1. Introduction
The global economy is particularly dynamic and significant since it deals with historical and recent chaotic events that have plagued the world, such as the worldwide COVID-19 pandemic and geopolitical uncertainty. According to the International Monetary Fund’s (IMF) previous three annual reports, the globe is still working hard to achieve sustainable economic growth to overcome consecutive crises following the 2030 Sustainable Development Goals [
1,
2,
3]. In 2021, the world economy experienced a considerable recovery as the economy appeared to recover from the Corona virus-induced slump. The global economic production was expected to be 5.9%, a significant increase over the 2020 ratios. Economic growth in advanced economies was predicted to be 5.0 percent, while growth in emerging and developing nations was estimated to be 6.5 percent [
4,
5]. The economy is likely to be harmed today due to the continual rise in the price of goods and services, particularly now with political uncertainty and violence in several regions, particularly between Ukraine and Russia [
6]. To attain economic stability and meet global demands, the world has continued to engage in activities that primarily result in rising greenhouse gas (GHG) emissions, such as carbon dioxide (
) [
7].
Climate change, primarily caused by a rise in GHG emissions, results from economic growth, represented by energy consumption because all economic activities are inextricably linked to energy consumption [
8]. On the other hand, energy is at the top of the list of industries that emit greenhouse gases. According to the World Resources Institute, energy use accounted for 73.2 percent of total emissions in 2016 [
8].
The impact of economic growth, mainly through energy use, on environmental deterioration and, indirectly, greenhouse gas emissions have been thoroughly studied and examined by [
9]. The European Commission (CE) aspires to reduce greenhouse gas emissions and turn European economies into greener economies by assessing present reality and determining the impacts on emissions [
9]. The European Union has created a 10-year plan to cut greenhouse gas emissions, starting with a 20% cut in 2020 compared to 1990, a 40% cut in 2030, a 60% cut in 2040, and an 80% to 90% cut in 2050. Many initiatives, agreements, and treaties have been undertaken under the auspices of international bodies to achieve these goals, including the Kyoto and Montreal Protocols, the United Nations Convention on Climate Change, European Climate Law, the Nairobi Conference, and, most recently, the Paris Agreement [
10].
In the Czech context, between 1990 and 2020, there was no significant rise in the population of the Czech Republic. Over thirty years, the overall population increased by 364,230 individuals, or an average of 12,141 people, according to the world bank. The Czech Republic lies in the middle of ranking European countries in terms of wealth. Superior to Eastern European countries and many Central European countries [
11]. According to the Statista database, the Czech Republic ranks 18 among EU countries in 2021 GDP. The Czech Republic achieved significant economic growth between 1990 and 2020 as the GDP increased from 120.14 billion USD in 1990 to 126.27 billion USD in 2000 [
12].
In comparison, the significant increase happened after 2000 as GDP reached 203.09 billion USD in 2020, according to the world bank. On the one hand, since the dissolution of the Soviet Union and the collapse of many inefficient enterprises, and on the other hand, since the improvement in energy efficiency and the launch of new carbon-free energy sources, greenhouse gas emissions have been steadily declining [
13]. The Global Carbon Project’s figures are backed by what Dubravska et al. concluded in their research. Carbon dioxide emissions fell by 25.4 percent in 2000 compared to 1990 and 31.7 percent in 2020 compared to the same base year [
14].
In an in-depth bibliographic survey, no research on the impact of energy consumption and economic growth with its three main components on the environment through its effects on emissions at a macro level has yet been conducted in the Czech Republic using the most recent published data; as a result, this article will provide a visual representation of the crucial contribution in the call to reduce carbon dioxide emissions by promoting the use of sustainable renewable energy solutions and environmentally friendly economy transform.
The paper aimed to evaluate the impact of economic growth, agriculture, and primary energy consumption on carbon dioxide emissions. The goal was also to help Czech authorities develop and implement policies contributing to the Paris Agreement. The following is the format of the paper: The study is divided into five sections:
Section 1 has the introduction;
Section 2 is a review of the literature;
Section 3 contains the data and technique utilized;
Section 4 includes the results and discussion, and
Section 5 is the conclusion.
2. Literature Review
Numerous studies have examined the connection between economic growth, energy use, and emissions. The authors sought to summarize studies using different approaches and for a single country per study.
