# I. Introduction here is substantial amount of academic literature on the energy consumption. However, much of academic research seems to be narrowly focused, covering only a few economies and factors. Moreover, the academic literature is obscure and scarce on whether globalization has amplified or reduced the consumption of traditional fossil fuels to satisfy expansion in energy demand. Therefore, here we venture to bridge the gaps available in the academic literature, by providing an empirical framework that encompasses the change in fossil fuels consumption for 66 developing countries that result from globalization. In this paper, globalization comes in many flavors, including economic, political and social elements. Because globalization is a multidimensional phenomenon, we focus on different aspects of globalization to provide the empirical modeling that captures volatility in energy need that arise from globalization effect. Some academic literature suggests that globalization has made the world into a single system and connected countries through the exchange of information, trans border maintenance of produced technology and international technological partnership. Some argue that this flow leads to technological innovation which in turn leads to efficiency and cost-cutting. Thus this paper focuses on whether globalization has amplified the consumption of traditional energy or if there is a successive switching towards clean and renewable energy sources through the attainment of technological efficiency. We organize the remainder of the paper as follows. Section 1 gives information of how energy consumption has evolved recently in developing economies. It also provides a brief methodology on globalization. Section 2 delivers the academic literature related to globalization and its impact on energy demand. In section 3 we give a brief description of the dataset, and present the results of various statistical specifications and findings. The last section provides findings and discussions. # II. Theoretical Framework The emerging economies are increasingly becoming substantial actors in international commercial energy demand. Their share of the total energy use has magnified abruptly in the last decades, from 12 percent of worldwide energy use in 1970 to 57 percent in 2014. Notwithstanding that their per-capita is much lower than that of the industrialized countries; developing countries accounted for more than one-half of the total growth in global energy use since 1970 (see Table 1). Figure1 displays the sources of energy for the developing group of countries. The developing group mostly uses coal and oil to meet their energy demand. Its worth to note that, much of the coal is used in China and India only. Most of the developing countries use oil as a primary source of energy supplies. Source: BP statistical review of world energy, 2014 2). China alone accounts for more than 22 percent of the global l energy consumption and 40 percent of commercial energy use among developing countries. China's future energy course will potentially change the energy flows in the region and globally. At the other end of the scale there is a number of the emerging group that together, that justify only a moderate portion of worldwide energy use. For example, countries of South Africa, consume less than 1 percent of overall fossil fuels (see Table 2). # Oil 30% # Natural Gas 19% Coal 42% Nuclear Energy 2% # Hydro electric 6% Renewables 1% To analyze in more details how the energy intensity in developing countries changed as a result of the globalization, we focus on different aspects of globalization. Accordingly, to capture the globalization power of developing countries, we use the globalization index Konjunktur for schungs stelle (KOF) developed by the Swiss Economic Institute (Dreher 2006(Dreher , 2008)). The KOF index displays the power of globalization in three dimensions: economic globalization, which estimates business flows with an assumption for confinements to capital and trade; social globalization, which accumulates the dissemination of information, population, ideas, and images and; political globalization, which shows the diffusion of government policies. These three indices are weighted by the weights of variables making up these indices. The weights such as 36%, 37% and 27% are allocated between economic, social and political dimensions of globalization, respectively. These weights are computed based on the values of sub-indices composing the indexes. The three indices are always between 1 and 100, with a greater index indicating on a higher degree of globalization. Figure 2 illustrates the trend of globalization index for some developing countries. For these, the overall globalization score together with its sub-variables has considerably ameliorated between 1971 and 2014time span. The data suggests that the overall globalization index of 83.64 for Singapore is the highest among developing countries. For Thailand, the overall globalization index