| Literature DB >> 35328975 |
Abraham Ayobamiji Awosusi1, Kaan Kutlay2, Mehmet Altuntaş3, Bakhtiyor Khodjiev4, Ephraim Bonah Agyekum5, Mokhtar Shouran6, Mohamed Elgbaily6, Salah Kamel7.
Abstract
Technological innovations have been a matter of contention, and their environmental consequences remain unresolved. Moreover, studies have extensively evaluated environmental challenges using metrics such as nitrogen oxide emissions, sulfur dioxide, carbon emissions, and ecological footprint. The environment has the supply and demand aspect, which is not a component of any of these indicators. By measuring biocapacity and ecological footprint, the load capacity factor follows a certain ecological threshold, allowing for a thorough study on environmental deterioration. With the reduction in load capacity factor, the environmental deterioration increases. In the context of the environment, the interaction between technological innovation and load capacity covers the demand and supply side of the environment. In light of this, employing the dataset ranging from 1980 to 2017 for the case of South Africa, the bound cointegration test in conjunction with the critical value of Kripfganz and Schneider showed cointegration in the model. The study also employed the ARDL, whose outcome revealed that nonrenewable energy usage and economic growth contribute to environmental deterioration, whereas technological innovation and globalization improve the quality of the environment. This study validated the hypothesis of the environmental Kuznets curve for South Africa, as the short-term coefficient value was lower than the long-term elasticity. Furthermore, using the frequency-domain causality test revealed that globalization and economic growth predict load capacity in the long term, and nonrenewable energy predicts load capacity factors in the long and medium term. In addition, technological innovation predicts load capacity factors in the short and long term. Based on the findings, we propose that policymakers should focus their efforts on increasing funding for the research and development of green technologies.Entities:
Keywords: economic growth; load capacity factor; nonrenewable energy usage and globalization; technological innovation
Mesh:
Substances:
Year: 2022 PMID: 35328975 PMCID: PMC8950748 DOI: 10.3390/ijerph19063288
Source DB: PubMed Journal: Int J Environ Res Public Health ISSN: 1660-4601 Impact factor: 3.390
Figure 1The trends in ecological footprint and biocapacity in South Africa.
Description of the variable.
| Indicators | Description | Unit | Sourced |
|---|---|---|---|
| LOCAP | Load capacity factor | Biocapacity divided by ecological footprint | Global Footprint Network |
| NREN | Nonrenewable energy | KWPH | BP database |
| GDP | GDP per capita | constant 2015 USD | World Bank Database indicators |
| TEC | Technological innovation | Added both resident and non-resident patent applications | |
| GLO | Globalization index | Index based on economic, political, and social | KOF Globalization Index |
Descriptive statistics.
| LOCAP | GDP | NREN | TEC | GLO | |
|---|---|---|---|---|---|
| Mean | −0.425 | 3.692 | 3.746 | 3.854 | 1.709 |
| Median | −0.416 | 3.682 | 3.761 | 3.862 | 1.736 |
| Maximum | −0.299 | 3.760 | 3.869 | 4.006 | 1.850 |
| Minimum | −0.548 | 3.622 | 3.380 | 3.497 | 1.545 |
| Std. Dev. | 0.078 | 0.046 | 0.099 | 0.115 | 0.124 |
| Skewness | −0.119 | 0.138 | −1.743 | −1.224 | −0.134 |
| Kurtosis | 1.592 | 1.636 | 6.952 | 5.249 | 1.230 |
| Jarque–Bera | 3.228 | 3.065 | 43.978 | 17.490 | 5.075 |
| Probability | 0.199 | 0.216 | 0.000 | 0.000 | 0.079 |
| Observations | 38 | 38 | 38 | 38 | 38 |
Figure 2RADAR chart.
ADF and PP tests.
| Variables | KPSS | PP | ||
|---|---|---|---|---|
| Level |
| Level |
| |
| LOCAP | 0.073 | 0.431 * | −2.954 | −7.974 * |
| GDP | 0.203 | 0.262 * | −1.725 | −4.288 * |
| NREN | 0.254 * | 0.024 | −3.673 ** | −5.650 * |
| GLO | 0.097 | 0.726 * | −1.975 | −5.029 * |
| TEC | 0.162 | 0.199 ** | −2.359 | −4.155 * |
Note: ** and * portray significance levels of 0.05 and 0.01, respectively.
Structural break unit-roots outcome.
| I(0) | I(1) | |
|---|---|---|
| LOCAP | −5.366 (2006) | −7.175 * (2009) |
| GDP | −3.582 (1990) | −5.980 * (2009) |
| NREN | −4.964 (2005) ** | −5.429 ** (1999) |
| GLO | −3.664 (2006) | −5.925 * (1993) |
| TEC | −4.206 (1990) | −6.770 * (2001) |
* and ** portrays significance level of 0.01 and 0.05 respectively; structural breaks are in parentheses.
ARDL approach to cointegration.
| F-Statistic | 7.947 * | |||||
| T-Statistic | −6.936 * | |||||
| Kripfganz and Schneider Critical Values | ||||||
| 1% | 5% | 10% | ||||
| LB | HB | LB | HB | LB | HB | |
| F-statistic | 3.74 | 5.06 | 2.86 | 4.01 | 2.45 | 3.52 |
| T-statistic | −3.43 | −4.6 | −2.86 | −3.99 | −2.57 | −3.66 |
| Diagnostic Check | ||||||
| χ2 Normality | 1.206 (0.547) | |||||
| χ2 LM | 0.490 (0.621) | |||||
| χ2 Heteroscedasticity | 0.716 (0.742) | |||||
| χ2 Ramsey | 1.931 (0.176) | |||||
* portrays significance level of 0.01.
Figure 3Stability test.
ARDL estimator outcome.
| Variable | Coefficients | T-Statistics |
|---|---|---|
| GDP | −1.592 ** | −2.839 |
| NREN | −0.187 ** | −2.407 |
| GLO | 1.481 * | 3.154 |
| TEC | 0.169 *** | 2.060 |
| ΔGDP | −1.857 * | −4.005 |
| ΔNREN | −0.187 * | −3.066 |
| ΔGLO | 1.481 * | 4.488 |
| ΔTEC | −0.270 * | −3.672 |
| ECT(−1) | −0.572 * | −6.936 |
*, ** and *** portray significance levels of 0.01, 0.05 and 0.1, respectively.
Figure 4(a) Causal interaction of economic growth and load capacity factor. (b) Causal interaction of nonrenewable energy and load capacity factor. (c) Causal interaction of globalization and load capacity factor. (d) Causal interaction of technological innovation and load capacity factor.