Giancarlo
Ciarelli
*a,
Jianhui
Jiang
*bc,
Imad
El Haddad
c,
Alessandro
Bigi
d,
Sebnem
Aksoyoglu
c,
André S. H.
Prévôt
c,
Angela
Marinoni
e,
Jiali
Shen
a,
Chao
Yan
a and
Federico
Bianchi
a
aInstitute for Atmospheric and Earth System Research/Physics, Faculty of Science, University of Helsinki, Finland. E-mail: giancarlo.ciarelli@helsinki.fi
bShanghai Key Lab for Urban Ecological Processes and Eco-Restoration, School of Ecological and Environmental Sciences, East China Normal University, 200241 Shanghai, China. E-mail: jhjiang@des.ecnu.edu.cn
cLaboratory of Atmospheric Chemistry, Paul Scherrer Institute, 5232 Villigen PSI, Switzerland
dDepartment of Engineering “Enzo Ferrari”, Università di Modena e Reggio Emilia, Modena, Italy
eInstitute of Atmospheric Sciences and Climate, National Research Council of Italy, Bologna, Italy
First published on 12th July 2021
The spread of COVID-19 has posed serious challenges for the global communities. To reduce the circulation of the infection, governmental bodies have imposed different lockdown measures at various levels of complexity and duration. As a result, a substantial reduction in mobility might have important, yet unknown, implications for air quality. In this study, we applied the Comprehensive Air quality Model with eXtensions (CAMx) to investigate potential changes in air quality and its chemical composition over northern Italy and Switzerland during periods when lockdown measures were enforced. Our results indicated that lockdown measures reduced nitrogen dioxide (NO2) air concentrations by up to 46% and 25% in the Po Valley and Swiss Plateau regions, respectively, whereas fine particulate matter (PM2.5) air concentrations were reduced only by up to 10% and 6%. This highlights the importance of other emission categories other than traffic for the total PM2.5 levels. The analysis of the PM2.5 components indicated that elemental carbon (EC) and particulate nitrate (NO3−) were the species most affected by the lockdown measures, whereas a mild increase in the secondary organic aerosol (SOA) concentrations occurred in the Po Valley, and specifically over the metropolitan area of Milan. Our results indicated that an increase in the oxidation capacity of the atmosphere, i.e. in the ˙OH and ˙NO3 radicals, was mainly responsible for the mild increase in SOA concentrations.
As a response to this emergency, governmental bodies have enforced specific actions and recommendations to prevent the spread of the disease.5 In Europe, Italy was the first country to enforce a progressive set of lockdown measures aimed at increasing social distancing. On 21 February 2020, first lockdowns were enforced in the provinces of Lodi (Lombardy) and Padua (Veneto). These preliminary measures were later extended to the entire Lombardy on 8 March and to the entire nation on 9 March 2020. This has been followed by other European countries in the following weeks of March. As a result, population mobility, outdoor activities and gatherings were largely reduced.
Among all the economic sectors, the transportation of goods, commodities and people were the ones most affected by the restrictions. The transportation sector, i.e. on-road transportation, is the most important source of nitrogen oxides (NOx) emissions in Europe.6 NOx is deeply rooted in the atmospheric photochemical cycles, affecting the formation of secondary species such as ozone (O3) and secondary aerosols. The reactions leading to the formation of such species are complex, highly nonlinear, and involves numerous cycles and re-formation of several chemical species.7
After being emitted, nitrogen oxide (NO) rapidly reacts with the hydroperoxyl radical (˙HO2) to yield the hydroxyl radical (˙OH) and nitrogen dioxide (NO2). NO2 reacts with OH to form nitric acid (HNO3), which in the presence of ammonia (NH3), produces particulate nitrate. NOx also plays an important role during nighttime periods. Especially in urban areas, it depletes the O3 formed during intense photochemical activity and favors the formation of the nitrate radical (i.e. NO2 + O3 → ˙NO3), which additionally reacts with NO2 yielding dinitrogen pentoxide (N2O5) and, in presence of H2O, leading to the heterogeneous formation of HNO3. Additionally, it can also react with various volatile organic compounds (VOCs) (e.g. aromatics and terpenes), promoting the formation of secondary organic aerosols (SOA).
