Post on 22-Mar-2020
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Air quality monitoring, emissioninventory and source apportionment
study for Indian cities
CASE STUDY :
BANGALORE SOURCE APPORTIONMENT
Earth Science and Climate Change Division,
TERI, New Delhi, INDIA
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Background
Non attainment cities and towns in India - Particulate matter
Air quality environment IMPROVEMENTS:•Identification and Quantification of emission sources•Prioritizing of sources•Evaluation of control options with regard to techno-economic and administrative/regulatory feasibility and viability•Formulation and implementation of city specific and National action plans
Viewing aboveFollow up to the Auto Fuel Policy Report-2003World-wide-Source Apportionment techniques -Urban air quality management
Study taken in six cities viz., Bangalore, Chennai, Delhi, Kanpur, Mumbai and Pune (2004 to 2011)TERI - Bangalore
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Objectives
To profile Ground Level Concentration (GLC) of air pollutants indifferent parts of the Bangalore city including background, residential,commercial/mixed areas and source specific “hot spots” viz.kerbside/roadside, industrial zones, etc.
To prepare inventory for different air pollutants, their emission rates andpollution loads from various sources along with spatial and temporaldistribution in Bangalore.
To apportion the sources of PM10 and PM2.5 (limited) and prioritize thesource categories for evolving Bangalore-specific air pollution management strategies/plan.
To assess the impact of sources on ambient air quality under differentmanagement/ interventions/control options and draw a roadmap ofshort and long term measures as considered appropriate and costeffective to ensure “cleaner air in Bangalore”.
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Study Framework
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Characteristics of Bangalore city
1
4
67
1. CSB (Kerbside)2. IGICH (Residential)3. Domlur (Residential)4. Victoria (Kerbside)5. Kammanahalli (Residential)6. Peenya (Industrial)7. Kanamangala (Background)
1
4
67
1. CSB (Kerbside)2. IGICH (Residential)3. Domlur (Residential)4. Victoria (Kerbside)5. Kammanahalli (Residential)6. Peenya (Industrial)7. Kanamangala (Background)
Bangalore U.A.
624 Km2
N
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12O55’00.30” N77 O37’18.41” EElevation 2912 ft
12O54’41.62” N77 O38’03.78” EElevation 2894 ft
12O55’41.57” N77 O37’38.41” EElevation 2939 ft
12O55’18.20” N77 O36’36.26” EElevation 2949 ft
12O54’18.62” N77 O37’01.11” EElevation 2907 ft
N
STUDYAREAS
13O01’28.15” N77 O30’39.92” EElevation 2975 ft
13O01’07.97” N77 O31’22.61” EElevation 2991ft
13O02’10.68” N77 O30’58.95” EElevation 2969 ft
13O01’48.47” N77 O29’57.69” EElevation 2955 ft
13O00’45.75” N77 O30’20.03” EElevation 3014 ft
N
Profiling of seven sites
Site Site Description
Predominant activity levels
Domlur Residential -High and medium income category population-Vehicular distribution shows 47% 2-wheelers, 34% cars, 16% auto-rickshaws and 3% heavy vehicles.
Kammanahalli Residential -Low and medium income category population-Vehicular distribution shows 57% 2-wheelers, 18% cars, 20% auto-rickshaws and 5% heavy vehicles.
Victoria Road Kerbside -Medium and low income category population-Vehicular distribution shows 47% 2-wheelers, 29% cars, 19% auto-rickshaws and 5% heavy vehicles.
CSB Kerbside -Mixed Population of all income groups-High volume of heavy-duty diesel (HDD) vehicles- Vehicular distribution shows 46% 2-wheelers, 27% cars, 13% auto-rickshaws and 14% heavy vehicles.
IGICH Hospital -Mixed Population of all income groups-Vehicular distribution shows 53% 2-wheelers, 22% cars, 19% auto-rickshaws and 6% heavy vehicles.
Peenya Industrial -Only one residential colony with medium and low income group population-High volume of heavy-duty diesel (HDD) vehicles - Vehicular distribution shows 57% 2-wheelers, 14% cars, 11% auto-rickshaws and 18% heavy vehicles.
