| Literature DB >> 34886178 |
Jia Li1,2, Decai Tang2,3, Acheampong Paul Tenkorang3, Zhuoran Shi4.
Abstract
This paper employs the global Malmquist Luenberger (GML) index and the System Generalized method of moments (GMM) estimation method to investigate the influence of both environmental regulation and financial development on green total factor productivity in 41 cities of the Yangtze River Delta (YRD) in China from 2003-2019. We select the relevant input-output data to measure the green total factor productivity (GTFP) and its decomposition index including undesirable output. The results show that the GTFP and its decomposition index in the YRD have a slow fluctuating upward trend. The YRD mainly depends on improving the level of technological progress and environmental governance to promote the improvement of regional economic green development level. The empirical research results show that there is an inverted U relationship between environmental regulation and GTFP in the YRD, too strict environmental regulation will inhibit the growth of green total factor productivity. By adding control variables, the inflection point of environmental regulation is 0.5034, which is lower than that without control variables. There is a strong interaction and superposition effect between financial development and environmental regulation, which is closely related to the established financial cooperation mechanism, perfect financial system arrangement and cross-regional financial cooperation platform in the YRD. Government intervention should be reduced, the introduction of foreign capital should be controlled appropriately, foreign capital should be guided to green industries, and the use efficiency of foreign capital should be improved. This paper holds that we should pay attention to the strength of environmental regulation, prevent overcorrection, increase the guidance of credit funds, deepen the reform of the financial system, appropriately intervene in the market by the government, strengthen the guidance of foreign capital, and promote the development and transformation of the green economy in the YRD region with the help of several policies.Entities:
Keywords: environmental regulation; financial development; green total factor productivity; influence effect
Mesh:
Year: 2021 PMID: 34886178 PMCID: PMC8657251 DOI: 10.3390/ijerph182312453
Source DB: PubMed Journal: Int J Environ Res Public Health ISSN: 1660-4601 Impact factor: 3.390
Figure 1Geographic map of China where the Yangtze River Delta is the research Area.
Description of indicators.
| Variable | Index | Computing Method |
|---|---|---|
| Environmental regulation | ER | Select three indicators: industrial wastewater emission, industrial sulfur dioxide emission and industrial smoke (powder) dust emission, determine the weight of each indicator by using the entropy of the indicator data, and then evaluate the relevant data by TOPSIS method. |
| Financial development | FD | Select three indicators: per capita deposit and loan balance, deposit conversion rate and financial scale, determine the weight of each indicator by using the entropy of the indicator data, and then evaluate the relevant data by TOPSIS method. |
| Financial intervention | FI | The proportion of fiscal expenditure in GDP |
| Foreign capital utilization | FDI | Measured by the proportion of actual foreign direct investment in GDP, the unit of the US dollar is adjusted to RMB based on the annual average exchange rate |
| Degree of openness | OPEN | When using the two indicators of the proportion of total import and export trade in GDP, the unit of the US dollar is adjusted to RMB based on the annual average exchange rate. |
| Green total factor productivity | GML | The input indicators are capital, labor, energy and water resources, the output indicators are actual GDP as the desirable output, and the industrial wastewater and waste gas emission is undesirable output |
Summary of average GML growth rate by province and year in the YRD from 2003 to 2019.
