Isha
Goyal
,
Puneet Kumar
Verma
,
Vipin
Singh
,
K. Maharaj
Kumari
and
Anita
Lakhani
*
Department of Chemistry, Dayalbagh Educational Institute, Agra-282005, India. E-mail: anita.lakhani01@gmail.com; anitalakhani@dei.ac.in
First published on 25th October 2022
This study focuses on spatio-temporal variation in air quality caused by the nationwide lamp event of nine minutes named as the “#9 pm 9 min event” during the historic lockdown in the first wave of the COVID-19 pandemic across India in the year 2020. Due to the Janta curfew (March 22, 2020) and the lockdown (from March 25 to May 31, 2020), the concentration of pollutants like fine particulate matter (PM2.5), trace gases such as nitrogen dioxide (NO2), sulphur dioxide (SO2), and carbon monoxide (CO), and volatile organic compounds (VOCs), namely benzene and toluene reduced significantly in the six most polluted cities, i.e., Agra, Ghaziabad, Lucknow, Meerut, Noida and Varanasi in the Indo-Gangetic Plain (IGP), while the concentration of ozone increased. A maximum decline in PM2.5 concentrations was observed in Noida (43%), followed by Ghaziabad (39%), Lucknow (33%), Meerut (25%), Agra (23%) and Varanasi (5%) during phase-1 (P1) of lockdown in comparison with the period before lockdown. Similar to PM2.5, other pollutants also decreased at all sites under consideration. This event (lamp event, #9 pm 9 min event) offered an exclusive opportunity to study the effects of burning oil lamps or candles in an open environment with minimum industrial and vehicular emissions. The decline in pollution levels reversed in the wake of the lamp event, which resulted in a sharp increase in pollutant concentrations, except for ozone levels. PM2.5 mass concentrations were significantly correlated with benzene (0.7) and CO (0.7), whereas toluene was moderately correlated with benzene (0.5). Principal component analysis (PCA) also revealed that increases in the concentrations of PM2.5, NO2, CO, benzene and toluene were largely due to oil-based emissions. The study points out that future policy initiatives should take into account the changes in air quality which were seen during the lamp event. These changes have reinforced the necessity for comprehensive action across all emission sectors to achieve significant air quality improvements. It is also advised that people should strictly follow the guidelines issued by the government during such events.
Environmental significanceThe peer-reviewed literature includes assessments of air quality and unexpected pollution levels during the lamp event over the Indo-Gangetic Plain in the first wave of the COVID-19 pandemic. During phase-1 of lockdown, levels of atmospheric pollutants such as PM2.5, SO2, NOx, CO, benzene and toluene dropped in ambient air in all the considered sites, while ozone levels increased. However, PM2.5 levels increased unusually, followed by benzene, toluene, NOx, and CO while the concentration of ozone decreased in ambient air during the lamp event. The study indicated that pollution trends got reversed during the lockdown. However, this is the first work that relates the impact of the lamp-event named as the #9 pm 9 min event on the atmosphere in an open environment with minimum industrial and vehicular emissions during phase-1 (P1) of the lockdown period during COVID-19. This study concludes that emissions from small lamps, candles, oil-lamps, etc. on a large scale can play an important role in transforming ambient pollution levels. The study could add new aspects to the field of atmospheric sciences by correlating substantial emissions from the use of oil-based lamps and candles with air pollutants like PM2.5, benzene, and toluene in the absence of conventional pollution sources like industries and vehicular activity. |