Very recent studies performed in China have investigated the potential effects of the drastic reduction in NOx emissions following the enforcement of lockdown measures. Le et al.,8 investigated the changes in PM2.5, NO2, SO2, and O3 concentrations over eastern China during the lockdown (i.e. from 23 January to 13 February 2020) using air pollutants satellite and climatological data for the 2015–2019 years. Additionally, detailed chemical transport model (CTM) simulations were performed with the WRF-Chem model. Compared to climatological satellites retrievals of NO2, their study indicated a reduction of about 72% over eastern China and up to about 93% in Wuhan at the peak of the infections. PM2.5 concentrations were reduced by about 32 and 37%, depending on the climatological scenario, whereas O3 increased by about 25% due to the nonlinear chemistry of O3. Over northern China, however, their analysis indicated a substantial increase in PM2.5 concentrations. The latter was mainly attributed to the unusual higher relative humidity compared to climatological data and to the increased oxidation capacity of atmosphere which enhanced particulate sulfate (SO42−) as well as secondary organic aerosol (SOA) production. Similarly, Huang et al.,9 conducted air quality modeling simulations over eastern China using the WRF-Chem model during the Chinese lockdown periods applying several levels of NOx reduction (i.e. between 10–90%). Their results indicated that such rapid decrease in NOx emissions can lead to an increase in nighttime O3 and ˙NO3 concentrations, and therefore enhancing the overall oxidation capacity of the atmosphere.
In this study we conducted explicit chemical transport model simulations for northern Italy (Po Valley) and Switzerland (Swiss Plateau), to investigate the impact of COVID-19 lockdown measures on several pollutants.
The ozone column densities were prepared using the Total Ozone Mapping Spectrometer (TOMS) data from NASA, and photolysis rates were calculated using the Tropospheric Ultraviolet and Visible (TUV) Radiation Model version 4.8.
The Chemical Process Analysis (CPA) tool was enabled in the CAMx simulations in order to track the contributions from individual chemical processes and tagged chemical reactions operating within the model.19
The annual emissions of non-methane volatile organic compounds (NMVOCs), SO2, NOx, carbon monoxide (CO), NH3, coarse particulate matter (PM10) and PM2.5 were hourly distributed using the TNO temporal variation profiles. Two emission scenarios were prepared to retrieve the impacts of lockdown measures on pollutant levels and composition. This includes a business as usual scenario, referred to as CAMx-BAU, based on the standard TNO-MACC emission inventories and a rescaled emission scenario, referred to as CAMx-LOCK, where emissions from the road transportation sectors were reduced according to the mobility data available from two different sources. For Italy, emissions were scaled based on the weekly change of heavy and light duty vehicle-fluxes as available in the PrepAIR report (https://www.lifeprepair.eu/wp-content/uploads/2020/06/COVIDQA-Prepair-19Giugno2020_final.pdf). In general, light duty traffic fluxes were reported to have been reduced between 20 and 80% following the gradual progression of lockdown measures, whereas heavy duty traffic declined by up to 50%. For the neighboring countries we used the mobility trends report made available by Apple Maps (https://www.apple.com/covid19/mobility) and averaged to a weekly time-step in order to be consistent with the Italian data. For Italy, the scaling factor (E/E0) for each week was calculated as:
E0 = ∑(EFi × Ni × Mi) | (1) |
E/E0 = ∑(ri × EFi × Ni × Mi)/∑(EFi × Ni × Mi) | (2) |
(3) |
For the other neighboring countries, the scaling factor during week 1 to 4 of February eqn (1), and the values afterwards were calculated by dividing the weekly mobility data with mobility in week 4 of February. The emissions from gasoline and diesel vehicles used the same scaling factor for these countries. The scaling factors for each country can be found in Fig, S1.† The remaining emission categories, e.g. agricultural, industrial, and residential heating activity, were not altered in our analysis since detailed data were not available at the time the sensitivity tests were prepared. Moreover, recent study indicates traffic-related emissions are the main factors influencing NO2 concentrations in Italy during lockdown periods. A study from Guevara et al.,24 based on the Copernicus Atmosphere Monitoring Service (CAMS) emission dataset (referred to as CAMS-REG-AP), tested two different lockdown scenarios: a first one where only traffic-related emissions where reduced, and a second one where all the remaining emission sectors were also reduced. The authors found that the reductions in NO2 concentrations (compared to a baseline scenario with no emissions reductions) were almost identical in the two scenarios for Italy (e.g. around 54 and 56% reduction over the Milan area, in the covid19_traffic and covid19_all scenarios, respectively). Therefore, our analysis should be interpreted as the impact on air quality due to lockdown measures that only affected the on-road transportation sector (i.e. SNAP7 in the Standard Nomenclature for Air Pollution).