has also been significantly improved reaching 70.76 in 2014. # Source: World Bank Data Extract # III. Literature Review There is surprisingly very scarce literature record connecting globalization and energy demand. To my best knowledge, only one empirical study on energy consumption and globalization exist in the literature. The 2012) and others on globalization and its effect on different macroeconomic frames have been used in this paper. We do not venture to present such a review here, but do use these studies to avoid overlapping and place my analysis within the literature. # IV. Empirical Analysis The empirical investigation covers annual time series for the 66 developing economies.. Annual data on energy consumption and income are extracted from World Development Indicators. The income time series considered in the model as a control variable connecting energy use and globalization. I extract the data on the three globalization indices from KOF Globalization Index (2013). The length of an analysis depends on the availability of data; therefore, the empirical period is between 1998-2014. In the statistical analysis, we use natural logarithms of all variables. # a) The stationarity testing The first estimation of stationarity was conducted with Levine, Lin and Chu (2002) test. According to if the first order serial correlation coefficient is ?, then the null hypothesis is that H 0: ? i =1 for i=1?. N, in contrast to homogeneous assumption H 1 1 :-1< ? i = ?<1 for i=1?. N. Therefore, according to the second hypothesis the ? is expected to be equal in all terms, by keeping them uniform throughout cross-sectional units as follows: ??? ???? = (?? ?? ? 1)?? ???? ?1 + ? ?? ???? ??? ???? ??? + ?? ?? ?? =1 ?? ???? ?? ???? + ?? ???? , ?? = 1,2,(?? ?? ? 1) = 0 ð??"ð??"ð??"ð??"ð??"ð??" ?? = 1 ? . . ?? , then ?? = ? ? ?? ???? ð??"ð??" ???? ?1 ?? ??=?? ??+2 ?? ??=1 ? ? ð??"ð??" ???? ?1 2 ?? ??=?? ??+2 ?? ??=1 . Im, Pesaran and Shin (1997) unbrace the hypothesis of the LLC test and allow first-order serial correlation coefficients to change across regions as follows: ?? ? = ?????? ? ???(??? )? ?????ð??"ð??" (??? ) , where ?? ? = 1 ?? ? ?? ??, ?? ??=1 the terms ????ð??"ð??"(?? ? ) and ??(?? ? ) are the variance and mean of individual ?? ?? statistic, and ?? ? statistic approximate to a standard normal distribution. Hadri (2000) estimates a Lagrange ratio with the residuals obtained from the following equation ?? ???? = ?? ???? ?? ???? + ?? ???? ??????? ?? = 2,3 for i=1,??, N. ???? = 1 ?? ? 1 ?? 2 ? ?? ???? 2 ?? ??=1 ?? ? ?? 2 ?? ??=1 , where ?? ???? = ? ?? ???? ?? ?? =1 and ?? ? ?? 2 is the long-run variance estimate of disturbance terms. Table 3 exhibits the panel unit root estimators. At a 5% significance level, except for the IPS statistic for income and energy use variables with individual intercept and individual intercept and trend, other estimators significantly support that five series are stationary. Using these results, I test the time series with the error components model for evidence of the relationship. # Table 3: Unit root test results # b) The Error Components Model In this paper, we use the error components model because there is no correlation between the individual effects and the other regressors. This model allows the intercepts for each cross-sectional unit to arise from a common intercept ?? . Moreover, it is assumed that the global intercept is the same for all cross-sectional units and over time as follows: ???? ???? = ?? + ???????? ???? + ?????? ???? + ?????? ???? + ?????? ???? + ?? ???? , ?? ???? = ?? ?? + ?? ???? , where ?? ?? is a random variable with zero mean and constant over time but varies cross-sectionally. A random variable determines the arbitrary deviation of individual unit's intercept terms from the common intercept term ?? and is independent of each observation Where ???? and ???? are fixed and random estimators, and ??????ð??"ð??" is asymptotic variance-covariance matrices obtained from fixed and random estimations. This test is used in this study to decide which model is statistically appropriate. According to the test results at 5 % significance level, the null hypothesis can be accepted (see Table 5). We conclude that the error component is an appropriate model for the small distance. # ?? , where ?? ???? = ??? ???? ? ?? ? ?? ? , in this equation ?? ???? is j observation of X variable in group i and n is the number of observations and g is a number of units. From the probability estimators, at 5% significance level I concluded that the error terms are heteroscedastic (see Table 6). If the errors don't have a constant variance their mean value is roughly constant however their variance is rising systematically with the values of dependent variables. as proposed by Bhargava, Franzini and Narendranathan (1982), where ???= ??????ð??"ð??"