This section presents a comprehensive analysis of the outcomes derived from the Renewable Energy Indicator (REI), categorized by global performance, developmental classification, and income group. The objective was to identify trends and disparities in renewable energy efficiency across different world regions and socio-economic contexts.
4.1. Global Analysis
The analysis encompassed 133 countries, and the results reflected efficiency scores ranging from 0 to 1. This scale was used to represent relative environmental efficiency, where values closer to 1 indicated higher efficiency within the sample. It is important to note that a score of 1 did not represent absolute or theoretical maximum efficiency, but rather the best observed performance among the countries under evaluation.
The REI scores, normalized between 0 and 1, provided a standardized metric to compare countries. Higher scores (approaching 1) were associated with nations that emitted lower levels of environmental pollutants, including CO2 emissions (metric tons per capita), methane emissions from agriculture (thousand metric tons CO2 equivalent), and PM2.5 exposure (micrograms per cubic meter), while also producing more electricity from renewable sources excluding hydroelectric (in kWh) and achieving broader electricity access across both rural and urban populations (percentage of population). Conversely, countries with scores approaching 0 exhibited lower performance in these areas, reflecting relatively inefficient outcomes in terms of environmental and energy-related sustainability.
Figure 2 illustrates the correlation between REI scores and pollutant emission indicators. The results indicated that higher REI values were generally associated with lower levels of CO
2, methane, and PM2.5 emissions, reinforcing the validity of the index as a proxy for environmental efficiency in the context of renewable energy deployment.
The REI demonstrated a negative correlation with pollutant emissions. Specifically, PM2.5 air pollution (µg/m3) exhibited a correlation of −50% with the REI, followed by methane emissions with −31%, and CO2 emissions with −10%. These findings emphasized the inverse relationship between renewable energy efficiency, as captured by the REI, and the levels of environmentally harmful emissions.
Descriptive statistics of the REI across the full set of 133 countries revealed key patterns. The mean REI was 0.4318, with a standard deviation of 0.2130 and a coefficient of variation of 49.33%. These statistical indicators provided important insights into global renewable energy performance, serving to characterize the average efficiency level and the overall distribution of results. Notably, the REI scores of 72 countries—representing approximately 54.13% of the sample—fell below the mean value. This highlighted that more than half of the countries under analysis exhibited below-average renewable energy efficiency.
Figure 3 presents a visual representation of the global distribution of REI scores.
The color-coded scheme in
Figure 3 delineates distinct levels of REI, with dark green representing higher REI values, indicative of greater efficiency in renewable energy utilization. In contrast, light green corresponds to lower REI scores, reflecting comparatively limited efficiency in the adoption and application of renewable energy sources. This visual representation functioned as a valuable analytical tool for identifying and comparing efficiency levels across geographic regions, offering insight into the global distribution of renewable energy performance.
Countries falling within the first quartile (REI between 0.75 and 1.0) were predominantly located in Central and Northern Europe, including Sweden, Hungary, Switzerland, Portugal, and Norway. In addition, some developing countries—such as Sri Lanka, Costa Rica, Lithuania, and Panama—also appeared within this high-efficiency group, illustrating that advanced renewable energy adoption was not exclusive to high-income nations.
Conversely, the lowest-performing countries, positioned within the fourth quartile (REI between 0.0 and 0.25), were primarily from developing or low-income regions. This group included nations such as South Sudan, Mongolia, Pakistan, and Vietnam, which exhibited limited efficiency in renewable energy deployment and environmental outcomes.
It was also notable that certain developed and globally influential economies did not achieve high rankings in renewable energy efficiency. The United States of America ranked 101st, Brazil 102nd, India 104th, China 105th, and Russia 120th. These results highlighted the complex and context-specific nature of renewable energy efficiency, suggesting that economic prominence did not necessarily correspond with environmental or energy-related efficiency.
Figure 4 illustrates the complex—or in some cases, weak—relationship between the REI and gross domestic product (GDP) per capita across different development categories.
