Regional Differences in PM2.5 Environmental Efficiency and Its Driving Mechanism in Zhejiang Province, China
Abstract
:1. Introduction
2. Literature Review
- (1)
- In terms of research methods, DEA is a non-parametric method that does not need to set subjective weights and process dimension data. Therefore, it has been widely used to measure atmospheric environmental efficiency [34,35]. From the traditional radial framework to the non-radial model framework considering relaxation variables, various academics have proposed the SBM-DEA model [28,31], super SBM model [2], dynamic SBM-DEA [36], Hybrid-Dynamic DEA [34] and other improved models. The limitation of the traditional DEA method is that it is difficult to analyze efficiency accurately because it does not take into account the relaxation of output factors, and it is difficult to grasp the factors that need to be considered first to improve efficiency. The subsequently improved SBM-DEA model could avoid the deviation caused by radial and angular measurements, which is favored by scholars. In the empirical estimation, the combination of static efficiency and the dynamic efficiency analysis is often adopted, and the Malmquist index and Luenberger productivity index method are frequently selected to decompose detailed driving factors, including the technical efficiency, technological progress, and scale efficiency index of dynamic efficiency [2,22,25].
- (2)
- For evaluation indicators, to make the DEA a reasonable method to estimate atmospheric environmental efficiency, different scholars have constructed different input-output index systems for calculation. The first way is to take the air pollutant emissions (SO2, NOx, smoke and dust, etc.) as the input indexes and GDP as the economic output index to calculate the atmospheric environment efficiency or air pollution emissions efficiency. Further, some scholars regard the air quality rate and comprehensive index of IAQI to be the direct output factor that measures environmental benefits [22,35]. However, this index system has limitations in considering the impact of conventional production factor inputs (capital and labor) on atmospheric environmental efficiency and cannot reflect the socioeconomic background differences in the study area. The second way is to take labor, capital, energy, and other production factors as input indicators, while air pollutant emissions are an undesirable output with weak disposability and introduce a directional distance function together with the desirable output (GDP) for calculation. This method can evaluate atmospheric environmental efficiency. In specific empirical research, CO2, SO2, NOx, smoke and dust are often regarded as the research objects of pollutants [26,27], and particulate matters smaller than 10 μm (PM10) (inhalable particles with diameters that are generally less than 10 μm), while PM2.5 are gradually being included in the undesirable output indicators [18,34].
- (3)
- From the research on the influence mechanism of atmospheric environmental efficiency, the ordinary panel regression model and Tobit model have often been adopted [34]. To control the influence of endogenous problems on the estimation results to the largest extent, the system Gaussian mixture model (GMM) estimation, two-stage least squares approach (2SLS), panel threshold model, spatial Dubin model, mediation effect model, DID model and instrumental variable analysis can be further employed to test the robustness of the model [1,6,27]. The explained variables in the regression model are mainly static atmospheric environmental efficiency. The level of economic development and GDP are often selected as core explanatory variables. Other explanatory variables mainly include a factor endowment structure, industrial structure, scientific and technological innovation level, foreign direct investment, government environmental management ability, environmental regulation, population density, industrial enterprise scale, investment scale, etc. [34]. At present, the development of a digital economy has brought profound changes to government governance, enterprise production, and the lives of residents, which not only directly affects pollutant emissions but also plays a strong part in the environmental supervision and technical efficiency of governments and enterprises [27]. However, few studies have been conducted to analyze the effect of the digital economy’s development on environmental efficiency from a theoretical and empirical perspective.
3. Materials and Methods
3.1. Study Area
3.2. Variables and Data
3.3. SBM-DEA Model with Undesirable Output
3.4. Econometric Regression Model
- (1)
- Level of the digital economy. It is a core explanatory variable. Promoting the development of the digital economy reinforces the intensive transformation of industrial production methods through technological innovation, thereby improving the current state of PM2.5 pollution and the PM2.5 environmental control efficiency. Referring to the estimate of the level of development of the digital economy at the city level [18,27,57], this study comprehensively considered four dimensions of the digital economy, including digital infrastructure, digital industry, digital technology, and digital applications. Four indicators, including the proportion of internet users, the proportion of mobile phone users, the employees’ proportion in the information transmission and technology service industry, and the total per capita telecommunications business, were used to build a digital economy indicator system. After standardization, the entropy method was used to estimate the indicator’s weight, and the digital economy’s comprehensive development index was calculated, which was denoted as De.
- (2)
- (3)
- Level of pollution control. The yearly operating cost of industrial waste gas treatment facilities was selected to measure this indicator. It affected the PMEE from the perspective of waste treatment investment and technical capability [27].
