| Literature DB >> 35018601 |
Menna Sherif1, Dalia M Ibrahiem2, Khadiga M El-Aasar1.
Abstract
This paper seeks to explore the potential function of technological innovation and clean power in mitigating the ecological footprint in the N-11 nations during the phase 1992-2015 by applying panel cointegration analysis. The outcomes of the panel cointegration test signify the occurrence of a long-run relation among the clean energy (CE) variable, the ecological footprint (EF) variable, the per capita GDP (Y) variable, the financial development (FIN) variable, and technological innovation (TI) variable. The outcomes of the VECM signify a long-run causal relation from the ecological footprint (EF) variable to the clean energy (CE) variable, the GDP per capita (Y) variable, and technological innovation (TI) variable. This implies that the environmental degradation faced by the N-11 countries leads to shifting toward clean energy sources and technological innovation in the long run. Thus, the N-11 countries are in need to design policies that enhance shifting toward environmentally friendly energy sources.Entities:
Keywords: Clean energy; Ecological footprint; Panel analysis; Technological innovation
Mesh:
Substances:
Year: 2022 PMID: 35018601 PMCID: PMC9072467 DOI: 10.1007/s11356-021-18477-0
Source DB: PubMed Journal: Environ Sci Pollut Res Int ISSN: 0944-1344 Impact factor: 5.190
Fig. 1Primary energy consumption (Mtoe) in the N-11 nations over the period 1970–2015.
Source: Afework et al. 2020
Empirical studies summary
| Study | Countries (period) | Methodology | Variables | Results | |
|---|---|---|---|---|---|
| Saboori et al. ( | Malaysia (1980–2009) | Auto Regressive Distributed Lag Approach (ARDL) | CO2 Releases Y, Real GDP Per Capita Square | The EKC hypothesis was supported | |
| Kasperowicz ( | 18 EU member countries (1995–2012) | Error Correction Model (ECM) | CO2 Emissions, Energy Consumption, Capital, Total Employment | The EKC hypothesis was supported | |
| Lu ( | 16 Asian countries (1990–2012) | Panel unit root tests, Panel cointegration estimation, Granger causality Test | Greenhouse Gas Emissions Per Capita, Power Utilization Per Capita, Y, Real GDP Per Capita Square | The EKC hypothesis was supported | |
| Storm and Schröder ( | 61 countries (1995–2011) | Panel Data Regression | CO2 Releases Per Capita, Y, Real GDP Per Capita Square, Population | The EKC hypothesis was supported | |
| Zhang et al. ( | China (1996–2015) | ARDL, VECM Granger Causality, Impulse Response, Variance Decomposition | Agricultural CO2 Releases, Agricultural Power Utilization, Agricultural Economic Growth | The EKC hypothesis was supported | |
| Jiang et al. ( | China and South Korea (2006–2016) | Stimulation Equation Models | Y, SO2 Emissions Per Capita, Electricity Consumption, Population, Employment, Share of Manufacturing Industry in GRP | The outcomes reinforced the presence of the EKC hypothesis in the metropolitan areas of both countries | |
| Azomahou et al. ( | 100 Countries (1960–1996) | Non-Paramteric Data Model | CO2 Releases, Per Capita GDP | The EKC hypothesis was not supported | |
| Poudel et al. ( | 15 Latin American countries (1980–2000) | Semi Parametric Panel Model | CO2 Emissions, Per Capita Income, Population, Illiteracy Rate | The EKC premise was not supported | |
| Wang ( | 98 Countries (1971–2007) | Panel Data Model | CO2 Releases, Y, the Square of Per Capita Real GDP | The EKC hypothesis was not supported | |
| Bimonte and Stabile ( | Italian regions (1980–2008) | Panel Data Regression | Per Capita Income, Per Capita Supply of New Building Permits, Population | The EKC hypothesis was not supported | |
