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Article

Impact of the COVID-19 Outbreak on Air Quality in Korea

1
Department of Health & Environmental Science, Korea University, Seoul 02841, Korea
2
BK21PLUS Program in Embodiment: Health-Society Interaction, Department of Public Health Sciences, Graduate School, Korea University, Seoul 02841, Korea
3
Department of Health and Safety Convergence Science, Korea University, Seoul 02841, Korea
*
Author to whom correspondence should be addressed.
Atmosphere 2020, 11(10), 1137; https://doi.org/10.3390/atmos11101137
Submission received: 23 September 2020 / Revised: 18 October 2020 / Accepted: 19 October 2020 / Published: 21 October 2020
(This article belongs to the Special Issue Air Quality Assessment and Management)

Abstract

:
The COVID-19 pandemic has led countries to take action, which has included practicing social distancing or lockdown. Many cities are experiencing air quality improvements due to human activity restrictions. The purpose of this study was to compare the air quality between 2020 and the previous three years, focusing on the two cities (Seoul and Daegu) where coronavirus is spreading the fastest in Korea. Significant decreases in PM2.5, PM10, CO, and NO2 were observed in both cities. In particular, compared to the same period of 2017-2019, in March 2020, PM2.5 showed remarkable reductions of 36% and 30% in Seoul and Daegu, respectively. The effects of social distancing have maximized improvements in air quality due to reduced transboundary pollutants. The PM2.5/PM10 ratio was significantly reduced after social distancing, indicating that the contribution of traffic-related PM2.5 declined. Air quality improved overall from January to July, and the most noticeable drop in the air quality index (AQI) was observed in April. These findings indicate that relatively weak social distancing measures compared to a COVID-19 lockdown can help reduce air pollutant levels. At the same time, however, changes in air quality in the neighboring countries caused by COVID-19 control action are affecting Korea.

1. Introduction

The novel coronavirus (COVID-19), which was first reported in Wuhan on December 31, 2019, is spreading rapidly around the world and was declared a pandemic by the World Health Organization (WHO) in March 2020 [1]. In Korea, the first confirmed COVID-19 case was reported on January 20, 2020, and the number of confirmed COVID-19 cases began to explode around Seoul and Daegu, reaching 19,947 cases by 31 August 2020.
In countries where COVID-19 is spreading, national decisions are being made that range from social distancing to nationwide lockdowns to stop the spread of the infection [2]. As a result, human activities have become limited, causing traffic, industrial, and domestic emissions, which contribute to air pollution [3,4,5], to decrease. In many studies, changes in air quality across the world due to COVID-19 lockdown have been observed. In particular, significant reductions in atmospheric fine particulates (PM2.5), respirable suspended particulates (PM10), nitrogen dioxide (NO2), carbon monoxide (CO), and sulfur dioxide (SO2) concentrations in 2020 (compared to the last three years) were observed in central China [6] where novel coronavirus first broke out. Likewise, positive effects on air quality have also been reported in the United States [7,8], Italy [9,10], India [3,11,12], and Brazil [2,13,14], which are also experiencing COVID-19 infections.
Air quality deterioration has a serious effect on human health and contributes to 5 million deaths worldwide every year. It is the fifth highest health-related factor causing disease in humans. Especially in Southeast Asia, up to 15% of the deaths were due to air pollution [15]. Air pollution in Korea has been highlighted as an environmental issue, causing 14,700 deaths in 2000 and 17,300 deaths in 2017 [16].
COVID-19 is causing a great deal of disease burden and worldwide economic deterioration [17], but it has enabled us to assess the air quality changes [18] induced by reduced industry and human activities. In previous studies, although social distancing is a weaker measure than COVID-19 lockdown, a significant improvement in air quality has been observed [19], immediately after the announcement of social distancing guidelines. In addition, In Sao Paulo, Brazil, which adopted social distancing similar to Korea, PM2.5, PM10, and NO2 decreased by 46%, 45%, and 58%, respectively, due to limited human activity [3].
Previous studies have observed changes in the national average air pollution level [20] but have not analyzed the impact of social distancing centered on metropolitan cities, which have an overwhelming number of COVID-19 cases. In addition, partial decrease in concentrations of air pollutants was observed, but there is no long-term analysis of the air quality index (AQI) that can represent air quality.
Korea experienced SARS-CoV (severe acute respiratory syndrome) in 2003 and the Middle East respiratory syndrome (MERS-CoV) in 2015, with MERS-CoV in particular, recording the second-highest number of confirmed cases in the world after Saudi Arabia. However, no studies have been conducted to assess air quality in the wake of past human coronavirus (HCoV) outbreaks.
In this study, six typical air pollutants were observed in a time series, and the AQI was analyzed to observe changes in air quality caused by coronavirus diffusion and social distancing. In particular, we focused on the two representative cities (Seoul and Daegu) with the largest number of COVID-19 infections, and evaluated (1) the annual difference in air pollution before and after COVID-19 and MERS-CoV (compared to the past three years), (2) the trend in the PM2.5/PM10 ratio changes according to the level of social distancing, and (3) AQI changes and its major contributing pollutants after COVID-19 control actions.

