How to Balance the Trade-off between Economic Development and Climate Change?
Abstract
:1. Introduction
2. Brief Literature Review
3. Theoretical Setting and Model Specification
3.1. Basic Assumptions
3.2. Cost Minimization
3.3. Pollutant Emissions
4. Methodology and Data
4.1. Estimation Method
4.2. Tests before Model Construction
4.2.1. Cross-Sectional Dependence Test
4.2.2. Panel Unit Root Test
4.2.3. Panel Co-Integration Test
4.3. Multiple Mediating Effect Analysis
4.4. Data and Variables
5. Empirical Results
5.1. Results of the Tests Before Analysis
5.2. Impact of Each Effect on Carbon Emissions
- (1)
- Economic development. The negative impact of economic development on carbon emissions shows that the current economic development in China can contribute to increasing carbon emissions. Then, by adding the quadratic term of GPC into the equation, the presence of EKH was tested. In fact, we also considered the cubic term of GPC, but it was not significant, so we do not show the related results for simplicity. The coefficients of GPC and GPC square were 0.492 and −0.351, respectively, proving the existence of EKH and an inverted U-shape between carbon emissions and economic development. Our research results are consistent with those reported by [35,49]. It is confirmed that early-stage development in China negatively impacts the environment, especially during the industrialization and urbanization processes. Currently, although China is becoming better by promoting industrial transformation from the secondary industry to the tertiary industry and developing morelow-carbon technologies, much work is still needed for China to balance economic development and environmental pollution.
- (2)
- Industrial structure. According to model (7), INS negatively affected carbon emissions, while its quadratic item was not significant even at the 10% significance level. When the proportion of the secondary industry increases by one unit in GPC, carbon emissions will increase by 0.159 units. The results indicate that the continuous increase in the output value of the secondary industry will damage the environment without any turning point, which has critical implications for carbon emissions reduction. On the one hand, a large number of energy-intensive industries with heavy emissions and consumption, such as the thermal power industry and manufacturing industry, are included in the secondary industry. Therefore, to control carbon emissions, it is imperative to achieve low-carbon development of the secondary industry. On the other hand, industrial transformation is priority number one, and each country, especially China, is seeking to update and develop their industry towards a green industry. At present, China still depends on the secondary industry. For example, despite the rapid development of renewable energy, thermal power plays the dominant role in China in supplying electricity. In addition, from a perspective of the global value chain, the advantages of China center on the manufacturing industry. Thus, to control carbon emissions, China should positively promote an industrial transformation from the traditional secondary industry to the modern service industry and high-tech industry.
- (3)
- Technical progress. The impact of TEP on carbon emissions was positive, indicating that technical progress can help reduce carbon emissions. Furthermore, the results in Table 6 show that there is an inverted U-shape relationship between carbon emissions and technical progress. When the technology is at an initial stage, it will cause an increase in carbon emissions because, at that time, the development of technology will be at the expense of the environment. After arriving at a certain threshold, technical progress can contribute to a decrease in carbon emissions. Currently, China’s technology is developing at a high speed, including carbon capture and storage technology for traditional energy and some renewable energy technologies. Therefore, stimulating technical progress is the most essential and effective way to rapidly improve environmental quality and mitigate climate change in both the short and long run. In the Paris Agreement, China has promised that by 2030, carbon emissions will peak, and the Chinese government will undertake to implement the carbon intensity reduction of 60–65% below 2005 level by 2030 [72]. According to model (8), when carbon emissions reach the peak, the technical progress will be 0.625, which is high. We did not estimate the relationship between technical progress and carbon intensity of China, but based on the results in Table 6, it can be known that when technical progress increases 1 unit, carbon emissions will decrease by 0.229 units. Therefore, to achieve that goal, technical progress will be very high. Although technical progress can be used as a tool, it needs to undergo great changes. To promote the rapid development of technical progress and accelerate the carbon emissions reduction, stringent environmental regulation will be needed for a deep decarbonization.