In response to the global pandemic, the Government of India (GoI) declared a nationwide lockdown of 21 days from March 24 to April 14, extending further to May 31, 2020.7 Indian lockdown was a historical event, which locked almost 1.3 billion people inside their homes, and most of the governmental, social and community mobility activities were restricted completely. Industrial and mass transportation were banned, except for “essential services” including water, electricity and health services.8 Further, as a collective measure and as a token of appreciation for the entire medical community and armed forces for their services, Indian Prime Minister, Mr Narendra Modi urged Indians to light candles or oil lamps (diyas) or hold torches for 9 minutes at 9:00 pm (21:00 h) on April 5, 2020. This was thought to be a symbolic gesture for the collective strength of 1.3 billion Indians that would strengthen the country in the fight against the COVID-19 pandemic. In response to this appeal, millions of Indians across the country lit candles, oil lamps and electrical flashlights at 9:00 pm for 9 minutes on April 5, 2020 to express their spirits, i.e., “collective resolve and solidarity” towards the fight against Coronavirus.9 Perhaps , in over-enthusiasm, many citizens considered it as a call to celebrate early Diwali (the festival of lights) and took this call to set off firecrackers further. Consequently, the air quality in several Indian cities began to degrade (https://www.indiatoday.in/diu/story/coronvirus-lockdown-april-5-fireworks-air-quality-1664276-2020-04-07). The exhaust fumes of candles made with different waxes and finishing chemicals have shown the presence of dibenzofurans (PCDF), polychlorinated dibenzo-p-dioxins (PCDD), a few chlorinated pesticides, polycyclic aromatic hydrocarbons (PAH), and a few VOCs, even, the composition of combustion products is comparable to that of diesel engine fumes as well.10,11 Similar oil-based emissions from rituals and religious activities have also been reported which significantly contribute to India's total carbonaceous aerosol emissions, amounting to 102 Gg per year for organic carbon and 73 Gg per year for black carbon.12 Hence, the burning of candles or oil-lamps and a few instances of bursting crackers during the lamp event were thought to be the main causes of the high levels of particulate matter (PM) and gaseous pollutants like CO and VOCs. Although several studies have explored the air quality in various parts of India during the complete lockdown,4,7,13–16 none have explored the impact of the lamp event on air quality. This study explicitly investigates how the lamp event influenced ambient air quality during this rare occasion through a comprehensive analysis of both temporal and diurnal variations of several air pollutants.
Fig. 1 Selected cities used for the study of air pollutants along with their population density (in per km2). Source: Google Earth. |
Stations, locations | Latitude, longitude | Population density (in per km2)27 | Site description, pollution sources |
---|---|---|---|
Sanjay Place, Agra (A) | 27° 10′ N, 78° 05′ E | 1093 | Commercial site, vehicular exhaust, road dust, domestic cooking, industries (point source & area source), garbage burning & agriculture waste burning28 |
Loni, Ghaziabad (G) | 28° 40′ N, 77° 28′ E | 3971 | Industrial site, vehicular exhaust, road dust, construction & demolition activities, industries29 |
Gomti Nagar, Lucknow (L) | 26° 55′ N, 80° 59′ E | 1816 | Commercial site, vehicular exhaust, road dust, construction & demolition activities, industries (point source & areas source), garbage burning & agriculture waste burning30 |
Ganga Nagar, Meerut (M) | 29° 01′ N, 77° 45′ E | 1346 | Commercial site, vehicular exhaust, road dust, construction & demolition activities, industries (point source & areas source), domestic cooking, garbage burning & agriculture waste burning31 |
Sector-1, Noida (N) | 28° 54′ N, 77° 33′ E | 2463 | Industrial site, vehicular exhaust, road dust, construction & demolition activities, industries (point source & areas source), garbage burning & agriculture waste burning32 |
Ardhali Bazar, Varanasi (V) | 25° 20′ N, 83° 00′ E | 2395 | Commercial site, vehicular exhaust, road dust, domestic cooking, construction & demolition activities, garbage burning & agriculture waste burning33 |
To obtain a better insight into the variation in the concentration of pollutants during P1 of the lockdown (March, 25 to April 14, 2020), the data of Agra and Varanasi, during the same period, from the year 2015 to 2019, were analysed and compared with P1 of the lockdown. This facilitated minimising the effect of meteorological conditions. Missing records, incorrect data, and outliers in the observation were excluded from the study and considered invalid data. During the analysis period, only sites with more than 80% valid data were explored for the study.