Within the context of
Figure 4, the black dots represent countries classified as developing economies, while the red dots denote developed economies. The data revealed substantial variation in REI performance even among affluent nations. For instance, Sweden, a developed country, achieved the highest REI score, demonstrating outstanding efficiency in renewable energy utilization. In contrast, Australia, also categorized as a developed nation, recorded one of the lowest REI scores, reflecting relatively limited success in the implementation and effectiveness of renewable energy practices. This disparity underscored the complex and heterogeneous factors influencing renewable energy efficiency, even within high-income contexts, thereby reinforcing the importance of conducting multifactorial analyses.
The subsequent analysis focused on identifying and examining the ten most efficient and the ten least efficient countries, as determined by the REI.
Table 2 presents a summary of the top ten countries globally in terms of renewable energy performance. This emphasis on leading examples aimed to highlight best practices and successful strategies that could serve as benchmarks. By spotlighting these cases, the analysis sought to offer informative insights that could guide future policy development and international initiatives aimed at improving environmental efficiency. This focused evaluation contributed to the broader discussion on the advancement of sustainable energy practices and policy frameworks.
Within the top ten countries based on the REI, a discernible balance existed between developed and developing economies, with six nations classified as developed and four belonging to developing regions. Additionally, the majority of these top-performing countries (seven out of ten) fell within the high-income group category. Notably absent from the top ten were countries characterized by large population sizes or extensive territorial expanses. This observation suggested a trend in which countries with smaller populations and territories tended to exhibit more favorable REI scores. This pattern may be explained by the inclusion of methane emissions in the REI, which are predominantly influenced by agricultural activities. Consequently, nations with extensive agricultural sectors, such as Brazil and the United States of America, showed diminished REI performance due to the negative impact of methane emissions.
As previously indicated, the mean REI score among the 133 countries was 0.4318. Consistent with expectations, the average REI of the top 10 countries (0.8373) significantly exceeded the overall mean, highlighting the superior renewable energy efficiency of these leading nations and contributing to a refined understanding of the global environmental sustainability landscape.
These countries shared a common emphasis on environmental concerns, frequently implementing measures to promote sustainable practices. Many were recognized for proactive initiatives in renewable energy development, environmental conservation, and climate change mitigation. For example, Sweden established binding targets to achieve net-zero emissions by 2045 [
63]. According to Eurostat data from 2017, Sweden led the European Union with a renewable energy share of 54.5%, followed by Finland at 41.01% and Latvia at 39.01%. Within the Baltic States, Lithuania reported a notable share of 25.84% [
64]. Switzerland also acknowledged the critical role of renewable energy in reducing CO
2 emissions [
65]. These examples underscored the global recognition of renewable energy as a key factor in promoting environmental sustainability.
Moreover, certain developing countries demonstrated efficiency in reducing pollutant emissions and advancing renewable energy. Sri Lanka (ranked second) and Costa Rica (ranked third) exhibited strong REI performances. Sri Lanka’s success was attributed to the rapid expansion of its renewable energy sector, supported by a feed-in tariff system encouraging diversification of renewable energy sources [
66], as well as the implementation of off-grid hybrid renewable energy systems for rural electrification [
67]. Similarly, Costa Rica stood out for promoting multiple renewable sources—including hydro, mini-hydro, wind, geothermal, and solar—which accounted for nearly 90% of its electricity production [
68]. These cases illustrated the global diversity of approaches to sustainable and renewable energy adoption.
Table 3 presents the ranking of the bottom-10 countries based on the REI. This group was predominantly composed of developing nations with low and lower-middle-income classifications. While the mean REI across all countries was 0.4318, the average REI of the bottom-10 countries was substantially lower at 0.1027. This marked difference emphasized the significant performance gap, indicating that these countries exhibited the poorest outcomes in converting pollutants into renewable energy and providing electricity access. The stark contrast between the overall sample mean and the bottom-10 average highlighted the substantial challenges faced by these nations in achieving satisfactory environmental efficiency.
