1. Introduction
Climate change, desertification, and biodiversity loss are problems that have emerged from the single fact that humans are using more environmental resources and produce more pollution than the earth can regenerate and absorb [
1]. Countries depend on extracting their domestic resources or importing resources from other countries to fulfil their production and consumption needs [
2]. At every stage of the production and consumption processes, we use natural resources and produce waste and pollution. Accordingly, our economic activities as well as consumption patterns need to have enough biocapacity to support them [
3], otherwise our environment will degrade faster.
Scientists and researchers have worked to develop different methods to measure and count natural capital productivity [
2]. One of these methods is the ecological footprint developed by Wackernagel and Rees [
4]. The ecological footprint accounting system answers the research question of ‘how much of the biosphere’s regenerative capacity is occupied by given human activities?’ [
1]. It compares the human demand on natural resources with the biocapacity. The ecological footprint can thus be calculated for consumption and production. The ecological footprint of consumption (EF) is calculated by adding the footprint embedded in imports to the footprint of locally produced goods and services. The ecological footprint of production (EFP) is calculated by adding the footprint embedded in exports to the locally produced goods and the footprint of services.
This approach can help countries to identify how their economic growth is causing them loss in biocapacity, which could have irreversible effects in the future [
5]. Understanding the impact of our economic activities on the biocapacity provides a more comprehensive view of various environmental degradation issues including climate change, biodiversity loss, desertification, drought, hunger, air, land and water pollution, public health issues, social inequality, and wars caused by an unequal distribution of natural resources [
1].
A large body of literature has studied the linear and nonlinear relationships between environmental impact, mainly measured by CO
2 emission, and human activities, mainly measured by per capita income [
6,
7]. Furthermore, researchers have identified other factors that have impacts on CO
2 emission besides economic growth. Those factors include: energy use, trade openness, urbanization, renewable energy, financial development, human development, natural resources, technology, institutional quality, and tax system [
5,
8,
9,
10,
11,
12]. Recently, researchers have used the ecological footprint as a more comprehensive indicator to study the environmental-economic nexus. Many studies have examined the linear and nonlinear relationships between economic growth and the previously mentioned factors of the ecological footprint as a measurement of environmental degradation [
2,
13,
14,
15,
16,
17,
18,
19].
Previous studies focused on the EF and neglected the EFP [
2,
13,
14,
18,
19]. Only a few studies, such as [
20], included both EF and EFP. Hence, this study fills this gap by studying both EF and EFP. Furthermore, previous studies have examined the impact of some economic sub-sectors on CO
2 emission, such as [
21,
22,
23,
24,
25,
26]. However, the impact of economic sub-sectors on the ecological footprint is not examined, especially the nonlinear relationship under the Environment Kuznets curve (EKC) hypothesis. Therefore, the present study is unique in addressing the impact of economic growth on EF and EFP and in studying the per capita sectoral-wise GDP impact on EFP to measure environmental degradation under the EKC framework.
The significance of this study is its attempt to provide insightful policy recommendations on what sub-sectors of economic activities need to be regulated or promoted to achieve sustainable growth based on their impact on the environment, which has been done for each income group and both in the short and long-run analysis. Such discussions have not been addressed in the literature previously. Another significance is using the ecological footprint to measure environmental degradation. Decisions informed by ecological footprint can bring more holistic solutions compared to policies that are only informed by CO2 emission. Policies that only target CO2 emission, mainly focusing on reducing fossil fuel consumption, could lead to other sets of problems. For example, shifting to biofuel could result in more pressure on different environmental resources such as forests and croplands. This can cause food security issues and reduce the ecosystem’s capacity to absorb CO2 emissions, leading to more accumulation of CO2 in the atmosphere.
This study aims to answer the following questions that have not been addressed in the literature: (i) What is the difference between the impact of per capita income on the ecological footprint of consumption vs. the ecological footprint of production? (ii) What is the impact of the agricultural, manufacturing, and service sectors on environmental degradation in the short and long run? (iii) What is the impact of financial development, renewable energy, trade openness, and urbanization on environmental degradation in the ecological footprint of consumption vs. the ecological footprint of production?