- (4)
- (5)
4. Results
4.1. Regional Difference of PM2.5 Concentration in Zhejiang
4.2. Analysis of PMEE in Zhejiang
4.3. Influencing Factors of PM2.5 Environmental Efficiency
4.3.1. Benchmark Regression Results
4.3.2. Endogenous Regression Results
4.3.3. Exogenous Impact Test
5. Discussion and Policy Implications
5.1. The Influence Mechanism of Digital Economy on PMEE
5.2. Regional Differences in PM2.5 Environmental Efficiency Promotion
5.3. Other Necessary Policy Recommendations
- It is necessary to accelerate the development of the digital economy and improve the efficiency of government pollution control. The digital economy can effectively integrate all kinds of information resources in production decision-making, alleviate information fragmentation and asymmetry issues in data collection and development, and conduct decisional analysis and reorganize product data, process data, and resource data. Therefore, it can realize the efficient promotion of the production process, improve the productivity of enterprises, and support PMEE improvement by reducing resource waste and pollutant emissions.
- It is necessary to implement precise pollution control and improve the technical efficiency of PM2.5 treatment. Environmental digital management can be taken as a means to highlight PM2.5-governance in key areas, key periods, key fields, and key industries and promote the in-depth governance of volatile organic compounds in petrochemical, chemical, industrial coating, and other industries [65]. Relying on the continually advanced environmental data monitoring network, the ability to provide an early warning, the perception of pollution sources, and the ability of government environmental supervision can be improved. The level of PM2.5 pollution control can be upgraded by improving the accuracy and effectiveness of government environmental supervision.
- It is vital to rely on innovation and technological progress to accelerate industrial transformation and upgrading. The methods include increasing investment in research and development funds in air pollution prevention and control technology, encouraging industrial enterprises to develop low-carbon and green technologies, promoting technological change in the field of energy and the environment, as well as reducing fossil energy consumption and pollution emissions at the source. Moreover, traditional industries can be phased out and replaced by green environmental protection industries, and the emission intensity of atmospheric pollutants in traditional manufacturing sectors will be gradually reduced. Future areas of industrial development include clean energy vehicles, cloud computing, big data, 5G, medical installations, and aviation and satellite applications.
6. Conclusions
- (1)
- During the study period, the PM2.5 pattern of Zhejiang province indicated the characteristics of a continuous reduction in the concentration and continuous improvement in environmental quality. PM2.5 pollution was relatively serious in Hangzhou, Jiaxing, Shaoxing and other cities around Hangzhou Bay.
- (2)
- The average value of PMEE in Zhejiang province was 0.6430, and there was about a 36% possibility for improvement in production frontiers, and the PMEE of each city showed a certain fluctuating growth trend. The cities with high PMEE were mainly Zhoushan, Hangzhou, and Ningbo.
- (3)
- The results of benchmark regression and endogenous regression estimation indicated that the development level of the digital economy had a crucial effect on promoting urban PMEE. At the same time, the level of pollution control and scientific and technological innovation also had a significantly positive impact. By contrast, the proportion of the industrial output value had a certain negative effect on PMEE. The positive impact of the development of the digital economy on urban PMEE was still tenable after the robustness test through the use of methods that replaced explanatory variables. The results of the exogenous impact test indicated that the development of the urban digital economy, represented by the implementation of a pilot policy, not only reduced PM2.5 emissions but also improved the level of PMEE governance. This means that the results of the empirical analysis were reliable.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Abbreviations
