Analysis of the EU-27 Countries Energy Markets Integration in Terms of the Sustainable Development SDG7 Implementation
Abstract
:1. Introduction
- Primary energy consumption
- Final energy consumption
- Final energy consumption in households per capita
- Energy productivity
- Share of renewable energy in gross final energy consumption by sector
- Energy import dependency by products
- Population unable to keep home adequately warm by poverty status
2. Literature Review
- No poverty
- No hunger
- Good health and well-being
- Quality education
- Gender equality
- Clean water and sanitation
- Affordable and clean energy
- Decent work and economic growth
- Industry, innovation, and infrastructure
- Reduced inequality
- Sustainable cities and communities
- Responsible consumption and production
- Climate action
- Life below water
- Life on land
- Peace, justice, and strong institutions
- Partnership for the goals [13].
3. Materials and Methods
3.1. Trend Surface Analysis
3.2. Cluster Analysis
3.3. Expert Survey
3.4. Verification of the SDG7 Indicators Set
3.5. Trend Multiple Regression
- If p ≤ α, the null hypothesis that the variable is insignificant should be rejected and an alternative hypothesis of significance of the variable adopted.
- If p > α, there is no reason to reject the null hypothesis of irrelevance.
3.6. Analysis of SDG7 Achievement Indicators
4. Results and Discussion
4.1. Cluster Analysis
- Not weighted—where each of the considered attributes has a weight of 1. In this case, the algorithm enables the automatic determination of the number of clusters.
- Weighted—in this case, the attributes considered during the analysis are given weights from 0–1. For this purpose, an expert survey was carried out. Ten experts participated in the study, and their competencies made it possible to answer the question: which of the indicators are considered the most important and which are least important. The respondents were asked to rate a set of all 13 indicators. The results of the study are presented in the Table 2.
4.2. Verification of the SDG7 Indicators Set
- Combustion—oxy-combustion, power plants with fluidized bed boilers, supercritical power plants with steam boilers [63],
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
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No. | Indicator |
---|---|
1 | Primary energy consumption, Mtoe |
2 | Primary energy consumption per capita, toe |
3 | Final energy consumption, Mtoe |
4 | Final energy consumption per capita, toe |
5 | Final energy consumption in households per capita, KGOE |
6 | Energy productivity, KGOE |
7 | Share of renewable energy % 2005 |
8 | Energy import dependency, % |
9 | Energy import dependency Oil and petroleum, % |
10 | Energy import dependency solid fossil fuels % |
11 | Energy import dependency natural gas, % |
12 | Population unable to keep home adequately warm by poverty status % 2005 |
13 | Greenhouse gas emissions intensity of energy consumption, 2000 = 100 |
Indicator | Indicator Unit | Weight (%) | Coefficient of Variation |
---|---|---|---|
Primary energy consumption | Mtoe | 6.2 | 0.32 |
Primary energy consumption per capita | toe | 6.0 | 0.31 |
Final energy consumption | Mtoe | 5.6 | 0.31 |
Final energy consumption per capita | toe | 6.4 | 0.34 |
Final energy consumption in households per capita | KGOE | 7.7 | 0.40 |
Energy productivity | KGOE | 1.1 | 0.43 |
Share of renewable energy in gross final energy consumption | % (base year 2005) | 8.8 | 0.27 |
Energy import dependency | % | 14.4 | 0.31 |
Oil and petroleum products import dependency | % | 4.2 | 0.33 |
Solid fossil fuel import dependency | % | 9.8 | 0.23 |
Natural gas import dependency | % | 5.2 | 0.59 |
Population unable to keep home adequately warm by poverty status | % (base year 2005) | 5.1 | 0.43 |
Greenhouse gas emissions intensity of energy consumption | 2000 = 100 | 10.0 | 0.50 |
Strengths | Weaknesses |
---|---|
The set is very comprehensive in terms of energy consumption. It takes into account the level of primary and final energy consumption in the scale of the entire country, but also taking into account energy consumption per capita | None of the indicators provide information on the price of energy for households and industry, which is of key importance in terms of energy availability |
One of the indicators is energy productivity, which is perceived as one of the most important sources of additional energy | There is no information on the certainty of energy supply, the level of energy production in a given country and excess production over energy demand |
A very important indicator is also share of renewable energy and greenhouse gas emissions intensity of energy consumption in terms of the ecological aspect of energy acquisition and sustainable energy production | The indicators also do not include information on clean energy generation methods, e.g., CCT or RES technology patents and the number of technologies implemented in the member states in a given year |
Energy import dependency allows to visualize the energy security of the EU-27 countries |
Indicator | Model 1 p-Value | Model 2 p-Value |
---|---|---|
Primary energy consumption | * | |
Primary energy consumption per capita (model 2 explained variable) | * | |
Final energy consumption | * | |
Final energy consumption per capita | *** | |
Final energy consumption in households per capita | ** | ** |
Energy productivity | ||
Share of renewable energy in gross final energy consumption by sector | ||
Energy import dependency | *** | |
Oil and petroleum products import dependency | *** | |
Solid fossil fuel import dependency | ||
Natural gas import dependency | ||
Population unable to keep home adequately warm by poverty status | ** | |
Greenhouse gas emissions intensity of energy consumption (model 1 explained variable) | * |
Indicator | Model 1 | Model 2 |
---|---|---|
MAPE (mean absolute percentage error), % | 10% | 9% |
RMSE (root mean square error) | 10 | 0.3 |
Akeike information criterion | 213 | 23 |
Hannan-Quinn information criterion | 214 | 26 |
Schwarz information criterion | 218 | 31 |
Indicator, Country | Unit | Forecast | Empirical Value |
---|---|---|---|
greenhouse gas emission | 2000 = 100 | ||
Lithuania | 92 | 102 | |
Finland | 69 | 69 | |
primary energy consumption per capita | toe | ||
Lithuania | 0.85 | 2.25 | |
Finland | 5.67 | 5.81 |
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Rybak, A.; Rybak, A.; Kolev, S.D. Analysis of the EU-27 Countries Energy Markets Integration in Terms of the Sustainable Development SDG7 Implementation. Energies 2021, 14, 7079. https://doi.org/10.3390/en14217079
Rybak A, Rybak A, Kolev SD. Analysis of the EU-27 Countries Energy Markets Integration in Terms of the Sustainable Development SDG7 Implementation. Energies. 2021; 14(21):7079. https://doi.org/10.3390/en14217079
Chicago/Turabian StyleRybak, Aurelia, Aleksandra Rybak, and Spas D. Kolev. 2021. "Analysis of the EU-27 Countries Energy Markets Integration in Terms of the Sustainable Development SDG7 Implementation" Energies 14, no. 21: 7079. https://doi.org/10.3390/en14217079
APA StyleRybak, A., Rybak, A., & Kolev, S. D. (2021). Analysis of the EU-27 Countries Energy Markets Integration in Terms of the Sustainable Development SDG7 Implementation. Energies, 14(21), 7079. https://doi.org/10.3390/en14217079