| Zhang ( | China (1971–2014) | Autoregressive distributed lag (ARDL) model | CO2 per capita, Y, annual energy consumption per capita, trade openness, urban population | The EKC hypothesis was not supported | |
| Balogh and Jámbor ( | Global sample (1990–2013) | GMM Model | Per Capita CO2 Releases, Y, GDP Per Capita Square, Electricity Production from the Nuclear Source, Electricity Production from Coal, Renewable Electricity Output | Nuclear power and renewable power contribute in reducing environmental pollution | |
| Dong et al. ( | BRICS countries (1985–2016) | Panel Unit Root Tests, Cointegration, Causality Tests | Per Capita CO2 Releases, GDP, Natural Gas Consumption, Renewable Power Utilization | Natural gas and renewable energy consumption contribute in mitigating the climate change | |
| Bilan et al. ( | European countries (1995–2015) | Panel Unit Root Tests, Pedroni Cointegration Test, Fully Modified OLS, Dynamic OLS, VECM | Per Capita CO2 Emissions, Y, Gross Fixed Capital Formation, Labor Force, Renewable Power Utilization | Renewable energy contributes in mitigating environmental degradation | |
| Koengkan and Fuinhas ( | South American countries (1980–2018) | Autoregressive Distributed Lag Approach (ARDL) | CO2 Emissions, Real GDP, Renewable Power Consumption, Petroleum Consumption | Renewable power utilization improves the environmental quality | |
| Menyah and Wolde-Rufael ( | USA (1960–2007) | Granger Causality Test | CO2 Emissions, Real GDP, Renewable Power Utilization, Nuclear Power Consumption | Renewable power utilization consumption has no significant effect on environmental pollution | |
| Al-Mulali ( | 30 Countries (1990–2010) | Panel Model, Granger Causality Test | CO2 Emissions,Y, Electricity Consumption, Domestic Investment, Labor Force, Urbanization, Nuclear Energy Consumption, Fossil Fuel Energy Consumption | Nuclear energy consumption has no effect on environmental pollution | |
| Twumasi ( | USA (2009) | Geographic Information System (GIS) | CO2 Emissions, Real GDP, Population, Renewable Energy Production | No relation between renewable power production and carbon dioxide releases | |
| Hasnisah et al. ( | 13 Developing countries (1980–2014) | Panel Cointegration, Fully modified OLS, Dynamic OLS estimators | Per Capita CO2 Releases, Real GDP, Real GDP Square, Electricity Utilization from Fossil Fuel Power Sources, Electricity Utilization from Renewable Power Sources | Renewable energy is insignificant in improving the environmental quality | |
| Khan et al. ( | Pakistan (1965–2015) | Autoregressive Distributed Lag Approach (ARDL) | Per Capita CO2 Emissions, Real GDP, Coal Consumption, Oil Consumption, Natural Gas Consumption | Renewable energy sources contribute in reducing carbon dioxide emissions | |
| Busu and Nedelcu ( | European Countries (2009–2019) | Panel Data Multiple Regression Model | CO2 Emissions, Renewable Energy, Y, Population, Urbanization, Biofuels, Bioenergy Productivity | Renewable power contributes in lessening carbon dioxide emissions | |
| Ozcan and Ulucak ( | India (1971–2018) | Autoregressive Distributed Lag Approach (ARDL) | Y, Nuclear Energy, Population density, CO2 Emissions | Nuclear energy improves the ecological quality | |
| Sahoo and Sethi ( | 36 Developing nations (1990–2016) | Westerlund Cointegration and Dumitrescu and Hurlin Causality test | Ecological Footprint, Y, Renewable Power Utilization, Trade, Globalization, Human Capital | Renewable power lessens the environmental deterioration | |
| Tamazian et al. ( | BRIC countries (1992–2014) | Standard Reduced Form Modeling Approach | CO2 Emissions, Y, GDP Per Capita Square, Gross Domestic Expenditure in R&D, FIN | FIN contributes in reducing the environmental degradation | |