2. Methods

2.1. Site Description

Seoul (37°33′ N, 126°58′ E) and Daegu (35°48′ N, 128° 33′ E), the two cities with the highest number of COVID-19 cases in Korea, were selected as study areas (Figure 1). Seoul, which has the top population density among the capitals of the Organization for Economic Co-operation and Development (OECD) countries [21], has experienced a steady outbreak of mass infections regardless of social distancing practices. Daegu, the third largest and fourth most populous city, saw a surge in the number of confirmed cases in the early stages of the COVID-19 outbreak, which led to strict social distancing guidelines, but it still had the highest number of confirmed cases (35.3%) in South Korea by August 2020.

2.2. COVID-19 Data

The daily identification of confirmed COVID-19 cases in Korea was provided by the Ministry of Health and Welfare of South Korea (MOHW) [22] and subdivided into Seoul and Daegu areas. Changes in the level of social distancing guidelines were announced by the MOHW. The recommendations of the South Korean government’s social distancing step-by-step guidelines to prevent the spread of COVID-19 are presented in Table 1. South Korea has shifted from a social distancing campaign to a more relaxed way, known as “distancing in daily life”, after new coronavirus cases dropped to single digits (March 6). These new quarantine protocols helped the public stay safe at home, work, and during outdoor activities now that gatherings and events are allowed.

2.3. Air Quality Data

The Korean Ministry of Environment (KMOE) has reported the air quality levels in about 16 administrative districts (currently 17) since 2002 and has released data to the public since 2005 (www.airkorea.or.kr/web). In Seoul and Daegu, where the study targets are located, 25 and 15 air monitoring networks, respectively, are operated (see Figure 1) and provide daily and hourly data for PM2.5, PM10, SO2, CO, NO2, and O3. Air pollution data were collected from January 2012 to July 2020 for comparison with the previous three years of each pandemic outbreak, including 2020 when COVID-19 occurred and 2015 when MERS-CoV occurred in Korea (PM2.5 has been monitored since 2015). In addition, meteorological conditions are presented in Table S1.
The air quality index (AQI) explains air quality in a quantitative way to make it easier for the public to understand and to protect them from air pollution [23], initially implemented in 1999 by the US Environmental Protection Agency (USEPA). The individual indexes of the six criteria pollutants are calculated by Equation (1), and the maximum value is determined as the AQI. The AQI is divided into six color-coded categories (green–maroon), and each color is identified by a simple informative descriptor. Higher AQI values mean greater concern for people’s health.
I p   =   I Hi     I Lo BP Hi     BP Lo ( C p   BP Lo )   +   I Lo
where
  • Ip = the index for pollutant p;
  • Cp = the truncated concentration of pollutant p;
  • BPHi = the concentration breakpoint that is greater than or equal to Cp;
  • BPLo = the concentration breakpoint that is less than or equal to Cp;
  • IHi = the AQI value corresponding to BPHi;
  • ILo = the AQI value corresponding to BPLo.