To explore the specific characteristics of the lamp event, the temporal variation of PM2.5, NO2, SO2, CO, O3, benzene, toluene and planetary boundary layer height (PBLH) at Agra was further analysed during the second week of P1 of lockdown (April 3 to April 8, 2020) with a time resolution of one-hour. High-resolution data (averaged over 15 min intervals) of PM2.5, benzene and PBLH were also assessed to examine the intense effect of the lamp event. The data of PBLH were computed from the final run data archive of the Global Data Assimilation System Model using NOAA (National Oceanic and Atmospheric Administration), Air Resources Laboratory (ARL), and Hybrid Single-Particle Lagrangian Integrated Trajectory (HYSPLIT) Models (https://www.arl.noaa.gov/ready/hysplit4.html) for Agra at 1:00 h (UTC) during the study period.18
PM2.5 is quantified using the beta attenuation principle, while nitrogen oxides are measured using the chemiluminescence technique. Carbon monoxide is measured using the nondispersive infrared (NDIR) method with gas filter correlation. The principle of pulsed UV fluorescence is used to analyse SO2, whereas the UV photometric approach is used to analyse ozone. Benzene and toluene are measured using online gas chromatographs.19 Using state-of-the-art technology, all the meteorological parameters, such as AT, RH, WD, WS, SR, and RF, are measured using meteorological instruments, which transmit automated data every 15 minutes on the online portal of CAAQMS. Capacitive methods are adopted for measuring AT and RH and an ultrasonic anemometer is used for measuring WS and WD. SR is measured using a pyranometer and RF is determined using a tipping bucket. CPCB provides quality assurance and data quality after following a rigorous protocol for the sampling, analysis and calibration, which is ensured as per the standards set by CPCB, India (https://cpcb.nic.in/quality-assurance-quality-control/).
PCA is the most frequently used technique for multivariate statistical analysis among several available alternatives.20 PCA reduces the multidimensionality of a large dataset having a number of variables by converting it to an easily interpretable small dataset with a new set of components or factors which denote the variables of an old dataset having linear combinations between them.5 These new factors are arranged according to the computed percentage variance. This technique is widely used to identify air pollution sources.21–26 PCA was performed using 15 min (number of data points: 192 in each city) average concentrations of PM2.5, NO2, SO2, CO (except for Lucknow and Varanasi), ozone, benzene and toluene on April 5–6, 2020 acquired from the selected CAAQM stations. PCA was accomplished by the Varimax Rotation to improve the orthogonality of resolved factors using SPSS software (version 16.0). Principal component (PC) extractions were made by considering eigen values ≥1.
Period | Before lockdown | During P1 of the lockdown | Ref. | |
---|---|---|---|---|
a https://www.nytimes.com/2020/03/24/world/asia/india-coronavirus-lockdown.html. b https://www.livemint.com/news/india/pm-modi-announces-extension-of-lockdown-till-3-may-11586839412073.html. c https://www.ndtv.com/india-news/nationwide-lockdown-over-coronavirus-extended-for-two-weeks-beyond-may-4-2221782. d https://firms.modaps.eosdis.nasa.gov/map/. e No activity was performed during the period. | ||||
Duration | March 1 to March 24, 2020 | March 25 to April 5, 2020 | April 6 to April 14, 2020 | , , |
Crop (Rabi) cycle | Wheat growing | Harvest | Harvest | 34 |
Fire counts per day | 36 | 35 | 46 | |
