1. Introduction
The global warming and climate change, which occurred due to the increase in greenhouse gas (GHG) emissions in recent years, are among the most discussed issues in the world. The Intergovernmental Panel on Climate Change (IPCC) [
1] highlights the importance of carbon emissions in contributing to GHG emissions. IPCC [
1] reports that 76.7% of greenhouse gas emissions consists of carbon emissions produced mainly by developing countries which aim to accelerate their growth and increase domestic production in order to obtain better economic conditions. Moreover, according to Olivier and Peters [
2], between 1990 and 2018, emissions were increased by 67.4%. Over this period, the biggest contributors to this increase were China (+370%), India (+340%), and the Middle East and North Africa (+210%). In addition, GHG emissions are presented as the main cause of pollution in the Kyoto Protocol, and it is clearly revealed that the greatest effect among these gases is caused by carbon dioxide (CO
2) emissions (Udara Willhelm Abeydeera et al. [
3]. Therefore, it is extremely important that policymakers rely on research outcomes to understand the current situation of GHG emissions in developing countries, thereby enhancing energy self-reliance and develop future strategies to reduce carbon emissions. At this stage, the literature on the main determinants of GHG emissions is gaining importance. Many different findings are obtained using data from different countries or a group of countries, and mobilizing decoupling decomposition analysis, econometric methods or other methodologies have led to the lack of a fundamental consensus on this issue. On the contrary, various studies agree on the fact that economic development, energy consumption, urbanization, innovation or even trade openness are among the important determinants of GHG emissions. Thus, the relationship between environmental quality and economic and social development factors has been widely explained by the environmental Kuznets curve (EKC) hypothesis which emerged in the early 1990s. According to the EKC hypothesis, during the early stages of development, there will be an increase in environmental pollution due to the use of energy-intensive technologies where economic growth is the main objective, but after reaching a certain level of economic development, socially conscious actions will be taken regarding the environment, there will be an increase in demand for clean and environmentally friendly energy. It is assumed that environmental degradation is avoided by using clean technologies. Many other models, methods and indicators have been proposed to quantitatively evaluate the determinants of GHG emissions. For example, STIRPAT (STochastic Impacts by Regression on Population, Affluence, and Technology) model, which is based on the IPAT (Influence, Population, Affluence, and Technology) model initially proposed by Ehrlich and Holdren in 1971, has often been used to assess the nexus between consumption of natural resources and pollutant emission, including GHG emissions. This model has been extended to include other variables such as urbanization, innovation, foreign direct investment, trade openness, financial development, and others. Furthermore, Tapio decoupling model or Logarithmic Mean Divisia Index (LMDI) decomposition method were also used to assess the decoupling relationship between GHG footprint and economic growth, and the respective contribution of the factors affecting GHG footprint decomposition.
With this perspective, due to its position as a developing country, Tunisia has the characteristics of a country with high energy demand and consumes intense fossil fuels. In this respect, it can be stated that there are important steps to be taken in the context of climate change. In order to carry out necessary studies in this area, greenhouse gas emissions that cause global warming should be analyzed in detail.
Against this background, the objective and main innovations of this research are two-fold. First, to examine whether there is a decoupling between economic growth and GHG emissions in Tunisia, relying on Tapio decoupling model. Second, to analyze the determinants of GHG emissions and the validity of EKC hypothesis, using the extended STIRPAT model.
This paper consists of five parts and organized as follows: after the introduction follows the literature review.
Section 3 presents data and methodology.
Section 4 provides the empirical results and discussion. Last section discusses conclusions and policy implications.
2. Literature Review
There is a variety of studies that investigate the causal relationship between GHG emissions, economic development, energy consumption, urbanization, innovation or even trade openness. According to Mardani et al., [
4], the frequency of scientific articles in this field increased from 1996 to 2010, and the number of articles published in 2010 increased to nine articles per year and continued with this increasing momentum until 2019. China leads the way in this field with a rate of 18.86%, followed by Malaysia (14.86%), Tunisia (12.57%), Pakistan (7.43%), Turkey (6.29%) and Korea 4%. The most traditional empirical methodologies for countries case studies are the Johansen [
5] cointegration approach, the ARDL method developed by Pesaran and Shin [
6], decoupling models, and decomposition methods. While the case studies with panel data and Granger-type causality, the cointegration approach of Pedroni [
7] and the causality model formalized by Dumitrescu and Hurlin [
8] are usually used.
First, the studies that relate GHG emissions and economic growth and urbanization are covered. Traditional theory considers a positive relationship between increased economic growth, the rate of urbanization and GHG emissions (mainly CO
2). Therefore, considering the effect of economic growth on the environment, two approaches have been proposed. The first estimates the relationship between per capita income and various environmental indicators. The second approach uses instead an index that measures the toxic intensity of sectoral manufacturing production to reflect the quality of the environment (air and water pollutants, solid waste per capita, access to drinking water, and deforestation indicators). Most of these studies tend to find that there is an inverted U-shaped relationship between pollution and income. This relationship is compared to that identified by Kuznets [
9] who rather associated economic development with income inequalities. Empirical results reveal that increasing economic development and urbanization, through misuse of resources, increases GHG emissions [
10,
11,
12,
13,
14,
15,
16].