To do so, this study utilizes the Environment Kuznets curve (EKC) hypothesis to examine the non-linear relationship between per capita income and environmental degradation in terms of EF and EFP. The study constructed five models: two models to investigate the impact of the aggregated income level against EF and EFP, and three other models to analyze the impact of economic sub-sectors, namely, agriculture, industrial, and service, on EFP. To analyze the data, the study employed an advanced econometrics tool using Autoregressive Distributed Lag (ARDL), as it is suitable when we have stationary and non-stationary variables. Specifically, the study used pooled mean group (PMG) estimation for the dynamic heterogeneous panel proposed by Ref. [
27]. The PMG estimation has an interesting feature as it allows for short run heterogeneity but restricts the long run to being homogeneous. This study uses panel data for 92 countries classified into four income groups and spanning from 1992 to 2015. In addition to the variables mentioned above, the paper includes financial development, energy structure, energy intensity, trade openness, and urbanization as essential factors that affect environmental degradation as reported in the literature.
The rest of this article is organized as follows:
Section 2 is a literature review,
Section 3 presents the data and methodology,
Section 4 presents the results and a discussion, and
Section 5 is the conclusion.
4. Results and Discussion
Table 2 presents the results of the Pesaran (2004) CD test. It shows a cross-sectional dependency, thus rejecting the null hypothesis for most variables except for some variables, indicating the need for both first and second-generation unit root tests.
Table 3 and
Table 4 provide the Im–Pesaran–Shin [
80] unit-root test and Pesaran’s CADF test [
81]. Both tests indicate that some variables are stationary at the level, and all variables are stationary at the first difference.
Table 5 presents the findings of the Hausman-type test. Under the null hypothesis, the difference in the estimated coefficients between the MG and PMG is not significant. Accordingly, PMG is more efficient in our case. This implies that the impact of the independent variables follows a heterogeneous pattern in the short run and a homogenous one in the long run.
For all the five models, the results were estimated under pooled PMG following [
27]. For optimal lag selection, several models were examined (represented in
Table A2,
Table A3,
Table A4,
Table A5 and
Table A6 in
Appendix A). The decision was based on the lowest Akaike Information Criterion (AIC) and the Bayesian Information Criterion (BIC).
The error correction coefficient results are negative and less than one, and significant for all five models, suggesting a significant long-run dynamic relationship between EF and EFP and all explanatory variables.
Table 6 and
Table 7 summarized the findings of the first and second models. Both tables show that most variables are significant across all income groups in the long run but not significant in the short run. In the long run, GDP and GDP squared have negative and positive signs, respectively, in both tables except for LI countries in the EFP model. Hence, a U-shape relationship exists between income and both EF and EFP in HI, UM, and LM countries, which means no support for the EKC in these groups. However, for LI countries the relationship with EF was U-shaped, and with the EFP model it was inverse U-shaped, supporting the EKC hypothesis.
For HI-countries, a 1% increase in income reduces EF and EFP by 19 and 7 gha, respectively, but a further increase in income will reduce EF and EFP by 1.2 and 0.5, respectively. Hence, the effect of income is larger in reducing the consumption effect on the environment than the effect of the production. In UM countries, a 1% increase in income reduces EF and EFP by 6.7 and 7.3 gha, respectively. A further increase in income increases EF and EFP by 0.5 gha. Hence, in those countries, an increase in income has similar effects on reducing the consumption and production consequences. An increase in income in LM countries has less impact on reducing EF and EFP (3.5 and 0.9 gha, respectively). However, for LI countries, a 1% increase in income will reduce EF by 3.5 but increase EFP by 7 gha. This shows that the increase in income in those countries contributes to increase the degradation coming from the production side.