Kanamangala, Whitefield
Background -Plantation in 70% area of zone of influence -Movements of tractors and plying of very few public transport buses and HDD vehicles.
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Ambient Air Quality Monitoring Network Design
Under common methodology, in order to address all the expected anthropogenic emission sources(including secondary pollutants) prevailing in Bangalore, monitoring of criteria as well as non-criteria pollutants were included. This provided insight to air quality issues including contribution from varioussources and extent of presence of secondary pollutants. The air quality sampling was conducted for three seasons: summer, pre monsoon and winter.The PM10 as well as PM2.5 samples were collected on different filter media to make detailed analysis of constituent fractions including tracer elements and molecular markers.Ambient air was characterized for SPM, PM10, PM2.5, SO2, NO2, CO, O3, Formaldehyde, VOCs (Benzene, 1-3 Butadine) OC, EC, Ions (11), Elements(36), Benzene, PAHs and molecular markers(11).
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Instrumentation at site
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Three Seasons Average (PM & Gaseous pollutants)
117
257
321
261
109
226
9295135
9047
95
3875 93
164
8962
137
7323 35 45 43 24 24 26
54
050
100150200250300350
DomlurKam
manaha
lliVicto
ria CSB
IGICH
Peenya
Backgrou
nd
Conc
entra
tion
( µµ µµg/
m³)
SPM RSPM PM10 PM2.5
SPM, RSPM levels highest at Traffic (Victoria Rd. & CSB) and Industrial (Peenya) Also, one of the residential location (Kammanahali) shows high values. PM2.5 values are higher at traffic locations
13 9 13 11 9 10 10
3177 66
44 57 5141 33 28 2542 34 40
12102077 2027 2017 2083
31881349
33
1
10
100
1000
10000
DomlurKam
manah
alli
Victoria CSB
IGICH
Peeny
aBac
kgrou
nd
Conc
entra
tion
( µµ µµg/
m³)
SO2 NO2 O3 (ppb) CO
Annual NOx standards are violated at Traffic location (but remain under 24-hourly std.)SO2 remains within the limits (both annual and 24 hrly) at all locationsCO concentrations violate the limits (8h) at all locations except Background Residential O3 levels are within the standards at all the locations (std. 8hr: 90 µg/m³ = 46 ppb)
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Mass distribution of chemical species in PM10 and PM2.5 samples : Three seasons average
35% 25% 19% 20%34% 29% 36%
31% 43% 55% 52%36% 42% 32%
34% 31% 25% 28% 29% 28% 32%
0%20%40%60%80%
100%
DomlurKam
manah
alli
Victori
a
CSB
IGIC
HPee
nya
Backg
round
Ions Carbon Elements Molecular Marker
27% 16% 20% 25% 34% 35% 45%
30% 47%64%
72% 56% 56% 38%40% 36%
16% 2% 9% 7% 16%
0%20%40%60%80%
100%
DomlurKam
manah
alli
Victori
a
CSB
IGIC
HPee
nya
Backg
round
Ions Carbon Elements Molecular Marker
PM2.5
PM10
Carbon content highest at kerbside and lowest at background & Domlur (residential) locations
Ionic content maximum at background - shows enhanced contribution by secondary particulates
Share of elements decreases at most of the locations in the case of PM2.5 as compared to PM10; probably depicts lesser influence of coarser elements
Kerbside locations show significant increase in carbon content in PM2.5 as compared to PM10indicating enhanced contribution in the finer particle range by sources such as vehicles
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S. No. Site Site description
Indicative sources
1 Silk Board Traffic Motor vehicle exhaust, secondary particulate matter, construction activities, natural soil, road dust
2 Victoria road Traffic Motor vehicle exhaust, natural soil, road dust, biomass burning, secondary particle formation
3 Peenya Industrial Road dust, residual oil burning, crustal soil dust, industrial sources, metal industries, motor vehicle exhaust, construction activities
4 Domlur Residential Soil and road dust, secondary particle formation, motor vehicle exhaust, storm water drain, biomass burning
5 Kammanahalli Residential Road dust, coal combustion, vegetative burning, secondary particle formation, resuspended soil, motor vehicle exhaust
6 IGICH Hospital/Residential
Road dust, natural soil, secondary particle formation, construction activities, motor vehicle exhaust, incinerator combustion