(?? ?? ?? ?? ? )??? ? ???? ? ? , ?? ? is obtained from the estimation by the pooled least squares model ?? ? = ?? ? ?? + ?? .The estimators are indicating on the availability of positive, consistent correlation in the residuals (see Table 7). This condition shows that the standard error terms can inflate the model as they will be biased downwards relative to the true standard errors. Therefore, the test will belittle its true value with underestimating of the true error variance. We diagnose that the error component model with time effects has heteroscedasticity and serial correlation. Therefore, to eliminate the deviations from assumptions, I use Arellano (1987Arellano ( , 1993) ) standard errors technique ????ð??"ð??"??? ?? = ???1 ????? ?? ???1 (?? ? ??) ?1 (? ?? ?? ? ?? ??=1 ?? ?? ? ?? ? ?? ? ?? ?? )(?? ? ??) ?1 where ??and ?? are a number of groups, ?? ? ?? is i residual in group j. The Table 8 shows the test results. The results show that the model and some coefficients are statistically significant. Moreover, the test displays 36% explanatory power, indicating that dependent variables can explain 36% of the variation in energy use. # c) Vector autoregressive model We present a VAR model for energy use for a group of n time series ?? ?? = ?? 1?? , ?? 2?? , . . , ?? ???? , as follows (Ciccarelli and Canova, 2004Canova, ,2007Canova, , 2009Canova, , 2013)): ?? ???? = ?? 0?? (??) + ?? 1 (??)?? ???1 + ?? 2 (??)?? ?? ?2 + ? + ?? ?? (??)?? ??,???1 + ?? ?? (??)?? ???1 + ?? ?? where ?? ???? is the vector of dependent variable. The advantage of VAR analysis is that it can be extended to over two and more variables. ?? ???1 is the vector of exogenous variables (if present). ?? 0?? (??) are the deterministic components of the time series (constant terms, deterministic polynomial in time and seasonal dummies). Under the assumption of heterogeneity across units ?? ?? (??) and ?? ?? (??) are polynomials in the lag operators. We estimate operators under homogeneous panel VAR model Mignon 2013, 2015). ?? ?? is evenly and independently disseminated white noise with zero mean. VAR panel analysis includes only the variables that proved to be statistically significant in panel data analysis. Before conducting impulse response analysis, we tested the stationarity of the VAR model. From the figure, we found that all roots reside within the integer circle and are lower than one (see Figure 3). This result indicates on the stationarity of the VAR model. on the VAR model impulse response analysis shows the destabilization experienced by the variables in response to shocks that arise within other variables. The results from impulse response analysis show that the impact of social globalization on energy use will work till seven lags lengths after which the shocks will die away (see Figure 4). The key question we are interested in is whether the change in globalization can explain the energy demand in developing countries. With this question in mind, we constructed error components estimators and carried out an impulse response analysis. As a result of these analyses, we found that economic and political globalization processes don't have an impact on energy demand in developing countries. On the other hand, the error components estimators indicate on the fact that among three broad globalization dimensions only social globalization has a statistically significant impact on traditional energy consumption. Social globalization reveals 21.7 % of the change in energy consumption. The coefficient of social globalization is statistically significant, and its effect is negative. That is a 1% increase in globalization diminishes conventional energy use by 21.7 %. This result is very important, because the literature is still ambiguous on the effect of globalization on conventional energy demand. The coefficient of the income variable is also significant, and its effect is negative. This suggests that the increase in income by 1 % decreases traditional energy demand by 11 %. Indeed, the affluent industrialized countries with the highest income per capita decrease the share of traditional energy and increasingly implement the large scale and costly energy projects on renewable energy technology. A similar pattern emerges from impulse response analysis. The impulse response functions show that energy consumption responds negatively to the increase in social globalization. The functions also show that the energy use responds negatively to the increase in demand. Although it is an indisputable fact that there are a lot of debates and opinions on globalization across the world, it is widely accepted that globalization fosters trading and business performance by means of rise in foreign direct investment and the transfer of progressive technology from developed nations to developing countries. In particular, social globalization which accounts for the proliferation of ideas, skilled employees and know-how is expected to have a tremendous benefit to developing countries and increase use of clean and renewable energy sources through the attainment of technological efficiency. The estimations show that a 1% increase in globalization diminishes energy use by 21.7 %. If globalization