PM2.5 | fine particulate matter smaller than 2.5 μm |
PM10 | particulate matter smaller than 10 μm |
PMEE | PM2.5 environmental efficiency |
GDP | Gross domestic product |
DEA | Data Envelopment Analysis |
SBM | Slack-Based Measure |
ZSG-DEA | Zero sum gains DEA model |
DID | Difference-in-differences |
IAQI | Urban environmental air quality index |
R&D | Research and development |
DMU | Decision-making unit |
CCR | Charnes, Cooper, and Rhodes |
BCC | Banker, Charnes and Cooper |
FDI | Foreign direct investment level |
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Author | Scope of Study | Period | Input Indicators | Desirable Output | Undesirable Output | Method |
---|---|---|---|---|---|---|
Lu et al., 2019 [22] | 11 cities in Zhejiang | 2006–2016 | SO2, NOx, smoke and dust emissions, total industrial exhaust emissions | GDP | IAQI | Non-radial DEA Malmquist Index |
Wu and Guo, 2021 [24] | 29 Chinese provinces | 2012 | SO2, NOx, soot, coal consumption, car ownership, capital and labor | GDP | PM2.5 emissions | The undesirable output DEA model |
Piao et al., 2019 [25] | 30 Chinese provinces | 2005–2014 | Employment, energy and water consumption, capital stock | GDP | CO2, SO2, etc. | DEA, ML productivity |
Song et al., 2019 [26] | 30 Chinese provinces | 2004–2015 | Employees, consumption of standard coal, capital stock | GDP | SO2 | meta-frontier non-radial angle DEA |
Deng and Zhang, 2022 [27] | 285 Chinese cities | 2011–2018 | Public service labor force, environmental protection investment | Green area | SO2, smoke | SBM-DEA |
Zhang et al., 2016 [28] | 30 Chinese provinces | 2005–2011 | Labor employment, capital stock and energy consumption | GDP | CO2, SO2 | SBM-DEA |
Wang et al., 2018 [29] | Provincial thermal power industry | 2006–2014 | Energy consumption, installed capacity and employee | Electricity generation | CO2, SO2 NOX, soot emissions | DEA-based materials balance approach |
Yang and Li, 2018 [30] | 39 Chinese industrial sectors | 2003–2014 | Capital, labor, energy consumption | Industrial value added | Industrial waste gas emissions | DEA model |
Ma et al., 2021 [31] | 30 Chinese provinces | 2001–2018 | employed persons, total energy and water consumption, capital stock, | GDP | PM2.5 concentration | SBM-Undesirable-VRS model |
Li et al., 2019 [32] | 31 Chinese cities | 2013–2017 | Employees, fix assets and energy consumption | GDP | PM2.5, SO2 and NO2 | Resample SBM DEA |
Wu et al. 2016 [33] | 29 Chinese provinces | 2000–2010 | Energy, labor and fixed asset investment | GDP | PM2.5 emissions | input-oriented ZSG-DEA model |
Zhang et al., 2021 [2] | 112 Chinese cities | 2003–2017 | Labor, energy and water consumption, fixed asset investment | GDP | PM2.5 concentration | Super-SBM-DEA GML productivity |
Li et al., 2021 [34] | 260 Chinese cities | 2003–2018 | Labor, energy consumption, fixed asset investment | GDP | PM2.5 concentration | Hybrid-Dynamic-DEA |
Variable | Indicator | Variable Name | Sample | Mean | Standard Deviation | Min | Max |
---|---|---|---|---|---|---|---|
Input variable | Employed persons | Labor | 154 | 327.43 | 177.90 | 55.84 | 720.00 |
Energy consumption | Energy | 154 | 987.98 | 687.76 | 83.78 | 3273.51 | |
Investment in fixed assets | Capital | 154 | 1797.42 | 1484.54 | 210.17 | 7241.91 | |
Desirable output | GDP | GDP | 154 | 3318.48 | 2842.11 | 335.20 | 15,375.05 |
Undesirable output | PM2.5 concentration | PM2.5 | 154 | 48.33 | 12.51 | 20.10 | 70.90 |
Key explanatory variable | Digital economy level | De | 154 | 0.43 | 0.31 | 0.87 | 0.12 |
Control variable | Industrial structure level | Ind | 154 | 42.70 | 6.60 | 23.00 | 54.82 |
