| Literature DB >> 34209906 |
Tomiwa Sunday Adebayo1, Mary Oluwatoyin Agboola2, Husam Rjoub3, Ibrahim Adeshola4, Ephraim Bonah Agyekum5, Nallapaneni Manoj Kumar6.
Abstract
Achieving environmental sustainability has become a global initiative whilst addressing climate change and its effects. Thus, this research re-assessed the EKC hypothesis in China and considered the effect of hydroelectricity use and urbanization, utilizing data from 1985 to 2019. The autoregressive distributed lag (ARDL) bounds testing method was utilized to assess long-run cointegration, which is reinforced by a structural break. The outcome of the ARDL bounds test confirmed cointegration among the series. Furthermore, the ARDL revealed that both economic growth and urbanization trigger environmental degradation while hydroelectricity improves the quality of the environment. The outcome of the ARDL also validated the EKC hypothesis for China. In addition, the study employed the novel gradual shift causality test to capture causal linkage among the series. The advantage of the gradual shift causality test is that it can capture gradual or smooth shifts and does not necessitate previous information of the number, form of structural break(s), or dates. The outcomes of the causality test revealed causal connections among the series of interest.Entities:
Keywords: CO2 emissions; China; economic growth; hydroelectricity consumption; urbanization
Year: 2021 PMID: 34209906 PMCID: PMC8295805 DOI: 10.3390/ijerph18136975
Source DB: PubMed Journal: Int J Environ Res Public Health ISSN: 1660-4601 Impact factor: 3.390
Figure 1Descriptive statistics.
ZA (intercept and trend).
| Level | First Difference | |||
|---|---|---|---|---|
| Break Date | Break Date | |||
| CO2 | −3.368 | 1996 | −5.700 * | 2002 |
| URB | −1.752 | 2004 | −6.028 * | 2001 |
| GDP | −4.217 | 2009 | −5.293 ** | 2005 |
| GDP2 | −4.192 | 1995 | −5.804 ** | 2008 |
| HYDRO | −4.032 | 2012 | −5.835 * | 2012 |
Note: * and ** stand for 1% and 5% significance level. BD denote break-date.
Bound test.
| F-Statistics | 6.76 * | |||||
| Break Date | 2002 | |||||
| Cointegration | Yes | |||||
| 10% | 5% | 1% | ||||
| F-statistics CV | 2.204 | 3.320 | 2.615 | 3.891 | 3.572 | 5.112 |
Note: * represents a 1% level of significance.
ARDL long- and short-run outcomes.
| Long-Run Outcomes | Short-Run Outcomes | |||||
|---|---|---|---|---|---|---|
| Regressors | Coefficient | T-Statistics | Coefficient | T-Statistics | ||
| GDP | 10.176 ** | 2.2101 | 0.0411 | 6.7884 * | 3.8516 | 0.0013 |
| GDP2 | −1.5234 *** | −2.0772 | 0.0533 | −1.0392 * | −3.6959 | 0.0018 |
| URB | 4.9196 * | 3.1177 | 0.0063 | 4.792 * | 6.0073 | 0.0000 |
| HYDRO | −0.1240 *** | −1.8521 | 0.0815 | −0.2359 * | −4.3852 | 0.0005 |
| BD | 0.0158 | 1.4209 | 0.1734 | 0.2039 *** | 1.8096 | 0.0904 |
| ECMt−1 | −0.625* | −8.5033 | 0.0000 | |||
| Diagnostic Tests | ||||||
| R2 | 0.99 | |||||
| Adj R2 | 0.98 | |||||
| χ2 ARCH | 0.933 (0.555) | |||||
| χ2 RESET | 0.761 (0.458) | |||||
| χ2 Normality | 0.515 (0.772) | |||||
| χ2 LM | 2.041 (0.174) | |||||
Note: 1%, 5%, and 10% levels of significance are illustrated by *, **, and ***, respectively.
Gradual shift causality outcomes.
| Dependent Variable | CO2 | GDP | GDP2 | URB | HYDRO |
|---|---|---|---|---|---|
| CO2 | 1 | 20.070 * | 18.622 * | 7.4364 | 14.310 ** |
| GDP | 16.563 ** | 1 | 15.904 ** | 11.040 | 22.277 * |
| GDP2 | 2.8363 | 16.224 ** | 1 | 14.945 ** | 23.781 * |
| URB | 59.597 * | 13.566 *** | 13.550 ** | 1 | 38.204 * |
| HYDRO | 21.584 * | 23.651 * | 17.812 ** | 8.176028 | 1 |
Note: 1%, 5%, and 10% levels of significance are illustrated by *, **, and ***, respectively.
Figure 2Stability test. (a): CUSUM, (b): CUSUM of Square.
Figure 3Graphical outcomes of the ARDL long-run estimation.
Figure 4Graphical causality outcomes.