- (4)
- Control variables. Compared with the three major driving forces, energy consumption had the largest impact on carbon emissions, indicating that energy consumption is the main source of carbon emissions. However, energy consumption is incorporated into economic development, industrial structure updating and technical progress, and those processes will all consume energy. Our results are also consistent with the research conducted by [73,74]. The energy can be divided into two types: renewable energy and non-renewable energy. The former is clean and sustainable, including wind and solar, while the latter, such as coal and oil, generates pollutants. The energy consumption examined in this paper indicates the total energy consumption, so the negative impact means that the energy consumption structure of China still overwhelmingly relies on non-renewable energy. The resources in China consist of abundant coals, minor oil and no gas, and the proportion of coal consumption to the total energy consumption is above 60%. Specifically, the thermal power industry, which can generate approximately 80% of China’s cumulative electric power, undoubtedly belongs to the coal-consumption sector. Until now, the installed capacity of thermal power has remained high, with a proportion above 74%. Therefore, our estimated results are meaningful for China to make policies to reduce carbon emissions. China should vigorously explore and develop renewable energies to gradually replace non-renewable energy. Another control variable is urbanization. Based on the DOLS results, at the 5% significance level, urbanization can significantly reduce carbon emissions, and this inhibiting effect becomes more obvious with the continuous promotion of the urbanization process. Our conclusion is proven by Yao et al. [51], who also argued that urbanization could present an abatement effect on carbon emissions, but such an abatement effect would be diminished with increasing urbanization. However, due to the different research data and methods applied, Wu et al. [75] reached the opposite conclusion. In recent years, the rapid development of urbanization has effectively improved the clustered benefits and economic-scale effects of population, traffic and industry, dramatically promoting resource conservation and driving the development of the service industry, such as catering, tourism, modern logistics and the financing and banking industry. Therefore, carbon emissions can be reduced. The results have great practical significance because, according to previous researches, urbanization is a contributor to the rise of carbon emissions. However, currently, the situation is different and more optimistic, and carbon emissions can be controlled by accelerating the urbanization process.
5.3. Interaction Among the Three Effects on Carbon Emissions
5.4. Discussion of Technology Effect
6. Further Discussion
6.1. Discussion on Policy Effect
6.2. Discussion on Rebound Effect
6.3. Robust Test
7. Conclusions and Policy Implications
- (1)
- Economic development and industrial structure will both negatively affect carbon emissions, while technical progress has a positive influence on carbon emissions. An inverted U-shape exists among carbon emissions, economic growth and technical progress, but the relationship between industrial structure and carbon emissions is linear. Our results confirm that there is a threshold point for economic growth and technical progress, and carbon emissions will increase first and then decrease after the threshold value.
- (2)
- As for the interaction among the scale, technology and structure effects, economic development can increase carbon emissions directly through the scale effect and indirectly decrease carbon emissions through the technology effect. Therefore, promoting technical progress and optimizing the industrial structure are two effective ways to mitigate carbon emissions. In comparison, the technical progress is unlimited and can play a key role in the short and long terms, while the role of the industrial structure is less important because it is a slow process to update it.
- (3)
- In view of the importance of promoting technical progress, to realize the goal of China in the Paris Agreement, technical progress needs to be fast. However, it will be not possible for technical progress to be so high in the short run. So stringent environmental regulation will be needed for deep decarbonization. To further explore the impact of technical progress, we divide it into different sources: RD, FDI and export. The empirical results prove that the most direct technical progress in China is national RD, so investing more into RD in China can help achieve the promise of reducing carbon emissions. Both the pollution haven hypothesis and learning-by-doing hypothesis exist in China. On the one hand, the quality of FDI should be enhanced by transforming the type of FDI from energy intensity into knowledge intensity. On the other hand, China is supposed to insist on high-quality exports and improve the environment by learning from practice. In addition, to reflect the influences of technical progress, the carbon emissions rebound effect is calculated and discussed. The existence of rebound effect is proven, and it is between 12% and 62% during 2001–2015. Results indicate that the technical progress alone cannot achieve the necessary carbon emissions reduction and too much focus on technical solutions might lead to a dead end. So other policies should coordinate with technical progress.