The impact of lockdown, i.e. changes in NO2, O3, PM2.5 (and its components) concentrations, as well as changes in tagged chemical reactions, are presented throughout the text as the difference between the CAMx-LOCK and CAMx-BAU scenarios for the period between 8 March and 27 April 2020.
Data for Italy was retrieved from the Agenzia Regionale per la Protezione Ambientale Emilia-Romagna (referred to as ARPAE) database (https://www.arpae.it/), whereas the National Air Pollution Monitoring Network (referred to as NABEL) database (https://www.bafu.admin.ch/bafu/de/home.html) was used for the Swiss measurements.
Fig. S2 and Table S1† report the spatial distribution, characteristics, and locations of the stations used for the analysis. Since lockdown measures have largely affected the transportation sector, we additionally included stations classified as urban and suburban, despite the rather coarse resolution of the model, but excluded elevated sites (i.e. above 1000 meters) and mountain sites.
Modeled O3 concentrations were well reproduced by the model, and both the EPA model performance goals and criteria were met (Table 1).26 The model tends to slightly underestimate the daytime O3 peaks and to over predict the night time levels, as indicated by the diurnal profile in Fig. S3† which might be attributed to an underestimation in O3 precursors (i.e. NOx and VOCs), therefore affecting the overall model O3 production efficiency,6 as well as to the too strong dilution of the lower layers of the atmosphere. Almost the complete observational datasets were reproduced within the 1:2 lines (Table 1 and Fig. 2).
Region | Species | FAC2 | MB | MGE | RMSE | r | IOA | MFB (%) | MFE (%) |
---|---|---|---|---|---|---|---|---|---|
Italy (ARPAE) | NO2 | 0.56 | −5.35 | 5.88 | 7.99 | 0.74 | 0.55 | −29.09 | 38.10 |
O3 | 1.00 | −2.35 | 10.14 | 12.67 | 0.69 | 0.62 | −1.04 | 10.82 | |
PM2.5 | 0.81 | −0.40 | 6.60 | 9.83 | 0.41 | 0.47 | −0.08 | 27.72 | |
Switzerland (NABEL) | NO2 | 0.49 | −7.82 | 8.95 | 11.48 | 0.39 | 0.39 | −33.79 | 40.01 |
O3 | 0.99 | 0.58 | 11.25 | 13.83 | 0.64 | 0.60 | 2.01 | 12.16 | |
PM2.5 | 0.91 | −0.84 | 2.99 | 4.08 | 0.73 | 0.67 | −0.87 | 19.34 |
Fig. 2 Scatterplots of daily average modeled vs. observed surface concentrations of NO2, O3 and PM2.5 at the ARPAE (left panel) and NABEL (right panel) networks (8 March – 27 April 2020). |
NO2 concentrations were generally underestimated (Table 1) with around 50% of the data points within a factor of two (Fig. 2), consistent with previous modeling study performed in Europe with the CAMx model6,27,28 as well as with other recent applications covering the same period.29 Such underestimation is particularly evident during daytime, which might indicate a too strong dilution of the lower layers of the atmosphere (Fig. S3†). Correlation coefficient is relatively higher for the ARPAE (Italy) stations. Both the MB and MGE are in the same absolute ranges suggesting a systematic negative bias in NO2 concentration (about 5 μg m−3 on average). At the NABEL stations (Switzerland) the MB and MGE tend to differ to a larger extent (in absolute terms) which suggest a possible compensation between underestimation and overestimation at the investigated sites (as also indicated by the lower correlation coefficient, i.e. around 0.4, compared to the ARPAE data).
