: Reff et al. (ES&T, 2009) 2
Cass & McRae (ES&T, 1983) demonstrated a simple approach for PM2.5 inventory evaluation • Compare emission rates directly against ambient concentrations • Only works because, *most trace elements are conserved* • Results • Ti, Ni emissions too high • Zn too low • Ambient Cu data error • We applied same method to 2001 NEI in 21 cities… 3
Prior Evaluation: 2001 NEI Secondary Species Below MDL Si Al Ca Fe K Reff et al. (Intl Aerosol Conf. 2006)
Prior Evaluation: 2001 NEI • In many cities, we found positive biases in the emissions of • Agricultural soil • Unpaved road dust • Methodological Shortcomings • Limited number of sites (n = 21) • 36 km grid resolution • “old” version of NEI • Only able to identify gross overestimates • Unable to quantify the emission errors
Methodology • 2005ak NEI • Mobile emissions from 2005cr, output by MOVES • Spatial allocation: 12km ConUS grid • Temporal allocation: monthly • 85 source categories with unique PM2.5 speciation profiles • Aggregate to 159 Core-Based Statistical Areas (CBSA) • Multiply emissions by month- & site-specific dilution ratio Result > 7×104 pairs of diluted emissions & ambient concentrations
Methodology • Apply principles of chemical mass balance (CMB) correction factor • Data in each city/month are fit separately • Key result: source-specificF value for each site & month
Methodology Force Fij to be positive Penalize fit for over-correcting the emissions Minimize this Account for measurement error
Preliminary Results F values for Agricultural Burning 100 • PM2.5 from crop burning is biased high by ~10x • Pouliot, McCarty, et al. have diagnosed the reason for these overestimates • Revisions will be incorporated into 2008 NEI 1 0.01 J F M A M J J A S O N D
Preliminary Results F values for Unpaved Road Dust 100 • PM2.5 from unpaved roads is biased high by ~30x • Is this entirely due to emissions error? • see poster by Appel et al. 1 0.01 J F M A M J J A S O N D
Preliminary Results F values for Unpaved Road Dust 100 1 0.01 J F M A M J J A S O N D Median of Monthly F values
Summary • Methodology to quantify source-specific biases in PM2.5 inventory has been developed • Preliminary results look quite promising! • In process of assessing our results for other source categories