- (4)
- By considering the policy effect, we obtain that the policies related to energy savings and emissions reduction can have a great impact on controlling carbon emissions. When there are effective policies, the impact of economic development on carbon emissions becomes much smaller. Additionally, the negative influence of other variables becomes less significant as pollution control strengthens.
Author Contributions
Funding
Conflicts of Interest
References
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Date | Region | Equation | Driving Forces | Ref. |
---|---|---|---|---|
1971–2010 | 12 African countries | GPC (+) | [10] | |
1971–2009 | Pakistan | EC (+), GPC (+) | [11] | |
1985–2011 | 23 countries | GPC (+), TOP (−), EC (+/−) | [13] | |
1980–2010 | OECD | GPC (−), EC (+) | [20] | |
1981–2011 | ASEAN | EC (+), GPC (+), INS (+), FDI (−), EX (−), POP (+) | [21] | |
2000-2013 | China | EC (+), GPC (+), URB (+) | [17] | |
1992–2013 | China | GPC (+), INS (+), POP (+), CIN (+), FDI (−) | [19] | |
1970–2012 | China | EC (+), GPC (+), POP (+) | [19] | |
1971–2013 | India | EC (+), GPC (+) | [25] | |
1998–2014 | China | EC (+), GPC (-), INS (−), TEP (−), FDI (+), URB (+) | [27] | |
2000–2015 | China | GPC (+), INS (+), TEP (−), FDI (−) | [28] | |
1997–2010 | China | TEP (−) | [29] | |
1990–2012 | China | TEP (−) | [30] | |
1996–2007 | 95 countries | TEP (+/−) | [31] | |
2001–2010 | Japanese | RD (−) | [32] | |
2004–2016 | G-6 countries | RD (−) | [33] | |
1990–2016 | Mediterranean countries | GPC (+), RD (+), POP (−) | [34] | |
1982–2016 | China | GPC (+), EX (−), FDI (+) | [35] | |
1981–2010 | ASEAN | EC (+), FDI (+) | [36] | |
1990–2011 | 54 countries | GPC (+), FDI (+), EX (+), URB (−) | [37] | |
1976–2009 | Vietnam | GPC (+), FDI (−) | [38] | |
1953–2006 | China | EC (+), GPC (+), FDI (-), EX (+) | [39] | |
1990–2012 | 27 advanced economies | EC (+/−), GPC (+), EX (−), URB (+) | [40] | |
1980–2011 | OECD | EC (+/−), GPC (+), INS (+), URB (+) | [42] | |
1990–2012 | China | GPC (+), INS (−), URB (+) | [44] |
Name | Type | Variable Measure | Symbol | Unit of Measurement | Economic Implications | Expected Sign | Data Source |
---|---|---|---|---|---|---|---|
Total carbon emissions | Explained variable | Sum of total carbon emissions | CE | Thousand tonnes | / | / | [65] |
Economic growth | Explaining variable | Gross domestic product per capita | GPC | Billion yuan | The impact is uncertain. According to EKC, carbon emissions will increase first with the rise of GPC and then show a declining trend after a certain threshold value is reached. | +/− | [69] |
Industrial structure | Mediating variable | Secondary industry’s added value/GDP | INS | % | It is considered that a reasonable industrial structure can contribute to carbon emissions reduction. The secondary industry will generate more carbon emissions than that of the agricultural and tertiary industry. | + | [69] |