The findings of the existence of a U-shape in some income groups are consistent with [
86] for OECD countries, Ref. [
18] for west, south, and southeast Asian countries, and with [
46] for LI and LM countries. However, the findings contradict those of [
50] for some Asian countries, Ref. [
19] for 11 newly industrialized countries, Ref. [
42] for MINT countries, Ref. [
87] for Asia Pacific Economic Cooperation (APEC), Ref. [
77] for LI, UM, LM, and HI countries, Ref. [
46] for HI, UM, and LM countries, and [
88] for Malaysia, who found support for EKC.
To summarize the finding regarding the income effect on the environment, both models exhibit similar behavior for the variables, except for LI countries and the magnitude of income that affects each measurement. For example, income in HI countries reduces the ecological footprint of consumption substantially (about threefold) compared to the ecological footprint of production, suggesting a presence of awareness or regulation imposed against polluted imports. For LI countries, an increase in income will lead to a better quality of imports and an increase in environmental degradation from exports. Part of the U-shape curve found in this study may indicate that some countries are already on the downward slope of the inverse U-shape curve proposed by EKC, while other countries are yet to catch up. However, at the same time, it contradicts the hypothesis which indicates that an increase in income will guarantee an environmental improvement as the relationship will be inversed beyond a certain threshold in our model.
The coefficient for financial development is significant across all income levels except for HI countries in the EF model. The results indicate that a 1% increase in FDV reduces EFP by 1.5 gha in HI countries and reduces EF and EFP in UM countries by 3 and 1 gha, respectively. A similar pattern occurs for LM countries but with a lower magnitude. These results are in line with [
12,
60,
61,
89], who found that FDV improves the environment. In contrast, FDV significantly increases EF and EFP in LI countries by 1 and 2 agh, respectively. Similar results were found by [
55,
62,
63,
88]. These findings suggest that investment in HI, UM, and LM countries leads to green projects. However, in LI countries, investment is toward intensive consumption of environmental resources and higher pollution, thus indicating the pollution-haven hypothesis in LI countries, where dirty production is moved from higher-income to lower-income countries.
Energy structure (i.e., renewable energy share) is significant and negative in HI and UM in both models, with a value of around .04 gha. In LM and LI, renewable energy consumption is only significant in the EFP model with minimal effect. These results concur with a major part of the literature that supports the mitigation effects of renewable energy [
50,
51,
55,
86,
90]. The authors found that renewable energy reduces environmental degradation. The results indicate that the strategies in HI and UM countries to use renewable energy reduce the negative effects of economic growth, but their contribution is still small. However, renewable energy utilization was not very useful in LM and LI countries.
As expected, energy intensity has a significant positive impact on both models across income groups. The highest impact is in HI countries, where a 1% increase in energy used per unit of GDP increases the EF and EFP by around 4 and 3 gha, respectively. In other income groups, EF and EFP increased by less than 1 gha. Similar results were found by [
24,
25,
91]. The findings indicate that energy efficiency is more critical in HI countries, given its high impact on both ecological footprints. Also, these results show that energy efficiency is a crucial factor for environmental control efforts as it has significant positive effect on all countries. Hence, spreading new technologies that reduce energy use is a fast solution to overcome environmental challenges.
Trade openness brings mixed results in both models with minimal consequences for environmental degradation (around 0.002 gha). The results suggest that TO reduces EF in HI, increases EFP in UM and LM, and decreases EFP in LI countries. Refs. [
46,
48,
62] also found that trade openness increases environmental degradation. In contrast, Refs. [
16,
92,
93] found that TO improves environmental quality.
Lastly, the urbanization coefficient is statistically significant in reducing EF and EFP in UM and LM countries, but in HI countries it reduces EFP only and does not affect EF. However, in LI countries, urbanization increases EF. Refs. [
9,
90] found that urbanization decreases environmental quality, as did [
71] for middle-high and middle-low-income countries. This contradicts the findings of [
93] who found that urbanization improves environmental quality globally. The reason behind this finding could be that urbanization in UM, LM, and HI countries results in better technology and ICT infrastructure and a shift to cleaner income-generating activities, such as service activities that reduce energy usage [
68]. Urbanization in LI countries could be associated with higher energy usage by shifting from agrarian to industrial activities in the cities.