2.4. Data Analysis

Statistical analyses were performed using SPSS. A p-value of less than 0.05 was considered statistically significant. In this study, 24 h averages were used for PM2.5, PM10, SO2, CO, and NO2, and 8 h averages were used for O3. The means and standard deviation (SD) were calculated to describe the level of each pollutant. The air quality and meteorological conditions in 2020 and previous years were compared using paired t-tests and Mann–Whitney U tests between the same dates.

3. Results and Discussion

3.1. COVID-19 Outbreak and Social Distancing in Korea

Figure 2 shows the trend in COVID-19 diffusion and changes in the social distancing levels in Seoul and Daegu, South Korea. In Daegu, the confirmed cases began to surge on February 18. By February 29, there were 2236 cases (71% of the confirmed Korean cases); on March 31, there were 6684 cases (68%); and on August 31, 2020, there were 7047 cases (35%). The number of confirmed cases increased consistently in Seoul, but was relatively slow compared to Daegu at the early stage of the epidemic, where the spread by cluster infections increased in August. On February 29, there were 77 cases (2%); on March 31, there were 450 cases (4%); and on August 31, there were 3867 cases (19%). It is noteworthy that the spread of COVID-19 in South Korea surged first in February and entered the second phase of a surging trend most recently in August.
After the first confirmed case of COVID-19 occurred on 20 January 2020, the Korean government set its infectious disease alert level to yellow. It raised its alert to red after the number of COVID-19 cases surged, especially around Daegu (February 23). As a result, since the end of February, social distancing has been in effect among the citizens. To prevent cluster infections, the social distancing level was tightened and applied until April 19. COVID-19 cases significantly reduced during active participation in social distancing measures. As the number of newly confirmed cases and unclear infection routes has decreased, the guidelines have shifted from social distancing to distancing in daily life.
In a field test study in a hospital, all air samples were confirmed negative at 2 m or more from the bed used by a patient with COVID-19 [24]. Therefore, it seems that social distancing was helpful in suppressing the spread of the virus in Korea.
However, as the number of cluster infection cases centered in Seoul increased again in August, social distancing was upgraded to level 2 on August 16 and further strengthened to level 2.5 around the metropolitan area on August 30 (Figure 2).
Meanwhile, Korea has already experienced MERS-CoV. The first confirmed MERS-CoV case occurred on 20 May 2015, resulting in a total of 186 confirmed cases and 38 deaths, with a fatality rate of 20.4% (Figure S1). While COVID-19 has accounted for most of the community-acquired infections, MERS-CoVs infections occurred mostly in hospitals (172/186). Due to the lack of confirmed cases, there was no need for social distancing, and the outbreak was officially declared to end in Korea on 24 December 2015.