Vehicular exhaust | Unrestricted | Restricted movement/only essential services | Restricted movement/only essential services | 35 |
Road dust | Normal | No change | Same as from March 25 to April 5, 2020 | 35 |
Industries | Unrestricted | Completely closed | Completely closed | , |
Power plant | Unrestricted | 44% reduction in power demand due to the complete closure of almost all industries | Same as from March 25 to April 5, 2020 | 9 |
Local coal combustion | Normal | 95% reduction in coal combustion sources | Same as from March 25 to April 5, 2020 | 35 |
Biomass burning | Unrestricted | Reduced by appx. 25% w.r.t. before lockdown | Same as from March 25 to April 5, 2020 | 35 |
Stubble burning | Nile | Nile | Slight | 34 |
As a general trend, it has been observed that during P1 of the lockdown, all the cities under consideration experienced a significant reduction in PM2.5 concentrations below the National Ambient Air Quality Standards (NAAQS; 60 μg m−3 for 24 h) (ESI Table 1†). A decrease of 23.4, 38.7, 32.5, 25.3, 43.4 and 5.1% was observed for PM2.5 concentrations during this phase at Agra, Ghaziabad, Lucknow, Meerut, Noida and Varanasi, respectively (ESI Table 1†). An eloquent improvement in the concentrations of PM can be attributed to a conspicuous reduction in vehicular traffic, a halt in construction activities and industrial shutdown.5
Moreover, a substantial decrease in the concentrations of PM2.5 was observed in Noida and Ghaziabad among the explored cities (ESI Table 1†).8 This is most likely a result of the CAAQM stations being positioned in the industrial region of these cities (Noida and Ghaziabad), as shown in Table 1. Additionally, these cities have been impacted by the sudden halt on the workplace mobility activity during P1 of the lockdown as shown in ESI Fig. 1.†
Fig. 2, portrays 24 h mean PM2.5 values at the selected sites between March 1 and April 14, 2020. A variation of 10–150 μg m−3 was noted for 24 h mean PM2.5 concentrations, with peak values of 70–150 μg m−3. A reduction in the concentration of PM2.5 was observed during March 5–6, March 14 and then later on March 27–28, 2020, which was associated with rain events (1.0–9.0, 0.1–14.3 and 0.2–7.0 mm of rainfall, respectively). The rain washout effect reduced PM2.5 concentrations to 35 μg m−3 (and ∼50 μg m−3) on March 5–6 (and March 14, 2020) before lockdown. However, a similar drop in PM2.5 levels was observed during the first week of the lockdown due to strict control measures. After the first week of lockdown (March 25 to March 31, 2020), an increase in PM2.5 was recorded for 3–4 days in the second and third weeks of P1. This is likely due to regulations (relaxations) that allowed residents to move for essential services.5,36 Additionally, power plants and essential industries, located outside COVID-19 infected regions (Red and Orange Zones), were permitted to operate in a controlled manner.8 A decrease of 15–60% in PM2.5 concentration was observed during the first week of the lockdown (ESI Fig. 2†). Overall, the PM concentration was lowest during the first week of lockdown with a substantial drop in air quality indices. However, PM2.5 levels were still higher than the average 24 h concentration of PM2.5 (25 μg m−3) as recommended by the WHO37 which has been revised downwards to 15 μg m−3.38 Additionally, 38% of days had AQI, within the moderate category during P1 of lockdown, whereas before lockdown, 88% of days had an unhealthy AQI. However, from April 4, 2020 onwards, the air quality was in the unhealthy category probably due to conditional relaxations in lockdown (Table 2).