7 Kanamangala/Background
Background Natural soil, crustal source, road dust, vehicular sources, biomass burning, secondary particle formation
Overall: vehicle exhaust, road dust, secondary particulates, construction activities, biomass burning
Factor Analysis- Source Identification
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CMB- Source Quantification
PM10
Transport 19.0%
DG sets13.0%
Paved road & Soil dust
50.6%
Secondary8.7%
Industrial 4.5%
Domestic4.2%
PM2.5
Transport 49.9%
Paved road & Soil dust
3.5%Domestic
5.8%
DG sets24.7%
Industrial 3.5%
Secondary12.7%
Share of transport sector increases from 19% in PM10 to 50% in PM2.5Share of anthropogenic sources eclipsed by dust contributions in case of PM10DG sets :important source. Contribution is 13% & 25% in PM10 and PM2.5. Contribution of industries to the particulate matter is low. Domestic sector also has a small contribution in both PM10 and PM2.5. Share of secondary particulates is higher in PM2.5 than in PM10, depicting their finer size
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Total pollution loadPM10 - 54.4 T/d NOX – 217.4 T/dSO2 – 14.6 T/d
PM10
Transport42%
Road Dust20%
Domestic 3%
DG Set7%
Industry14%
Hotel0%
Construction14%
NOx
Transport68%
Domestic 1%
DG Set23%
Hotel0%Industry
8%
SO2
DG Set23%
Transport16%
Domestic 5%
Industry56%
Hotel0%
Emission inventory – city level (2007)
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Source contribution based on emission inventory, dispersion modelling & receptor modelling approach (PM10; 2007)
PM10
Transport 19.0%
DG sets13.0%
Paved road & Soil dust
50.6%
Secondary8.7%
Industrial 4.5%
Domestic4.2%
Receptor Modelling (all season)
Transport44%
Road dust22%
Industries14%
Others20%
Dispersion Modelling (winter season)
Transport42%
Road Dust20%
Construction
14%
Domestic 3%
DG Set7%
Hotel0%
Industry14%
Emission Inventory (all season)
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Alternate scenario description :Estimated emission load for PM10 and NOx under the BAU and Alternate scenarios
Sectors Alternate-I Alternate-II Alternate-III Alternate-IV
TransportIndustriesDG setsRoad dust re-suspensionConstruction
Scenario with certain strategies to reduce the air pollution loads across various sectors.
Stringent scenario with many more strategies to reduce the air pollution load across various sectors as compared to Alternate- I scenario.
Scenario that contains additional set of measures that are not a part of the common control options as per the chart suggested by CPCB (for example, introduction of fuel efficiency standards, installation of control devices (DOC/DPF) on all diesel vehicles and DG sets).
Scenario with measures that are more oriented towards meeting the air quality standards in future
54.4
71.9
95.8
54.4 57.2
74.5
54.445.1
53.254.4
43.5
54.4
34.642.4
32.9
0
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50
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100
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PM e
mis
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load
s (T
/d)
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217
460
217
350
217217
299
217
122
321
254
227275258
131
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500
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Ox
emis
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load
s (T
/d)
BAU ALT-I ALT-II ALT-III ALT-IV
%PM reduction w.r.t. BAU Scenario 2012 2017 ALT-I -20% -22% ALT-II -37% -44% ALT-III -41% -55% ALT-IV -54% -64%
% NOx reduction wrt BAU Scenario 2012 2017 ALT-I -21% -24% ALT-II -29% -40% ALT-III -20% -35% ALT-IV -59% -73%
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Alternate scenario description :Estimated emission load for PM10 and NOxunder the BAU and Alternate scenarios
Sectors Alternate-I Alternate-II Alternate-III Alternate-IV
TransportIndustriesDG setsRoad dust re-suspensionConstruction
Scenario with certain strategies to reduce the air pollution loads across various sectors.
Stringent scenario with many more strategies to reduce the air pollution load across various sectors as compared to Alternate- I scenario.
