CABA is the head political, financial, tourist, and cultural metropolis of Argentina. It is also the most densely populated Argentine city, with 14,450.8 pop/km
2 [
34].
Figure 2 shows the daily and accumulated evolution of transmission cases and deaths by COVID-19 in this city, which deserves special attention due to its relevance, as well as its high population density. Previous studies indicated the importance of the analysis of meteorological conditions in the spread of COVID-19 in highly densely populated areas [
15,
35]. On 5 March, the first national case of COVID-19 was confirmed in CABA [
21]. In a few days, as cases rapidly multiplied, the Argentine national government established a lockdown on 20 March to minimize and control the spread of this pandemic disease [
22]. Nevertheless, infections and deaths continued to grow rapidly (
Figure 2). Because of the lockdown, observations indicated that NO
2 concentration levels over the city decreased [
30,
31] (
Figure 3), as well as PM
2.5 levels, as is shown in
Appendix A, Figure A1. This circumstance is analyzed in the following subsections.
3.1. Correlation SARS-CoV-2 Infections with Meteorological and Air Quality Variables
Figure 4A shows a decrease in maximum, minimum, and average temperature since the months analyzed correspond to the austral fall season. The rainfall had variations between 10 and 40 mm/day, while relative humidity presented an average of 74.5% (
Figure 4C). The average daily wind speed (
Figure 4B) presented peaks above 8 m/s in March, decreasing in April to 7 m/s and 4.4 m/s in May, 2020. This situation is due to the weakening of the winds in fall and winter [
36,
37,
38].
Figure 5 presents the statistical correlation coefficient for meteorological variables with new cases, total cases and mortality. New cases (
Figure 5A) had a higher negative correlation at 8 days lag (r = −0.74,
p < 0.01), 7 days lag (r = −0.74,
p < 0.01) and 15 days lag (r = −0.68,
p < 0.01) for average temperature, minimum temperature and maximum temperature, respectively. Humidity and rainfall with, new cases showed a higher positive correlation at 10 days lag (r = 0.19,
p < 0.05) and 0 day (r = −0.35,
p < 0.01), respectively. Wind speed had a higher negative correlation at 2 days lag (r = −0.33,
p < 0.01). Total cases (
Figure 5B) showed a higher negative correlation at 4 days lag (r = −0.82 and r = −0.72,
p < 0.01) for average and minimum temperature, respectively, while this occurred with 15 days lag (r = −0.70,
p < 0.01) for maximum temperature.
Humidity showed a higher positive correlation with total cases at 15 days lag (r = 0.18,
p < 0.05), and rainfall showed significant correlations at day 0 (r = −0.32,
p < 0.01). Also, wind speed had a higher negative correlation at 2 days lag (r = −0.27,
p < 0.01) in total cases. Mortality (
Figure 5C) presented higher negative correlation at 7 days lag (r = −0.65,
p < 0.01) for average temperature, at 2 days lag (r = −0.68,
p < 0.01) for minimum temperature and 1 day lag for maximum temperature (r = −0.59,
p < 0.01). Humidity and mortality cases did not show a significant correlation, but rainfall showed a high negative correlation at 2 days lag (r = −0.33,
p < 0.01). Also, wind speed displayed a high negative correlation at 2 days lag (r = −0.32,
p < 0.01). Few studies have investigated the relationship of SARS-CoV-2 virus infections with meteorological variables using days lag to consider their incubation time. A recent study investigated the effects of temperature and humidity on new daily cases and new COVID-19 deaths in 166 countries, using day lag up to 3 days, and showed negative correlations with temperature and humidity [
39]. These results are consistent with what has been found in this study for temperatures but not for humidity, where positive correlations were found. Another study conducted in Hong Kong showed humidity and rainfall had a positive correlation with virus diseases [
40].