3.2. Comparison of Air Pollutants

3.2.1. Concentrations of PM2.5 and PM10

Figure 3 represents the change in the concentrations of atmospheric PM in COVID-19 and MERS-CoV in the current year compared to the previous three years. Since March, when social distancing due to COVID-19 began, PM2.5 and PM10 have seen significant declines in both Seoul and Daegu compared to the previous three years (excluding June). The average concentration of PM10 in Seoul in March was significantly reduced from 60.3 μg/m3 over the previous three years to 45.0 μg/m3 in 2020 (Figure 3a). In Daegu, it was significantly reduced from 48.3 μg/m3 to 38.4 μg/m3 (Figure 3b), showing 25.4% and 21.4% rate reductions in Seoul and Daegu, respectively.
Compared to the past three years, the mean PM2.5 concentrations in March 2020 decreased by 14.2 μg/m3 and 8.49 μg/m3 in Seoul and Daegu (Figure 3c,d), respectively. In both cities, the reduction rates were 36% and 31%, respectively, more dramatic than the decrease in PM10. In the springtime (February 29 to April 19) when yellow dust is severe, the PM10 and PM2.5 concentrations in 2020 during the social distancing period did not exceed the daily National Ambient Air Quality Standard (NAAQS) (PM10, 100 μg/m3; PM2.5, 35 μg/m3), compared to 8 and 38 times when the PM10 and PM2.5 standards, respectively, were exceeded in the past three years [20].
In contrast, the comparison of the PM concentrations before and after the occurrence of MERS-CoV showed no significant results, although the concentrations slightly decreased in Seoul (Figure 3e). Since the end of May, right after the outbreak of MERS-CoV, there has been a campaign to manage the personal hygiene of citizens around metropolitan areas, but there have been no social distancing policies, and only one confirmed case occurred in Daegu. At that time, there were no government guidelines related to social distancing because most MERS-CoV confirmed cases occurred within hospitals, and there were no identified cluster infections. Therefore, no changes in the PM10 and PM2.5 concentrations were observed due to MERS-CoV. Moreover, there were 186 confirmed cases, significantly less than with COVID-19, with a relatively weak impact than COVID-19 pandemic.
Interestingly, South Korea had already experienced a decline in PM10 and PM2.5 since January, before social distancing took place. The anthropogenic emissions from neighboring countries negatively affect the Korean Peninsula, and about 67% of the PM10 is due to transboundary particles [25]. In particular, China’s impact on the PM in South Korea averages 30 to 50%, with its contribution rising to 80% on the most polluted days according to a report by KMOE [26].
In Wuhan, China, where the novel coronavirus was first reported, air quality improvements including PM2.5, PM10, NO2, SO2, and CO have been reported from January 2020. In the case of PM2.5, it decreased by 36.2% and 44.0% in January and February, respectively (compared to the average concentrations of the previous three years) [6]. The reduction rate of PM2.5 was similar or slightly higher than that observed in our study, confirming that the strict COVID-19 control had a significant impact on air quality.
During the lockdown period, in eastern China, contiguous to Korea, a reduction in PM2.5 of 48% was also observed [27]. Therefore, the decrease in PM across China due to the COVID-19 lockdown has probably affected the air quality in South Korea since January and, along with a sharp decline in human activities due to social distancing practices since March, has led to a dramatic decrease in PM concentrations.
To further investigate these effects, we analyzed the PM2.5/PM10 ratio before and after social distancing, as shown in Figure 4. Because the emission source varies depending upon the size of PM, the PM2.5/PM10 ratio can be used to identify the source [28]. A higher ratio means that PM2.5 anthropogenic activities contributed more, and a lower ratio suggests the contribution of many coarse particles from natural sources such as sand dust or wildfires [29].
The PM2.5/PM10 ratios decreased from 0.66 to 0.54 and from 0.68 to 0.54 in Seoul and Daegu (Figure 4a,b), respectively, shortly after the implementation of social distancing. Even if the PM2.5/PM10 ratio is affected by spatio-temporal variables, this significant reduction in the ratio can be explained by a decrease in anthropogenic emissions after social distancing. After social distancing, the average traffic volume decreased by more than 30% in the first week of March, mainly in the metropolitan area. In particular, from the end of February when the number of confirmed cases exploded in Daegu, the total traffic volume including public transportation decreased by up to 69% [30].
What is important is that changes in the PM2.5/PM10 ratio have been observed since around March 11, 12 days after the implementation of social distancing (February 29). These sudden changes are probably due to the influence of meteorological conditions including wind and temperature [10]. We observed that the temperature around March 11 was 2.7 °C higher than the weekly average, and the wind speed was 0.7 m/s stronger, accelerating the atmospheric dispersion. Similarly, the lowest levels of PM2.5 around March 20, March 28, and April 23 were analyzed because of the higher temperature and wind speed than the weekly average.
In addition, we observed that the PM2.5/PM10 ratio began to increase after social distancing was relaxed. Therefore, we confirmed the delayed effects of human activity on the distribution of particulate matter during the period when the atmosphere was stagnant [31].

