| Literature DB >> 30419023 |
Atanu Ghoshray1, Yurena Mendoza2, Mercedes Monfort3, Javier Ordoñez3.
Abstract
The energy consumption-growth nexus has been widely studied in the empirical literature, though results have been inconclusive regarding the direction, or even the existence, of causality. These inconsistent results can be explained by two important limitations of the literature. First, the use of bivariate models, which fail to detect more complex causal relations, or the ad hoc approach to selecting variables in a multivariate framework; and, second, the use of linear causal models, which are unable to capture more complex nonlinear causal relationships. In this paper, we aim to overcome both limitations by analysing the energy consumption-growth nexus using a Flexible Fourier form due to Enders and Jones (2016). The analysis focuses on the US over the period 1949 to 2014. From our results we can conclude that, where the linear methodology supports the neutrality hypothesis (no causality between energy consumption and growth), the Flexible Fourier form points to the existence of causality from energy consumption to growth. This is contrary to the linear analysis, suggesting that lowering energy consumption would adversely affect US economic growth. Thus, by employing the Flexible Fourier form we find the conclusions can be quite different.Entities:
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Year: 2018 PMID: 30419023 PMCID: PMC6231610 DOI: 10.1371/journal.pone.0205671
Source DB: PubMed Journal: PLoS One ISSN: 1932-6203 Impact factor: 3.240
Summary of studies on growth-energy consumption nexus.
| YEAR | AUTHOR | METHODOLOGY | VARIABLES/COUNTRIES/SPAN | RESULTS |
|---|---|---|---|---|
| 2017 | [ | STIRPAT model | Three different level of urbanization (as a growth indicator), energy intensity,266 prefecture-level, 2000–2010 period | Positive impact for all groups of urbanization on energy consumption |
| 2017 | [ | Panel Vector Autoregressive (PVAR) and impulse response function. | Energy consumption, economic growth and CO2 emissions 106 countries classified by different income groups over the period 1971–2011. | |
| 2016 | [ | Using the neoclassical Solow growth framework test Granger Causality. | Energy consumption and economic growth in Vietnam for the 1971–2011 period. | |
| 2016 | [ | Panel Cointegration and Vector error-correction model (VECM) | Energy consumption, economic growth and CO2 emissions. 188 countries for the periods 1993–2010. | EC negatively affects EG World as a whole: |
| 2016 | [ | VAR time-varying | Energy consumption, economic growth and CO2 emissions. The sampled countries are Bangladesh, Egypt, Indonesia, Iran, Mexico, Nigeria, Pakistan, the Philippines, Turkey, South Korea, and Vietnam over the period 1972–2013. | |
| 2016 | [ | Panel Vector Autoregressive (PVAR) in a generalized method of moments (GMM) framework | Energy consumption and economic growth, and how democracy moderates this relationship using panel data of 16 sub-Saharan African (SSA) countries for the period 1971–2013. | |
| 2015 | [ | Time-varying (TV) causalities | G7 (excluding Germany). 1960–2010 | |
| 2015 | [ | Johansen co-integration test and Granger causality test | Countries: Indonesia, Malaysia, Thailand, Singapore, and the Philippines. 1980–2012 | EC affect to EG for almost all ASEAN-5 countries. |
| 2015 | [ | VECM. | Energy consumption and industrial production in Tunisia for the period 1980–2007. | |
| 2014 | [ | Meta-analysis of 158 studies in Energy-GDP nexus. | 1978–2011 | |
| 2013 | [ | VECM | Economic growth, energy consumption and financial development for Malaysia. From 1971 to 2009. | |
| 2012 | [ | VECM | energy consumption, electricity consumption, carbon emissions and economic growth in Bangladesh. 1972–2006. | EC→ Economic Growth in the short and the long run |
Note: VECM is a reparameterized VAR model with integrated variables.
