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Improving emission inventories using direct flux measurements and modeling Gunnar Schade, PI Don Collins, Qi Ying (Co-PIs) Texas A&M University EPA STAR Meeting, 16 Nov. 2010

Improving emission inventories using direct flux measurements and modeling

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Improving emission inventories using direct flux measurements and modeling. Gunnar Schade , PI Don Collins, Qi Ying (Co-PIs) Texas A&M University EPA STAR Meeting, 16 Nov. 2010. Overview. Brief Introduction The Yellow Cab tower challenges of an urban flux site - PowerPoint PPT Presentation

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Page 1: Improving  emission inventories using  direct flux measurements  and modeling

Improving emission inventories using direct flux measurements

and modeling

Gunnar Schade, PIDon Collins, Qi Ying (Co-PIs)

Texas A&M University

EPA STAR Meeting, 16 Nov. 2010

Page 2: Improving  emission inventories using  direct flux measurements  and modeling

Overview

• Brief Introduction• The Yellow Cab tower– challenges of an urban flux site

• Selected results from previous measurements– Energy exchange fluxes – CO2 and criteria pollutants– VOCs

• EPA STAR fund activities and measurements

Page 3: Improving  emission inventories using  direct flux measurements  and modeling

Introduction, I• Regional Air Quality (AQ) modeling improved– uses submodels for• emissions distribution (“inventory”)• atmospheric transport and chemistry

– Emissions Inventory (EI) often assumed as being known well

• Ambient AQ measurements challenge some EI assumptions; inadequate?

• Can the EI be improved?

Page 4: Improving  emission inventories using  direct flux measurements  and modeling

Introduction, II• Past efforts of EI improvement– multivariate source apportionment using ambient

AQ (concentration) data– ‘real-world’ emission measurements (tunnel studies)– AQ model studies

• Our approach– micrometeorological flux measurements– top-down – bottom-up comparison– EI model AND AQ model testing

Page 5: Improving  emission inventories using  direct flux measurements  and modeling

Site Description, I

Page 6: Improving  emission inventories using  direct flux measurements  and modeling

Site Description, IIland use

land cover

Page 7: Improving  emission inventories using  direct flux measurements  and modeling

Hardy / Elysian Roads

Page 8: Improving  emission inventories using  direct flux measurements  and modeling

Traffic Counts

Hardy (south bound) Elysian (north bound)

Quitman Road (east/west bound)

Page 9: Improving  emission inventories using  direct flux measurements  and modeling

How it looks like

Page 10: Improving  emission inventories using  direct flux measurements  and modeling

Tower Measurement Setup

3/8’’ and 1/4“ OD PFA Tubes

Lag time ≈ 9 s

BaseBuilding

60 m

50 m

40 m

20 m

13 m Relaxed Eddy Accumulation GC-

FID

PC

Wind data (10 Hz)

w

DL

CO2 / H2O

slow: CO, NOx, O3

EC

gradient

Tower

PAR pyranometer

net radiation

Sonic

WS/WD aspirated T/RH

N

20-m

gra

dien

t

Page 11: Improving  emission inventories using  direct flux measurements  and modeling

Tower installations

Page 12: Improving  emission inventories using  direct flux measurements  and modeling

The challenge

‘Ordinary’ flux site• homogeneous land cover

– well-defined footprint (MO theory)

– well-defined flux contributors– limited variability

• access to surface sites– upscaling / downscaling– targeted manipulations

• process studies– attention to detail

Urban flux site• heterogeneous land cover

– ill-defined footprint• roughness sublayer

– ill-defined flux contributors– high variability

• limited access– private property– undocumented activities

• ‘chaos’ studies– attention to averages/medians

Page 13: Improving  emission inventories using  direct flux measurements  and modeling

Energy exchange fluxes, I

Page 14: Improving  emission inventories using  direct flux measurements  and modeling

