Analysis of the Regional Efficiency of European Funds in Spain from the Perspective of Renewable Energy Production: The Regional Dimension
Abstract
:1. Introduction
2. Theoretical Background
2.1. Analysis of Environmental Efficiency
The European Funds as an Instrument of Change towards a Sustainable Growth Model
3. Methodology
4. Results
4.1. DEA Analysis
4.2. Results Discussion
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Authors | Objective of the Work | Results |
---|---|---|
Pardo Martínez and Silveira (2012) [17] | To analyze energy use, energy efficiency, and CO2 emissions in 19 subsectors in the Swedish service sectors during 1993–2008. | The DEA model results show an increase in technical efficiency and energy efficiency, while there has been a decrease in CO2 emissions. |
Bian, He, and Xu (2013) [34] | To assess regional energy efficiency in China. | The study results provide some implications for improving energy efficiency and reducing CO2 emissions in China. |
Ebrahimi and Salehi (2015) [12] | To analyze the pattern of energy use and CO2 emission from mushroom production in the Isfahan province of Iran. | They concluded by stating that the optimization of energy use presented an improvement in its efficiency, both in terms of specific energy and net energy. |
Lin and Du (2015) [39] | To evaluate China’s regional energy and CO2 emissions performance for the period 1997–2009. | Their results were as follows:
|
Song, Hao, and Zhu (2015) [41] | To assess the changes in the transport sector’s environmental efficiency in 30 Chinese provinces between 2003 and 2012. | The authors found that transportation was inefficient in most provinces, and the average environmental efficiency was low (0.45). Overall average efficiency peaked in 2005 and declined continuously to a low in 2009; since then, it has increased. In general, transportation is more efficient in the east than in central or western China. |
Suzuki, Nijkamp and Rietveld (2015) [43] | To conduct an efficiency analysis of the energy-environment interface for ten Japanese regions following the Fukushima nuclear power accident. | The results offer a significant contribution to decision making and planning for an efficiency improvement in the energy-environment sector for each region in Japan. |
Duan, Guo, and Xie (2016) [37] | To measured the energy and CO2 emission performance of thermal power industries in China’s 30 provincial administrative regions during 2005–2012. | They conclude that technological progress is the main driver for improving energy productivity and CO2 emissions, working better for the former. |
Iftikhar, He, and Wang (2016) [38] | To carry out static and dynamic analysis of energy efficiency and CO2 emissions for the leading economies. | The results showed that larger economies with an intensive production strategy, a more extensive secondary industry, and weaker carbon tax laws are more likely to be inefficient. |
Suzuki and Nijkamp (2016) [42] | They compared the efficiency of the energy-environmental-economic objectives for the EU, APEC, and ASEAN (A&A) countries, using data sets from 2003 to 2012. | The results showed that the EU countries seem to exhibit generally higher efficiency than the A&A countries. |
Tian, Zhao, Mu, Kanianska and Feng (2016) [44] | To analyze the environmental efficiency of China’s open field grape production under the restriction of carbon emissions. | The results indicate that the average environmental efficiency score for grape production in China is at a low level of 0.651. In general, the average environmental efficiencies in the South, Southwest, and Northeast regions are lower than average levels, implying an imbalance in economic production, resource consumption, and environmental efficiency in open field grape cultivation. |
Zha, Zhao and Bian (2016) [20] | To evaluated the regional efficiency of energy use and CO2 emissions in China using the 2010 data set. | The authors conclude that the uncertainty of CO2 emissions has a significant influence on the regional efficiency of energy use and CO2 emissions. |