3.2.2. Concentrations of Gaseous Pollutants

Changes in SO2 and CO concentrations before and after the coronavirus outbreak are shown in Figure 5. A significant decrease in the concentration of SO2 since COVID-19 was observed for all periods in Seoul (March to July), with slight differences in Daegu (Figure 5a,b). However, Seoul does not have significant emission sources such as from industrial activities [19,20], so there is little evidence that the change in SO2 concentration was caused by social distancing. South Korea strictly regulates SO2 emissions under the Chemicals Control Act, which has led to a continuous slight decrease in the concentration every year (Figure S2).
Previous studies observed a dramatic decrease in SO2 due to China’s COVID-19 lockdown [6] and an SO2 movement from China to Korea through the Yellow Sea based on backward trajectory analysis [32]. In addition, the concentration of SO2 in Korea is affected by about 20–40% of the SO2 generated in China [27]. In Korea, social distancing, a weaker measure than lockdown, was adopted, and there were no restrictions on industrial activities significantly related to SO2 emission. For this reason, we estimated that reductions in trans-boundary SO2 and regulation of SOx emissions had a greater effect on the changes in SO2 than social distancing, consistent with previous findings [19,20].
The concentration of CO was reduced in Seoul in March and April and in Daegu in March (Figure 5c,d). A previous study also showed results consistent with our study, but the observation period was short, from February to March, and there was no year-by-year analysis [19]. We believe that the short-term decline in CO level was due to the decrease in traffic-related CO emissions in Seoul and Daegu. However, this change was very short-lived, and the atmospheric CO returned to its annual average level due to the effect of traffic increases after mitigation by social distancing. After alleviating social distancing, the use of public transportation decreased due to concerns about COVID-19 infection, but the total traffic volume recovered to 97.5% of the average level as the use of private cars increased [33].
After social distancing, the year-by-year NO2 concentration decreased significantly from March to May in Seoul and Daegu (Figure 6a,b). The largest decline occurred in Seoul (April), decreased by 9.3 ppb. As described earlier, the NO2 concentrations in June and July, when social distancing was eased and traffic-related human activities were restored, were not different from the previous three years.
Many scholarly works have reported significant increases in O3 levels [34,35,36,37] since worldwide restrictions such as social distancing and the COVID-lockdown were implemented. This is because lower levels of NO2 inhibit the dissociation to NO and O (3P), reducing the possibility of NO reacting with O3, resulting in an increase in O3 concentrations.
However, in this study, the trends of NO2 and O3 concentrations were changed reversely, but significant year-by-year changes in O3 concentrations were not observed (Figure 6c,d), consistent with a previous study in Korea [20]. In addition, the increase in O3 from spring to summer only reflects the trends in annual atmospheric changes in Korea.
Meanwhile, no significant changes in the year-by-year concentrations of gaseous pollutants were observed in the two cities (Figure 5e–h, Figure 6e–h) because there was no marked change in human activity, including the operation of industrial facilities or traffic volume, since the MERS-CoV outbreak.
We observed a significant improvement in particulate matter and a partial reduction in gaseous pollutants after social distancing. However, changes in the air quality of neighboring countries had an effect on Korea even before social distancing, and this effect needs to be detailed through further studies from a long-term perspective.