| Year | Average Growth Rate of GML in Jiangsu Province | Average Growth Rate of GML in Zhejiang Province | Average Growth Rate of GML in Shanghai | Average Growth Rate of GML in Anhui Province | Mean Value of GML Growth Rate in YRD |
|---|---|---|---|---|---|
| 2003–2004 | 0.972451 | 0.941206 | 1 | 0.902728 | 0.937531 |
| 2004–2005 | 0.979407 | 0.928238 | 1 | 0.977036 | 0.965256 |
| 2005–2006 | 0.932775 | 1.015935 | 0.9496 | 0.986268 | 0.976371 |
| 2006–2007 | 1.001462 | 1.012674 | 1.0429 | 0.976696 | 0.995816 |
| 2007–2008 | 1.066429 | 1.01081 | 1.0147 | 1.093313 | 1.060736 |
| 2008–2009 | 1.010115 | 0.970909 | 1.003 | 0.991999 | 0.992353 |
| 2009–2010 | 1.044536 | 1.069245 | 0.99219 | 1.039806 | 1.048043 |
| 2010–2011 | 1.020308 | 0.966238 | 1.7954 | 1.022486 | 1.025556 |
| 2011–2012 | 1.041635 | 0.983672 | 0.54311 | 0.989197 | 0.993461 |
| 2012–2013 | 1.037688 | 1.124828 | 1.0256 | 0.954114 | 1.028158 |
| 2013–2014 | 0.939304 | 0.850866 | 0.85125 | 1.011184 | 0.94148 |
| 2014–2015 | 0.988408 | 0.987608 | 0.94781 | 0.951701 | 0.972878 |
| 2015–2016 | 0.974235 | 1.119512 | 1.0664 | 1.078142 | 1.056009 |
| 2016–2017 | 0.910635 | 0.841714 | 1.1622 | 0.914653 | 0.899848 |
| 2017–2018 | 1.062916 | 1.11325 | 1.0013 | 1.019848 | 1.05811 |
| 2018–2019 | 1.080948 | 1.012893 | 0.99874 | 1.129626 | 1.079681 |
| 2013–2019 | 1.003953 | 0.99685 | 1.024638 | 1.002425 | 1.001955 |
Summary of average BPC growth rate by province and year in the YRD from 2003 to 2019.
| Year | Average Growth Rate of BPC in Jiangsu Province | Average Growth Rate of BPC in Zhejiang Province | Average Growth Rate of BPC in Shanghai | Average Growth Rate of BPC in Anhui Province | Mean Value of BPC Growth Rate in YRD |
|---|---|---|---|---|---|
| 2003–2004 | 0.94516 | 0.953854 | 1 | 0.895824 | 0.929577 |
| 2004–2005 | 0.981932 | 0.961922 | 1 | 0.943616 | 0.962051 |
| 2005–2006 | 0.953116 | 0.993189 | 0.9496 | 0.993926 | 0.979708 |
| 2006–2007 | 1.002792 | 1.013592 | 1.0429 | 0.982313 | 0.998676 |
| 2007–2008 | 1.066208 | 1.014137 | 1.0147 | 1.091544 | 1.060869 |
| 2008–2009 | 0.987998 | 1.020192 | 1.003 | 1.00557 | 1.003859 |
| 2009–2010 | 1.034151 | 1.073091 | 0.99219 | 1.060014 | 1.053668 |
| 2010–2011 | 1.01863 | 0.936985 | 1.7954 | 1.002838 | 1.009508 |
| 2011–2012 | 1.024138 | 0.972136 | 0.54311 | 0.97269 | 0.978377 |
| 2012–2013 | 1.030305 | 1.137539 | 1.0256 | 0.960765 | 1.031823 |
| 2013–2014 | 0.969436 | 0.835637 | 0.85125 | 1.083184 | 0.975046 |
| 2014–2015 | 0.947829 | 0.989918 | 0.94781 | 0.906176 | 0.942866 |
| 2015–2016 | 0.995758 | 1.192436 | 1.0664 | 1.085362 | 1.085216 |
| 2016–2017 | 0.966127 | 0.928871 | 1.1622 | 0.948786 | 0.954146 |
| 2017–2018 | 1.074291 | 1.176891 | 1.0013 | 1.031944 | 1.083512 |
| 2018–2019 | 1.079854 | 1.027301 | 0.99874 | 1.077131 | 1.062713 |
| 2013–2019 | 1.004858 | 1.014231 | 1.024638 | 1.002605 | 1.006976 |
Summary of average EC growth rate by province and year in the YRD from 2003 to 2019.