Chen and Geng (2017) [36] | To conduct an empirical study of 26 countries of the Organization for Economic Cooperation and Development and Brazil, Russia, India, and China. | Their main conclusion is that there is no significant correlation between the proportion of renewable energy consumption and the performance of saving fossil energy and reducing CO2 emissions. |
Saglam (2018) [40] | To conduct a Data Envelope Analysis (DEA) to determine the most efficient renewable energy source with predetermined input and output variables, comparing seven primary renewable energy technologies that generate electricity. | The results show that geothermal energy is the most efficient, and solar thermal technologies are the least efficient sources. |
Tang, You, Sun and Zhang (2019) [45] | To propose a slack-based parallel measurement model to measure the freight sector’s efficiency in Chinese transport from 2013 to 2017. | The results were the following:
|
Author(s) | Input Variables | Output Variables |
---|---|---|
Pardo Martínez and Silveira (2012) [17] | Capital, Labor, Materials, Energy | Production, the value of service, production in each activity, CO2 emissions (undesirable) |
Bian, He and Xu (2013) [34] | Labor, Capital, Coal, Oil, Natural gas Non-fossil energy | GDP, CO2 emissions (undesirable) |
Ebrahimi and Salehi (2015) [12] | Human labor, Diesel fuel, Compost Machinery, Chemicals, Electricity, Water | CO2 emission of button mushroom production |
Lin and Du (2015) [39] | Capital stock, Labor force, Energy consumption | Gross Domestic Product, CO2 emissions (undesirable) |
Song, Hao and Zhu (2015) [41] | Labor, Capital, Energy | Added value (desirable), CO2 emissions (undesirable) |
Suzuki, Nijkamp and Rietveld (2015) [43] | Gross expenditure | Electricity generated, CO2 emission |
Duan, Guo and Xie (2016) [37] | Electricity generation process | Capital, Labor, Fossil fuel, Auxiliary electricity, Electricity, CO2 emissions (undesirable) |
Iftikhar, He and Wang (2016) [38] | Labor, Capital, Energy | GDP, CO2 emissions (undesirable) |
Suzuki and Nijkamp (2016) [42] | Primary energy consumption Population | CO2, GDP |
Tian, Zhao, Mu, Kanianska and Feng (2016) [45] | Labor, Agricultural film, Diesel Chemical fertilizers, electricity Pesticides, Water, Organic fertilizer | Grapes (desirable), Carbon emission (undesirable) |
Zha, Zhao and Bian (2016) [20] | Labor, Capital, Coal, Oil, Natural gas | GDP, CO2 |
Chen and Geng (2017) [36] | Renewable energy, Fossil energy Capital stock, Labor force | Real domestic gross product, CO2 emissions |
Saglam (2018) [40] | Total system levelized, Cost Land requirement, Water consumption | Plant size, the Capacity factor of each power plant, Employment, Greenhouse gas emissions |
Tang, You, Sun and Zhang (2019) [45] | Transportation capacity, Transportation route mileage, Freight turnover volume | Freight turnover volume CO2 emissions |
Type | Variable | Description | Source |
---|---|---|---|
Outputs | Oij: GDP at market price | Gross domestic product at the market price of region i in year j | Eurostat |
Oij: Renewable energy production | Electric energy generated using renewable energy from region i in year j. Renewable energy is defined as the contribution of renewable energy to the total primary energy supply (STEP). Renewable energies include the primary energy equivalent of hydroelectric sources (excluding pumped storage), geothermal, solar, wind, tidal, and wave sources. It also includes energy derived from solid biofuels, biogasoline, biodiesel, other liquid biofuels, biogas, and the renewable fraction of municipal waste. This indicator is measured in thousands of toe (tonnes of oil equivalent) and a percentage of the total primary energy supply. | Red Electrica Española | |
Inputs | Iij: European Social Fund | Annual investment in the region I in year j of ESF | European Commission |
Iij: European Agricultural Fund for Rural Development | Annual investment in the region i in year j of EAFRD | ||
Iij: European Regional Development Fund | Annual investment in the region i in year j of ERDF |
Level of Development | DMUs |
---|---|
Less developed regions | Extremadura |