3.3. Changes in Air Quality from Social Distancing

The average monthly AQI in 2020 and over the three previous years was analyzed to assess the impact of COVID-19 events on changes in air quality (Figure 7). In general, South Korea experiences a severe deterioration in air quality due to the influence of Asian dust in spring [38,39]. However, from March to May the AQI fell considerably in 2020 in contrast to the higher level in the two cities over the past three years. The largest decline in the AQI occurred in April and May due to a dramatic decrease in PM2.5 immediately after social distancing. The decline was further observed in the trend in monthly changes in the AQI, which was similar to that of previous years. However, after May 5, relaxed social distancing probably weakened the effect on improving the air quality due to increased human activities. However, the AQI remained lower than the average AQI of the past three years.
We identified the major pollutants affecting the AQI. The distributions of the indicatory pollutants according to each AQI class before and after social distancing are shown in Tables S2 and S3. The reduction of the AQI score in April was remarkable, and the AQI improvements of 44.8% and 48.7%, respectively, in Seoul and Daegu was notable compared to 2017–2019. Interestingly, SO2 and CO were never responsible for the AQI score. In both cities, PM2.5 was responsible for more than 90% of AQI score. Compared to February, the air quality in March improved considerably and never exceeded 100 (unhealthy for sensitive groups) in Daegu. The March AQI score in Seoul also exceeded 100 by only 6.5%, which was significantly lower than in January (19.4%) and February (22.6%). Since March, PM10 has been identified as the primary pollutant affecting the AQI, but it is negligible, and the contribution of O3 was seen in July due to the increased temperature and facilitation of reactions producing O3. However, the AQI derived from O3 was equivalent to Class 1 (good). Similarly, in the previous year, PM2.5 was responsible for more than 90% of the AQI score, followed by O3 and PM10.
Although decreases in the PM2.5/PM10 ratio after social distancing supported the decrease in contributions from anthropogenic emissions, the AQI analysis results confirmed that PM2.5 was still a key contributor to air quality in South Korea.

4. Conclusions

To assess the effects of social distancing on air quality due to COVID-19 in Seoul and Daegu, six representative air pollutants were analyzed and the AQI distribution was observed. The comparison between 2020 and the previous three years revealed a significant drop in PM compared to gaseous pollutants. In both cities, the mean March PM2.5 concentration showed a dramatic decline of 31–36%. After social distancing, the PM2.5/PM10 ratio was reduced by about 19% from 0.68 to 0.54, confirming that traffic-related PM2.5 emissions were decreased due to reductions in human activities. A partial decrease in CO and NO2 was observed, which, as with PM2.5, was related to the reduction in vehicle emissions. It was not clear whether the reduction in SO2 concentrations was the result of social distancing. However, reductions in the transboundary SO2 proved that COVID-19 control actions could affect the air quality across borders as well within a country. The change in O3 due to COVID-19 did not produce results consistent with prior studies and suggests that further research is needed to reflect meteorological conditions.
During the observation period, PM2.5 was responsible for more than 90% of the AQI score regardless of the COVID-19 pandemic occurrence. In Korea, the indicatory pollutant is PM2.5, and we suggest that the rapid decline in traffic volume (30-69%) in the early social distancing period led to significant air quality improvement, as in the case of megacities around the world experiencing COVID-19.
Notably, after the implementation of ‘distancing in daily life’, a weakened social distancing, traffic volume recovered to 97.5% compared to pre-COVID-19, similar to the pattern of changes in air pollutants. Our findings support that air pollution is directly related to traffic.
Korea has experienced an improvement in air quality due to the reduction in transboundary pollutants from neighboring countries since COVID-19 first occurred, and it has experienced a significant decrease in the AQI in conjunction with the effect of social distancing. In particular, the improvement in air quality in April is an exceptional example of COVID-19 control action having a positive effect on air quality. Significant changes in air quality were observed in countries adopting strict COVID lockdown policies. Even in Korea, which adopted weaker guidelines of social distancing, the overall air quality was significantly improved. If the chemical composition analysis of PM2.5 was added, the impact of neighboring countries and domestic sources could be analyzed in more detail.
Despite the significant air quality improvement found in Seoul and Daegu, there are some differences in the spread of COVID-19. In Daegu, the number of confirmed cases exploded in the early stages of the COVID-19 outbreak, while Seoul showed a steady increase. Meanwhile, the outbreak in Seoul in August led to the second pandemic of COVID-19 in Korea. Therefore, we suggest that further studies are needed to approach air quality according to the extent of COVID-19.
Our findings indicate that the national decisions to limit human activities led to changes in regional and temporal air pollution levels and support the need for cross-border cooperation to improve air quality in the East Asia region. The on-going COVID-19 pandemic has caused global economic stagnation, increased disease burden, and even mental health effects, but some positive effects on the global environment, including improvements in air quality, suggest a direction for a sustainable environment in the post-COVID-19 era.