A reduction in the concentrations of VOCs namely benzene and toluene was also observed. These VOCs largely emanate from the burning of coal, vehicular exhaust, evaporation from fuel tanks and industries.39 The average concentrations of benzene before lockdown were 3.1, 0.5, 0.5, 0.4 and 4.2 μg m−3, which reduced to 2.4, 0.2, 0.4, 0.2 and 3.4 μg m−3 at Agra, Ghaziabad, Meerut, Noida and Varanasi, respectively during P1 of the lockdown. It was noticed that the average concentration of benzene increased from 2.0 to 2.6 μg m−3 at Lucknow during P1 of lockdown as compared to the concentration before the lockdown period. The concentration of toluene ranged from 1.3 to 11.7 μg m−3 before the lockdown period, and it decreased to 0.6–6.8 μg m−3 during P1 of lockdown accounting for a decrease of 42–83% at the different stations (ESI Table 1†). Among benzene and toluene, the concentration of benzene was always within the standards prescribed by NAAQS as shown in ESI Fig. 3(a and b).†
Even, trace gases, NO2, SO2 and CO, which are released from factories, burning of biomass and road transportation, decreased by a factor of 2–3, as shown in ESI Fig. 3(c–f).† NO2 levels were 20–55 μg m−3 and 4–46 μg m−3 before and during P1 of the lockdown period respectively in the IGP denoting a considerable decline. The maximum drop of NO2 was observed at Noida (70%) and the minimum at Agra (9%) with an exceptional increase at Varanasi (62%) (ESI Table 1†). However, the SO2 level was found to be increased at Agra (0.5%), Ghaziabad (12.3%), Noida (2.7%) and Varanasi (18.8%), while, the maximum drop in SO2 concentration was noticed at Lucknow (i.e., 15%) (ESI Table 1†). CO levels declined from 1–3 mg m−3 to 0.3–1.5 mg m−3 over the selected CAAQM stations (ESI Fig. 3(e)†). The maximum drop of the CO level was in Noida (30%) and minimum in Meerut (7%) with an exceptional increase in Ghaziabad (3.1%) (ESI Table 1†). Conversely, photochemically produced O3 increased from 5–55 μg m−3 (before lockdown) to 12–61 μg m−3 (during P1 of lockdown) (ESI Fig. 3(f)).† This contrasting trend of O3 was attributed to increased solar radiation and a decline in NO2, which encourages photochemical reactions producing ozone.40
A comparison of the mean concentration of criteria pollutants, during March 25 to April 14 in 2015–2019 and 2020 (P1 of the lockdown period) is shown in Table 3. The period 2015–2019 was selected to minimize the influence of meteorological parameters. There was almost 48% reduction in the concentration of PM2.5 at Agra, while in Varanasi we observed a decline of 50%. As the vehicular and industrial activities have a direct effect on NO2 levels, a notable reduction in the NO2 level was observed during P1 of the lockdown. NO2 levels increased in Agra by 63%, while 36% decrease was noticed in Varanasi. A similar increase in NO2 levels was also observed at Jorapokhar, Ludhiana, Noida, Thiruvananthapuram and Patna.41 The highest increase of 240% was observed in the concentration of SO2 in Agra and for Varanasi it was 113%, the probable reason of this increasing trend might be that no restrictions were imposed on thermal power plants, although power consumption was reduced.9,41 Similar to SO2, benzene levels increased by 26% in Agra and 277% in Varanasi. The concentration of ozone and toluene decreased by 37 and 27% respectively in Agra, while, a 2% and 126% increase was observed in the concentration of ozone and toluene respectively in Varanasi. O3 levels in most of the cities of northern India were found to increase (13.1–60.5 μg m−3 range) during P1 of the lockdown period in comparison to before lockdown whereas, it showed the reverse trend at Agra with respect to the mean concentration in 2015–2019. This may be attributed to the increase in NOx levels (as a precursor of ozone formation). In Agra, levels of CO decreased by 20% (for Varanasi data were not available for the year of 2020).41
Parameters | Agra | Varanasi | ||||
---|---|---|---|---|---|---|
2015–2019 | 2020 | % Change | 2015–2019 | 2020 | % Change | |
a Data were not available. | ||||||
PM2.5 (μg m−3) | 81.5 ± 27.2 | 42.6 | −48 | 114.2 ± 58.6 | 57.1 | −50 |
NO2 (μg m−3) | 27.9 ± 13.1 | 45.4 | 63 | 51.3 ± 33.6 | 32.6 | −36 |
SO2 (μg m−3) | 7.8 ± 4.6 | 26.7 | 240 | 15.4 ± 14.5 | 32.8 | 113 |
CO (mg m−3) | 1.2 ± 1.9 | 1 | −20 | 1.4 ± 3.7 | —a | —a |
Ozone (μg m−3) | 20.9 ± 13.4 | 13.1 | −37 | 37.7 ± 37.2 | 38.6 | 2 |
Benzene (μg m−3) | 1.9 ± 2.8 | 2.4 | 26 | 0.9 ± 1.0 | 3.4 | 277 |
Toluene (μg m−3) | 3.6 ± 4.5 | 2.7 | −27 | 3.0 ± 5.1 | 6.8 | 126 |
As mentioned earlier, the first week of lockdown resulted in a considerable reduction in the concentration of particulate matter at all CAAQM stations that peaked at approximately ∼50 μg m−3 (ESI Fig. 2†). However, twin peak (bimodal) behaviour seems to be a natural tendency of PM2.5 in the IGP with the tendency of rising in the morning and evening hours; however, from 8:00 h to 20:00 h it remains less than 45 μg m−3. It is vital to note that pollution levels vary considerably depending on whether the measurements are taken in urban or suburban areas of the IGP.8 Hence, to study the temporal variation of pollutants during the lamp event, Sanjay Place, Agra was selected as the urban site as all the parameters were available for this period for this site.
