Indication of aerosol aging by Aethalometer optical absorption measurements Luka Drinovec1, Griša Močnik1, Irena Ježek1, Jean-Eudes Petit2,3, Jean Sciare2, Olivier Favez3, Peter Zotter4, Robert Wolf4, André S.H. Prévôt4, and Anthony D.A. Hansen1,5 1. Aerosol d.o.o., Kamniška 41, SI-1000 Ljubljana, Slovenia 2. LSCE (CEA-CNRS-UVSQ), Orme des Merisiers, Gif-sur-Yvette, France; 3. INERIS, Verneuil-en-Halatte, France 4. Paul Scherrer Institut, CH-5232 Villigen PSI, Switzerland 5. Magee Scientific, 1916A M.L. King Jr. Way, Berkeley, CA 94704, USA Keywords: Aethalometer, source apportionment, ACSM, AMS, PSCF Contact author email: luka.drinovec@aerosol.si Presenting author email: irena.jezek@aerosol.si ACCENT Symposium 2013, Urbino (Italy) 1. Introduction to BC measurements dm=472 nm Sources - Combustion dpp=20 nm Note change in scale Effects of black carbon (BC): - Public health effects - Climate change How to reduce harmfull effects: - Indentify sources: traffic vs household heating - Indentify sources: local vs. regional Analytical Instrument : Aethalometer™ Reference I0 BC ATN = ln (I0 / I) Light Detectors Light Source Filter with Sample • • • • Sensing I babs ~ ATN Collect sample continuously. Optical absorption ~ change in ATN. Measure optical absorption continuously : λ = 370 to 950 nm. Convert optical absorption to concentration of BC: BC (t) = babs(t) / - mass absorption crossection • Real-time data: 1 s/1 minute 3 400 Tape advance Tape advance Filter loading effect babs at 370 nm raw data compensated babs (Mm-1) 300 200 100 0 0 100 200 300 t (min) 400 500 BC vs ATN analysis – ambient data London Oct-Dec 2006 Roxbury Feb - June 1999 16000 1400 R2 = 0.90 14000 1200 Average BC in 1-ATN bin Average BC in 1-ATN bin k=0.005 k = 4.6 12000 10000 8000 Large loading effect 6000 Average BC per 1 unit of ATN 4000 Linear fit 1000 R2 = 0.117 800 k = 1.4 k=0.001 600 Average BC Linear fit 200 2000 0 Small loading effect 400 0 0 5 10 15 20 25 30 35 40 45 50 0 5 10 15 ATN 20 25 30 35 40 ATN BC (reported) = BC (zero loading) · { 1 - k · ATN } Linear reduction of the instrumental response due to loading of the filter fiber. Jump at the tape advance (similar to Virkkula (2007) model). • ambient data – no dependence of BC on ATN • slope k variable: site, source, aerosol age, composition • 5need to determine it dynamically – do not assume, rather measure 45 Dual spot Aethalometer – AE33 Filter with Sample Reference I0 BC1 Light Source Sensing I1 Sensing I2 BC2 ATN1 = ln (I0 / I1) ATN2 = ln (I0 / I2) Light Detectors Two parallel spots with different flow, therefore -> 370 mn 470 nm 520 nm 590 nm 660 nm 880 nm 950 nm 0,010 From different loading and attenuation loading compensation parameter k(λ) is calculated. 0,008 k() 0,006 0,004 Absorption data is compensated: 6 babs=babs1/(1-k*ATN1) 0,002 Payerne Winter 2013 0,000 12.1.2013 19.1.2013 26.1.2013 time 2.2.2013 9.2.2013 BC source apportionment • measure attenuation with the Aethalometer • absorption coefficient - babs • for pure black carbon: babs ~1/λ • generalize Angstrom exponent: babs ~1/λα diesel: α ≈ 1 wood-smoke: α ≈ 2 and higher J. Sandradewi et al., A study of wood burning and traffic aerosols in an Alpine valley using a multi-wavelength Aethalometer, Atmospheric Environment (2008) 101–112 7 BC source apportionment b(λ) = bwb (λ,wood) + bff (λ,fossil) λ = 470 nm, 950 nm bi(470 nm) / bi (950 nm) = (470 nm / 950 nm) - α = 1,0 ± 0,1 (fossil) Bond & Bergstrom 2004 α = 2,0 -0,5/+1,0 (wood) Kirchstetter 2004, Day 2006, Lewis 2008 BCwb BCff 8 Sandradewi 2008 Measurement campaign EMEP: summer 2012 & winter 2013 Paris site - SIRTA Atmospheric Research Observatory - located in a semi-urban