| Year | Average Growth Rate of EC in Jiangsu Province | Average Growth Rate of EC in Zhejiang Province | Average Growth Rate of EC in Shanghai | Average Growth Rate of EC in Anhui Province | Mean Value of EC Growth Rate in YRD |
|---|---|---|---|---|---|
| 2003–2004 | 1.030603 | 0.985326 | 1 | 1.007464 | 1.00868 |
| 2004–2005 | 0.99527 | 0.973789 | 1 | 1.039931 | 1.007051 |
| 2005–2006 | 0.978372 | 1.033568 | 1 | 0.992861 | 0.999362 |
| 2006–2007 | 0.999838 | 0.99912 | 1 | 0.994173 | 0.997439 |
| 2007–2008 | 0.999252 | 0.997039 | 1 | 1.00167 | 0.99962 |
| 2008–2009 | 1.023064 | 0.961415 | 1 | 0.988283 | 0.992388 |
| 2009–2010 | 1.010568 | 0.997486 | 1 | 0.986408 | 0.997372 |
| 2010–2011 | 1.001833 | 1.037915 | 1 | 1.023394 | 1.019883 |
| 2011–2012 | 1.017862 | 1.014 | 1 | 1.017733 | 1.01634 |
| 2012–2013 | 1.007531 | 0.983457 | 1 | 0.993271 | 0.995323 |
| 2013–2014 | 0.965725 | 1.019713 | 1 | 0.946419 | 0.973511 |
| 2014–2015 | 1.044835 | 0.997745 | 1 | 1.055799 | 1.035386 |
| 2015–2016 | 0.982194 | 0.953412 | 1 | 0.996111 | 0.980337 |
| 2016–2017 | 0.94732 | 0.913129 | 1 | 0.981236 | 0.952667 |
| 2017–2018 | 0.995302 | 0.951143 | 1 | 0.99121 | 0.981972 |
| 2018–2019 | 1.002077 | 0.987901 | 1 | 1.052734 | 1.017991 |
| 2013–2019 | 1.000103 | 0.987885 | 1 | 1.004294 | 0.998458 |
Figure 2Changing trend of GML, BPC and EC in the YRD from 2003 to 2019.
Figure 3GML Growth rate in YRD (a) from 2003 to 2004, and (b) from 2018 to 2019.
Figure 4Growth rate of BPC in YRD (a) from 2003 to 2004, and (b)from 2018 to 2019.
Figure 5Growth rate of EC in the YRD (a) from 2003 to 2004, and (b) from 2018 to 2019.
Overall estimation results.
| Variable | Equation (5) | Equation (6) | Equation (7) | Equation (8) |
|---|---|---|---|---|
| GML(−1) | −0.276264 *** | −0.278267 *** | −0.281241 *** | −0.288975 *** |
| ER | 0.312018 *** | 0.681847 *** | 0.304650 *** | 0.038850 |
| ER◊ER | −0.553697 *** | |||
| FD | 0.226589 *** | 0.074708 | ||
| ER◊FD | 2.825434 *** | |||
| AR(1) | 0.0010 | 0.0009 | 0.0015 | 0.0008 |
| AR(2) | 0.4860 | 0.4679 | 0.6062 | 0.4709 |
| Hansen-J | 0.398402 | 0.347079 | 0.381883 | 0.374182 |
Note: *** is significant levels of 1% respectively, and the adjoint probability p is in brackets.
Overall estimation results with control variables.
| Variable | Equation (9) | Equation (10) | Equation (11) | Equation (12) |
|---|---|---|---|---|
| GML(−1) | −0.282957 *** | −0.275847 *** | −0.293918 *** | −0.295396 *** |
| ER | 0.213317 *** | 0.795267 *** | 0.190924 *** | 0.096351 |
| ER◊ER | −0.789845 *** | |||
| FD | 0.229440 ** | 0.192864 * | ||
| ER◊FD | 1.190128 ** | |||
| FI | 0.071431 * | −0.239431 *** | −0.007582 | −0.035768 |
| FDI | −2.642130 *** | −2.409499 *** | −2.099880 *** | |
| OPEN | 0.034550 *** | 0.034888 *** | 0.037254 *** | 0.036452 *** |
| AR(1) | 0.0003 | 0.0000 | 0.0001 | 0.0000 |
| AR(2) | 0.0597 | 0.0986 | 0.0988 | 0.0683 |
| Hansen-J | 0.336793 | 0.31179 | 0.290363 | 0.270560 |
Note: *, ** and *** are significant levels of 10%, 5% and 1% respectively, and the adjoint probability p is in brackets.