A study was conducted in Romania to check the dynamic relationship between economic growth, energy consumption, and
emissions for the period 1980–2010 by using the ARDL approach. The results indicate a long-run relationship between economic growth, energy consumption, and energy pollutants. And they concluded that energy consumption significantly contributes to energy pollutants [
15].
A couple of papers studied the impact of energy consumption on economic growth in Spain and Turkey. Authors in the Spanish paper used Multivariate cointegration from 1984–2003, and they indicated unidirectional causality from energy consumption toward economic growth [
16]. The Turkish paper was conducted using the same approach for a longer duration, 1960–2003. However, there was no causality between energy consumption and economic growth [
17].
Shifting to African studies, A paper which discussed Ugandan case to examine the impact of energy consumption and GDP on
emissions from 1986–2018. The methodology used was Vector Error Correction techniques. The Johansen cointegration test presents a long-run relationship between the variables, and the Granger causality shows a unidirectional causality from GDP to
emission. In contrast, it shows that energy consumption does not Granger cause
emission [
18].
Two different studies covered Nigeria. The first paper examined the period 1970–2010 and discussed the relationship between energy consumption,
emissions, and GDP performing ARDL. The results show short and long-run relationships between energy consumption,
emissions, and GDP.
emissions significantly positively impact GDP in both the short and long run. At the same time, energy consumption significantly negatively impacts GDP in the short run [
19].
Authors in the second paper added more variables such as crude oil and Agriculture. Besides, they changed the study duration to 1981–2014. authors used ARDL and Granger causality tests. The results indicated that the amount of
released tends to rise as the economy’s output, and industrial sectors grow. The results also showed no significant relationship between agriculture and
emissions. Granger causality tests indicated that there is granger causality for
⇒ Agriculture. GDP⇒ Crude oil production. GDP⇒ Electricity consumption. Agriculture ⇒ GDP.
⇒ GDP [
20].
Ghana was also one of the studied countries for the relationship between carbon dioxide and agriculture. Two techniques were used to investigate the association from 1961 to 2012. Both tests showed a causal relationship between
emissions and agriculture [
21].
In the case of South Africa, Johansen and VECM tests between 1971–2013 were performed to study the relationship between energy consumption,
emission, economic growth, trade openness, and urbanization. Results show a long-run relationship between all variables. A bidirectional causality between energy consumption and economic growth was found by (VECM) Granger causality. However, a unidirectional causality was found as follows:
⇒ economic growth. Urbanization & trade openness ⇒ energy consumption. Energy consumption,
emissions, trade openness, and urbanization ⇒ economic growth [
22].
For the Asian studies in India, a paper conducted to investigate the relationship between energy consumption, economic growth, and carbon emissions from 1971 to 2009. The Johansen cointegration technique and the (VECM) Granger-causality test were performed. The results showed a long-term relationship between the studied variables. Besides, a unidirectional causality flows from energy consumption and
emissions toward economic growth [
23].
Over the period 1972 to 2008, A study in Pakistan investigated the relationship between
emissions, energy consumption, and economic growth. Johansen’s cointegration technique was implemented. The study confirmed the existence of EKC as there is a quadratic long-run relationship between carbon emissions and income. In addition, energy consumption and foreign trade positively impact
emissions. In the short run, the results were contradictory as they showed no existence of the EKC [
24].
In Malaysia, a study was conducted to check the contribution of renewable energy to the verification of dynamic
emissions and GDP interaction over the period 1971–2015, utilizing ARDL and VECM Granger causality tests. The results show that the causality runs from
emissions to renewable energy, and there is a significant negative relationship between renewable energy and
emissions [
25].
Throughout 1980 and 2014, ARDL and (VECM) Granger causality approaches were performed to indicate the relationships among
emissions, GDP, foreign trade, and energy production in China. These variables showed a long-term association. GDP growth and non-renewable energy production increase
emissions, but foreign trade and renewable energy have the opposite effect. According to the short-run Granger causality tests, there are bidirectional causal relationships connecting foreign exchange,
emissions, and renewable and non-renewable energy [
26].
Qatar was one of the important case studies where a paper examined the effects of GDP, FDI, Energy consumption, and financial development on environmental quality from 1980–2016. The authors utilized ARDL and Toda-Yamamoto causality tests. The results determined a negative long-run effect of energy consumption on ecological quality. FDI has a negative long-run effect on environmental quality when measured only by one of the indicators. While no significant impact on financial development on the environment. Three variables—economic growth, energy use, financial development, and all three environmental quality indicators—are found to be causally related in both directions [
27].