Literature review on nonlinearities in energy studies.
| 1. [ | “Due to the influences of economic cycle fluctuations, macroeconomic policies, international oil price fluctuations, technological progress, and industrial adjustment, there may be a nonlinear relationship among economic growth, energy consumption, and CO2 emission.” (p.1153) |
| 2. [ | “The large number of nonlinear relationships embodied in economic variables have largely been ignored (Aderson et al., 2015). Granger (1988) pointed out that the world is almost certainly constituted by nonlinear relationships”. |
| 3. [ | “We employ a nonlinear panel smooth transition vector error correction model to recognize the possibility of regime shifts with respect to the determinants of renewable energy consumption” |
| 4. [ | “The effects of oil prices can be asymmetric, nonlinear and sensitive…For example, Hamilton (1983) shows that rising oil prices are responsible for nine out of ten of the U.S. recessions since the SecondWorld War. Zhang (2008) employs a nonlinear model to investigate the relationship between oil-price shock and economic growth in Japan, and shows the existence of nonlinearities and asymmetric linkages between the two variables studied. Lardic and Mignon (2008) reach the same conclusion for other developed economies from an asymmetric cointegration approach.” |
| 5. [ | “…exists a threshold effect between the two variables: different levels of economic growth bear different impacts on oil CO2 emissions” |
| “Economic events and regime changes such as changes in economic environment, changes in energy policy and fluctuations in energy price can cause structure changes in the pattern of energy consumption” |
Fig 1Time-trend of variables analysed.
Unit root tests with flexible fourier form.
| Variable | ||
|---|---|---|
| 1 | -3.08 | |
| 1 | -3.99 | |
| 1 | -4.01 | |
| 1 | -4.17 | |
| Δ | 1 | -5.60 |
***, ** and * denote rejection of the null hypothesis of a unit root at the 1%, 5% and 10% significance levels respectively. k representes the frequency selected for approximation. The symbol Δ is the difference operator that transforms the variable to growth from.
Test for granger causality using the FFF-VAR.
| Null Hypothesis | p—values |
|---|---|
| 0.011 | |
| 0.344 | |
| 0.370 | |
| 0.757 | |
| 0.115 | |
| 0.933 | |
| 0.006 | |
| 0.049 | |
| 0.598 | |
| 0.193 | |
| 0.806 | |
| 0.227 |
F-test for flexible fourier form.
| Variables | F-test [p-value] |
|---|---|
| 2.07 [0.05] | |
| 9.97 [0.00] | |
| 3.96 [0.00] | |
| 12.12 [0.00] |
**, and * denote rejection of the null hypothesis of linearity at the 5% and 1% significance levels rspectively.
Unit root tests.
| ADF | ADF-GLS | MZt | KPSS | ||
|---|---|---|---|---|---|
| Levels | Differences | ||||
| -1.78 | -5.61 | -1.37 | -1.32 | 0.22 | |
| -1.29 | -6.83 | -0.56 | -0.58 | 0.23 | |
| -1.89 | -7.59 | -1.89 | -1.79 | 0.07 | |
| -2.01 | -6.90 | -0.88 | -0.61 | 0.30 | |
** denote rejection of the null at the 1% and 5% significance levels respectively.
Bootstrapped granger causality tests.
| Bootstrapped Critical Values | ||||
|---|---|---|---|---|
| Null Hypothesis | MWALD | 1% Crit. Val. | 5% Crit. Val. | 10% Crit. Val. |
| 0.139 | 7.246 | 3.972 | 2.753 | |
| 0.999 | 7.249 | 4.325 | 2.783 | |
| 0.070 | 8.703 | 4.438 | 2.776 | |
| 0.288 | 6.435 | 4.121 | 2.971 | |
| 0.703 | 7.045 | 4.301 | 2.722 | |
| 0.001 | 7.228 | 3.854 | 2.585 | |
| 10.34 | 7.339 | 4.294 | 2.958 | |
| 0.396 | 7.568 | 4.118 | 3.024 | |
| SPE ↛ | 0.385 | 6.942 | 4.087 | 2.752 |
| 0.023 | 6.763 | 3.747 | 2.740 | |
| 0.849 | 7.862 | 4.298 | 3.073 | |
| 0.204 | 6.703 | 4.065 | 2.758 | |
*** denotes rejection of the null at the 1% significance level.