Regions in transition | Castilla La Mancha |
Andalusia | |
Region of Murcia | |
Canary Islands | |
More developed regions | Galicia |
Asturias | |
Cantabria | |
Basque Country | |
Navarra | |
The Rioja | |
Aragon | |
Madrid | |
Castilla and Leon | |
Catalonia | |
Valencian Community | |
Balearics |
Spanish Regions | 2014 | 2015 | 2016 | 2017 | 2018 | 2019 | Average |
---|---|---|---|---|---|---|---|
ANDALUSIA | 91.91 | 94.35 | 96.79 | 100 | 92.8 | 100 | 95.97 |
ARAGON | 41.55 | 62.83 | 84.11 | 94.3 | 86.67 | 91.38 | 76.80 |
ASTURIAS | 19.36 | 37.71 | 56.06 | 38.98 | 59.98 | 54.75 | 44.47 |
BALEARICS | 13.7 | 56.85 | 100 | 60.98 | 70.16 | 62.88 | 60.76 |
CANARY ISLANDS | 20.1 | 22.17 | 24.24 | 19.98 | 19.9 | 23.25 | 21.60 |
CANTABRIA | 6.17 | 7705 | 9.24 | 19.61 | 27.63 | 32.64 | 17.16 |
CASTILLA LA MANCHA | 53.43 | 72,605 | 91.78 | 81.62 | 67.83 | 73.45 | 73.45 |
CASTILLA AND LEON | 100 | 100 | 100 | 100 | 100 | 100 | 100 |
CATALONIA | 100 | 100 | 100 | 100 | 100 | 100 | 100 |
VALENCIAN COMMUNITY | 49.3 | 74.65 | 100 | 100 | 60.25 | 58.85 | 73.84 |
ESTREMADURA | 27.23 | 26.92 | 26.61 | 29.83 | 26.77 | 26.16 | 27.25 |
GALICIA | 82.3 | 84.02 | 85.74 | 70.32 | 88.15 | 88.6 | 83.18 |
THE RIOJA | 6.99 | 20,975 | 34.96 | 100 | 100 | 100 | 60.48 |
MADRID | 99.79 | 99,895 | 100 | 100 | 100 | 100 | 99.94 |
MURCIA | 14.71 | 19.26 | 23.81 | 35.21 | 27.37 | 33.56 | 25.65 |
NAVARA | 18.29 | 46,325 | 74.36 | 100 | 100 | 100 | 73.16 |
BASQUE COUNTRY | 32.08 | 35,705 | 39.33 | 86.91 | 65.7 | 61.85 | 53.59 |
AVERAGE SPAIN | 45.70 | 56.58 | 67.47 | 72.80 | 70.18 | 71.02 | 63.96 |
SPEARMEN CORRELATION COEFFICIENT BY RANGES | 0.90 | 0.88 | 0.68 | 0.82 | 0.95 |
Spanish Regions | Average Period | No. of Times Maximum Efficiency | Efficiency Max | Min Efficiency | Difference |
---|---|---|---|---|---|
ANDALUSIA | 95.98 | 2.00 | 100.00 | 91.91 | 8.09 |
ARAGON | 76.81 | 0.00 | 94.30 | 41.55 | 52.75 |
ASTURIAS | 44.47 | 0.00 | 59.98 | 19.36 | 40.62 |
BALEARICS | 60.76 | 1.00 | 100.00 | 13.70 | 86.30 |
CANARY ISLANDS | 21.61 | 0.00 | 24.24 | 19.90 | 4.34 |
CANTABRIA | 17.17 | 0.00 | 32.64 | 6.17 | 26.47 |
CASTILLA LA MANCHA | 73.45 | 0.00 | 91.78 | 53.43 | 38.35 |
CASTILLA AND LEON | 100.00 | 6.00 | 100.00 | 100.00 | 0.00 |
CATALONIA | 100.00 | 6.00 | 100.00 | 100.00 | 0.00 |
VALENCIAN COMMUNITY | 73.84 | 2.00 | 100.00 | 49.30 | 50.70 |
ESTREMADURA | 27.25 | 0.00 | 29.83 | 26.16 | 3.67 |
GALICIA | 83.19 | 0.00 | 88.60 | 70.32 | 18.28 |
THE RIOJA | 60.49 | 3.00 | 100.00 | 6.99 | 93.01 |
MADRID | 99.95 | 4.00 | 100.00 | 99.79 | 0.21 |
MURCIA | 25.65 | 0.00 | 35.21 | 14.71 | 20.50 |
NAVARA | 73.16 | 3.00 | 100.00 | 18.29 | 81.71 |
BASQUE COUNTRY | 53.60 | 0.00 | 86.91 | 32.08 | 54.83 |
AVERAGE SPAIN | 63.96 | 0.00 | 72.81 | 45.70 | 27.11 |
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Mugambi, P.; Blanco, M.; Ogachi, D.; Ferasso, M.; Bares, L. Analysis of the Regional Efficiency of European Funds in Spain from the Perspective of Renewable Energy Production: The Regional Dimension. Int. J. Environ. Res. Public Health 2021, 18, 4553. https://doi.org/10.3390/ijerph18094553
Mugambi P, Blanco M, Ogachi D, Ferasso M, Bares L. Analysis of the Regional Efficiency of European Funds in Spain from the Perspective of Renewable Energy Production: The Regional Dimension. International Journal of Environmental Research and Public Health. 2021; 18(9):4553. https://doi.org/10.3390/ijerph18094553
Chicago/Turabian StyleMugambi, Paul, Miguel Blanco, Daniel Ogachi, Marcos Ferasso, and Lydia Bares. 2021. "Analysis of the Regional Efficiency of European Funds in Spain from the Perspective of Renewable Energy Production: The Regional Dimension" International Journal of Environmental Research and Public Health 18, no. 9: 4553. https://doi.org/10.3390/ijerph18094553
APA StyleMugambi, P., Blanco, M., Ogachi, D., Ferasso, M., & Bares, L. (2021). Analysis of the Regional Efficiency of European Funds in Spain from the Perspective of Renewable Energy Production: The Regional Dimension. International Journal of Environmental Research and Public Health, 18(9), 4553. https://doi.org/10.3390/ijerph18094553