Air quality as PM
10 and NO
2 variables (shown in
Figure 6) demonstrated a significant correlation with new cases, total cases, and mortality. Correlation with PM
10 was noted the highest correlation in new cases (1 day lag, r = 0.20,
p < 0.1), total cases (15 days lag, r = −0.25,
p < 0.05), and mortality (15 days lag, r = −0.25,
p < 0.05). However, PM
10 correlation with total cases also showed a positive relationship (0 day, r = 0.18,
p < 0.1). NO
2 did not show significant correlation with new and total cases (
p < 0.1), but it showed a negative correlation with mortality (4 days lag, r = −0.29,
p < 0.01). Recent studies conducted in New York City showed that average air quality is significant for new cases, total cases, and mortality by COVID-19 [
16]. Additionally,
Table 1 displays a comparison of our data with previous studies that demonstrate a relationship between COVID-19 infection and deaths with air pollutants. These results agree with the findings presented here. Overall, these findings are consistent with other research showing that wind speed, humidity, temperature and air quality have a significant correlation with the transmission of infectious diseases and their associated deaths [
16,
41,
42]. In that direction, results showed significant correlations (
p < 0.01) using 7 to 15 days lag for meteorological conditions, 12 to 15 days lag for PM
10 and 1 to 5 days lag for NO
2.
3.2. Impacts on the Air Quality
Figure 7 shows the variations for PM
10 and NO
2 average concentrations measured by the air quality stations in CABA. During the analyzed period of 2019, average concentration of PM
10 was 26.80 μg/m
3 with a maximum of 43.29 μg/m
3 and a minimum of 12.04 μg/m
3. While on the same period of 2020, PM
10 average concentration was 16.79 μg/m
3 with a maximum of 38.81 μg/m
3 and a minimum of 7.33 μg/m
3. NO
2 showed an average of 37.46 μg/m
3, maximum of 77.01 μg/m
3, and a minimum of 21.87 μg/m
3 in 2019, and these average concentrations in 2020 decreased to 30.03 μg/m
3, a maximum 60.64 μg/m
3 and a minimum of 7.48 μg/m
3. Also, as shown in
Figure 7, the greatest reduction in the concentration of PM
10 and NO
2 in 2020 occurred from the start of the lockdown (March 20) to April 20. Then, concentrations showed behavior similar to 2019, possibly related to the easing of the lockdown, made to minimize the negative impact on the economy [
22]. Arkouli et al. [
36] showed that CABA in the cold season presents the lowest values of the ventilation coefficient. Therefore, it indicated higher probabilities of poor air quality, and that was confirmed by the higher concentrations of PM
10 and PM
2.5 measured by them. Other studies showed that 45.5% of NOx emissions in this city were from mobile sources, such as cars, taxis, buses and trucks [
38].
During the COVID-19 pandemic lockdown, several studies around the world have studied its impact on air quality. Ghahremanloo et al. [
51] reported NO
2 reductions of up to 83% in East Asia, while in Southeast Asia, region reductions were observed in PM
10 (26–31%), PM
2.5 (23–32%), NO
2 (63–64%), SO
2 (9–20%), and CO (25–31%), in urban areas from Malaysia [
52]. In India, AOD reductions of up to 50% were perceived in New Delhi [
5]. Otmani et al. [
53] found reductions of 75%, 49% and 96% for PM
10, SO
2 and NO
2 in Salé City (Morocco). Also, emissions of NO
2 have been reduced up to 40% in Iraq compared to the pre-lockdown [
54]. The United Kingdom showed average reductions of NO, NO
2 and NOx between 32% and 50% at roadsides on lockdown [
55]. Changes in the United States’ air pollution showed declining NO
2 of 25.5% compared to historical years [
56]. Additionally, Muhammad et al. [
10] using satellite data showed NO
2 reductions of 20–30% in Italy, France, and Spain. Thus, in line with our findings, this pollutant reduction is related to the lockdown aimed to stop the spread of the SARS-CoV-2 virus. Especially, after 20 March (start of lockdown), a decrease was observed in the average daily concentrations measured by the air quality network of CABA, as shown with a red line in
Figure 7. Tropospheric NO
2 measured by the S5p/TROPOMI-ESA (
Figure 8) over CABA allowed us to compare the variability and distribution of NO
2 after and during the pandemic time, compared with the same period of 2019. The images show a notable reduction in the level of tropospheric NO
2 from 20 March to 19 April 2020 compared to the same period in 2019.