The increase in environmental degradation is more observed in developing countries, especially in Asia, where energy intensity and the level of urbanization are very high. Ahmed et al. [
10] find that energy consumption increases environmental degradation while verifying the existence of an environmental Kuznets curve for five Asian economies, they also find that there is a unidirectional causal relationship between energy consumption and urbanization. Amin et al. [
11] have employed STIRPAT model, panel cointegration and FMOLS techniques to explore the dynamic relationship between CO
2 emissions, urbanization, trade openness and technological innovation based on panel data from 13 Asian countries over the period 1985–2019. Their results reveal the existence of a long-term relationship among the variables. The panel causality analysis indicates a bidirectional causality between urbanization and CO
2 emissions, technology and CO
2 emissions, trade and CO
2 emissions, in the long run. Behera and Dash [
12], when incorporating the energy consumption of fossil fuels instead of the consumption of primary energy, find that there is a cointegration relationship between the energy consumption of fuels, urbanization, and CO
2 emissions. For countries like China, where the urbanization process grows in parallel with energy consumption, which causes an increase in CO
2 emissions [
17]. Ding and Li [
13] also explain that economic development factors are the main drivers of regional carbon dioxide emissions, compared to factors of structural change, energy intensity and social transition. Moreover, Gao et al. [
18] used the Tapio decoupling model, coupled with the LMDI model and the Cobb-Douglas production function, to analyze the decoupling status of provincial carbon emissions from economic growth in China. Their results echoes previous findings on the favorable impacts of renewable energy on emission reduction. Zhang et al. [
19] applied the PLS approach and Tapio decoupling to analyze the decoupling status of economic growth from greenhouse gas emissions, and found that for CO
2, CH
4, and N
2O, only N
2O emission showed a significant decoupling trend, while CO
2 and CH
4 emissions showed a slow decoupling trend. Similar outcomes were found by Kirikkaleli [
20]. In Malaysia, in addition to the fact that economic growth contributes to CO
2 emissions, increasing energy consumption rises this intensity [
14]. Talbi [
16] conducted a study on the causality between economic growth, energy consumption, energy intensity of road transport, urbanization, and fuel rate on CO
2 emissions in Tunisia and found strong evidence that economic growth and urbanization play a dominant role in increasing CO
2 emissions. Results further confirmed the EKC hypothesis. In contrast, Raggad [
15] points out that the urbanization process does not significantly influence the increase in CO
2 emissions in high-income countries such as Saudi Arabia, urbanization has a negative and significant impact on carbon emissions, arguing that urban development does not it is an obstacle to improving environmental quality.
Secondly, the studies that relate GHG emissions and energy consumption are covered. Empirical evidence suggests that there is a positive relationship between energy consumption and GHG emissions. At global level, this relationship varies according to countries and regions. Acheampong [
21] finds that energy consumption causes carbon emissions in the Middle East and North Africa, but carbon emissions are negative in Sub-Saharan Africa and the Caribbean-Latin America. In contrast to the general theory, some authors mention that the consumption of energy from renewable sources reduces GHG emissions. For example, in Tunisia, Cherni and Essaber Jouini [
22] find that the consumption of renewable energy contributes to the reduction of emissions while also having a positive effect on long-term economic growth. This is line in with the finding of Anwar et al. [
23] for a group of ASEAN countries; Chen et al. [
24] for China; Ito [
25] for panel data of 42 developing countries; Njoh [
26] for Africa; Zoundi [
27] for a panel of 25 countries. Cai, et al. [
28] find that there is no cointegration between clean energy consumption and CO
2 emissions in Canada, France, Italy, the United States, and the United Kingdom, while this cointegration exists in Germany and Japan when CO
2 emissions they serve as dependent variables. In this line, Amri [
29] and Ben Jebli and Ben Youssef [
30] find that clean energies does not contribute to the reduction of CO
2 emissions in the long term, for Algeria and North Africa countries respectively.
The third group of studies includes the empirical evidence that relates GHG emissions and innovation, some authors argue that according to the level of technology the GHG emissions can be negatively affected [
11,
31,
32]. Amri [
31] find that innovation has not enabled Tunisia to decrease the CO
2 emissions. This result is consistent with that obtained by Amin et al. [
11] for the case of Tunisia. Dauda et al. [
32] examined the EKC with total factor productivity as the proxy for innovation for Mauritius, Egypt, and South Africa. The results validated an inverted U-shape relationship between innovation and CO
2 emissions.