Scenario that contains additional set of measures that are not a part of the common control options as per the chart suggested by CPCB (for example, introduction of fuel efficiency standards, installation of control devices (DOC/DPF) on all diesel vehicles and DG sets).
Scenario with measures that are more oriented towards meeting the air quality standards in future
54.4
71.9
95.8
54.4 57.2
74.5
54.445.1
53.254.4
43.5
54.4
34.642.4
32.9
0
25
50
75
100
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PM e
mis
sion
load
s (T
/d)
BAU ALT-I ALT-II ALT-III ALT-IV
217
460
217
350
217217
299
217
122
321
254
227275258
131
0
100
200
300
400
500
2007 2012 2017N
Ox
emis
sion
load
s (T
/d)
BAU ALT-I ALT-II ALT-III ALT-IV
%PM reduction w.r.t. BAU Scenario 2012 2017 ALT-I -20% -22% ALT-II -37% -44% ALT-III -41% -55% ALT-IV -54% -64%
% NOx reduction wrt BAU Scenario 2012 2017 ALT-I -21% -24% ALT-II -29% -40% ALT-III -20% -35% ALT-IV -59% -73%
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Contours for 24-hourly average PM10concentration (µg/m3) for BAU & alternate scenarios
• Alternate scenarios show a significant decrease compared to BAU scenario (both in 2012 & 2017)
• Alt. IV scenario, has maximum reduction and broadly all areas across the city conform to the ambient AQ standards in 2012 and 2017
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Alt III 2017
Alt IV 2017
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BAU 2007
• Alternate scenarios show a significant decrease compared to BAU scenario (both in 2012 & 2017)
• Alt. IV scenario, has maximum reduction and all the areas in the study domain comply against the residential area standards
Contours for 24-hourly average NOXconcentration (µg/m3) for BAU & Alternate scenarios
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BAU 2012
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S.No Strategy % reduction in total PM10emission loads in 2017
1 By-passing of trucks around Bangalore 13.8%
2 Installation of DOC and DPF devices in all pre-2010 diesel vehicles 13.0%
3 No power cuts leading to zero usage of DG sets 12.8%
4 Ban on 10 year old commercial vehicles in 2012 and 2017 12.5%
5 Ban on any new industries in city limits(6.2%) and fuel shift towards cleaner fuel NG (5.3%) in existing industries
11.5 %
6 Installation of DOC and DPF devices in DG sets 8.3%
7 Wall to wall paving for reduction of road dust 6.2%
8 Better construction practices 5.5%
9 Conversion of public transport (commercial 3 & 4 w) to CNG (25% in 2012 and 100 % in 2017)
4.0%
10 Improvement in inspection and maintenance for vehicles 2.5%
11 Inspection and maintenance for DG sets 1.9%
12 Enhancement of public transport system based on CNG (shift of PKT from private vehicles to public transport i.e. 10% in 2012 and 20% in 2017)
1.7%
13 Enhancement of public transport system based on diesel (shift of PKT from private vehicles to public transport i.e. 10% in 2012 and 20% in 2017)
1.5%
Prioritised list of key interventions in terms of reduction in total PM10 emission loads
in 2017
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Air Quality- Particulate matter of prime concern and NOX concentrations also of concern especially at kerbside. Emissions of pollutants- Both PM10 and NOX show a doubling over the next decade.Major contributors- PM : Transport, Road dust/construction, industry; NOX: Transport, DG sets Action plan
Multiple interventions required across various sectors in order to meet air quality standards in future. An action plan suggested in terms of control strategies, impact, responsible agencies, and time frame.
Achievement
Comprehensive AQ study for Bangalore city incorporating aspects related to monitoring, chemical characterisation, emission inventory, dispersion and receptor modelling – for apportionment of PM sources and development of an air quality management plan.
Way forward
Further Improvement in methodology, focus on fine PM mass and number, epidemiological PM health studies, replication in other urban cities and regional background stations
Key insights
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� Most of roads converted to one way route� Bypassing of HDDV form the city center
Other actions taken were:� Metro rail� CNG as an alternate fuel
Actions taken in Bangalore
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