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Article

Can Industrial Restructuring Improve Urban Air Quality?—A Quasi-Experiment in Beijing during the COVID-19 Pandemic

1
School of Economics and Management, Beijing Forestry University, Beijing 100083, China
2
Business College, Lishui University, Lishui 323020, China
*
Authors to whom correspondence should be addressed.
Atmosphere 2022, 13(1), 119; https://doi.org/10.3390/atmos13010119
Submission received: 30 November 2021 / Revised: 2 January 2022 / Accepted: 9 January 2022 / Published: 12 January 2022

Abstract

:
The conflict between economic growth and environmental pollution has become a considerable bottleneck to future development throughout the world. The industrial structure may become the possible key factor in resolving the contradiction. Using the daily data of air quality from January to April in 2019 and 2020, we used the DID model to identify the effects of industrial structure on air quality by taking the COVID-19 pandemic as a quasi-experiment. The results show that, first, the impact of profit of the secondary industry on air quality is ten times higher than that of the tertiary industry. Therefore, the secondary industry is the main factor causing air pollution. Second, the effect of the reduction in the secondary industry on the improvement of air quality is better than that of the tertiary industry in Beijing. Therefore, the implementation of Beijing’s non-capital function relief policy is timely and reasonable, and the adjustment of the industrial structure is effective in the improvement of air quality. Third, PM2.5, NO2, and CO are affected by the secondary and tertiary industries, where PM2.5 is affected most seriously by the second industry. Therefore, the transformation from the secondary industry to the tertiary industry can not only solve the problem of unemployment but also relieve the haze. Fourth, the result of O3 is in opposition to other pollutants. The probable reason is that the decrease of PM2.5 would lead to an increase in the O3 concentration. Therefore, it is difficult to reduce O3 concentrationby production limitation and it is urgent to formulate scientific methods to deal with O3 pollution. Fifth, the air quality in the surrounding areas can also influence Beijing. As Hebei is a key area to undertake Beijing’s industry, the deterioration of its air quality would also bring pressure to Beijing’s atmospheric environment. Therefore, in the process of industrial adjustment, the selection of appropriate regions for undertaking industries is very essential, which is worth our further discussion.