environment - 25 km south of the Paris city center Payerne site - Payerne aerological station - Rural background site - NW Swiss Site Campaign BC (ng/m3) Biomass burning (%) Payerne Winter 2013 789 29 Summer 2012 593 10 Winter 2013 968 25 Summer 2012 671 4 Paris Back trajectory analysis Back trajectory analysis using Potential Source Contribution Function (PSCF) • Represents the probability that an air parcel may be responsible for high concentrations observed at the receptor site • 72h back trajectories calculated with Hysplit v4.9 • starting at 500m AGL An example: - PSCF analysis of BC - Paris winter 2013 Indentification of source locations - Angstrom exponent α obtained from AE33 spectral data - PSCF (Back trajectory analysis using Potential Source Contribution Function) α < 1.3 (traffic emissions) α > 1.3 (biomass burning) Paris – EMEP winter campaign 2013 Differentiation of fresh and aged aerosols 0,010 0,010 370 mn 470 nm 520 nm 590 nm 660 nm 880 nm 950 nm 0,008 370 nm 470 nm 520 nm 660 nm 880 nm 950 nm 0,008 0,006 k() k() 0,006 Payerne summer 0,004 0,004 0,002 0,002 Payerne winter 0,000 12.1.2013 0,010 19.1.2013 26.1.2013 2.2.2013 Spectral fingerprint 0,000 16.6.2012 9.2.2013 24.6.2012 28.6.2012 2.7.2012 6.7.2012 winter summer 0,009 0,008 Summer and winter aerosols have different optical properties - k(λ) 0,007 Average k() 20.6.2012 0,006 0,005 For background locations with aged aerosol loading effect at 880 nm (where BC is measured) is small! 0,004 0,003 0,002 0,001 0,000 300 400 500 600 700 (nm) 800 900 1000 Differentiation of fresh and aged aerosols - Compensation parameter k880nm obtained from AE33 - PSCF (Back trajectory analysis using Potential Source Contribution Function) k880nm>0.002 (fresh aerosols) k880nm<0.002 (aged aerosols) Paris – EMEP summer campaign 2012 Particle coating hypotesis Changes in k(λ) are caused by transparent coating SMPS: Fresh soot particle size = 20-50 nm Aged particle size > 100 nm Payerne Summer2013 Measurement fit1 fit2 fit1 + fit2 1200 Particle number 1000 800 600 400 200 0 10 100 -Particle diameter [nm] 1000 Particle coating hypotesis Coating factor (CF) – ratio between the sum of nonrefractory aerosol mass to BC: CF = (Org + NH4 + SO4 +NO3)/BC Aerosol mass spectrometers: ACSM & AMS (Aerodyne) -> Aerosol chemical composition is obtained 12 Org NH4 Conc. (g/m3) 10 SO4 8 NO3 6 4 2 0 16.6.2012 23.6.2012 30.6.2012 7.7.2012 Particle coating hypotesis – summer data -0,003 -0,002 AE33 compensation parameter -0,001 Paris Summer2012 campaign 0,001 0,002 0,003 0,004 0,005 30 (SO4 + NH4 + ORG) / BC k880 nm 0,000 25 ACSM 20 15 10 5 0 13.6.2012 20.6.2012 27.6.2012 4.7.2012 11.7.2012 Compensation parameter k880nm and coating factor correlate well. Summary Spectral absorption data from Aethalometer AE33 was used for BC source apportionment during EMEP campaigns in Paris (France) and Payerne (Switzerland). Back trajectory analysis using Potential Source Contribution Function (PSCF) was used to determine fossil fuel and biomass burning locations. PSCF: Aged aerosols have small k880nm Aethalometer and ACSM/AMS measurements were used for calculation of the coating factor (CF): Big CF = Small k880nm Acknowledgements The work described herein was co-financed by the EUROSTARS grant E!4825 and JRKROP grant 3211-11-000519. Measurements performed at SIRTA (LSCE) were funded by CNRS, CEA, the EU-FP7(2007-2013) 'ATRIS' project under grant agreement n°262254, the Primequal Predit 'PREQUALIF' project (ADEME contract n°1132C0020), and the DIM R2DS (AAP 2010) 'PARTICUL'AIR' project. Measurements in Payerne were conducted by the Swiss Federal Office for the Environment (FOEN). Thank you for your attention!