Technical progress | Mediating variable | Total factor productivity | TEP | / | Capital stock and labor force are the input indexes, and GDP of each province is the output index. A higher value means a lower level of carbon emissions. | − | [67,69,70] |
RD | Explaining variable | RD input/GDP | RD | % | RD input in the clean energy sectors can decrease carbon emissions; while on the contrary technical progress in dirty energy sectors will lead to increase of carbon emissions. | +/− | [69] |
Foreign direct investment | Explaining variable | Total of foreign direct investment | FDI | Billion yuan | Under the background of processing trade, there is certain correlation between carbon emissions and FDI. | +/− | [69] |
Export | Explaining variable | Export/GDP | EX | % | The process of export usually contains carbon emissions, and the influence is determined by the learning-by-doing effect. | +/− | [69] |
Energy consumption | Control variable | Total of energy consumption | EC | Million tons | Carbon emissions mainly come from energy consumption. Compared with clean energy, combustion of fossil fuels can generate a large amount of carbon emissions. The amount generated by coal combustion is nearly 1.7 times than that of natural gas. | + | [65] |
Urbanization | Control variable | Number of urban population/Total population | URB | % | Improvement of urbanization levels means the increase of urban population number and expansion of urban size, which will increase carbon emissions. However, at the late stage of urbanization, the technology tends to be mature and carbon emissions will decrease. | +/− | [71] |
Environmental governance | Explaining variable | Investment of industrial pollution control/GDP | IPC | % | The environmental governance can directly affect the sources of carbon emissions by making them pay more for producing carbon emissions. | − | [69] |
Variable | CD-Test | p-Value | Corr. |
---|---|---|---|
CE | 72.31 | 0.000 *** | 0.927 |
GPC | 65.81 | 0.000 *** | 0.826 |
INS | 55.18 | 0.000 *** | 0.707 |
TEP | 23.89 | 0.000 *** | 0.306 |
EC | 66.64 | 0.000 *** | 0.854 |
EX | 36.50 | 0.000 *** | 0.468 |
FDI | 76.31 | 0.000 *** | 0.978 |
URB | 34.54 | 0.000 *** | 0.443 |
IPC | 46.91 | 0.000 *** | 0.601 |
No. Lag | Variables in Levels | Variables in First Difference | ||||||
---|---|---|---|---|---|---|---|---|
With Trend | Without Trend | With Trend | Without Trend | |||||
1 | 1 | 2 | 3 | 1 | 1 | 2 | 3 | |
CE | −2.154 | −1.974 | −1.962 | −2.134 | −3.353 *** | −3.296 *** | −3.311 *** | −3.296 *** |
GPC | −2.325 | −1.906 | −2.139 | −1.906 | −3.428 *** | −3.735 *** | −3.871 *** | −3.735 ** |
INS | −10.784 | −1.671 | −1.671 | −1.511 | −2.927 ** | −2.655 *** | −2.655 *** | −2.655 *** |
TEP | −2.166 | −1.754 | −1.754 | −2.070 | −2.945 ** | −2.496 *** | −2.496 *** | −2.496 *** |
EC | −1.686 | −1.855 | −2.010 | −2.093 | −3.144 *** | −2.722 *** | −2.741 *** | −2.722 *** |
EX | −1.506 | −0.858 | −0.841 | −1.198 | −2.925 ** | −2.695 *** | −2.552 *** | −2.695 *** |