1. Introduction

The conflict between economic growth and environmental pollution has become a considerable bottleneck to future development throughout the world [1]. Economic growth is the ultimate aim for every policymaker [2]. With the development of technology, production efficiency has been greatly improved, but due to the rapid expansion of production scale, economic development still brings many environmental problems [3]. During the deepening of urbanization, industrial agglomeration and the increase of urban population have caused many environmental pollution problems, especially the increasingly serious atmospheric environment problems. In contemporary society, air pollution has become a global city disease. In recent years, a large number of exhaust emissions have posed a challenge to the sustainable development of the economies of all countries around the world [4,5], and continue to endanger the health of urban residents. Air pollution causes urban residents to suffer from the respiratory system, heat, and skin disease [6,7,8]. Air pollution has become a stumbling block restricting regional economic development. Finding a possible development path that takes urban economic growth and air control into account has important theoretical and practical significance.
Academic circles have triggered a profound discussion on the trade-off between economic development and air pollution. Some scholars have found that the relationship between air quality and economic growth in Tunisia, a North African country, is suitable to be described by monotonic growth [9,10]. However, there is an inverted U-shaped relationship between economic growth and CO2 emissions in China [10], and there also exists a U-shape between economic growth and SO2 for the technical inefficiency [11]. Therefore, the relationship between air pollution and economic development cannot be described in a single dominant form [12]. The impact of economic development on air quality actually has complex structural characteristics, which brings great difficulties in solving the conflict between economic development and air quality. Further research shows that the industrial structure determines the distribution of production resources between different industries and has a decisive impact on resource consumption and pollutant emissions in the process of economic development [13,14]. Therefore, as an important link between human economic activities and air quality, the industrial structure may become the key factor in resolving the contradiction between economic development and the environment [15]. However, the research conclusions on the relationship between industrial structure and air quality are not totally consistent. Some scholars believe that the increase of heavy industry would aggravate CO2 emissions [16], leading to the deterioration of air quality [17], but some found that during the transformation of industrial structure from primary industry to secondary and tertiary industry, pollution showed a trend of rising first and then declining [18]. Instead, some scholars believe that there is a U-shaped relationship between industrial structure upgrading and haze, which is not in line with the environmental Kuznets hypothesis [19]. The above research provides a rich experience for the macro-understanding of the direct relationship between industrial structure and environmental pollution, but the research results are inconsistent due to many interference factors. Moreover, there are few studies that can clearly show the impact of industrial structure adjustment on AQI and specific pollutants, such as ozone, etc.
With the development of informationization and urbanization in China, city dis-eases are more and more apparent [20]. Beijing is the political center, cultural center, international exchange center, and scientific and technological innovation center of China. It has obvious big city diseases such as air pollution [21,22], which is highly representative. Air pollution in Beijing has gradually become a severe environmental issue, due to the continuing growth in energy consumption and the resulting multiple pollutant emissions [23]. To alleviate the city disease, Beijing has proposed the traffic restriction policy, and then the non-capital functions relieving strategy in Beijing in 2015, as a policy of relieving non-capital functions from Beijing was adopted by President Xi in 2015. The non-capital functions refer to urban functions excluding administration, culture, international communication, and technical innovation [24]. The focus of the policy is to ease the general manufacturing industry and will bring about changes in the industrial structure. Therefore, Beijing has strong representativeness and can be used as a sample to study the impact of industrial structure adjustment on urban air quality [25]. Beijing’s decentralization may bring hope to the solution of air quality problems. Studies have found that the traffic restriction policy can significantly improve the air quality, and AQI has decreased by 19% due to traffic restrictions based on even- and odd-numbered license plates [26]. However, Cao et al. estimated the traffic restriction policy in Beijing and found that although the traditional OLS regression showed that the traffic restriction policy had a strong effect, it had little impact on air quality when the breakpoint regression was used to solve the endogeneity [27]. Later, Li et al. also expressed support, believing that the non-capital functions relieving strategy in Beijing has little contribution to improving the atmospheric environment [28]. Studying the relationship between regional industrial structure adjustment and air quality helps to clarify the possible path of air pollution control. Assessing the impact of industrial restructuring brought about by the non-capital functions relieving strategy in Beijing on air quality is conducive to more comprehensive consideration of the formulation of national strategies. However, since many factors affect air pollution, the air quality improvement brought by industrial structure adjustment may be endogenous, and the effect of policies is difficult to evaluate. The COVID-19 pandemic provides an opportunity to analyze the effects on air quality of industrial structure adjustment as it has reduced human activities [29] and changed the industrial structure in a short time. The coronavirus disease had massive impacts on society and the economy across large parts of China, including Beijing [30,31,32,33]. Therefore, COVID-19-related restrictions, both mandated and voluntary, have, in effect, created a “natural experiment”.
This study aims to clarify the impact of industrial restructuring on urban air quality, estimate the effect of non-capital functions relieving strategy in Beijing on air quality, and uncover possible improvements. To this end, based on the daily air quality and meteorological data of Beijing from January to April in 2019 and 2020, we used the difference in difference (DID) model [34] to identify the effects of industrial structure on air quality by taking the pandemic as a natural experiment. This paper offers some important insights: firstly, we conducted comparative research based on the assumption that the pandemic provided a quasi-experiment to estimate the outcome of industrial restructuring on air quality, which created a treated group. The use of DID effectively alleviates the endogenous problems such as the correlation between error terms and explanatory variables caused by missing variables, which provides evidence for accurately identifying the impact of industrial structure on air quality. Secondly, we specifically analyzed the heterogeneity of the five pollutants affected by industrial adjustments and found that limiting production is not an effective way to control ozone pollution. Thirdly, we evaluated the effectiveness of non-capital functions relieving strategy in Beijing, aimed at providing a reference for the future improvement of the policy. These could also be general lessons for other countries to probably learn from existing evidence in Beijing air governance.
The rest of the paper presents the methodology and data (Section 2), empirical results (Section 3), and robust test (Section 4). Finally, we conclude in Section 5.