The temporal variations of PM2.5 (hourly mean), benzene, toluene with PBLH and NO2, SO2, CO and ozone are shown in Fig. 3 (upper panel) and Fig. 3 (lower panel), respectively, during April 3 to 8, 2020. The twin peak feature of PM2.5 was observed with large variability in PM2.5 concentrations. Moreover, PM2.5 varied from 10.3–62.4 μg m−3 and reached a maximum concentration (95 μg m−3) on April 5, 2020, between 20:00 h and 24:00 h due to the lamp event, and reduced to ∼50 μg m−3 from the next day onwards. The variation of PM2.5 concentrations and the notable increase of the PM2.5 levels during the evening hours may be attributed to emissions during the lamp event.
It is also evident from Fig. 3 that the concentrations of benzene and toluene also followed a similar diurnal pattern to PM2.5: higher concentrations during the night and lower during the day. This diurnal behaviour could be due to their greater dispersion during the day and accumulation during the night.5 However, it is interesting to note that on the morning of April 6, 2020, the maximum concentration of benzene (3.7 μg m−3) was observed probably due to its emissions remaining in the atmosphere. Benzene has a comparatively long atmospheric lifetime with a half-life varying from 3 to 10 days in the lower atmosphere and half-life of 7–22 days in the troposhere.47 Toluene levels spiked (5.5 μg m−3) on the morning of April 5, 2020, between 8:00 h and 12:00 h, before the event and then decreased followed by a substantial increase during the event at 20:00 h (4.3 μg m−3). The concentrations of benzene and toluene both significantly decreased during P1 of lockdown, emphasising the possible impact of COVID-19 lockdown on these pollutants, except during the lamp event.5
In addition to PM2.5 and VOCs, the variations of trace gases were also studied during the lamp event. The temporal variation of NO2 was similar to that of PM2.5 and VOCs. The peak value of NO2 was recorded at 9:00 h on April 4, 2020, and April 6, 2020, in the morning, however, the evening peak was highest on April 4, 2020 (54.9 μg m−3) followed by April 5, 2020 (53.2 μg m−3) between 20:00 h and 24:00 h. The temporal trend of CO levels showed a considerable change on April 5–6, 2020 with the highest concentration of 2.0 μg m−3 at 4:00 h in the morning of April 5, 2020, and the night peak disappeared by the next morning (April 6, 2020) at 4:00 h (1.4 μg m−3). There was no significant difference between the highest and lowest concentrations of the temporal trend of SO2 during the study period. The least variation of SO2 levels was recorded during this period.5 O3 levels are primarily caused by increased precursors in the presence of solar radiation, which creates a favourable atmosphere for photochemical reactions and leads to enhanced O3 production. O3 showed a typical pattern with a peak at mid-day between 12:00 h and 16:00 h. A bimodal peak was observed for O3 on April 5, 2020, with one peak around 12:00 h (17.5 μg m−3) in the noon and another between 21:00 and 22:00 h in the night (25.8 μg m−3). The day peak obviously is due to the photochemical production of ozone while the night peak may be attributed to the role of non-linear chemistry that increases the concentration of O3 in a VOC-limited environment when nitrogen oxides are reduced.5,6
Fig. 4 High resolution monitoring data (averaged over 15 min interval) of PM2.5 and benzene with PBLH on April 5, 2020. The yellow glow line highlights the lamp event at 21:00 h. |
In order to better understand the factors influencing PM concentrations, Pearson's correlation was determined between the 15 minutes data points of PM and the meteorological factors viz, RH, WS, SR and AT (ESI Table 2†). The correlation coefficient between RH and PM2.5 concentrations was 0.7, suggesting that RH (23% during the day, 50% during the night) exacerbates the accumulation and chemical reaction of pollutants. Relative humidity can affect PM concentrations by manipulating the particle mass and particle diameter through atmospheric physical and chemical processes. Similarly, SR and AT were negatively correlated with the PM2.5 concentration, indicating that small increases in solar intensity and temperature lead to lower PM2.5 concentrations. A weak negative correlation was found between the PM concentration and wind speed, indicating dispersion and dilution of particulate matter with high wind speeds blowing from a particular direction. On April 5, 2020, high PM concentrations were observed from south westerly winds.