3. Materials and Methods
This empirical study’s annual data (1995 to 2018) was collected from World Bank’s and our world in data. Annual data throughout the period 1995–2018 were used in this study. The studied duration matches or exceeded the duration of many previous studies [
16,
28,
29,
30]. Besides, the specified period includes all the data published for the study variables, and no period has been omitted or deleted.
EVIEWS 12 has been used to perform econometric analyses.
emissions and Primary energy consumption data were obtained from our world in a data database [
14,
28]. Our world in data database took the data of
emissions from the Global Carbon Project. Economic growth, GDP constant 2015 USD; agricultural, forestry, and fisheries value-added constant 2015 USD; industry value-added regular 2015 USD; services value-added constant 2015 USD data were taken from the world bank database [
29,
30,
31,
32]. The used variables were carbon dioxide (
) emissions: Annual production-based emissions of carbon dioxide (
), measured in tonnes. Gross domestic product (GDP) at purchaser’s prices is the total of the gross value contributed by all resident producers in the economy, plus any applicable product taxes minus any subsidies not included in the product value. Agriculture, forestry, and fishing corresponds to International Standard Industrial Classification (ISIC) divisions 01–03 and includes forestry, hunting, fishing, and cultivation of crops and livestock production. Data are in constant 2015 prices, expressed in US dollars.
Services correspond to ISIC divisions 45–99. They include value added in wholesale and retail trade (including hotels and restaurants), transport, government, financial, professional, and personal services such as education, health care, and real estate. Also included are imputed bank service charges, import duties, any statistical discrepancies noted by national compilers, and differences arising from rescaling. Data are in constant 2015 prices, expressed in US dollars. Industry (including construction) corresponds to ISIC divisions 05–43 and includes manufacturing (ISIC divisions 10–33). It comprises value added in mining, manufacturing, construction, electricity, water, and gas. Data are in constant 2015 prices, expressed in US dollars. Primary energy consumption is expressed in terawatt-hours per year and was obtained from Our World in Data. It is estimated without considering the depreciation of manufactured assets or natural resource depletion and degradation. Data is provided in US dollars at constant 2015 prices [
14,
28,
29,
30,
31,
32].
Our empirical model examines the impact of economic growth, agriculture, and primary energy consumption on carbon dioxide emissions. The functional link between these variables yields the result of these variables functional connection is:
To enrich the paper and make the discussion more fruitful, authors added the industry and services as additional variables which will be reflected as extra functions, tests, and results. Everything related to this addition does not fall within the objective of the study. The functions will be mentioned hereunder while the tests and results will be shown in the
Appendix A.
, GDP, AGR, PEC, IND, and SERV represent carbon dioxide emissions, economic growth, Agriculture, primary energy consumption, Industry, and Services.
The stochastic form of the model is
where =
,
,
, and
, are coefficients for intercept, GDP, AGR, and PEC, respectively, and
the stochastic term. After adding industry and services variables, the stochastic form of the model is
where =
,
,
,
,
, and
are coefficients for intercept, GDP, AGR, PEC, IND, and SERV, respectively, and
the stochastic term.
All equations represent the used model prepared by the authors and used in previous studies [
33].
emissions, GDP, and Energy consumption were adopted in previous studies [
34,
35,
36,
37,
38,
39]. However, to make the study unique and valuable, the authors added agriculture on top of the GDP and energy consumption. This study is novel because it explains the causality between carbon dioxide emissions and GDP, and energy consumption and goes beyond it to explain the relationship and causation between emissions and each component separately in the main results and
Appendix A.
The natural logarithmic transformation was used for Equation (1), interpreted as elasticities. The transformation yields the following equation:
The natural logarithmic transformation was used for Equation (2), interpreted as elasticities. The transformation yields the following equation:
where =
,
,
,
,
, and
are coefficients.
A unit root test was implemented to give the upcoming steps for reaching the paper goal as a first step to checking the required econometric analysis. The widely used Augmented Dickey-Fuller was applied to determine whether the variables had unit roots. H0 suggests that it is not stationary and has a unit root, while the alternative hypotheses indicate that a series is stationary [
40]. The ADF stationery will be determined in further steps.