increased globally, then the traditional energy use in developing economies should have been decreased. However, the use of traditional energy in developing countries has risen steadily from 4911.66 million tons in 1970 to 12988.85 million tons in 2014. Their share of the entire energy demand in 2014 accounted for more than half of the total increase in worldwide commercial energy use. This controversial result can be explained by two phenomena. Firstly, globalization together with income accounts for 36% and globalization alone accounts for 21.7% change in energy demand. However, there are other factors that affect the energy demand and the pace of change of these factors may have been greater than increase in globalization. In other words, the negative impact from the change in other factors may outweigh the benefits from the increase in globalization causing traditional energy demand to increase. Secondly, this contradictory result may indicate the trend of globalization in reverse. Some countries benefit from globalization process, but probably there is an uneven development of globalization in clean energy consumption around the world. With normal functioning of social globalization, the ideas, skilled people, information and technology transfer very quickly from advanced economies to developing world leading to deployment of large scale energy projects on renewable technologies and thus decreasing the demand for fossil fuels. However recent trends indicate the trend of deglobalization. While the influence of developing group such as China, India, Mexico, Turkey, Singapore, etc. has grown significantly in recent years, it seems that they couldn't change the process of anti-globalization in energy consumption and benefit from social globalization. 1![Figure 1: Energy Consumption by Fuel, share of total, 2014 China, Russia, India, and Brazil are among the largest consumers of commercial energy in the world. (see Table2). China alone accounts for more than 22 percent of the global l energy consumption and 40 percent of commercial energy use among developing countries. China's future energy course will potentially change the energy flows in the region and globally.](image-2.png "Figure 1 :") 2![Figure 2: Total Globalization Index, Country Case By shifting from central economic planning to market reforms, China has made a progress and displayed an increase in globalization index from 18.13 in 1970 to 62.02 in 2014 among developing countries.The data suggests that the overall globalization index of 83.64 for Singapore is the highest among developing countries. For Thailand, the overall globalization index has also been significantly improved reaching 70.76 in 2014.](image-3.png "Figure 2 :") 1197019801990200020102011201220132014World4911.66 6642.30 8141.85 9390.45 12169.98 12455.29 12633.84 12866.01 12988.85Developing countries610.52 1201.01 3265.47 3867.34 6490.156847.597083.047253.527421.52Share ofDeveloping12%18%40%41%53%55%56%56%57%countriesSource: BP statistical review of world energy, 2017 2China2970,640.17%22.8%Russia689.29.3%5.3%India663.68.9%5.1%Brazil304.94.1%2.3%South Africa125,21.7%0.9%Source: BP statistical review of world energy, 2014 CountryEnergy Use, million tones oil equivalentShare in developing countries' energy usageShare in total usageYear 20193100.0080.00E )(19701972 China 1974197619781980 India 1982198419861988 Brazil 1990199219941996 Singapore 1998 20002002200420062008 Thailand 201020122014Global Journal of Human Social Science -© 2019 Global JournalsGlobalization in Reverse: The Missing Link in Energy Consumption Volume XIX Issue III Version I (2006) and Dreher, A., Gaston, N., & Martens, P. (2008). The studies of Zobaa, A. F., & Lee, W. J. (2006), Harris, M. C. (2001), Stiglitz, J. E. (2004), Guthrie, D. ( 2=1 ??? ?? ???? 2 + ?? ??=12 ??? ??(??, ??) ?? ?? =1??? ??=?? +1?? ?????? ??,????? ,where ?? ???? isthe unobserved noise if there is a coefficient ?? ??= 4Energy Use-2.85335 (0.0022)-3.25674 (0.0006)2.58404 (0.09951)-0.68804 (0.2455)18.5366 (0.0000)12.0678 (0.0000)Income-4.64737 (0.0000)-0.34169 (0.3663)5.00188 (1.0000)1.00225 (0.8419)19.0378 (0.0000)12.2460 (0.0000)Economic-5.83036-5.13200-2.26803-1.6708817.528613.6618Globalization(0.0000)(0.0000)(0.0117)(0.0474)(0.0000)(0.0000)Political-10.1218-11.1036-6.58672-2.9793918.016015.6824Globalization(0.0000)(0.0000)(0.0000)(0.0014)(0.0000)(0.0000)Social-16.1049-30.1781-7.54469-6.9483617.326613.3718Globalization(0.0000)(0.0000)(0.0000)(0.0000)(0.0000)(0.0000) 6Mean 5.011e-12 and Std. Dev.05232958Model ResultsW 0 =23.811554 df(65, 1056) Pr > F = 0.0000000W 50 =13.88157 df(65, 1056) Pr > F = 0.00000000W 50 =22.88434 df(65, 1056) Pr > F = 0.00000000I test serial correlation using two alternativetechniques:Durbin-Watson?? =? ?? ??=1? ?? =1 ?? ????? ? ??,?? ??,?? ? ??? ? ??,?? ??,?? ?1 ? ?? ?? ?? =1 ?? ??