Pollution control level | Reg | 154 | 81,329.4 | 77,937.8 | 985.0 | 362,335.0 | |
Technological innovation level | Tec | 154 | 1.72 | 0.71 | 0.21 | 3.29 | |
Foreign direct Investment level | Fdi | 154 | 126,329.2 | 166189.3 | 1926 | 720,915 |
Regions | City | 2006 | 2011 | 2016 | 2019 | 14-Year Average | Rank |
---|---|---|---|---|---|---|---|
Hangzhou Bay urban agglomeration | Hangzhou | 0.6302 | 0.5082 | 0.7037 | 1.000 | 0.7180 | 2 |
Ningbo | 0.4303 | 0.6809 | 1.000 | 1.000 | 0.7175 | 3 | |
Jiaxing | 0.4064 | 0.4134 | 0.4618 | 0.5950 | 0.4534 | 11 | |
Huzhou | 0.4266 | 0.4368 | 0.5103 | 0.6578 | 0.4952 | 9 | |
Shaoxing | 0.5117 | 0.4746 | 0.5574 | 0.6519 | 0.6119 | 8 | |
Zhoushan | 1.0000 | 0.9316 | 0.8404 | 1.0000 | 0.9387 | 1 | |
Non-Hangzhou Bay areas | Wenzhou | 0.7375 | 0.5020 | 0.4879 | 0.6980 | 0.6479 | 7 |
Jinhua | 0.5579 | 0.6657 | 0.5762 | 0.7288 | 0.6522 | 6 | |
Quzhou | 0.4288 | 0.4539 | 0.4787 | 0.5636 | 0.4704 | 10 | |
Taizhou | 0.6110 | 0.5919 | 0.5131 | 0.6710 | 0.6662 | 5 | |
Lishui | 0.5325 | 0.7773 | 0.6436 | 1.0000 | 0.7021 | 4 | |
Total average | 0.5702 | 0.6445 | 0.6293 | 0.7787 | 0.6430 |
Variables | (1) PMEE | (2) PMEE | (3) PMEE | (4) PMEE | (5) PMEE |
---|---|---|---|---|---|
lnDe | 0.932 *** (3.731) | 0.947 *** (3.835) | 0.835 *** (3.429) | 0.846 *** (3.501) | 0.908 *** (2.537) |
lnInd | −0.043 ** (1.362) | −0.055** (1.279) | −0.048 ** (1.318) | −0.052 ** (1.294) | |
lnReg | 0.142 *** (0.921) | 0.133 *** (0.844) | 0.107 *** (0.832) | ||
lnTec | 0.065 ** (0.736) | 0.058 ** (0.694) | |||
lnFdi | −0.052 (0.481) | ||||
Constant | −8.593 *** (−5.621) | −7.548 *** (−4.342) | −5.361 ** (−3.107) | −4.781 ** (−2.329) | −9.382 *** (−6.218) |
Urban fixed effect | Yes | Yes | Yes | Yes | Yes |
Time fixed effect | Yes | Yes | Yes | Yes | Yes |
R2 | 0.642 | 0.663 | 0.675 | 0.741 | 0.694 |
Number of samples | 154 | 154 | 154 | 154 | 154 |
Number of cities | 11 | 11 | 11 | 11 | 11 |
Variables | (6) lnPM2.5 | (7) PMEE | First Stage of 2SLS | Second Stage of 2SLS |
---|---|---|---|---|
lnDe | (8) PMEE | |||
lnDe | −0.451 *** (−1.028) | 0.914 *** (2.032) | 1.038 *** (7.841) | |
L. lnPM2.5 | 0.051 *** (1.424) | |||
L. PME | 0.231 *** (4.782) | 0.175 *** (3.951) | ||
Controls | Yes | Yes | Yes | Yes |
Urban fixed effect | Yes | Yes | Yes | Yes |
Time fixed effect | Yes | Yes | Yes | Yes |
R2 | 0.583 | 0.728 | 0.622 | 0.498 |
Number of samples | 154 | 154 | 154 | 154 |
Number of cities | 11 | 11 | 11 | 11 |
Variables | (9) PMEE | (10) PMEE | (11) lnPM2.5 | (12) lnPM2.5 |
---|---|---|---|---|
Policy | 0.294 *** (0.472) | 0.251 *** (0.148) | −0.359 *** (−0.241) | −0.304 *** (−0.172) |
Constant | −2.813 *** (−1.458) | −2.454 *** (−1.029) | 4.216 *** (1.382) | 3.892 *** (0.722) |
Controls | No | Yes | No | Yes |
Urban fixed effect | Yes | Yes | Yes | Yes |
Time fixed effect | Yes | Yes | Yes | Yes |
R2 | 0.459 | 0.508 | 0.421 | 0.466 |
Number of samples | 154 | 154 | 154 | 154 |
Number of cities | 11 | 11 | 11 | 11 |
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Fang, X.; Gao, B.; Cui, S.; Ding, L.; Wang, L.; Shen, Y. Regional Differences in PM2.5 Environmental Efficiency and Its Driving Mechanism in Zhejiang Province, China. Atmosphere 2023, 14, 672. https://doi.org/10.3390/atmos14040672
Fang X, Gao B, Cui S, Ding L, Wang L, Shen Y. Regional Differences in PM2.5 Environmental Efficiency and Its Driving Mechanism in Zhejiang Province, China. Atmosphere. 2023; 14(4):672. https://doi.org/10.3390/atmos14040672
Chicago/Turabian StyleFang, Xuejuan, Bing Gao, Shenghui Cui, Lei Ding, Lihong Wang, and Yang Shen. 2023. "Regional Differences in PM2.5 Environmental Efficiency and Its Driving Mechanism in Zhejiang Province, China" Atmosphere 14, no. 4: 672. https://doi.org/10.3390/atmos14040672
APA StyleFang, X., Gao, B., Cui, S., Ding, L., Wang, L., & Shen, Y. (2023). Regional Differences in PM2.5 Environmental Efficiency and Its Driving Mechanism in Zhejiang Province, China. Atmosphere, 14(4), 672. https://doi.org/10.3390/atmos14040672