It is also observed from the correlation matrix (ESI Table 2†) that PM2.5 has a strong significant (p < 0.05) correlation with benzene (0.8), CO (0.7) and RH (0.7), positive, but weak (r < 0.5) association with NO2 and toluene, and negative but non-significant (p > 0.05) relation with SO2 and ozone. This indicates the emission of PM2.5, CO and benzene in the atmosphere from similar sources, namely, fossil fuel combustion from vehicles, industries, and oil-based emissions. Additionally, NO2–CO (0.8), NO2–benzene (0.5), NO2–toluene (0.5), CO–benzene (0.7), CO–toluene (0.5) and toluene–benzene (0.5) also had a good correlation suggesting their similar origin. In addition, RH was also positively associated with NO2 (0.6), CO (0.5) and benzene (0.5), which leads to high emissions at night when relative humidity is high.
Variables | PC 1 | PC 2 |
---|---|---|
a Loading values ≥0.5 are represented in bold. | ||
PM2.5 | 0.8 | −0.1 |
NO2 | 0.8 | 0.2 |
SO2 | −0.0 | 0.8 |
CO | 0.9 | 0.1 |
Ozone | 0.0 | 0.7 |
Benzene | 0.9 | −0.0 |
Toluene | 0.7 | −0.1 |
Eigen values | 3.3 | 1.2 |
% Variance | 47.5 | 16.5 |
Cumulative % variance | 47.5 | 64.0 |
In PC2, the higher loadings of SO2 (0.8) and O3 (0.7) suggest atmospheric photochemical reactions leading to the formation of secondary aerosol at Agra (Table 4). On the other hand, it was not possible to analyse the association of O3 with PC2 or SO2 at particular sites in the present dataset (ESI Fig. 6†).
A major change in the concentration of these pollutants during the lamp event was studied and evaluated in the IGP. A remarkable increase in concentration was observed for PM2.5 followed by benzene, toluene, NOx, and CO, whereas the concentration of ozone decreased during this event in ambient air. As a result of the lamp event, PM2.5 levels suddenly rose at 21:00 h or later that night, which lasted for several hours. Additionally, a strong correlation was found between the concentrations of PM2.5 and benzene, and PM2.5 and CO, suggesting a possible contribution from oil-based emissions during the lamp event, which was confirmed by PCA. Furthermore, PCA output statistics revealed that higher PM2.5 and benzene loadings reflect a significant contribution of emissions from oil-lamps or candles near monitoring sites rather than vehicular and industrial emissions. From this study, it can be concluded that emissions from small lamps, candles, oil-lamps, etc. on a large scale can play an important role in transforming ambient pollution levels. This study advised that the changes in air quality that were observed during this type of event, which were primarily brought on by large-scale emissions in an open environment in India with baseline emissions, be taken into account in future regulatory attempts.
The above changes have even served to emphasize the need for comprehensive action across all emissions sectors in order to achieve significant air quality improvements. People are also advised to adhere strictly to the rules of such activities.
Footnote |
† Electronic supplementary information (ESI) available. See DOI: https://doi.org/10.1039/d2va00114d |
This journal is © The Royal Society of Chemistry 2023 |