Supplementary Materials

The following are available online at https://www.mdpi.com/2073-4433/11/10/1137/s1, Table S1. Comparison of meteorological conditions (the same dates in 2020 and the previous 3 years), Table S2. Distribution of contributary pollutants of monthly AQI in Seoul, Table S3. Distribution of contributary pollutants of monthly AQI in Daegu. Figure S1, The number of daily confirmed cases and deaths for MERS-CoV in Korea (2015), Figure S2. The annual estimated emissions of SOx in Korea.

Author Contributions

Conceptualization, J.H.S. and J.-R.S.; methodology, J.H.S.; validation, J.H.S. and H.W.J.; formal analysis, J.H.S. and U.J.S.; investigation, J.H.S. and U.J.S.; data curation, J.H.S and H.W.J.; writing—original draft preparation, J.H.S. and H.W.J.; writing—review and editing, J.H.S. and J.-R.S. All authors have read and agreed to the published version of the manuscript.

Funding

This research received no external funding.

Acknowledgments

The authors thank the Korea Environment Corporation for providing the air quality data.

Conflicts of Interest

The authors declare no conflict of interest.

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Figure 1. Location of Seoul and Daegu in Korea. Red dots present the location of air quality monitoring stations (AQMS). This map was produced by using ArcMap 10.6 of ArcGIS software.
Figure 1. Location of Seoul and Daegu in Korea. Red dots present the location of air quality monitoring stations (AQMS). This map was produced by using ArcMap 10.6 of ArcGIS software.
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Figure 2. Daily new confirmed cases and changes in social distancing (SD) level. The blue line represents the whole country, the yellow line represents Seoul, and the red line represents Daegu.
Figure 2. Daily new confirmed cases and changes in social distancing (SD) level. The blue line represents the whole country, the yellow line represents Seoul, and the red line represents Daegu.
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Figure 3. Comparison of PM2.5 (μg/m3) and PM10 (μg/m3) before and after coronavirus outbreak. (a,c) Changes in concentrations of particulate matter before and after COVID-19 in Seoul. (b,d) Changes in concentrations of particulate matter before and after COVID-19 in Daegu. (e,g) Changes in particulate matter before and after MERS-CoV in Seoul. (f,h) Changes in particulate matter before and after MERS-CoV in Daegu. (PM2.5 has been monitored since 2015.)
Figure 3. Comparison of PM2.5 (μg/m3) and PM10 (μg/m3) before and after coronavirus outbreak. (a,c) Changes in concentrations of particulate matter before and after COVID-19 in Seoul. (b,d) Changes in concentrations of particulate matter before and after COVID-19 in Daegu. (e,g) Changes in particulate matter before and after MERS-CoV in Seoul. (f,h) Changes in particulate matter before and after MERS-CoV in Daegu. (PM2.5 has been monitored since 2015.)
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Figure 4. Changes of PM2.5/PM10 ratio after social distancing (a: Seoul, b: Daegu). Highlighted shadow represents the period of social distancing.
Figure 4. Changes of PM2.5/PM10 ratio after social distancing (a: Seoul, b: Daegu). Highlighted shadow represents the period of social distancing.
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Figure 5. Comparison of SO2 (ppb) and CO (ppm) before and after coronavirus outbreaks. (a,c) Changes in SO2 and CO level before and after COVID-19 in Seoul. (b,d) Changes in SO2 and CO level before and after COVID-19 in Daegu. (e,g) Changes in SO2 and CO level before and after MERS-CoV in Seoul. (f,h) Changes in SO2 and CO level before and after MERS-CoV in Daegu.
Figure 5. Comparison of SO2 (ppb) and CO (ppm) before and after coronavirus outbreaks. (a,c) Changes in SO2 and CO level before and after COVID-19 in Seoul. (b,d) Changes in SO2 and CO level before and after COVID-19 in Daegu. (e,g) Changes in SO2 and CO level before and after MERS-CoV in Seoul. (f,h) Changes in SO2 and CO level before and after MERS-CoV in Daegu.