As stated earlier, the short-run relationship is only significant for some variables. For example, FDV has a short-run effect on HI countries by increasing EFP, but FDV reduces EFP in LI countries in the short run. This suggests that for HI countries, FDV leads to investment in economic activities that initially degrade the environment but become sustainable in the long run. However, in LI countries, FDV reduces EFP at the onset by providing better alternatives to the old production practices. Nevertheless, the structural effect begins to produce more pollution and exert environmental pressure due to the shift to industrial projects in the long run. Renewable energy, however, has only a short-run impact in LM countries on EF and EFP that reduces them by 0.02 and 0.01 gha, respectively, which suggests that the shift from non-renewable to renewable energy has an immediate impact on these countries. Moreover, it is confirmed that energy intensity is a critical factor in HI countries as it increases both EF and EFP by around 1.7 gha in the short run, which indicates an immediate effect. Similarly, in UM countries, energy intensity increases EFP by 0.5 gha. However, in LM countries, more energy per unit of GDP reduces EFP, thus indicating that with old technology more energy usage by a unit of GDP leads to higher production costs, leading some businesses in LM countries to be forced out of the market. The speed of adjustment indicates that the variables converged to a long-run relationship after 1.6 to 2.6 years for the EF model and after 2 to 3 years for the EFP model.
Table 8,
Table 9 and
Table 10 present the relationship between industrial, agriculture, and service sectors with EFP, respectively. In the long run, a U-shape relationship is established between industrial growth and EFP in HI countries, where a 1% increase in industrial GDP reduces EFP by 8.2 gha. A further increase will increase EFP by 0.6 gha. However, no significant effect was found on EFP in the agriculture sector, but a further expansion of the sector will increase EFP. In contrast, the service sector has a monotonic relationship with EFP in HI countries, where a 1% increase in service GDP increases EFP by 4 gha and a further rise in service GDP increases EFP by 0.08 gha. In UM countries, a U-shape relationship is also found between the industrial sector and EFP, where a 1% increase in industrial GDP reduces EFP by 5.7 gha, followed by an increase of 0.5 gha. Unlike HI countries, the agriculture sector has a significant effect on UM countries, where a 1% increase in agriculture reduces the EFP significantly by 13 gha. Similar to HI countries, the service sector has a monotonic relationship with EFP.
However, different patterns appear in LM countries, where a U-shape relationship has been established between the industrial sector and the service sector, but an inverse U-shape is found for the agriculture sector, suggesting support for the EKC hypothesis. In LI countries, the industrial sector has no significant effect on EFP in the long run. However, the service sector has a U-shape relationship with EFP, where a 1% increase in service GDP reduces EFP by 0.8 gha. In LI countries the agriculture sector has no significant effect on EFP, but a further rise in agriculture outputs will increase EFP.
The PMG results suggest that each economic sector has different consequences across regions, which indicates an underlying difference in technical and socio-economic factors across regions. For example, in HI and UM (with higher magnitude) and LM countries (with lower magnitude), technical advancement in the industrial sector between 1992 and 2015 could be the reason for improving environmental quality in these countries. This finding is in line with [
25] for selected European countries who also found a U-shape relationship between the industrial sector and pollution. Furthermore, Ref. [
9] found that the manufacturing value-added degrades the environment. They suggested that access to modern, cleaner, and more efficient technologies promotes environment-friendly behavior. However, the findings for the service sector in HI and UM countries contradict the expectation that the shift from the industrial sector to the service sector will cause environmental improvement. Refs. [
23,
94] discovered similar findings and suggested that the transportation sub-sector, within the service sector, is the main factor for increasing pollution in recent decades. Similarly, Ref. [
90] found a positive long-run relationship between the transportation sector and environmental degradation.