A prevailing characteristic shared among the enumerated countries was the presence of significant challenges, including political instability, economic difficulties, technological limitations for renewable energy generation, and, in some cases, internal conflicts or instability [
69,
70]. Additionally, these nations faced socio-economic issues such as poverty, limited access to essential resources, and, in certain instances, human rights concerns. A notable example was South Sudan, whose political economy exhibited unconventional traits. Following independence in 2011, the country descended into renewed civil conflict in 2013, contending with the complexities of a fragile neo-patrimonial guerrilla government. The military-political systems in South Sudan remained fragmented, extending across extensive borderlands [
71].
Conversely, Australia stood out as one of the less environmentally efficient countries, a situation attributed partly to substantial methane emissions originating from coal mines [
72], livestock, and ruminants [
73,
74]. Similarly, in Argentina, the considerable cattle population and beef production contributed to increased methane emissions [
75,
76]. The Argentine economy confronted multiple economic challenges, including high inflation and a significant prevalence of impoverished families, factors that potentially hindered focused investment in renewable energy initiatives [
77]. This multifaceted analysis highlighted the intricate interplay between environmental efficiency and the socio-economic context, underscoring the diverse hurdles faced by countries in advancing renewable energy adoption.
In summary, the comprehensive global analysis undertaken in this study elucidated a discernible concentration of higher efficiency within regions predominantly composed of high- and upper-middle-income countries. In contrast, the less efficient group consisted mainly of low- and lower-middle-income regions. This finding challenged the assumption that higher income levels inherently correlated with greater efficiency, particularly when analyzing the inputs and outputs within the DEA framework. Furthermore, it was emphasized that countries characterized by inefficiency frequently confronted technological deficits alongside various economic and social impediments. The exploration of these economic disparities among development groups constituted a significant contribution of this study, providing a nuanced evaluation of each group independently. This approach enhanced the understanding of the complex interplay between economic development, resource utilization efficiency, and the multifaceted challenges faced by countries across different income brackets.
4.2. Group Development Analysis
An initial examination was conducted to assess the statistical distinction in the REI between developed and developing nations. Mann–Whitney U tests were employed to test Hypothesis 1 (H1). The results indicated a statistically significant difference in the efficiency ranks of the two groups at the 1% significance level (Mann–Whitney U = 1304, z = –5.61112). Consequently, it was asserted, with statistical significance at the 1% level, that developed and developing countries differ in their ability to reduce environmental impacts while expanding access to renewable electricity, as evidenced by the application of the DEA model. This finding contributed to a more nuanced understanding of disparities in environmental efficiency across different stages of development.
A comparative analysis of the indicators revealed distinct patterns between developed and developing countries. Developed countries exhibited an average REI of 0.5418, whereas developing countries presented a lower average of 0.3838. These results suggested that, on average, developed economies demonstrated higher efficiency levels compared to their developing counterparts. Thus, the indicator highlighted that developed countries generally exhibited superior environmental renewable energy efficiency. The comparison of these statistical parameters enhanced the understanding of socio-economic disparities influencing environmental performance across the two groups.
Surprisingly, 56.1% of developed countries demonstrated REI values below the overall average, indicating that a substantial portion within this category performed below the mean. Similarly, 54.25% of developing countries exhibited values below the computed average, reflecting widespread below-average performance within this group. These findings provided additional insight into the nuanced variation and distribution of efficiency scores, underscoring the prevalence of below-average performance in both developed and developing regions.
Table 4 presents the top five developed countries according to the REI.
It was crucial to observe that the top five developed nations based on the Renewable Energy Indicator (REI) were Sweden, Japan, Spain, Lithuania, and the United Kingdom. These countries were geographically dispersed, indicating no regional concentration. A common characteristic among these nations was the presence of adequate productive structures conducive to providing technology for renewable energy production. This underscored the significance of technological infrastructure and capacity as pivotal factors contributing to their high efficiency in renewable energy utilization.