2. Methodology and Data

2.1. Variables and Data

The air pollution variables are measured by air quality index (AQI) which is calculated by five air pollutants, including SO2, PM10, PM2.5, CO, NO2, and O3 [35,36,37]. AQI focuses on assessing the health effects of breathing polluted air for hours, and AQI presents six pollutants with unified evaluation standards. Therefore, we extracted the hourly data of AQI from January to April in 2019 and 2020 in Beijing (pek), and then calculated the daily average. It was obtained from the China Environmental Monitoring Center by weighting data from 24 monitoring stations in Beijing (the spatial distribution of stations is shown in Appendix A Figure A1). The ready dispersal of air pollution [38,39] determines that the control of the air quality depends not only on the emission reduction in a city but also on the pollutant control from the surrounding areas [40,41,42]. Therefore, Beijing’s air quality may also be affected by the air quality of surrounding areas. We extracted the hourly data of AQI from January to April in 2019 and 2020 in Hebei Province, namely Baoding (bad), Chengde (chd), Langfang (laf), Zhangjiakou (zjk), Shijiazhuang (sjz), Tangshan (tas), Qinghuangdao (qhd), Handan (had), Cangzhou (caz), Hengshui (hes), and Xingtai (xit), and then calculated the daily average (NEIA). In order to analyze the heterogeneity of the impact that affects different pollutants, we used PM2.5, O3, NO, CO, and SO2 as alternative indicators. The data was from China Environmental Monitoring Center (http://www.cnemc.cn/ accessed on 25 November 2021).
In the existing research, the industrial proportion has been used as the measurement index of industrial structure [43], but in fact, the adjustment of industrial structure should also consider the industrial profit, which can also reflect the industry restructuring. Therefore, we respectively used the profits of the secondary and tertiary industries in Beijing as the proxy variable to measure the industrial structure (TECP, TERP) of Beijing aimed at more accurate research results. The data was from Beijing Municipal Bureau of Statistics (http://tjj.beijing.gov.cn/ accessed on 30 September 2021).
We used the daily passenger flow of Beijing Subway to represent the number of people choosing public transport in Beijing (passen). According to the statistics of the “Beijing Transport Development Annual Report”, the passenger flow of Beijing rail transit was 3.85 billion passengers in 2018 [44]. The subway is one of the main public transportation methods for residents in Beijing. The data was from the daily passenger flow information published on the official Weibo website of Beijing Subway (available online at https://weibo.com/bjsubway accessed on 8 October 2021).
In order to ensure the accuracy of the research results, we used meteorological data as control variables. Some air pollutants are water soluble; thus, rain may be one of the factors affecting air quality. Therefore, we chose the depth of liquid precipitation that is measured over a six-hour accumulation period to measure the rainfall (rain). Because of the flowing air, the wind can bring air pollutants from other areas or take local air pollutants away. We chose the rate of horizontal travel of air past a fixed point to measure the wind speed (speed). The ground temperature may accelerate the natural source emission or decomposition of precursors (such as VOCs) of some air pollution components (such as O3) [45]. Therefore, we chose temperature (temp) as one of the control variables. The previous study shows that the air qualities in northern China had a prominent correlation with the pressure [46]. Therefore, we chose atmospheric pressure (pressure) as a control variable. We extracted hourly meteorological data such as wind speed from Beijing Meteorological Station (No. 545110), and then calculated the daily average, obtaining the daily data from China Meteorological Administration (http://www.cma.gov.cn/2011qxfw/2011qsjcx/ accessed on 15 October 2021).
In addition, this paper used multiple imputation, based on five replications and a chained equation approach method in the R multiple imputation procedure, to account for missing data [47,48].

2.2. Methodology

Previous literature on the relationship between industrial structure and environmental pollution is mainly based on OLS [49], threshold model [15], and SGVAR model [43], but they cannot solve the interference of missing variables, which will cause errors in the consistent estimation of parameters. It is always a difficult problem to effectively deal with the identification deviation caused by endogeneity. DID is a measurement method specially used for policy effect evaluation, which regards the implementation of the new policy as an exogenous experiment. As it is more and more mature, the DID model is gradually widely used in many fields. The DID model is able to reduce the problems of endogenous problems [50,51]. The pandemic can be seen as a quasi-experiment [29]. Compared with the traditional model, the research results by DID are more accurate and reliable [52]. Therefore, taking Beijing as an example, we constructed a natural experiment and used the DID model to identify the impact of industrial structure on urban air quality, and evaluated the implementation effect of non-capital functions relieving strategy in Beijing.
In order to estimate the impact of urban industrial structure on air quality, we used DID regression based on the daily data of air quality, meteorology, and industrial statistics in Beijing. This paper divided the data from January to April in 2019 and 2020 into the control group and the treated group. And we defined that the year with COVID-19 pandemic (2020) was the treated group, and the year without COVID-19 (2019) was the control group. Then, according to the time of pandemic restrictions, the treated group was divided into prepandemic restrictions and post-pandemic restrictions, and the control group was divided, as well. Theoretically, there should be no significant difference in air quality between the treated group and the control group in January. Since February 2020, due to strict pandemic restrictions, the pandemic might change the industrial structure and then affect the air quality. Therefore, we took the samples from 1 January 2020 to 30 April 2020 as the treated group, and the samples from 1 January 2019 to 30 April 2019 as the control group, with a total of 241 samples. The data distribution is shown in Table 1.
Taking Beijing as an example, this paper used the DID model to analyze the impact of industrial structure adjustment on air quality. The model is set as follows:
Y t = β + β 1 t r e a t e d × T + β 2 S E C P × t r e a t e d × T + β 3 T E R P × t r e a t e d × T + β 4 S E C P + β 5 T E R P + β 6 p a s s e n + β 7 N E I A + β 8 s p e e d + β 9 r a i n + β 10 t e m p + β 11 p r e s s u r e + β 12 t r e a t e d + β 13 T + λ t + ε t
where Y t represents the interpreted variable, namely AQI (subscript t represents time series), PM2.5, O3, NO, CO, SO2; SECP and TERP represent the industrial structure, SECP is the secondary industry profit and TERP is the tertiary industry profit; passen is the number of people choosing public transport; NEIA represents average AQI or specific pollutants of cities in Hebei Province; speed represents the rate of horizontal travel of air past a fixed point; rain is the depth of liquid precipitation that is measured over a six-hour accumulation period; temp is the daily temperature; pressure is the atmospheric pressure; λ t is the fixed effect, and ε t is the random error.
t r e a t e d is a dummy variable, indicating whether the research object is the treated group.
t r e a t e d = { 1 , i f   y e a r 2020 0 , i f   y e a r 2019
T is a treated period dummy variable, that is, only the treated group would be impacted by the policy during the treated period. On 23 January 2020, Wuhan announced closure of the city. From 24 January to 30 January, Chinese provinces successively announced strict control measures for the pandemic, which happened to be the Spring Festival holiday. In view of the general shutdown during the Spring Festival holiday over the years, the industrial restructuring caused by the pandemic could not be shown during the Spring Festival holiday. Therefore, we assumed that the policy impact occurred after the Spring Festival, that is, the impact of the pandemic on industrial restructure and human activities actually began in February 2020.
T = { 0 , i f   m o n t h 1 1 , i f   m o n t h > 1