3.3. The Two Facets Observed on COVID-19 Pandemic Lockdown
Pandemic lockdown is a critical time due to infected people with SARS-CoV-2, increasing cases of death, and economic damage [
7]. However, it has generated a window to analyze the correlation between rapidly spreading viral diseases like COVID-19 with weather and air quality indicators. Our findings show correlations between meteorological and air quality variables several days before positive identification or death (shown in
Figure 5 and
Figure 6). Thus, this study allows us to expand knowledge about the meteorological and air quality variables analyzed that could be used for decision-makers to consider designing measures to reduce the risk of COVID-19 and death, and also to better understand how the analyzed variables can vary in the different climate change scenarios and therefore in the spread of viral diseases [
57,
58].
Additionally,
Table 2 shows reductions in mean NO
2 concentrations, according to the data from the air quality network of CABA and the S5p/TROPOMI-ESA satellite [
30,
31]. A decreasing trend in the data measured was observed from the S5p/TROPOMI-ESA satellite too. There was only an increase during the S1 and S2 situations (see S1/S2 definition in
Table 2) as shown in
Appendix A, (Figure A2), but it was considered as a regional effect also observed in other recent studies carried out in South America [
3,
9].
Situations S2, S3, and S4 provide insight into some measures that could be taken to control polluting emissions in the city. Studies conducted by Vrekoussisy et al. [
59] in Athens, Greece, showed that the NO
2 columns over Athens have been significantly reduced in the range of 30–40% during the economic crisis of 2008. They also found strong correlations between pollutant concentrations and economic indicators, showing that the economic recession resulted in proportionally lower levels of pollutants in large parts of Greece. In addition, Tong et al. [
60] studied the implications for surface ozone levels to changes in NOx emissions in the United States during the 2008 global recession and they observed large national reductions in NO
x emissions of up to 21%. Recent studies investigated 419 episodes of financial crises in more than 150 countries during the period 1970–2014, analyzing the impact of financial crises on air pollutant emissions. The results showed that, in the short term, as a consequence of the financial crises, emissions decrease for CO
2, SO
2 and NO
x by 2.6, 1.8, and 1.7%, respectively, but, in the medium-term, financial crises have an insignificant effect on emissions, or in some cases lead to a 1–2% increase, cancelling out the initial benefit [
61]. These studies showed that the decreases in pollutants are related to a financial crisis; similarly, in our study, it could be generated by the economic crisis of the COVID-19 pandemic. However, the reactivation after this pandemic and financial crisis should serve to establish more environmentally friendly measures, trying to transform the temporary reductions into permanent lower levels.
Our study shows that exposure to air pollution is significantly correlated with an increased risk of infection and death due to COVID-19 (as shown in
Table 1). In addition, human mobility restriction measures provide the greatest benefit for COVID-19 mitigation [
62,
63], because prevention is actually more cost-effective than cure [
64,
65,
66] or death [
67]. Therefore, the results of this study show that air pollution in CABA can serve as one of the indicators to assess vulnerability to COVID-19. Moreover, strategies to restrict human mobility during the COVID-19 pandemic and future outbreaks of similar diseases seem to be adequate.
This study has delivered strong evidence regarding the association of COVID-19 expansion with various meteorological and pollutants indicators, and improvement in air quality in CABA. However, it has some limitations. Firstly, COVID-19 is an infectious disease that is related to additional variables that must be considered in a comprehensive study. Also, future research should include air pollutants such as PM2.5, SO2, black carbon and SARS-CoV-2 in PM2.5 particles. Moreover, socio-economic aspects such as measures of social distancing, full and partial shutdown, personal hygiene, among others, should be explored.