Energy exchange fluxes, II

delayed sensible heat flux

significant latent cooling

large heat storage and

release (with hysteresis)

summer

winter

Page 15: Improving  emission inventories using  direct flux measurements  and modeling

Carbon dioxide (CO2) fluxes, I

summer

winter

Page 16: Improving  emission inventories using  direct flux measurements  and modeling

Carbon dioxide (CO2) fluxes, II

weekdays

weekends

Page 17: Improving  emission inventories using  direct flux measurements  and modeling

Carbon dioxide (CO2) fluxes, III

Page 18: Improving  emission inventories using  direct flux measurements  and modeling

Criteria Pollutant Fluxes, I

Summertime (multi-month) medians

Page 19: Improving  emission inventories using  direct flux measurements  and modeling

Criteria Pollutant Fluxes, II

Page 20: Improving  emission inventories using  direct flux measurements  and modeling

Criteria Pollutant Fluxes, III

CO-Flux ≈∆CO/∆CO2 x FCO2

rush-hour only

Page 21: Improving  emission inventories using  direct flux measurements  and modeling

Criteria Pollutant Fluxes, IV

TexAQS 2006

Page 22: Improving  emission inventories using  direct flux measurements  and modeling

VOC fluxes, I

Page 23: Improving  emission inventories using  direct flux measurements  and modeling

VOC fluxes, II

Page 24: Improving  emission inventories using  direct flux measurements  and modeling

VOC fluxes, II

Page 25: Improving  emission inventories using  direct flux measurements  and modeling

STAR grant activities

• continued (improved) measurements (G. Schade)– criteria pollutants (ongoing) and VOCs (2011+2012)– gradient (CP, ongoing) and REA flux (VOCs, 2011+2012)– potentially EC CO fluxes (loaned instrument; 2011)

• additional aerosol (flux) measurements (D. Collins)– particle number fluxes (2011+2012)

• modeling (G. Schade, Qi Ying)(ongoing)• (more detailed) ground survey– GIS improvements (ongoing)– roadside measurements (2011 or 2012)– ‘undocumented’ emissions (2011)

Page 26: Improving  emission inventories using  direct flux measurements  and modeling

Aerosol flux measurements, I

Novel REA particle flux setup

Page 27: Improving  emission inventories using  direct flux measurements  and modeling

Aerosol flux measurements, II

• approx. 80 m SS tubing, laminar flow– insulated – size-dependent line loss tests

• one or two instruments– Initial measurement with DMA• accumulate density measurements over 30 min

– APS installed and to be used if losses not excessive particle flux per size range per half hour

Page 28: Improving  emission inventories using  direct flux measurements  and modeling

Modeling, I

• GIS data• footprint models overlay• ground survey of sources• tracer release experiment

Page 29: Improving  emission inventories using  direct flux measurements  and modeling

Modeling, II

• Source apportionment– concentration AND flux data– CMB and PMF methods

• MOBILE6 vs. MOVES• CMAQ episode modeling– alternate input based on measurements– hindcast optimization

Page 30: Improving  emission inventories using  direct flux measurements  and modeling

MOBILE6 versus MOVES: Population normalized emission factors with vehicle speed (2-axle vehicles)

Page 31: Improving  emission inventories using  direct flux measurements  and modeling

Roadside measurements

• chemistry? depositional loss?

• A&M trailer; line power from pole• subset of instruments• simultaneous traffic counts• QUIC plume modeling

Page 32: Improving  emission inventories using  direct flux measurements  and modeling

Expected Results

• Identify (and characterize) EI short-falls– example: missing isoprene and MACR emissions

• Temporal and spatial characterization of emissions, including CP and VOCs– example: road versus non-road

• Improve modeling hindcasts– characterize needed EI changes

• Improve forecasts

Page 33: Improving  emission inventories using  direct flux measurements  and modeling

Acknowledgements• Greater Houston Transportation

Company (Yellow Cab)• Texas Air Research Center (TARC)• EPA• Bernhard Rappenglück, UH• TCEQ