3. Empirical Results

3.1. Descriptive Statistics

Descriptive statistics were calculated for the 241 samples. As can be seen from Appendix A Table A1, the average value of AQI in Beijing is 76.69, which is defined as “moderate” by the Ministry of Ecology and Environment of China, indicating that air quality is acceptable overall but for some pollutants, there may be a moderate health concern for a very small number of people who are unusually sensitive to air pollution. Compared with the average value, the maximum of the AQI in Beijing is 256.38, relatively large, which is defined as “very unhealthy” in the Technical Regulation on Ambient Air Quality Index. At that time, everyone should avoid all outdoor exertion and may experience more serious health effects. The results of other pollutants are similar. The results of AQI are also very similar in Hebei Province, with a “moderate” average value (95.63) and a “very unhealthy” maximum (286.13). Therefore, the air pollution in Beijing must attract attention.

3.2. Analysis of Time Heterogeneity of Beijing Air Quality

First, we compared the differences in air quality in Beijing before and after the pandemic. According to the results in Table 2, there was no significant difference in air quality in Beijing between January 2020 and January 2019. However, from February 2020 to April 2020, compared with February 2019 to April 2019, the average value of AQI decreased by 13.900, with the proportion similar to Bao and Zhang [53], which was significant at the level of 10%. It shows that the pandemic has indeed affected the air quality in Beijing. However, it is a bit lower than 18.2 in the study of Chen et al. [54]; the possible reason is that he also considered 2018. The difference of mean change can only make a rough statistic of the impact of pandemic shutdown restriction policy on air quality. To estimate the specific effect, a more accurate regression statistical analysis is needed.

3.3. Basic Regression Estimation

Initially, we tested the stationarity properties of the series using the augmented Dickey–Fuller (ADF) test. The maximum lag order was 21 [55]. The sequences of the variables were stationarity. To test for multicollinearity among the explanatory variables, we generated a matrix (Table 3), and the maximum and minimum variance inflation factor (VIF) values were less than 10 and not less than 0, respectively. Therefore, it means there is no serious multicollinearity.
In order to investigate the impact of industrial structure on air quality in Beijing, we performed OLS regression based on 241 samples of air quality, meteorology, and industrial statistics in Beijing. The regression results are shown in Table 4.
According to the results in Table 4, the profit of the secondary industry in Beijing would strongly increase the air quality at the level of 1% significant level (0.257), almost 30 times that of the tertiary industry (0.007). It shows that the development of the secondary industry would worsen the air quality in Beijing, and it provides support for the non-capital functions relieving strategy in Beijing. The profit of the tertiary industry also has a positive impact on air quality, which is similar to the result found by He et al. [56]. In order to alleviate the urban disease in Beijing, the secondary industry should gradually transfer away from Beijing, which is consistent with the current industrial policy.
Next, we analyzed the impact of the five pollutants by the industrial structure. SECP (0.205) and TERP (0.005) have a positive effect on PM2.5 at a significant level of 1%, where the impact of SECP is more than 40 times that of TERP. The increase of the second industry significantly increases PM2.5 in Beijing. The concentration of O3 is also significantly affected by the industrial structure, with the fact that SECP (0.037) is nearly 25 times higher than TERP (0.0014). The increase in SECP would also cause an increase in CO at a significant level of 1%, which is more than 50 times that of TERP. However, O3 and SO2 are not significantly affected by the industrial structure. The possible reason is that the implicit assumptions of OLS are too strict and inconsistent with reality, so the results may not be accurate. Therefore, we used the DID model to measure the impact of industrial structure on air quality more precisely.

3.4. DID Estimation

3.4.1. Parallel Trend Test

To more accurately verify the changes of air quality in Beijing before and after the shutdown caused by the pandemic, we constructed a natural experiment and used DID estimation to analyze, based on 241 samples from January to April in 2019 and 2020. An important premise for the effective application of DID method is to meet the parallel trend hypothesis, that is, without the shutdown caused by the pandemic, changes in the treated group (2020) are in line with the control group (2019), so that the average treatment effect obtained will not have estimation error caused by the periodic change of the sample itself. Therefore, we used Coefplot to carry out the parallel trend test. The test results shown in Figure 1 reveal that the coefficient does fluctuate around 0 before the outbreak, and the coefficient is negative after the outbreak shutdown, which demonstrates that the shutdown caused by the pandemic has alleviated air pollution. Thus, it can be determined that the sample data used in this paper meet the ex-ante parallel trend hypothesis.