Model performance for NO2 is influenced by (i) uncertainties in emission inventories (Oikonomakis et al.,6) and (ii) model resolution that might not capture the full emission strength, especially at urban sites, where local emissions are spatially very inhomogeneous. Additionally, uncertainties in NOx emission from road transport were rated as C (C corresponds to a typical error range of 50 to 200%) by the European Environment Agency.30 In this study the model resolution corresponds to about 7–10 km, which is too coarse to represent the concentrations gradient of heavily polluted sites located in the Po Valley, as well as sites located in complex topography regions like southern Switzerland. During the lockdown period, for example, concentrations up to 80 μg m−3 were observed around the urban background sites of the Milan area, whereas rural stations reported concentrations around 15 μg m−3 (Guevara et al.,24). A comparison with the study of Menut et al.,29 conducted at 20 km grid resolution over the European domain with the CHIMERE model, also indicated similar performance for NO2 concentrations, with substantial underestimations at multiple European sites (i.e. in different countries), and with even larger underestimations when using emissions data representative of the lockdown scenario. Additionally, Guevara et al.,24 compared the model performance of the MONARCH v1.0 model for NO2 during the COVID-19 lockdown periods for several European stations taken from the European Environmental Agency (EEA) database, and with emission datasets based and scaled from the Copernicus Atmosphere Monitoring Service (CAMS). Their analysis indicated that at several Italian urban sites, located near the metropolitan area of Milan, NO2 concentrations were substantially under predicted in the COVID-19 lockdown scenario (23 March to 26 April), but also during pre-lockdown periods (20 January to 20 February). The latter, was mainly attributed to the inability of the model to reproduce the strong atmospheric stability conditions of the Po Valley region. Underestimation in NO2 concentrations were also reported for several other rural sites in Italy during both pre-lockdown and strict lockdown periods (Guevara et al.,24).
The underestimation of NO2 concentrations in such areas might have several effects on the production of secondary species, and specifically: (i) reduce the titration of O3 concentrations during night time, resulting in an over prediction of O3, (ii) reduce the production efficiency of O3 during day time (Oikonomakis et al.,6) and (iii) acting as limiting agent for the production of particulate nitrate (see Section 3.3).
The total PM2.5 concentrations were satisfactorily reproduced by the model (Table 1), and both the model performance goals and performance criteria proposed by Boylan et al.,25 were met with more than 80% of the data points reproduced within a factor of 2 (Table 1 and Fig. 2). PM2.5 concentrations are generally underestimated in the model, indicating uncertainties in the emissions sources or secondary formation pathways. The relatively low temporal correlation coefficient observed at the ARPAE stations can indicate possible error compensation between the PM2.5 components, with the MB found to be around −0.4 μg m−3 but a MGE around 6.60 μg m−3. The latter effect was less pronounced at the NABEL stations (MB of around −0.84 μg m−3 and MGE around 2.99 μg m−3, resulting in higher correlation coefficient respect to the ARPAE sites, i.e. around 0.73).
Fig. 4 Modeled NO2, O3, and PM2.5 average absolute changes (i.e. CAMx-LOCK – CAMx-BAU) over the CAMx domain (8 March – 27 April 2020). |
O3 showed an increase by up to about 15% (up to 7 μg m−3), especially localized along areas where reductions in NO2 concentrations were the largest (Fig. 4). Such increases largely occurred during nighttime (Fig. S3†). As NO decreases, the depletion of O3 during nighttime proceeds less efficiently, resulting in more O3 available at night particularly around urban areas and major highways (Fig. 4 and S4†). The implications of the increase in oxidant levels are discussed in Sections 3.3 and 3.4.
Despite the large reductions in the emissions from the transport sector, differences in PM2.5 concentrations were found to be rather minimal. PM2.5 was reduced by ∼3 to 8% with absolute reductions by up to 1.4 μg m−3 (Fig. 3). The differences in PM2.5 concentrations appear to be less localized compared to the one of NO2 and more distributed over the entire Po Valley region (Fig. 4) with absolute differences below 2 μg m−3 on average (Fig. 3). These results are in line with the relative changes retrieved by comparing 2020 measurement data with available historical data, i.e. 2016–2019 period (Shen et al.,31).
At the NABEL sites, the results are generally in line with the ones discussed for the ARPAE sites, but the impact of the lockdown on air quality was less pronounced, given the less stringent lockdown measures in Switzerland compared to Italy (Fig. S1†). The model indicates reductions in NO2 concentrations to be around 12% and 27% (Fig. 3), especially during traffic rush hours (Fig. S3†).
A slight increase in O3 concentrations was also indicated at the majority of the stations, by up to almost 4% (i.e. around 2 μg m−3 in Basel) (Fig. 3 and 2). Similarly, PM2.5 showed very little changes compared to the CAMx-BAU scenario: i.e. in the range of 3 and 10% (Fig. 3). Larger absolute reductions occurred closer to Italian boarder (i.e. at the Magadino-Cadenazzo measurement sites, with the model indicating an average absolute reduction of around 1.3 μg m−3).