| Islam et al. ( | Malaysia (1971–2009) | Bounds Testing Approach to Cointegration | Energy Consumption, Y, Population, Financial Development | FIN reduces the emissions of carbon dioxide gases | |
| Lee et al. ( | 25 OECD countries (1971–2007) | Panel FMOLS and the Cross-Sectional Dependence Regression | CO2 Emissions Per Capita, Y, Real GDP Per Capita Square, Energy Use Per Capita, Financial Development | FIN improves the environmental quality | |
| Saidi and Mbarek( | 19 Emerging nations (1990–2013) | System- GMM Model | CO2 Releases, Income, Income Square, FIN, Urbanization, Overseas Trade | FIN minimizes environmental pollution | |
| Zaidi et al. ( | Asia Pacific Economic Cooperation countries (1990–2016) | Westerlund Cointegration Technique, Continuously Updated Bias-Corrected, Continously Updated Fully Modified methods | CO2 Releases, Real GDP, Real GDP Square, Power Intensity, FIN, Globalization | FIN could lessen carbon dioxide releases | |
| Zhang ( | China (1994–2009) | Cointegration Theory, Granger Causality Test | CO2 Releases, Y, FIN, FDI | FIN increases environmental deterioration | |
| Shahbaz et al. ( | Pakistan (1985–2014) | Autoregressive Distributed Lag Approach (ARDL) | CO2 Emissions, FIN, Power Utilization, Y | FIN in the banking sector could increase carbon dioxide emissions | |
| Jiang and Ma ( | 155 Nations (1990–2014) | System- GMM Model | CO2 Emissions, Financial Development, Trade Openness, Urbanization, Population, Industrial Structure | Financial development could increase environmental pollution in the emerging market and developing countries | |
| Bayar and Maxim ( | 11 Post-Transition European Countries (1995–2017) | Panel Cointegration, Causality Analyses | CO2 Emissions, FIN, Primary Energy Consumption, Real GDP | FIN contributes in increasing the environmental pollution | |
| Guo ( | China (1988–2018) | Narayan and Popp unit root test with structural breaks, Maki cointegration, and frequency domain causality test | CO2 Emissions, FIN, Renewable Power Electricity, Financial Risk, Human Capital Index | FIN ameliorates the environmental quality | |
| Nguyen et al. ( | Vietnam (1986–2019) | Structural Break Unit Root tests, ARDL, and Cointegration Bounds test | CO2 Emissions, FDI, Y, FIN, Transportation Capacity | FIN deteriorates the environmental quality | |
| Apergis et al. ( | France, Germany, the UK (1998–2011) | Threshold Autoregressive Model | CO2 Emissions, Y, R&D, Oil Prices, Trade Openness | R&D expenditure caused a reduction in carbon dioxide emissions | |
| Yii and Geetha ( | Malaysia (1971–2013) | VECM, TYDL Granger Causality Test | CO2 Emissions, Y, GDP Square, Electricity Consumption, Energy Price, Technological Innovation | Technological innovation reduces carbon dioxide emissions in the short run | |
| Shahbaz et al. ( | France (1955–2016) | Novel SOR Unit Root Test, Bootstrapping Bounds Testing Approach | Per Capita CO2 Emissions, Y, Real FDI Per Capita, Energy Consumption, Real Domestic Credit to Private Sector, Population, Public Budget in Power R&D Expenditures | Innovation improves the ecological quality | |
| Hashmi and Alam ( | OECD nations (1999–2014) | STIRPRAT Model, Panel Fixed-Effects, Random-Effects, GMM Model | CO2 Emissions, Population, Y, Technological Innovation, Environmental Tax Revenue Per Capita | A 1% increase in technological innovation measured by patents reduces carbon emissions by 0.017% | |
| Ali et al. ( | Malaysia (1985–2012) | Autoregressive Distributed Lag Approach (ARDL) | CO2 Emissions, Y, FIN, Patents Applications | Technological innovation has an insignificant relation with environmental pollution in Malaysia | |