3.4.2. Regression Results of DID

Table 5 shows the estimation results of the DID model. The coefficient of treated × T, which is most important, is 58.558 and significant at the level of 1%. It shows that the change of industrial structure brought about by the pandemic does have a significant impact on Beijing’s air quality. The coefficient of SECP (0.405) is more than ten times that of TERP (0.034), which is significant at the level of 1%, reflecting that the impact of the secondary industry profit on air quality is much higher than that of the tertiary industry. Thus, the secondary industry is the main factor affecting air quality and causing air pollution. Therefore, it is very necessary for Beijing to transform its industrial focus from the secondary industry to the tertiary industry, which is also in line with previous studies [57,58]. Interaction item SECP × treated × T also has a significant negative effect on AQI (−0.365) at the level of 1% and is much greater than the coefficient of the interaction term TERP × treated × T (−0.031). It indicates that the pandemic has reduced the production of both the secondary and tertiary industries in Beijing, which has significantly improved the air quality in Beijing. Moreover, the effect of the reduction of the secondary industry on the improvement of air quality is better than that of the tertiary industry. Therefore, the implementation of the non-capital functions relieving strategy in Beijing is very timely and reasonable, and the industrial restructuring is effective and significant to the improvement of air quality.
The regression results of the control variables indicate that passen has a significant negative impact on AQI (−0.034), which means that if more people chose public transport, the air quality would be better. The air quality of Hebei Province also has a significant positive impact on Beijing. An increase of 1% on the average AQI in Hebei Province will lead to a rise of 0.978% on AQI in Beijing. It shows that as Hebei is a key area to undertake Beijing’s industry, the deterioration of its air quality will also bring pressure to Beijing’s atmospheric environment. Thus, the air quality in the surrounding areas is also very important, which is consistent with the result of Tao et al. [29]. If the non-capital functions relieving strategy in Beijing only relieves Beijing’s secondary industry to the surrounding areas, it will not be able to maximize the effect of the policy, which may show the shortcomings of the current strategy. Different from the research results of Yu et al. [43], we find that the increase of wind speed will lead to the increase of AQI, which may be due to the fact that Hebei has already undertaken many manufacturing industries [59]. Therefore, the greater the regional wind speed is, the greater the impact of air quality in surrounding areas such as Hebei on Beijing will be.

3.4.3. Heterogeneity Analysis of Five Pollutants

We further analyzed whether there was heterogeneity in the impact of industrial adjustment caused by the pandemic on different pollutants. According to Table 6, the effects of the variables treated ×T on PM2.5, NO2, and CO are 48.979, 11.928, and 0.303, respectively, at the significance level of 1%. It shows that the pandemic does affect PM2.5, NO2, CO. The increase of SECP and TERP will significantly aggravate these pollutants such as PM2.5, NO2, and CO, which is in line with Pei et al. [60] and Xue et al. [61]. Combined with the previous OLS model results, the regression coefficient of SECP is the biggest on PM2.5 (0.332) among the five pollutants, which means that PM2.5 is affected most seriously by the second industry. Interaction item SECP × treated × T also has a significant negative effect on PM2.5 (−0.303), NO2 (−0.106), and CO (−0.002) at the level of 5%. It shows that the shutdown of the secondary industry has a significant impact on the improvement of the air quality, which is greater than that of the tertiary industry.
The impact of the pandemic shutdown on SO2 is not very significant. The main reason may be that the main sources affecting SO2 concentration in Beijing are the heating boiler and the general industrial boiler [11]. The heating industry is affected by temperature and has little correlation with the pandemic and the adjustment of industrial structure. Therefore, it is reasonable that the impact of the shutdown on SO2 is not significant. The coefficients of SECP, TERP, SECP × treated × T, and TERP × treated × T on O3 are opposite and significant compared to other types of pollutants. There are also several possible reasons. Researchers found that a decrease in PM2.5 can lead to an increase in the O3 concentration [62,63] because PM2.5 can eliminate the precursors of ozone, including hydroxyl radicals and nitrogen–oxygen free radicals [64,65]. When the PM2.5 concentration falls, the concentrations of hydroxyl radicals and nitrogen–oxygen free radicals in the air will increase, thereby promoting the production of ozone [66]. Furthermore, as PM2.5 decreases, the higher amount of solar radiation would reach the near-surface air, thereby accelerating the photochemical reactions involved in ozone production, so more O3 would be produced [67].

4. Robust Test

4.1. Placebo Test

The placebo test is one of the most commonly used robustness test methods in the DID model. In order to test whether the improvement of air quality is really caused by the impact of the shutdown, we made up the time node of the pandemic impact. The dates 10 January and 20 February 2020 are selected as fictitious nodes for regression. Table 7 shows that the estimated coefficients in both variables are not significant; thus, the pandemic shutdown did not play a role after the virtual time point, and the placebo test passed. It implies that after the Spring Festival in 2020, the air quality in Beijing has improved compared with the same period in 2019, which is indeed caused by the industrial changes brought about by the pandemic. Therefore, it can be considered that the research results of this paper are robust, and the conclusion is reliable.