Chen and Khattak [
78] examined the Japanese context, exploring the interconnection between economic complexity and renewable energy adoption, with particular focus on electric hybrid vehicles. Despite Japan’s advanced technology, significant challenges related to air pollution and methane emissions were identified. The population concentration in densely populated urban areas such as Tokyo contributed to air pollution due to intense traffic and industrial activities. The study highlighted that Japan’s economic complexity played a crucial role in influencing its innovation capacity and the adoption of sustainable technologies. Specifically, economic complexity provided a solid foundation for the development and implementation of electric hybrid vehicles. Furthermore, Japan’s consistent investment in research and development contributed to its privileged position in the renewable energy landscape.
The research also emphasized Japan’s historical dependence on non-renewable energy sources and the urgent need to reduce carbon dioxide emissions. Growing environmental awareness and the government’s commitment to sustainable goals were driving efforts to seek ecological solutions such as electric hybrid vehicles. The study concluded that the combination of Japan’s innovation tradition, favorable economic complexity, and environmental awareness created an environment conducive to adopting and continuously developing renewable energy technologies, thereby supporting Japan’s transition toward a more sustainable future.
Table 5 presents the ranking of developed countries with the poorest performance. Poland, Ireland, Belarus, the Netherlands, and Australia exhibited the lowest efficiency levels among developed nations. Australia, as previously discussed, was among the least environmentally efficient countries, partly due to substantial methane emissions from coal mines, livestock, and ruminants. These emissions contributed significantly to the country’s low environmental efficiency. Grell et al. [
79] highlighted the need to measure the biochemical methane potential values for dairy manure waste in Australia, pointing to the lack of specific data impacting emission estimates and biogas energy potential in the dairy sector. Sadavarte et al. [
72] discussed methane emissions from Australian coal mines, emphasizing the lack of spatial allocation and detailed information on emission control strategies at the mine level. Lumbers, Barley, and Platte [
80] underscored the importance of significant methane emission reductions in hydrogen production to decarbonize Australian iron ore mines, aligning with environmental commitments and stricter regulations.
Table 6 provides insights into the most efficient developing countries in converting pollutant emissions into renewable energy and achieving electricity access. Panama, Sri Lanka, Costa Rica, Papua New Guinea, and the Dominican Republic emerged as the top five countries in this regard. These countries shared common characteristics, such as small population sizes and limited territorial expanses. This aspect was significant in interpreting the Renewable Energy Indicator (REI), as these countries were less likely to engage in extensive agricultural activities and thus emitted lower levels of methane gas. Furthermore, as previously noted, both Sri Lanka and Costa Rica implemented policies aimed at diversifying their energy matrices, which contributed to their notable efficiency in the renewable energy sector. The conjunction of these factors underscored the importance of population size, territorial extent, and the implementation of strategic policies in achieving high environmental efficiency within the developing country context.
Table 7 elucidates the least efficient developing economies based on the Renewable Energy Indicator (REI). A noteworthy observation was that among the bottom five, economies experiencing political and economic instability were prominently represented. Furthermore, the case of Argentina stood out, with its low REI ranking attributed to the significant influence of the cattle and beef industry on the country’s economy. This highlighted the intricate interplay between economic structures and environmental efficiency within the developing country context. The presence of economies facing instability suggested a potential correlation between political and economic challenges and lower environmental efficiency, emphasizing the need for a comprehensive understanding of the multifaceted factors influencing renewable energy performance in developing nations.
In the cases of Sudan and South Sudan, Asane-Otoo [
81] analyzed African economies and found that industrialization exerted a discernible influence on carbon emissions within both lower- and middle-income nations. However, it was observed that the impact of industrialization on carbon emissions was notably more pronounced in countries characterized by middle-income status. In this context, rapid economic expansion in developing nations gave rise to significant energy and environmental challenges [
82] Notably, economic growth was closely linked to increased energy consumption. China, for instance, exhibited energy consumption seven times higher than Africa’s, representing 23% of global primary energy consumption, thereby contributing to adverse impacts on air quality [
83,
84].
