Title: Source apportionment studies: relevance to air quality management
1Source apportionment studies relevance to air
quality management
Round table conference for transport
practitioners in India Transport and climate
change an action plan for mitigation November
27, 2008
- T S Panwar
- Energy Environment Policy, TERI
2Source Apportionment studies
- Overall coordination by CPCB and MoEF
- Technical committee headed by the Chairman, CPCB
- Steering committee headed by the Secretary, MoEF
- Currently ongoing in 6 cities (Delhi, Pune,
Bangalore, Mumbai, Chennai, Kanpur) - TERI Executing agency in Bangalore
- Financial support by CPCB and consortium of oil
companies (IOC, HPCL, BPCL, RIL)
3Source apportionment study why to quantify
the share of pollutionObjectives
- To measure air pollutant concentrations in
different parts of Bangalore (which includes
source specific hot spots viz.
kerbside/industrial zones) - To prepare emission inventory for different air
pollutants (including spatial/temporal
distribution) - To conduct source apportionment study of
particulate matter (essentially PM10 PM2.5) - To assess impacts of sources on AAQ under
different management options and draw a roadmap
for short/long term cost-effective measures.
4Overall approach
5(No Transcript)
6Ambient AQ monitoring
- Air Quality Monitoring (7 stations)
- Domlur (residential)
- Kamanahalli (residential)
- Victoria road (kerbside )
- Silkboard junction (kerbside)
- Peenya (industrial)
- Indira Gandhi Institute of Child Health
(Hospital) - Whitefield (background)
- Monitoring period one year covering 3 seasons
- (Sampling period different for various
pollutants) - Pollutants SPM, RSPM, PM 2.5, NOx, SO2, CO,
OC/EC, Ions, VOC(Benzene, 1-3 butadiene), Ozone,
Aldehyde, NMHC, HC, PAHs, molecular markers - Onsite weather monitoring (temperature,
humidity, wind speed/direction, insolation)
7Instruments at background monitoring location
8PM10/PM2.5 chemical characterisation
- PM samples collected in different seasons (3) at
various sites (7) analysed for - - Carbon (elemental and organic)
- Elements
- Ions (cations and anions)
-
- Focus on PM 10 chemical speciation. Only limited
chemical speciation of PM2.5 samples -
Samples collected on Teflon/Quartz filter and
analysed for- Carbon OC, EC Ions F, Cl, Br,
NO2, NO3, SO4, K, NH4, Na, Ca, Mg Elements Na,
Mg, Al, Si, P, S, Cl, Ca, Br, V, Mn, Fe, Co, Ni,
Cu, Zn, As, Ti, Ga, Rb, Y, Zr, Pd, Ag, In, Sn,
La, Se, Sr, Mo, Cr, Cd, Sb, Ba, Hg, and Pb
Molecular markers Alkanes, Hopanes, Alkanoic
acid, PAHs, Others (Selected)
9Emission Inventorisation
- Specific 2 km x 2 Km survey for various sectors
in the zone of influence around each of the
monitoring locations - Overall city level emission projections (based on
primary and secondary data) - Impact of alternative strategies in the various
sectors on emission loading - Sources considered
- Transport
- Industries, power plant
- Road dust re-suspension, Construction, DG sets,
Domestic,Hotels/restaurants/bakeries.
10Emission factors for Indian vehicles
- Source http//www.cpcb.nic.in/Source_Apportionmen
t_Studies.php - Draft report on emission factor development for
Indian vehicles by ARAI, Pune - Emission factors developed for various vehicle
categories, vintages and engine cubic capacities - Pollutants CO, HC, NOx, CO2, PM, Benzene, 1-3
Butadiene, aldehydes, PAH - Considered fuel effect and maintenance effect
- 62 emission factors developed (total 450 emission
tests) - However, sample size still a limitation
11Quantification using modelling tools
- CMB 8.2 Receptor model (USEPA)
- CMB Receptor model consists of a solution to
linear equations that express each receptor
chemical concentration as a linear sum of
products of source profile abundances and source
contributions. - The source profile abundances (i.e. the mass
fraction of a chemical from each source type) and
the receptor concentrations, with appropriate
uncertainty estimates, serve as input data to
CMB. - The output consists of the amount contributed by
each source type represented by a profile to the
total mass, as well as to each chemical species. - Source profiles for vehicular sources from ARAI,
other sources based on source profiling studies
by IIT Mumbai and default values based on
literature.
12Source Apportionment Analysis
13Air quality dispersion modeling
- ISCST3 (Industrial source complex short term)
model for assessing the air quality
concentrations under different scenarios. - Based on the emission inventory and onsite
meteorological data, ambient concentrations
predicted for PM10 and model validated against
observations - Future ambient concentrations (2012, 2017)
predicted under different scenarios using future
emission loads
14Air quality management plan
- On completion of data collection, analysis, and
interpretation of the assimilated information, a
detailed road map is to be drawn considering all
possible measures for air quality improvement
policy implications - Special focus on transport sector interventions
- (BS-V,BS-VI, Electric vehicles, Hybrid, CNG,
ethanol, bio-diesel, DOC,DPF) - Other interventions
- (Metro, ban on commercial vehiclesgt10yr, Shift
of PKT to public transport, Ban on new
industries, road-wall to wall paving, better
construction practices, DGsets IM) - These measures would be classified into short
term and long term
15Thank You