4.2. Data Robust Test

Aimed at eliminating the specific regression results due to the particularity of the data, we used the daily data during 2019~2021 to replace the data from January to April in 2019 and 2020 for regression analysis. The method and other data are consistent with the previous regression. The DID regression results shown in Table 8 are roughly consistent with the main explanatory variables in Table 5 (SECP × treated × T, TERP × treated × T). Thus, it can be considered that the research results of this paper are robust, and the conclusion is reliable.

5. Conclusions

Based on the opportunity provided by the pandemic, this study aims to clarify the impact of industrial restructuring on urban air quality, estimate the effects of non-capital functions relieving strategy in Beijing on air quality, and uncover possible improvements. The research results show that, first, the impact of profits of the secondary industry on air quality is ten times higher than that of the tertiary industry. Therefore, the secondary industry is the main factor causing air pollution. According to the fourth national economic census of Beijing in 2018, which is the latest one in China, the revenue of Beijing’s secondary and tertiary industries totaled CNY 18,310.34 billion. Among them, the secondary industry is CNY 3846.84 billion, accounting for 21.01%, while the tertiary industry is as high as CNY 14463.5 billion, accounting for 78.99%. The tertiary industry has become the pillar of Beijing’s economic development nowadays. It means the non-capital functions relieving strategy in Beijing has great progress. Second, the pandemic has reduced the production of both the secondary and tertiary industries in Beijing, which has significantly improved the air quality in Beijing. Moreover, the effect of the reduction in the secondary industry on the improvement of air quality is better than that of the tertiary industry. Therefore, it is very necessary for Beijing to transform its industrial focus from the secondary industry to the tertiary industry. In 2018, 13.61 million people were employed in the secondary and tertiary industries in Beijing. Among them, there were 2.036 million people in the secondary industry, accounting for 14.96%, and 11.574 million people in the tertiary industry, accounting for 85.04%. Therefore, the transformation from the secondary industry to the tertiary industry can not only relieve the pressure of air quality but also solve the problem of unemployment. Third, PM2.5, NO2, and CO are affected by the secondary and tertiary industries, where PM2.5 is affected most seriously by the second industry, and the shutdown of the secondary industry can bring greater benefits. Therefore, the implementation of the non-capital functions relieving strategy in Beijing is very timely and reasonable, and the adjustment of the industrial structure is effective and significant to the improvement of air quality. Fourth, the coefficients of O3 are opposite and significant compared to other types of pollutants. The probable reason is that the decrease of PM2.5 will lead to an increase in the concentration of O3. Fifth, the air quality of Hebei Province also has a significant positive impact on the air quality of Beijing, hence the aggravation of air pollution in Hebei will also bring pressure to Beijing’s air quality control. Therefore, for the industrial adjustment in the process of air pollution control, reasonable planning of the region is very essential.
In the end, combined with the current situation of Beijing, we propose the following enlightenment to improve air quality: First, the implementation of the non-capital functions relieving strategy in Beijing is very timely. The policy promotes the adjustment of the industrial structure in Beijing and effectively alleviates air pollution. These could also be general lessons for other countries to probably learn from existing evidence in Beijing air governance. Second, although the shutdown and restriction policy can improve PM2.5, NO2, CO, and other conventional pollutants, O3 pollution cannot be reduced. O3 can damage the respiratory tract and mucous membrane, without conventional protective methods to deal with. Therefore, it is urgent to formulate scientific methods to deal with O3 pollution. Last but not least, under the non-capital functions relieving strategy in Beijing, Hebei is regarded as a key area to undertake Beijing’s transfer industries, while the air pollution in Hebei will also infect Beijing. Therefore, in the process of industrial adjustment, the selection of appropriate regions for undertaking industries is very vital. We will pay attention to that in the future.

Author Contributions

Conceptualization, C.T. and G.D.; methodology, C.T.; software, C.T. and G.D.; validation, Z.L.; formal analysis, C.T. and Z.L.; investigation, C.T.; resources, Z.L.; data curation, Z.L.; writing—original draft preparation, C.T.; writing—review and editing, M.H., B.C. and G.D.; visualization, B.C.; supervision, M.H. and B.C.; project administration, B.C.; funding acquisition, B.C. All authors have read and agreed to the published version of the manuscript.

Funding

This research is funded by the National Natural Science Foundation of China (Grant No. 71873016); State Forestry and Grassland Administration (Grant No. 2019132707).

Institutional Review Board Statement

Not applicable.

Informed Consent Statement

Not applicable.

Data Availability Statement

All data used during the study are available from the corresponding author by request.

Conflicts of Interest

The authors declare no conflict of interest.