| Jiao et al. ( | 29 Provinces in China (2000–2013) | Geographic Economic Distance Matrix | Local R&D, Inter-Provincial R&D, FDI | The results were mixed for different Chinese provinces | |
| Dauda et al. ( | 18 Developing and developed nations(1990–2016) | Fully Modified OLS, Dynamic OLS Estimators | CO2 Releases, Real GDP, FDI, Power Consumption, Innovation, Trade Openness | Innovation reduces carbon dioxide releases in G6, while it rises the releases in the MENA countries and the BRICS nations | |
| Demir et al. ( | Turkey (1971–2013) | ARDL Bounds Test, Threshold Cointegration Test | CO2 Releases, GDP Per Capita, Urban Population, Human Capital Index, Financial Development, Clean Energy, Technological Innovation | There is a reversed U-shape curve between technological innovation and carbon dioxide releases | |
| Su et al. ( | BRICS countries (1990–2018) | Panel Regression | Per Capita CO2 Emissions, Real GDP, Technological Innovation, Electric Power Consumption, Trade Openness | Technological innovation does not improve the environmental quality | |
| Niu ( | China (2009–2018) | Panel Data and Fixed Effects Models | Carbon Emissions, Technological Innovation, Per Capita GDP, Population Size, Industrial Structure, Foreign Trade Dependence | Technological innovation reduces carbon emissions | |
Variables, definitions and data sources
| Variables | Measurement units and definition | Data sources |
|---|---|---|
| EF | The ecological footprint is a consumption based indicator of environmental sustainability measured in global hectares (gha). The ecological footprint accounts for people’s demand on biological assets and the supply of nature | Global Footprint Network |
| Y | Real GDP per capita assessed in constant 2010 US dollar | World Bank Development Indicators (WDI) |
| CE | Clean energy measured by renewable power consumption (percentage of aggregate final power consumption) | WDI |
| FIN | Financial development gauged by domestic credit to private sector (percentage of GDP) | WDI |
| URB | Urban population measured as % of the total | WDI |
| H | Human capital index is calculated by relying on the years of schooling and returns to education | Penn World Table |
| TI | Technological innovation gauged by the sum of resident and non-resident patent applications | WDI |
The variables descriptive statistics
| Mean | 180,253,488.2 | 5088.905 | 29.57496 | 41.51572 | 49.21134 | 2.255319 | 17,727.76 |
| Median | 149,098,442.5 | 2124.386 | 32.32325 | 29.16280 | 44.75250 | 2.238592 | 2440.000 |
| Maximum | 429,070,148.9 | 26,063.71 | 74.70197 | 148.3405 | 81.93600 | 3.626602 | 213,694.0 |
| Minimum | 51,752,016 | 428.6610 | 0.441575 | 12.87772 | 20.61000 | 1.393996 | 83.00000 |
| Std. Dev | 93,529,898 | 5909.128 | 20.46024 | 30.78190 | 19.54882 | 0.489231 | 44,190.62 |
| Skewness | 0.630805 | 1.665013 | 0.120126 | 1.913387 | 0.380729 | 0.746096 | 3.092452 |
| Kurtosis | 2.272098 | 5.283161 | 1.744209 | 6.010771 | 1.757911 | 3.336445 | 11.52207 |
| Jarque–Bera | 19.09352 | 146.7171 | 14.71260 | 212.3925 | 19.10344 | 21.05847 | 979.4284 |
| Probability | 0.000071 | 0.000000 | 0.000639 | 0.000000 | 0.000071 | 0.000027 | 0.000000 |
Panel unit root test outcomes at level, after applying the first difference and after applying the second difference
| Variables | Panel unit root test | Level statistic (P-value) | First difference statistic (P-value) | Second difference statistic (P-value) |
|---|---|---|---|---|
| Ecological Footprint (EF) | ADF | 23.1780 (0.1838) | 114.999 (0.0000)b | - |
| PP | 23.1235 (0.1859) | 183.921 (0.0000)b | - | |
| GDP per capita (Y) | ADF | 18.5693 (0.4188) | 76.8279 (0.0000)b | - |
| PP | 9.86380 (0.9363) | 88.2778 (0.0000)b | - | |
| Clean Energy (CE) | ADF | 33.7263 (0.0136) | 94.9874 (0.0000)b | - |