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Figure 6. Comparison of NO2 (ppb) and O3 (ppb) before and after coronavirus outbreaks. (a,c) Changes in NO2 and O3 level before and after COVID-19 in Seoul. (b,d) Changes in NO2 and O3 level before and after COVID-19 in Daegu. (e,g) Changes in NO2 and O3 level before and after MERS-CoV in Seoul. (f,h) Changes in NO2 and O3 level before and after MERS-CoV in Daegu.
Figure 6. Comparison of NO2 (ppb) and O3 (ppb) before and after coronavirus outbreaks. (a,c) Changes in NO2 and O3 level before and after COVID-19 in Seoul. (b,d) Changes in NO2 and O3 level before and after COVID-19 in Daegu. (e,g) Changes in NO2 and O3 level before and after MERS-CoV in Seoul. (f,h) Changes in NO2 and O3 level before and after MERS-CoV in Daegu.
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Figure 7. Comparison of daily and monthly air quality index (AQI) between 2020 and the previous three years ((a) Seoul, (b) Daegu). Categories of the AQI are “good” (green, 0–50), “moderate” (yellow, 51–100), “unhealthy for sensitive groups (SG)” (orange, 101–150), and “unhealthy” (red, 151–200). “Very unhealthy” (purple, 201-300) and “hazardous” (maroon, 301–500) were not observed in this study.
Figure 7. Comparison of daily and monthly air quality index (AQI) between 2020 and the previous three years ((a) Seoul, (b) Daegu). Categories of the AQI are “good” (green, 0–50), “moderate” (yellow, 51–100), “unhealthy for sensitive groups (SG)” (orange, 101–150), and “unhealthy” (red, 151–200). “Very unhealthy” (purple, 201-300) and “hazardous” (maroon, 301–500) were not observed in this study.
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Table 1. Guidelines on social distancing issued by the Government of South Korea.
Table 1. Guidelines on social distancing issued by the Government of South Korea.
CategoryLevel of Social Distancing
Level 1Level 2Level 3
Personal hygieneWash your hands carefully for more than 30 s with soap,
Maintain at least 1~2 m distance with others
Gatherings, events, etc.Allowed, recommended to respect the sanitary measuresAll private and public indoor meetings of 50 or more and outdoor meetings of over 100 are bannedAll private and public indoor and outdoor meetings of over 10 are banned
Sport eventsLimited the number of spectatorsNo spectatorsBanned
Public facilitiesAllowed (if necessary, they can be suspended)SuspendedSuspended
Private facilitiesAllowed (high-risk places can be suspended)All high-risk places are closed, and sanitary measures are reinforced.All high-risk places are closed, and sanitary measures are reinforced.
Schools, kindergartensOpen and distance learningOpen and distance learning (limit the numbers of students)Distance learning or suspended
Public institutions and companiesTeleworking is recommended (one-third of all the employees)Teleworking is recommended (half of all employees)Teleworking is obligated except essential members
Private institutions and companiesFlexible teleworkingTeleworking is recommendedTeleworking is obligated except essential members
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Seo, J.H.; Jeon, H.W.; Sung, U.J.; Sohn, J.-R. Impact of the COVID-19 Outbreak on Air Quality in Korea. Atmosphere 2020, 11, 1137. https://doi.org/10.3390/atmos11101137

AMA Style

Seo JH, Jeon HW, Sung UJ, Sohn J-R. Impact of the COVID-19 Outbreak on Air Quality in Korea. Atmosphere. 2020; 11(10):1137. https://doi.org/10.3390/atmos11101137

Chicago/Turabian Style

Seo, Ji Hoon, Hyun Woo Jeon, Ui Jae Sung, and Jong-Ryeul Sohn. 2020. "Impact of the COVID-19 Outbreak on Air Quality in Korea" Atmosphere 11, no. 10: 1137. https://doi.org/10.3390/atmos11101137

APA Style

Seo, J. H., Jeon, H. W., Sung, U. J., & Sohn, J. -R. (2020). Impact of the COVID-19 Outbreak on Air Quality in Korea. Atmosphere, 11(10), 1137. https://doi.org/10.3390/atmos11101137

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