Appendix A

Table A1. Data characteristics.
Table A1. Data characteristics.
VariableDescriptionMeanp50sdMinMax
AQIAir quality index76.6961.1349.8620.00256.38
PM2.5PM2.5 concentration in the air52.7953.9622.877.13166.92
O3Ozone concentration in the air34.1030.6318.043.6799.88
COCO concentration in the air0.710.570.440.132.53
NONO concentration in the air5.424.333.321.9621.67
SO2SO2 concentration in the air34.1030.6318.043.6799.88
NEIAaqiThe average AQI of cities in Hebei including bad, chd, laf, zjk, sjz, tas, qhd, had, caz, hes, xit95.62581.54547.72425.841286.125
Notes: The city in Hebei Province and its abbreviation are Baoding (bad), Chengde (chd), Langfang (laf), Zhangjiakou (zjk), Shijiazhuang (sjz), Tangshan (tas), Qinghuangdao (qhd), Handan (had), Cangzhou (caz), Hengshui (hes), and Xingtai (xit).
Figure A1. The spatial distribution of stations in Beijing (China Environmental Monitoring Center).
Figure A1. The spatial distribution of stations in Beijing (China Environmental Monitoring Center).
Atmosphere 13 00119 g0a1

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Figure 1. Parallel trend test.
Figure 1. Parallel trend test.
Atmosphere 13 00119 g001
Table 1. The number of observations in the DID.
Table 1. The number of observations in the DID.
BeforeAfterTotal
Control3189120
Treated3190121
Total62179241
Table 2. Differences of AQI between January to April 2019 and January to April 2020.
Table 2. Differences of AQI between January to April 2019 and January to April 2020.
T = 0T = 1
Treated group81.57868.518
Control group79.03982.419
Difference2.539−13.900 *
Note: * p < 0.10.
Table 3. Multicollinearity test results.
Table 3. Multicollinearity test results.
VariableVIF1/VIF
SECP × treated × T3.980.25
TERP × treated × T4.960.2
SECP1.920.52
TERP4.940.2
passenger3.090.32
NEIA1.290.78
speed1.080.93
rain1.110.9
temperature2.810.36
pressure1.960.51
Table 4. OLS estimation results of industrial adjustment on air quality.
Table 4. OLS estimation results of industrial adjustment on air quality.
VariableAQIPM2.5O3NO2COSO2
SECP0.257 ***0.205 ***−0.0290.037 ***0.002 ***0.006 *
(0.048)(0.041)(0.018)(0.014)(0.000)(0.003)
TERP0.007 ***0.005 ***−0.0010.0014 **0.00003 **0.000005
(0.002)(0.002)(0.001)(0.0006)(0.000015)(0.0001)
passen−0.033 ***−0.026 ***0.001−0.001−0.0002 ***−0.001 *
(0.006)(0.005)(0.002)(0.002)(0.000)(0.000)
NEIA0.886 ***0.839 ***0.965 ***1.013 ***0.733 ***0.360 ***
(0.046)(0.045)(0.038)(0.045)(0.033)(0.019)
speed0.378−0.4850.390−0.919 *−0.002−0.115
(1.593)(1.330)(0.472)(0.475)(0.012)(0.104)
rain−2.572−3.195 **1.413 **−1.435 **−0.042 ***−0.221
(1.856)(1.547)(0.548)(0.554)(0.014)(0.121)
temp0.8270.571−0.340 ***0.481 ***0.010 ***0.009
(0.422)(0.352)(0.125)(0.130)(0.003)(0.028)
pressure−0.078−0.305−0.047−0.072−0.002−0.031
(0.432)(0.361)(0.128)(0.130)(0.003)(0.028)
constant59.361300.31350.53566.0542.22431.049
(444.956)(371.936)(131.233)(133.837)(3.357)(29.026)
R20.6310.6390.8470.7490.7360.647
Note: *** p < 0.01, ** p < 0.05, * p < 0.10.
Table 5. DID regression results of industrial adjustment on AQI.
Table 5. DID regression results of industrial adjustment on AQI.
VariableAQI
treated × T58.558 ***
(12.810)
SECP × treated × T−0.365 ***
(0.107)
TERP × treated × T−0.031 ***
(0.006)
SECP0.405 ***
(0.063)
TERP0.034 ***
(0.006)
passen−0.034 ***
(0.010)
NEIA0.988 ***
(0.045)
speed0.571 *
(0.344)
rain−1.774
(1.666)
temp0.653
(0.599)
pressure−0.075
(0.407)
treated24.313 ***
(8.819)
T−9.678
(10.046)
constant−1.324
(421.249)
λ t control
R20.717
Note: *** p < 0.01, * p < 0.10.
Table 6. DID regression results of industrial adjustment on specific pollutants.
Table 6. DID regression results of industrial adjustment on specific pollutants.