Fig. 5 Relative differences in NO2, PM2.5, POA, EC, NO3−, SO42−, NH4+ and SOA concentrations between the CAMx-COVID and the CAMx-BAU scenarios. Po Valley, left panel, and Swiss Plateau, right panel (see Fig. S2† for the details on the regions). The PM2.5 also includes crustal materials (not altered in the CAMx-COVID scenario). |
Fig. 6 Absolute changes (i.e. CAMx-LOCK – CAMx-BAU) concentrations of POA, EC, NO3−, NH4+, SO42− and SOA over the CAMx domain (8 March – 27 April 2020). |
Species | Po Valley | Swiss Plateau | ||||
---|---|---|---|---|---|---|
Min | Mean | Max | Min | Mean | Max | |
O3 | −1.84 | 2.40 | 8.75 | −0.70 | 0.34 | 1.86 |
NO2 | −9.25 | −3.19 | −0.38 | −2.91 | −1.47 | −0.55 |
PM2.5 | −1.84 | −1.16 | −0.53 | −0.59 | −0.43 | −0.27 |
POA | −0.21 | −0.05 | −0.01 | −0.03 | −0.02 | −0.01 |
EC | −0.52 | −0.13 | −0.03 | −0.09 | −0.05 | −0.02 |
NO3− | −1.09 | −0.76 | −0.33 | −0.36 | −0.27 | −0.17 |
SO42− | −0.01 | 0.00 | 0.01 | −0.01 | 0.00 | 0.00 |
NH4+ | −0.31 | −0.22 | −0.10 | −0.11 | −0.08 | −0.05 |
SOA | −0.06 | 0.02 | 0.11 | −0.04 | −0.02 | 0.00 |
No substantial changes in SO42− concentrations were predicted either in the Po Valley, or in the Swiss Plateau regions (Table 2). This differs from previous study performed over the Chinese domain which indicated a substantial increase in the production of particle sulfate during lockdown periods.8 Such discrepancy might be related to (i) the extent of which NOx emissions were reduced (i.e.) a reduction of up to 80% in NOx emission were considered in the study of Le et al.,8 and (ii) the availability of sulfuric acid (H2SO4) molecules that can be neutralized by ammonia (NH3). Europe has experienced substantial reductions in sulfur dioxide concentrations (SO2, a sulfuric acid precursor) starting from the early '90 s, rapidly bringing the concentrations to very low values.35 This might not be the case for regions such as China where, despite constant improvements in several air quality indicators, sulfur containing species are still abundant due to the extensive use of coal as a principal commodity of the energy market.36
Modeled SOA concentrations showed a mild increase over the Po Valley (around 1% on average, Fig. 5 and S5†) and especially over the “Greater Milan” area (around 6% increase in SOA concentrations) and along major highways, whereas the model indicated no substantial difference in SOA over the Swiss Plateau.
An increase in SOA concentrations was predicted by the model mainly for the anthropogenic fraction of SOA during daytime hours (Fig. 8) and in areas where substantial reductions of NO2 concentrations occurred. Because anthropogenic SOA precursors from traffic were also reduced in our simulations, this suggests that an increase of the oxidation capacity of the atmosphere might have compensated for such a reduction.
Fig. 8 Diurnals variations of ASOA concentrations (a) (μg m−3) and BSOA concentrations (b) (μg m−3) for the “Greater Milan” area (8 March – 27 April 2020). |
A decrease in the production of nitric acid (HNO3-prod) during the lockdown period can be seen throughout daytime hours, mainly because of the reduced NO2 oxidation with ˙OH (NO2wOH, Fig. 7). An analysis of both the modeled ˙OH radicals concentrations and ˙OH production rates, indicated substantial increases, by 55% and 25% respectively, during daytime hours, i.e. 9:00–15:00 UTC.
We also report the analysis of three main pathways of ·OH radicals as available in the model: (i) the reactions of oxygen in the excited states with water, i.e. O(1D) + H2O, (ii) the reactions of O3 with VOCs (e.g. isoprene, alkenes, terpenes) and (iii) the photolysis of chemical species such as HONO, HNO3, and H2O2 (among others). Using the PA tools we observed that the model did not indicate any substantial changes between the two scenarios (Fig. S7†). Additionally, the model calculated an increase in both the concentrations and production rates of the ˙HO2 radical (formed in the model as a sub-product of the reactions of VOCs with the ˙OH radicals), with production rates up to 38% more compared to the business as usual scenario during day time hours (Fig. S8†). Likely, as NO2 emissions were reduced, the reactions of VOCs against ˙OH radicals are favored, leading to the mild increase in SOA concentrations, as well as to the additional production of ˙HO2. As ˙HO2 can rapidly recombine with O3 and NO2 to reform ˙OH, we hypothesize that this could explain the modeled increase in the ˙OH production rates. Also, the emission model estimates that the relative contribution of traffic related VOCs in the Po Valley is around 5 to 15%, and with total toluene emissions reductions being around 15% (Fig. S9†). This suggests that a large pool of VOCs is still available to react with ˙OH during the lockdown period.