For LI countries, however, the service sector improves environmental quality. This finding indicates a shift toward other service sub-sectors in LI countries, other than transportation, such as tourism, health, education, and telecommunication, that exert less pressure on land regenerative capacity. Moreover, the inverse U-shape found only in LM countries in the agriculture sector model signifies that, in these countries, growth in agriculture is associated with old technology that exerts intensive pressure on some environmental assets such as forests and pasture land. However, with further growth in agricultural GDP, these countries will have improved experience in increasing efficiency, reducing waste, and improving production technology and managerial practice.
In the long run, financial development reduces EFP in HI countries, confirming the results for the aggregate models. Interestingly, in UM countries, both the aggregate and industrial models report similar values for the FDV coefficient. Energy structure also reports a robust negative effect on EFP across regions in most sectors. Moreover, across all models and regions, energy intensity was confirmed to be a critical factor in the relationship between economic activities and environmental degradation. However, mixed results were obtained for trade openness and urbanization.
For the short-run dynamics, few coefficients are significant. However, for HI countries, the coefficient in the industrial sector raises a warning sign that industrial growth in HI countries at the initial stage since 1992 has been associated with high environmental degradation. An initial increase in industrial growth by 1% at the beginning of the period showed an increase in EFP by 111 gha. A negative relationship, however, appears with further industrial growth, suggesting an inverse U-shape pattern in the short run (supporting EKC). Nevertheless, after approximately 2.5 years, as indicated by the error correction speed, a long-run relationship is established, but with a U-shape relationship between industrial GDP and EFP. This finding suggests that industrial expansion in HI countries was associated with a high environmental cost at first. This may include building new infrastructure, intensive manufacturing facilities that reduce the area of natural resources such as forests, etc., large-scale extraction of natural resources, and intensive use of fossil fuel energy. However, after the initial stage, technical advancement could be the reason for such fast change in the long run. Nevertheless, the more logical reason for such a sharp change in our case could be due to imposed regulations and restrictions and institutional effects rather than the income effect. Accordingly, this interpretation further emphasizes that the increase in income will not automatically reduce environmental degradation but improving institutional quality is needed. Regarding the speed of adjustment, the variables took approximately two to three years to converge into long-run equilibrium, except for HI countries in the agriculture sector which took five years. The environment can thus be regarded as very sensitive to short-run shocks spanning less than three years, which may produce long-term impacts on most income groups.
Overall, the U-shape pattern seen in the aggregated model in HI countries could have emerged from industrial sector development since the agriculture sector has no significant effect, while the service sector increases the EFP. In UM countries, the observed U-shape may emerge from both industrial and agriculture sectors, since the service sector increases degradation. In LM countries, the U-shape in the aggregated model is explained by both the industrial and service sectors, while agriculture has an inversed U-shape. In LI countries, the inverted U-shape found in the aggregate model cannot be explained since the service sector has a U-shape association. The industrial and agriculture sectors showed no significant effect on EFP, suggesting that other factors may have affected such a relationship.
These results, however, do not correspond with the initial EKC hypothesis, which suggests that an increase in income after a threshold will be associated with an improvement in environmental quality. The interpretation of EKC is that society will start valuing the environment after having first satisfied basic needs; i.e., after they are both willing and able to afford better environmental quality. However, we argue that this interpretation may be appropriate for CO2 emission since it can be directly related to reducing the quality of life. Nevertheless, a broader view of environmental degradation, such as the measure of multiple dimensions by EF and EFP, is not easily realized. Another aspect is that the intensive pressure on earth’s resources beyond its regenerative capacity may have an irreversible effect that manifests itself in the long run. Other interpretations, however, need to be developed to interpret the relationship between income and ecological footprint, or with other factors that may affect environmental degradation. For example, economic sub-sector analysis suggests that economic sectors behave differently in the ecological footprint of production. In some countries, the industrial sector is a crucial factor in reducing environmental degradation due to the associated efficiency and technology. In other countries, though, the service sector is identified as the critical sector.