4.3. Income Group Analysis
This section analyzes the REI from an income group perspective. The Kruskal–Wallis H test was conducted to verify Hypothesis 2 (H2), investigating differences among three income groups (high-, middle-, and low-income). The analysis revealed a statistically significant difference among the groups at the 1% level (Kruskal–Wallis H test = 20.7915, N = 133). Therefore, the Kruskal–Wallis H test validated Hypothesis 2, elucidating discernible distinctions among income groups across countries.
A comparative analysis of indicators for countries categorized into high-, middle-, and low-income groups revealed clear patterns. High-income countries exhibited the highest average REI at 0.5265, followed by middle-income countries at 0.4195, and low-income countries at 0.3003. Surprisingly, 37% of low-income countries fell below the calculated mean, highlighting a considerable proportion of nations performing below average within this group. This gradient in REI averages across income groups underscored a systematic variation in the efficiency of converting pollutants into renewable energy and achieving electricity access. The disparity in averages highlighted the importance of income levels in influencing environmental efficiency, suggesting a positive correlation between income and renewable energy performance.
Table 8 presents the five high-income countries with the best REI scores.
In this context, the best-performing high-income countries were Sweden, Hungary, Switzerland, Israel, and the Slovak Republic. As highlighted by Mazanec and Bartosova [
85], sustainability emerged as a crucial issue in the Slovak Republic, gaining prominence across economic, environmental, and social spheres. The country’s environmental legislation and policies aimed to promote sustainable practices, including regulations for environmental protection, waste management, and renewable energy. Active initiatives developed in the Slovak Republic encompassed energy efficiency programs, nature conservation, environmental education, and sustainable development. Although the Slovak Republic faced challenges such as waste management, air pollution, and biodiversity conservation, these obstacles were regarded as opportunities for innovation and sustainable solutions. Consequently, coordinated efforts were directed toward ensuring a sustainable future for the country and its population.
In contrast,
Table 9 summarizes the poorest REI performance among high-income countries. Countries such as New Zealand, Qatar, Slovenia, Ireland, and Australia exhibited the lowest REI scores.
In conducting a comparative analysis of indicators pertaining to the top five middle-income countries, it was observed that these countries exhibited a mean REI of 0.8841, a standard deviation of 0.0728, and a coefficient of variation of 8.23%.
Table 10 summarizes the best REI performances among middle-income countries. Notably, Sri Lanka, Costa Rica, Honduras, Guatemala, and the Dominican Republic presented the highest REI scores.
In conducting a comparative analysis of indicators for the bottom five middle-income countries, it was observed that these countries exhibited a mean REI of 0.0580, a standard deviation of 0.0537, and a coefficient of variation of 92.67%.
Table 11 summarizes the poorest REI performances among middle-income countries. Notably, Pakistan, Benin, Mongolia, Botswana, and Namibia presented the lowest REI scores.
In conducting a comparative analysis of indicators for the top five low-income countries, it was observed that these countries exhibited an average REI of 0.5238, a standard deviation of 0.1537, and a coefficient of variation of 29.34%.
Table 12 summarizes the highest REI performances among low-income countries. Notably, Afghanistan, Burundi, Central African Republic, Chad, and the Democratic Republic of Congo presented the best REI outcomes.
In conducting a comparative analysis of indicators for the bottom five low-income countries, it was observed that these countries exhibited an average REI of 0.5716, a standard deviation of 0.1440, and a coefficient of variation of 25.19%.
Table 13 summarizes the lowest REI performances among low-income countries. Notably, Sudan, the Syrian Arab Republic, Togo, Uganda, and Yemen presented the poorest REI outcomes.
Upon the presented findings, there arises the capability to infer conclusions of a more comprehensive nature regarding the research issue.