A very small increase in HNO3-prod is noticeable during traffic rush hours peak (Fig. 7), i.e. around 5:00 and 18:00 UTC, as well as in the production rate of the nitrate radical ˙NO3 during these hours (Fig. S8†). This resulted in an additional very small increase in the production rate of N2O5 (NO3 to N2O5) and therefore in the production rate of HNO3via heterogeneous chemistry (N2O5wH2O) during nighttime hours when the photolysis of ˙NO3 is inhibited. This counterintuitive behavior might be explained by the decrease of NO emissions and the simultaneous increase in O3 concentrations. As NO emissions are quickly reduced after the enforcement of the lockdown, the depletion of ˙NO3 to NO2 is also reduced (i.e. ˙NO3 + NO → 2NO2) therefore increasing its availability. Additionally, the reduced O3 titration at night (see Section 3.2) enhanced the availability of O3 levels which is rapidly converted to ˙NO3 (O3 + NO2 → ˙NO3 + O2), as also suggested by Huang et al.9 This non-linear behavior (i.e. reduction in NOx emissions and increase in ˙NO3 radical) might be important in counteracting the reduction in particle nitrate concentrations especially in areas where larger reduction on NOx occurred, like the “Greater Milan” area, compared to the surrounding areas which experienced lower emission reductions. During daytime hours, CPA indicates an overall decrease in the production rate of ˙NO3 (Fig. S8†) due to the changes in NO2 and O3 concentrations and probably, to a lesser extent, due to the reduced oxidation of HNO3 against the ˙OH radical.
CPA additionally indicated a very small increase in biogenic SOA (BSOA) concentrations during nighttime hours, which we attributed to the increased reactions of VOCs with the ˙NO3 radicals at night. Fig. 8 also illustrates substantial differences between the diurnal cycles of ASOA and BSOA concentrations. ASOA concentrations peak at around noon in both scenarios, whereas BSOA concentrations are enhanced during nighttime, and rapidly decrease during daytime hours. Such behavior might reflect the different origins of the ASOA and BSOA fractions over the “Greater Milan” area during this period. Being an area characterized by intense anthropogenic activities, the local sources might play an important role for building up concentrations, therefore explaining the daytime peaks. Additionally, ASOA is likely more limited by the availability of the oxidant whereas a large fraction of BSOA is more likely to react with the oxidants and to be characterized by long range transport. Therefore, their concentrations can be largely modulated by the planetary boundary layer dynamics, in absence of a strong local production.
Our results indicated a substantial decrease in the nitrogen dioxide (NO2) concentrations, up to around 46 and 25% for the Po Valley and Swiss Plateau regions, respectively. Such reductions were larger in urban areas compared to rural ones. Conversely, O3 concentrations showed an increase in areas where substantial NO2 emissions took place. Such non-linear behavior was attributed to the less efficient O3 titration. Despite substantial decreases in NO2 concentrations, the model indicated rather small changes in the PM2.5 concentrations. Particulate nitrate (NO3−), elemental carbon (EC) and particulate ammonium (NH4+) were the PM2.5 components that exhibited the highest reductions in both regions, whereas the model suggested almost no changes in the particulate sulfate concentrations (SO42−) and a mild increase in secondary organic aerosol (SOA) concentrations over the Po Valley region, and especially over the “Greater Milan” area (up to 6%).
The analysis of tagged chemical reactions, conducted with the Chemical Process Analysis (CPA) tool, indicated an increase in the reactions of volatile organic compounds (VOCs) with the hydroxyl (˙OH) as well with nitrate radicals (˙NO3), in areas where substantial emission reduction took place (i.e. the “Greater Milan” area), partially counteracting the reduction of primary emitted components.
Footnote |
† Electronic supplementary information (ESI) available. See DOI: 10.1039/d1ea00036e |
This journal is © The Royal Society of Chemistry 2021 |