Another variable frequently used as a determinant of GHG emissions and discussed in the study is trade openness. In the literature, the positive or negative effects of trade openness on environmental indicators can be explained by three different effects: scale effect, composition effect, and technical effect [
33,
34]. The scale effect expresses the increase in the quantity of pollution with the liberalization of trade and the increase in economic activities [
35]. The structural effect is explained by changes in the composition of production, as well as by the increase in production volumes and the resulting specialization. In this process, it becomes important whether countries will specialize in pollution-intensive production or in the production of products that take environmental factors into account. Specialization in pollution-intensive activities will lead to overexploitation of the country’s natural resources and increasing environmental damage resulting from the production of these products. Therefore, such trade will have negative effects on the environment [
33]. However, this situation will be reversed in countries that produce environmentally friendly production. Likewise, other countries trading with these countries will produce according to this demand in the country in question, and the positive effect of production on the environment will extend to larger areas [
36]. The technical effect, on the other hand, is driven by the increase in commercial activities alongside with the increase in per capita income, the demand for more environmentally friendly clean technologies increases and investors change their production structures [
37]. There are many studies in the literature dealing with the relationship between trade openness and the environment [
11,
38,
39,
40,
41]. The different results obtained from these studies increase the importance of examining this topic. In this respect, to examine the existence of a long-run relationship between economic growth and the environmental pollution level in context of Vietnam, Do and Dinh [
38] apply a Vector Error Correction model. They show that energy consumption and trade openness negatively affect CO
2 emissions. Also, Mahmood et al. [
40] investigated the asymmetrical effects of trade openness on CO
2 emissions and the environmental Kuznets curve (EKC) hypothesis in Tunisia during the period 1971–2014. They prove an asymmetrical effects of trade openness on CO
2 emissions. The effects of increasing and decreasing trade openness are found to be positive and insignificant on CO
2 emissions, respectively. In the case of European economies, Jamel and Maktouf [
39] investigate the causal nexus between economic growth, CO
2 emissions, financial development, and trade openness. Their empirical results indicate a bidirectional Granger causality between among trade openness and pollution.
5. Conclusions and Policy Implications
The main objective of the present study is to examine the decoupling effect of economic growth on GHG emissions in the context of Tunisia between 1980 and 2018. Our contribution to the literature is to use the decomposition methods Tapio [
42] decoupling model and extended STIRPAT model and Auto-Regressive Distributed Lag (ARDL) bounds test approach. Also, we incorporate the energy consumption, urbanization, innovation, and trade openness as interesting variables to study their relationship with per capita GHG emissions, and to verify the EKC hypothesis. The empirical findings provided evidence of the decoupling effect of economic growth on GHG emissions, on the one hand, and support the existence of the EKC hypothesis for GHG emissions on the other.
The decoupling analyses of economic growth on GHG emissions indicate that there are distinctive differences over the period 1990–2018. Between 2001 and 2009, Tunisian’s economic growth had been weakly decoupled from GHG emissions. For the years 1991, 1993, 1995, 2010, 2011, 2014, 2015, and 2017, Tunisia demonstrated expansive negative decoupling. Between 1998 and 2000 an expansive coupling occurred. For the periods 1990, 2013 and 2016, a strong decoupling was found.
After analyzing the decoupling elements, we found that urbanization, innovation, and non-renewable energies consumption effects was mostly responsible for the increase in GHG emissions. Also, our empirical results reveal that innovation contributes to the increase in GHG emissions in Tunisia, which seems to contradict theoretical predictions which consider innovation as one of the main channels for reducing greenhouse gas emissions. Such a result may provide proof that the Tunisian economy remains highly a consumer and still very little producer of technological innovations, particularly in the energy efficiency field. Public policies should balance technology-push, via subsidizing research and development and technology dissemination actions, and demand-pull policies for fostering innovations and accelerating their diffusion, through standards, taxes and cap-and-trade systems. Policy mixes may be more efficient than isolated measures. Hence, to strengthen the development of a low-GHG economy, Tunisia needs to rethink the urbanization structure and the energy management programs. Tunisia’s objective is to reach 30% of global electricity production from renewable energies by 2030. By having significant potential in wind and solar power, Tunisia has put in place a new regulatory framework through the promulgation of Law 2015–12 and its implementing government decree n° 2016–1123 of 24 August 2016 relating to the production of electricity from renewable energies. However, this sector faces several difficulties, and the installed energy capacity did not exceed 3% in 2019.
This work puts forward the following policy suggestions. Tunisia has relatively succeeded in establishing a legal regime favorable to the development of renewable energies. However, several obstacles hinder business owners from installing the equipment, real estate, and materials necessary to ensure the production of electricity from renewable energies. Indeed, the establishment of a project to build and operate an electricity production unit requires the intervention of several institutional and private actors. Entrepreneurs sometimes find it difficult to understand the authorization procedures for their projects. So, bureaucracy and the difficulty of accessing finance hamper the development of renewable energies. To remedy this shortcoming, the Tunisian Government must take certain measures: (1) involve private and civil society actors in carrying out any revision of the regulatory framework; (2) bring together the legal texts, application decrees and orders in a single collection to facilitate access and reading to potential investors; (3) clearly define responsibilities within institutions and strengthen human resources; and (4) involve local banks in the financing of renewable energies to promote investments in the field of renewable energies.