| 16.8862 (0.5309) | 152.822 (0.0000)b | - | ||
| Financial Development (FIN) | ADF | 16.0605 (0.5883) | 60.4374 (0.0000)b | - |
| PP | 6.04127 (0.9960) | 85.8447 (0.0000)b | - | |
| Urban Population (URB) | ADF | 22.5265 (0.1270) | 23.7160 (0.0959) | 54.9057 (0.0000)b |
| PP | 19.3856 (0.2492) | 6.36599 (0.9836) | 36.9240 (0.0021)b | |
| Human Capital Index (H) | ADF | 279.666 (0.0000)b | - | - |
| PP | 60.5485 (0.0000)b | - | - | |
| Technological Innovation (TI) | ADF | 20.0012 (0.3328) | 78.7553 (0.0000)b | - |
| PP | 12.4933 (0.8208) | 343.491 (0.0000)b | - |
b Signifies the refusal of the null hypothesis at 1% level of significance
Pedroni cointegration test outcomes. Alternative hypothesis: common AR coefs. (within-dimension)
| Statistic | Prob | Weighted statistic | Prob | |
|---|---|---|---|---|
| Panel v-Statistic | − 0.353463 | 0.6381 | 1.605034 | 0.0542 f |
| Panel rho-Statistic | − 0.768657 | 0.2210 | − 0.399706 | 0.3447 |
| Panel PP-Statistic | − 3.690251 | 0.0001 b | − 3.143656 | 0.0008 b |
| Panel ADF-Statistic | − 3.931148 | 0.0000 b | − 4.586214 | 0.0000 b |
| Alternative hypothesis: individual AR coefs. (between-dimension) | ||||
| Statistic | Prob | |||
| Group rho-Statistic | 0.686527 | 0.7538 | ||
| Group PP-Statistic | − 3.238641 | 0.0006 b | ||
| Group ADF-Statistic | − 5.043014 | 0.0000 b | ||
b and f signify the refusal of the null hypothesis at 1% and 10% level of significance, respectively
Kao cointegration test outcomes
| ADF | − 1.501115 | 0.0667 f |
| Residual variance | 2.27E + 14 | |
| HAC variance | 2.22E + 14 |
f Signifies the refusal of the null hypothesis at 10% significance level
Outcomes of the panel FMOLS estimator
| Variables | Coefficient | Std. Error | t-Statistic | Prob |
|---|---|---|---|---|
| Y | 18,548.57 | 0.010446 | 1,775,672 | 0.0000b |
| CE | − 3,479,098 | 0.018703 | − 1.86E + 08 | 0.0000b |
| FIN | − 449,090.6 | 0.022593 | − 19,877,146 | 0.0000b |
| TI | − 702.5748 | 0.024209 | − 29,021.43 | 0.0000b |
| R-squared 0.958245 | ||||
Outcomes of the panel DOLS estimator
| Variables | Coefficient | Std. Error | t-Statistic | Prob |
|---|---|---|---|---|
| Y | 12,867.60 | 1740.893 | 7.391379 | 0.0000b |
| CE | − 2,302,024 | 341,565.1 | − 6.739634 | 0.0000b |
| FIN | − 62,736.52 | 140,397.6 | − 0.446849 | 0.6569 |
| TI | − 452.5241 | 141.6578 | − 3.194488 | 0.0024b |
| R-squared 0.989991 | ||||
The leads and lag specification are established upon SIC and is selected automatically. b signifies the refusal of the null hypothesis at 1 percent significance level
Outcomes of the VECM Granger-causality
| Regressand variable | Short run | Long run | ||||
|---|---|---|---|---|---|---|
| ∆EF | ∆Y | ∆CE | ∆FIN | ∆TI | ECT | |
| ∆ EF | [0.902973] | [− 0.039695] | [− 0.047415] | [0.121824] | [0.756544] | |
| (0.3668) | (0.9683) | (0.9622) | (0.9031) | (0.4495) | ||
| ∆ Y | [− 0.438849] | [0.757602] | [0.957865] | [0.474433] | [− 6.040587] | |
| (0.6609) | (0.4489) | (0.3384) | (0.6353) | (0.0000)b | ||
| ∆ CE | [0.420090] | [0.148018] | [− 2.662980] | [− 0.439899] | [− 3.736330] | |
| (0.6745) | (0.8824) | (0.0079)b | (0.6601) | (0.0002)b | ||
| ∆ FIN | [0.372387] | [0.995712] | [− 0.786852] | [2.572420] | [0.673936] | |
| (0.7097) | (0.3197) | (0.4316) | (0.0103)d | (0.5005) | ||
| ∆ TI | [− 0.421043] | [1.043578] | [− 0.613968] | [− 2.060620] | [− 2.983861] | |
| (0.6738) | (0.2970) | (0.5394) | (0.0396)d | (0.0029)b | ||
The t-statistics are written in [], while the P-values are written in (). b and d signify the statistical significance at 1% and 5%, respectively
Fig. 2The long-run causal relation between the ecological footprint, the GDP per capita, the clean power, the financial development and the technological innovation