FDI | −1.261 | −1.164 | −1.294 | −1.425 | −2.862 ** | −2.602 *** | −2.636 *** | −2.602 *** |
URB | −1.962 | −1.643 | −1.579 | −1.774 | −3.083 *** | −2.843 *** | −2.483 *** | −2.909 *** |
IPC | −1.645 | −1.438 | −1.429 | −1.531 | −2.988 *** | −2.500 *** | −2.500 *** | −2.508 *** |
Statistic | Value | z-Value | p-Value | Robust p-Value |
---|---|---|---|---|
Gt | −3.701 | −6.528 | 0.000 | 1.000 |
Ga | −1.204 | 7.299 | 1.000 | 0.000 *** |
Pt | −4.796 | 4.621 | 1.000 | 0.000 *** |
Pa | −1.258 | 5.580 | 1.000 | 0.000 *** |
Variables | FMOLS | DOLS | |||||||
---|---|---|---|---|---|---|---|---|---|
Model | (1) | (2) | (3) | (4) | (5) | (6) | (7) | (8) | |
GPC | 0.386 *** (4.5102) | 0.436 *** (4.6017) | 0.375 *** (4.3762) | 0.327 *** (3.7162) | 0.247 *** (3.4313) | 0.492 *** (5.6910) | 0.471 *** (4.6378) | 0.248 *** (3.2545) | |
GPC2 | −0.324 *** (−4.1769) | −0.351 *** (−4.3208) | |||||||
INS | 0.338 *** (5.5609) | 0.130 *** (4.6054) | 0.240 *** (3.1596) | 0.166 *** (3.2548) | 0.315 *** (4.2216) | 0.159 *** (4.2809) | 0.228 *** (3.6982) | 0.178** (3.8627) | |
INS2 | 0.186 (0.0106) | 0.215 (0.2614) | |||||||
TEP | −0.355 *** (−4.2095) | −0.226 *** (−4.1178) | −0.259 *** (−4.1723) | 0.264 *** (5.1289) | −0.317 *** (−5.2671) | −0.239 *** (−4.0652) | −0.283 *** (−4.3246) | 0.229 *** (3.2846) | |
TEP2 | −0.148 *** (−3.1563) | −0.183 (−3.4597) | |||||||
EC | 0.462 *** (5.2874) | 0.427 *** (5.4501) | 0.419 ** (3.6387) | 0.205 *** (3.1762) | 0.410 *** (5.3905) | 0.469 *** (4.6072) | 0.440 ** (3.4219) | 0.234 *** (3.5329) | |
URB | −0.113 *** (−3.4272) | −0.108 *** (−2.7856) | −0.152 ** (−2.1732) | −0.143 *** (−3.1680) | −0.090 *** (−3.7158) | −0.133 *** (−2.2322) | −0.137 ** (−2.3097) | −0.156 *** (−3.1105) | |
R-squared | 0.8013 | 0.7964 | 0.7732 | 0.7095 | 0.8946 | 0.8652 | 0.8535 | 0.8362 | |
Adjusted R-squared | 0.8129 | 0.7930 | 0.7641 | 0.6862 | 0.8746 | 0.8510 | 0.8449 | 0.8127 | |
S.E. of regression | 0.1128 | 0.1293 | 0.1054 | 0.1761 | 0.1246 | 0.1537 | 0.1420 | 0.1678 | |
Long-run variance | 0.0022 | 0.0004 | 0.0026 | 0.0031 | 0.0009 | 0.0063 | 0.0074 | 0.0018 | |
Sample size | 435 | 435 | 435 | 435 | 435 | 435 | 435 | 435 | |
Shape | Linear shape | Inverted U-shape | Linear shape | Inverted U-shape | Linear shape | Inverted U-shape | Linear shape | Inverted U-shape |
Model | Model (9) | Model (10) | Model (11) | Model (12) | Model (13) | Model (14) | |
---|---|---|---|---|---|---|---|
Dependent Variable | CE | TEP | INS | EC | URB | CE | |
GPC | 0.414 *** (5.2284) | 1.526 *** (7.3171) | −2.628 (−0.6875) | −1.498 *** (−6.6302) | 1.376 (1.0490) | 0.386 *** (4.5102) | |
INS | / | / | / | / | / | 0.338 *** (5.5609) | |
TEP | / | / | / | / | / | −0.355 *** (−4.2095) | |
EC | / | / | / | / | / | 0.462 *** (5.2874) | |
URB | / | / | / | / | / | −0.113 *** (−3.4272) | |
R-squared | 0.953 | 0.814 | 0.857 | 0.913 | 0.721 | 0.8013 | |
Adjusted R-squared | 0.937 | 0.805 | 0.886 | 0.903 | 0.715 | 0.8129 | |
