Structural Vector Autoregressive Approach to Evaluate the Impact of Electricity Generation Mix on Economic Growth and CO2 Emissions in Iran
Abstract
:1. Introduction
- How does electricity generated by renewable sources contribute to the economic growth of Iran?
- How is carbon dioxide affected by unit standard deviation shock of renewable electricity?
- What is the contribution of renewable electricity in explaining forecast error variance decomposition of economic growth and carbon dioxide emissions?
- What is an appropriate energy policy for Iran as an energy driven country?
2. Methodology
- Checking variables stationary through conducting KPSS unit root tests [29] and estimating the original VAR model.
- Identifying the optimal lag length using several criteria.
- Checking model stability by employing inverse roots of the characteristic polynomials.
- Imposing the Blanchard and Quah long-run restrictions [30] based on the literature review and economic theory.
- Plotting the IRFs to consider the dynamic responses of endogenous variables to a unit standard deviation shock of some of the other variables in the system over time.
- Conducting VD to identify the importance of each exogenous shock in explaining the forecast error variance of each variable.
2.1. Structural Vector Autoregressive Model
2.2. Imposing Long-Run Restrictions
2.3. Model Specification
3. Data and Empirical Finding
3.1. Data
3.2. Empirical Findings
- Low gasoline and diesel prices (Figure 6 and Figure 7) caused by widespread supply of combustible fuels and allocating significant subsidies to them. Based on the report of IEA entitled “World Energy Outlook 2018”, allocating $69 billion for fossil fuels ($26.6 billion, $26 billion, and $16.6 billion for oil, natural gas, and electricity, respectively), Iran ranks as the world’s largest country in terms of allocating fossil fuel consumption subsidies. This amount accounts for 15 percent of total GDP [39].
- The low share of renewable energy in the energy mix and electricity generation [21] despite its high potential.
- The lack of access to advanced renewable technologies, which is caused by imposing sanctions.
- Failure to invest in energy savings and reduce energy intensity due to financial difficulties, which are partially caused by the sanctions.
4. Conclusions and Policy Implication
Author Contributions
Funding
Conflicts of Interest
Abbreviations
AIC | Akaike Information Criterion |
ARDL | Autoregressive Distributed Lag |
CCR | Canonical Co-integration Regression |
CD | Cholesky Decomposition |
CO2 | Carbon Dioxide |
CR | Croux and Reusens test |
DH PC | Dumitrescu–Hurlin Panel Causality test |
DOLS | Dynamic Least Square |
EKC | Environmental Kuznets Curve |
FMOLS | Fully Modified Least Square |
FPE | Final Prediction Error |
GDP | Gross Domestic Production |
HQ | Hannan–Quinn Information Criterion |
IRF | Impulse Response Function |
LRT | Likelihood-Ratio test |
LR | Long-run |
PMG-ARDL | Panel Pooled Mean Group-Autoregressive Autoregressive Distributive Lag Model |
SC | Schwartz Information Criterion |
SR | Short run |
SVAR | Structural Vector Autoregressive model |
VAR | Vector Autoregressive |
VD | Variance Decomposition |
VECM | Vector Error Correction Model |
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Reference | Country (ies) | Methodology (ies) | Impact of Renewable Energy/Electricity on | |
---|---|---|---|---|
Economic Growth | CO2 Emissions | |||
[11] | India | SVAR | + | − |
[12] | The US, Denmark, Portugal, Spain | SVAR | − except for the US | − |
[13] | China, India, Japan | SVAR | China (SR): − LR: + | |
[14] | Vietnam | ARDL | No effect | |
[15] | Latin American and the Caribbean countries | FMOLS, VECM Granger Causality | Feedback hypothesis | No effect |
[16] | Iran | ARDL, VECM, DOLS, FMOLS | + | |
[17] | 42 developing (Iran) | Panel Data | + | |
[18] | Turkey | ARDL, FMOLS, CCR | No effect | |
[19] | 8 South American | ARDL | − | |
[20] | 16 EU-countries | PMG-ARDL | − |
RES | LGDP | LCO2 | |
---|---|---|---|
Mean | 9.575796 | 5.726277 | 5.689736 |
Median | 7.264000 | 5.680259 | 5.680323 |
Maximum | 22.45900 | 6.214520 | 6.467844 |
Minimum | 3.662000 | 5.168314 | 4.695737 |
Std. Dev. | 4.910548 | 0.327201 | 0.530751 |
Skewness | 1.124100 | 0.038299 | −0.090554 |
Kurtosis | 3.008702 | 1.706429 | 1.851405 |
Jarque–Bera | 7.581718 | 2.518792 | 2.028106 |
Probability | 0.022576 | 0.283825 | 0.362746 |
Sum | 344.7286 | 206.1460 | 204.8305 |
Sum Sq. Dev. | 843.9720 | 3.747111 | 9.859376 |
Variable | KPSS Test Statistic | Stationary Order | |
---|---|---|---|
At Level | At 1st Difference | ||
0.616 | 0.356 | I (1) | |
0.714 | 0.046 | I (1) | |
0.727 | 0.240 | I (1) |
Lag | LRT | FPE | AIC | SC | HQ |
---|---|---|---|---|---|
0 | NA | 0.013111 | 4.179277 | 4.315323 | 4.225052 |
1 | 186.0963 * | 3.71 × 10−5 * | −1.692383 * | −1.148199 * | −1.509282 * |
2 | 13.91959 | 3.81 × 10−5 | −1.682298 | −0.729975 | −1.361870 |
3 | 11.81004 | 4.09 × 10−5 | −1.650323 | −0.289862 | −1.192569 |
Lag | Lagrange Multiplier Statistic | p-Value |
---|---|---|
1 | 8.672702 | 0.4689 |
2 | 7.617272 | 0.5740 |
3 | 4.974177 | 0.8369 |
4 | 7.148563 | 0.6224 |
5 | 5.737527 | 0.7664 |
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Oryani, B.; Koo, Y.; Rezania, S. Structural Vector Autoregressive Approach to Evaluate the Impact of Electricity Generation Mix on Economic Growth and CO2 Emissions in Iran. Energies 2020, 13, 4268. https://doi.org/10.3390/en13164268
Oryani B, Koo Y, Rezania S. Structural Vector Autoregressive Approach to Evaluate the Impact of Electricity Generation Mix on Economic Growth and CO2 Emissions in Iran. Energies. 2020; 13(16):4268. https://doi.org/10.3390/en13164268
Chicago/Turabian StyleOryani, Bahareh, Yoonmo Koo, and Shahabaldin Rezania. 2020. "Structural Vector Autoregressive Approach to Evaluate the Impact of Electricity Generation Mix on Economic Growth and CO2 Emissions in Iran" Energies 13, no. 16: 4268. https://doi.org/10.3390/en13164268
APA StyleOryani, B., Koo, Y., & Rezania, S. (2020). Structural Vector Autoregressive Approach to Evaluate the Impact of Electricity Generation Mix on Economic Growth and CO2 Emissions in Iran. Energies, 13(16), 4268. https://doi.org/10.3390/en13164268