Engle & Granger and Johansen & Jeselius [
41,
42] have limited the cointegration steps to variables of the same order of integration, I(1). While ARDL can be used when the variables have an order of integration I(0), I(1), or a mix of both, without having any I(2) or higher [
43]. We used Johansen cointegration test (Johansen and Juselius, 1990). It determines whether long-run cointegrating equations exist between or among the variables in the I(1) series. The variables are in natural logarithmic form, and the long-term relationship is examined using the log converted variables. The Johansen and Juselius cointegration model is written as:
where π and Γ
i are coefficient matrices, Δ is the difference operator, and
P is the lag order selected.
Two likelihood ratio tests—the trace and max eigenvalue tests—are used in the Johansen and Juselius cointegration, and they are computed as follows:
where λ
i is the expected eigenvalue of the characteristic roots, and
T is the sample size in the λ
trac test.
When one or more cointegrating vectors are present, the Johansen and Juselius cointegration test show evidence of long-run equilibrium between or among the variables. The following null hypothesis was found to determine the relationship:
H0:
No equation for cointegrating (s).
The 5% level of significance is the basis for the choice criterion. The null is rejected if the sum of trac and max exceeds the 5% critical value. If not, we are unable to reject the null. If n variables are all unit rooted, then there can only be a maximum of n − 1 cointegrating vectors [
43]. The following describes the VECM model used in this research:
where Δ is the difference operator, Y
t is (
, LGDP, LAGR, LPEC), θ stands for the intercept, and ε is the vector of the white noise process.
Although the presence of cointegration suggests a causal relationship between the variables, it does not reveal its direction. The VECM determines the causal relationships between
emissions, economic growth, agriculture, and energy use [
43]. Following is a presentation of the empirical equations for Granger-causality:
The causality might flow both ways or in either direction. According to this paradigm, a period value of x(y) results in y(x).
βj and σj are a measure of the influence of xt − j(yt − j) on yt − j (xt − j) If H0: βj = 0 (H0: σj = 0) is denied, then this exists Granger causality between the two variables.
Continuing the quality checks after evaluating the results of Johansen, and VECM tests, a post-estimation model diagnosis can be conducted. The primary purpose is to test the absence of heteroskedasticity and the presence of normality. H0 indicates the absence of heteroskedasticity and the presence of normality [
44].
6. Conclusions
The primary goal of this research was to assess the impact of economic growth, agriculture, and energy consumption on the Czech environment, which was quantified using emissions. Johansen, Vector Error Correction (VEC) Model, and granger causality were used to determine cointegration, long-run relationship and the direction of effect of the aforementioned variables.
The results showed that all studied variables are cointegrated (
Table 3 and
Table 4). Economic growth, agricultural, and energy consumption output are all positively correlated with
emissions (
Table 5).
There is a unidirectional Granger Causality between economic growth, and Agriculture towards carbon dioxide emissions. A unidirectional Granger Causality agriculture towards economic growth, and energy consumption. In addition, there is no Granger Causality between energy consumption and
emissions, and economic growth (
Table 6).
The Czech Republic lags behind European countries in general and its neighbors in particular in terms of the appropriate and planned transition to renewable energy. The Czech Republic is still suffering agriculturally from the consequences of some pests that caused them natural problems. It is vital to discover environmentally friendly energy sources and adequately implement the announced government support plan to support the environment to accomplish the aims of sustainable development and the Czech commitment to international agreements to safeguard the environment.
The Czech Republic should commit to, or make a plan, a green energy transition, which currently in the 2030 European Agreement has not benefited at least from the experiences of its neighbors such as Hungary in the development of wind energy. Observe Poland’s experience and make use of it to generate energy and electricity from bioenergy. Finding early response plans for agricultural pests to avoid a disaster similar to the bark beetle disaster. Due to the lack of normal water supply for agriculture, saving agricultural irrigation methods must be used. Finding alternatives to the use of ammonia through the use of less environmentally harmful fertilizers.
To achieve the goal of the research, all the studied variables were added, so the authors faced a problem in obtaining data for longer periods of time. This made the research focus on studying the period of the nineties of the last century until 2018. For subsequent studies, the authors recommend taking each of agriculture, industry, and services independently and studying their impact on emissions, which gives a big picture of each of them with deeper technical discussions for long periods of time and contributes to offering solutions to the problems that can be found in that research.
This is the first study to use the most recent data to empirically evaluate the environmental impact of economic growth, agriculture, and energy use in the Czech Republic. This study includes pertinent advice for reducing emissions and supporting the environment by increasing renewable energy sources and adhering to the Czech Ministry of Environment’s strategy.