S.E. of regression | 0.176 | 0.123 | 0.166 | 0.185 | 0.147 | 0.1128 | |
Long-run variance | 0.0012 | 0.0009 | 0.0053 | 0.0005 | 0.0031 | 0.0022 | |
Sample size | 435 | 435 | 435 | 435 | 435 | 435 |
Variables | Coef. | t-Stat | p-Value | Variables | Coef. | t-Stat | p-Value |
---|---|---|---|---|---|---|---|
GPC | 0.243 | 4.1762 | 0.0000 *** | FDI | 0.134 | 3.4258 | 0.0000 *** |
GPC2 | −0.521 | 3.9625 | 0.0000 *** | EX | −0.188 | 4.0009 | 0.0000 *** |
INS | 0.175 | 3.3343 | 0.0000 *** | EC | 0.376 | 3.7164 | 0.0000 *** |
RD | −0.218 | −4.1609 | 0.0000 *** | URB | −0.182 | −3.0875 | 0.0000 *** |
R-squared | 0.8037 | S.E. of regression | 0.0721 | ||||
Adjusted R-squared | 0.8195 | Long-run variance | 0.0014 |
Variables | Coef. | t-Stat | p-Value | Variables | Coef. | t-Stat | p-Value |
---|---|---|---|---|---|---|---|
GPC | 0.316 | 4.3375 | 0.0000 *** | EC | 0.154 | 5.0572 | 0.0000 *** |
IPC | 0.247 | 4.5293 | 0.0000 *** | EX | −0.037 | −0.2169 | 0.3372 |
GPC2 | 0.129 | 3.3914 | 0.0000 *** | FDI | −0.082 | −0.0798 | 0.5577 |
GPC*IPC | −0.228 | −3.8429 | 0.0000 *** | RD | −0.139 | −0.8357 | 0.0000 *** |
INS | 0.168 | 2.7851 | 0.0008 *** | URB | −0.150 | −0.2674 | 0.2237 |
R-squared | 0.8566 | S.E. of regression | 0.0964 | ||||
Adjusted R-squared | 0.8610 | Long-run variance | 0.0005 |
Model | (15) | (16) |
---|---|---|
GPC | 0.492 *** (5.6910) | 0.494 *** (5.7284) |
GPC2 | −0.351 *** (−4.3208) | −0.355 *** (−4.2051) |
INS | 0.159 *** (4.2809) | 0.160 *** (4.1932) |
TEP | −0.239 *** (−4.0652) | |
TEPCH | 0.037 *** (3.1246) | |
EFFCH | −0.215 *** (2.8975) | |
EC | 0.469 *** (4.6072) | 0.458 *** (4.4803) |
URB | −0.133 *** (−2.2322) | −0.131 *** (−2.2467) |
R-squared | 0.8652 | 0.8582 |
Adjusted R-squared | 0.8510 | 0.8479 |
S.E. of regression | 0.1537 | 0.1360 |
Long-run variance | 0.0063 | 0.0015 |
Year | Rebound Effect | Year | Rebound Effect | Year | Rebound Effect |
---|---|---|---|---|---|
2000–2001 | 58.31% | 2005–2006 | 14.01% | 2010–2011 | 32.64% |
2001–2002 | 12.37% | 2006–2007 | 11.25% | 2011–2012 | 41.08% |
2002–2003 | 15.82% | 2007–2008 | 16.76% | 2012–2013 | 39.87% |
2003–2004 | 61.46% | 2008–2009 | 45.38% | 2013–2014 | 24.20% |
2004–2005 | −17.99% | 2009–2010 | 28.56% | 2014–2015 | 16.69% |
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Ma, X.; Jiang, Q. How to Balance the Trade-off between Economic Development and Climate Change? Sustainability 2019, 11, 1638. https://doi.org/10.3390/su11061638
Ma X, Jiang Q. How to Balance the Trade-off between Economic Development and Climate Change? Sustainability. 2019; 11(6):1638. https://doi.org/10.3390/su11061638
Chicago/Turabian StyleMa, Xuejiao, and Qichuan Jiang. 2019. "How to Balance the Trade-off between Economic Development and Climate Change?" Sustainability 11, no. 6: 1638. https://doi.org/10.3390/su11061638
APA StyleMa, X., & Jiang, Q. (2019). How to Balance the Trade-off between Economic Development and Climate Change? Sustainability, 11(6), 1638. https://doi.org/10.3390/su11061638