=1?? (?? ??,?? ??? ??,?? ?1 =1/0)? ?? ? ??,?? ??,??2 7 8Energy ConsumptionIncome-0.1116105** (0.002)Economic Globalization0.128989 (0.304)Political Globalization-0.156562 (0.199)Social Globalization-0.2172409 (0.005)FTest (4,65)10.62 (0.0000)**Number of Obs / Groups1122/66R-squared0.3601** significant at 5%; * significant at 10%, and *** significant at 1% level © 2019 Global Journals * Does globalization affect growth? Evidence from a new index of globalization ADreher Applied Economics 38 10 2006 * Measuring globalisation: Gauging its consequences ADreher NGaston PMartens 2008 Springer Science & Business Media * Energy Consumption in China and Underlying Factors in a Changing Landscape: Empirical Evidence since the Reform Period Monash Business School KhalidAhmed MitaBhattacharya QasimAhmer WeiQazi Long 2015 * On the Relationship between Energy and GNP JKraft AKraft Journal of Energy and Development 3 1978 * Energy-GDP relationship revisited: an example from GCC countries using panel causality MAAl-Iriani Energy policy 34 17 2006 * The causal relationship between energy consumption and GDP in Turkey IOzturk MKaplan HKalyoncu Energy & Environment 24 5 2013 * Energy and economic growth in the USA: a multivariate approach DIStern Energy Economics 15 2 1993 * Energy consumption and GDP in developing countries: a cointegrated panel analysis CCLee Energy economics 27 3 2005 * CO 2 emissions, energy usage, and output in Central America NApergis JEPayne Energy Policy 37 8 2009 * The relationship between energy consumption, energy prices and economic growth: time series evidence from Asian developing countries JAsafu-Adjaye Energy economics 22 6 2000 * Energy consumption and economic growth in Asian economies: a more comprehensive analysis using panel data CCLee CPChang Resource and energy Economics 30 1 2008 * Energy consumption, economic growth and prices: A reassessment using panel VECM for developed and developing countries RMahadevan JAsafu-Adjaye Energy Policy 35 4 2007 * The causal relationship between energy and GNP: An International Comparison ES HYu JYChoi Journal of Energy Development 10 1985 * An investigation of cointegration and causality between energy consumption and economic growth BSCheng Journal of Energy and Development 21 1 1995 * Energy consumption, income, and carbon emissions in the United States USoytas RSari BEwing Ecol. Econ 62 2009 * Energy and national income in Korea: further evidence on the role of omitted variables YUGlasure Energy Econ 24 4 2002 * Effects of Financial Developments and Income on Energy Consumption Scu-ChenChang International Review of Economics and Finance 35 2014 * The globalization of energy markets in Asia AFZobaa WJLee Power Engineering Society General Meeting IEEE 2006. 2006 6 * The Globalization of Energy Markets. Challenges of the Global Century MCHarris 2001 Washington, DC National Defense University * Capital-market liberalization, globalization, and the IMF JEStiglitz Oxford Review of Economic Policy 20 1 2004 * China and globalization: the social, economic and political transformation of Chinese society DGuthrie DGuthrie 2012. 2012 Routledge * Unit root tests in panel data: asymptotic and finite sample properties ALevine CFLin CSChu Journal of Econometrics 46 1 2002 * Testing for unit roots in heterogeneous panels KSIm MHPesaran YShin 1997 Working paper. University of Cambridge * Testing for stationarity in heterogeneous panel data KHadri Econometrics Journal 3 2000 * Methodological issues in random coefficient growth modeling using a latent variable framework: Applications to the development of heavy drinking BOMuthén Multivariate 56 Applications in Substance Use Research LC JRose C& JPresson Sherman NJHillsdale Erlbaum 2000 * Multilevel Analysis. Techniques and applications JHox 2002 Lawrence Erlbaum Associates Mahwah, NJ * Random-Effects Models for Longitudinal Data NanMLaird JamesHWare Biometrics 38 4 1982 * Robust Tests for Equality of Variances HLevene Contributions to Probability and Statistics 1960 Stanfords University Press * Serial Correlation and Fixed Effect Models. the Review of Economic Studies ABhargava LFranni WNarendranathan 1982 49 * Computing Robust Standard Errors for Within-Groups Estimators MArellano Oxford Bulletin of Economics and Statistics 49 4 1987 * On the Testing of Correlated Effects with Panel Data MArellano Journal of Econometrics 59 1993 * Forecasting and Turning Point Predictions in a Bayesian Panel VAR Model FCanova MCiccarelli Journal of Econometrics 120 2004. 2004 * Methods for applied macroeconomic research FCanova 2007 Princeton University Press 13 * Estimating Multi-country VAR models FCanova MCiccarelli International Economic Review 50 2009 * Panel Vector Autoregressive Models: A Survey FCanova MCiccarelli No. 1507 2013 ECB Working Paper * How Macroeconomic Imbalances Interact? Evidence from a Panel VAR Analysis, Working Papers BGnimassoun VMignon 2013. 2013-42 CEPII research center * Persistence of Current-account Disequilibria and Real Exchangerate Misalignments BGnimassoun VMignon Review of International Economics 2015 * Small sample confidence intervals for impulse response functions LKilian Review of Economics and Statistics 80 1998