VariablePM2.5O3NO2COSO2
treated × T48.979 ***−4.67411.928 ***0.303 ***−0.834
(10.819)(3.927)(4.035)(0.101)(0.936)
SECP × treated × T−0.303 ***0.092 ***−0.106 ***−0.002 **−0.005
(0.090)(0.033)(0.034)(0.001)(0.008)
TERP × treated × T−0.024 ***0.006 ***−0.006 ***−0.0002 ***−0.0001
(0.005)(0.002)(0.002)(0.00005)(0.0004)
SECP0.332 ***−0.069 ***0.071 ***0.003 ***0.008
(0.053)(0.021)(0.020)(0.001)(0.005)
TERP0.027 ***−0.006 ***0.006 ***0.0002 ***0.00002
(0.005)(0.002)(0.002)(0.00005)(0.0004)
passen−0.023 ***0.009 ***−0.006 *−0.0002 ***−0.002 *
(0.008)(0.003)(0.003)(0.00008)(0.001)
NEIA0.949 ***1.056 ***1.103 ***0.822 ***0.371 ***
(0.044)(0.045)(0.048)(0.036)(0.025)
speed−0.2730.044−0.776 *0.004−0.092
(1.230)(0.453)(0.462)(0.012)(0.107)
rain−2.339 *1.413 ***−1.262 ***−0.037 ***−0.223
(1.408)(0.517)(0.530)(0.013)(0.123)
temp0.479−0.0760.349 ***0.006−0.012
(0.506)(0.187)(0.190)(0.005)(0.044)
pressure−0.2440.003−0.092−0.003−0.030
(0.344)(0.126)(0.130)(0.003)(0.030)
treated21.153 ***−5.951 **3.4000.154 **0.731
(7.459)(2.999)(2.854)(0.071)(0.721)
T−7.463−3.416−0.3970.0300.572
(8.483)(3.138)(3.232)(0.082)(0.785)
constant187.8000.67776.9872.07130.441
(356.309)(130.863)(134.804)(3.356)(31.131)
λ t controlcontrolcontrolcontrolcontrol
R20.7150.8710.7810.7730.653
Note: *** p < 0.01, ** p < 0.05, * p < 0.10.
Table 7. Placebo test results.
Table 7. Placebo test results.
VariableShock on 10 January 2020Shock on 20 February 2020
treated × T10.80318.497
(15.887)(21.436)
SECP × treated × T−0.173 ***−0.238
(0.097)(0.166)
TERP × treated × T−0.029 ***−0.027 ***
(0.005)(0.007)
SECP0.361 ***0.340 ***
(0.057)(0.096)
TERP0.031 ***0.030 ***
(0.005)(0.007)
passen−0.047 ***−0.046 ***
(0.010)(0.010)
NEIA0.945 ***0.949 ***
(0.044)(0.045)
speed0.7390.684
(1.471)(1.469)
rain−2.322−2.309
(1.716)(1.714)
temp0.6840.710
(0.479)(0.467)
pressure0.0280.025
(0.409)(0.409)
treated35.346 **31.598 ***
(14.193)(10.416)
T4.1234.017
(11.014)(11.953)
constant−94.330−86.799
(424.447)(422.489)
λ t controlcontrol
R20.6970.698
Note: *** p < 0.01, ** p < 0.05.
Table 8. Data robust test results.
Table 8. Data robust test results.
VariableAQI
treated × T12.654 *
(7.160)
SECP × treated × T−0.042 *
(0.024)
TERP × treated × T−0.002 *
(0.001)
SECP0.043 *
(0.023)
TERP0.001
(0.001)
passen−0.007 **
(0.003)
NEIA0.973 ***
(0.022)
speed1.664 **
(0.660)
rain−0.194
(0.413)
temp−0.354 **
(0.143)
pressure−0.340 **
(0.155)
treated−1.591
(6.162)
T36.882 ***
(5.063)
constant302.339 *
(160.059)
λ t control
R20.682
Note: *** p < 0.01, ** p < 0.05, * p < 0.10.
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Tao, C.; Liao, Z.; Hu, M.; Cheng, B.; Diao, G. Can Industrial Restructuring Improve Urban Air Quality?—A Quasi-Experiment in Beijing during the COVID-19 Pandemic. Atmosphere 2022, 13, 119. https://doi.org/10.3390/atmos13010119

AMA Style

Tao C, Liao Z, Hu M, Cheng B, Diao G. Can Industrial Restructuring Improve Urban Air Quality?—A Quasi-Experiment in Beijing during the COVID-19 Pandemic. Atmosphere. 2022; 13(1):119. https://doi.org/10.3390/atmos13010119

Chicago/Turabian Style

Tao, Chenlu, Zhilin Liao, Mingxing Hu, Baodong Cheng, and Gang Diao. 2022. "Can Industrial Restructuring Improve Urban Air Quality?—A Quasi-Experiment in Beijing during the COVID-19 Pandemic" Atmosphere 13, no. 1: 119. https://doi.org/10.3390/atmos13010119

APA Style

Tao, C., Liao, Z., Hu, M., Cheng, B., & Diao, G. (2022). Can Industrial Restructuring Improve Urban Air Quality?—A Quasi-Experiment in Beijing during the COVID-19 Pandemic. Atmosphere, 13(1), 119. https://doi.org/10.3390/atmos13010119

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