Mapping and Measuring European Local Governments’ Priorities for a Sustainable and Low-Carbon Energy Future
Abstract
:1. Introduction
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- Which are the main priorities of European LGs regarding low-carbon energy technologies assessment and planning?
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- Which are the most important sustainability criteria (priorities) of European LGs according to population size and geographical region?
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- What is the relationship between different LGs priorities but also between LGs priorities and their GDP per capita?
2. Defining the Assessment Problem
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- Literature review
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- Screening of initially selected indicators
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- Self—validation (desk study and internal peer review)
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- Scientific validation (survey of external experts’ views)
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- Stakeholders’ validation (survey of local stakeholders’ views)
2.1. Literature Review of Sustainability Evaluation Criteria and Initial Screening
Selection of Evaluation Criteria
Economic Category
Environmental Category
Social Category
Energy System Resilience Category
Technological—Market Category
Criteria Categories | Indicators | Description |
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Economic | ECO1: Levelized costs (including capital, operations and maintenance, fuel costs) | Levelized costs of energy (LCOE): investment costs, operational and maintenance costs, capacity factor, efficiency, material use. |
ECO2: (Local) employment generation | The extent to which the application of the technology can create jobs at the investment, operation and maintenance stage. Furthermore, the criterion of employment reflects partly the extent of the impact that the technology has to the local economic development by providing jobs and generating income. | |
Environmental | ENV1: CO2eq emissions | The indicator reflects the potential impacts of global climate change caused by emissions of GHGs for the production of 1 kwh. |
ENV2: Noise pollution | This indicator is case sensitive and could have been measured as a factor of the noise generation by the energy technology estimated in dB multiplied by the number of people affected by the noise. However, since we are investigating different energy technologies and systems at a European scale we cannot measure precisely this indicator and therefore we will use an ordinal relevant scale to measure the perceived noise. | |
ENV3: (Radioactive) waste | Amount of (radioactive) waste generated by the plant divided by energy produced. | |
ENV4: Waste disposal (infrastructure) | Waste generation during the life cycle of the fuel and technology or availability of waste disposal infrastructure. | |
ENV5: Ecosystem damages | This criterion quantifies the impacts of flora and fauna due to acidification and eutrophication caused by pollution from the production of 1 kWh electricity by the energy system and technology. | |
ENV6: Land use requirement | The land required by each power plant and technology to be installed. | |
ENV7: Fuel use | Amount of fuel use per kWh of final electricity consumption. | |
Social | SOC1: Level of public resistance/opposition | Energy system induced conflicts that may endanger the cohesion of society (e.g., nuclear, wind, CCS). Opposition might occur due to the perceptions of people regarding the catastrophic potential or other environmental impacts (aesthetic, odor, noise) of the energy technology/system. This indicator also integrates the aspect of participatory requirement for the application of the technology. The higher the public opposition, the higher the participatory requirement is. |
SOC2: Aesthetic/functional impact | Part of population that perceives a functional or aesthetic impairment of the landscape area caused by the energy system. The aesthetic impairment is judged subjectively and therefore this criterion fits in the social category rather than the environmental one. In addition this is also a very location specific indicator and therefore an average metric will be determined measured in relative ordinal scale. | |
SOC3: Mortality and morbidity | Mortality and morbidity due to air pollution caused by normal operation of the technology. This indicator is considered as an impact and composite indicator since it integrates all human health impacts caused from air pollution emissions as NOx, SO2, and PM. | |
SOC4: Accidents and fatalities | Loss of lives of workers and public during installation and operation. Surrogate for risk aversion. This criterion partly integrates the catastrophic potential of the energy system/technology. | |
Energy system resilience | ENE1: Energy cost stability/sensitivity to fuel price fluctuation | The sensitivity of technology costs of electricity generation to energy and fuels prices fluctuations. The fraction of fuel cost to the overall electricity generation cost. |
ENE2: Stability of energy generation | Stability of output of electric power generated depending on the technology used. This reflects whether the energy supply is being interrupted. The presence of these interruptions impacts the electricity network stability. This criterion reflects whether the energy supply faces any interruptions due to the type of energy technology. | |
ENE3: Peak load response | Technology specific ability to respond swiftly to large variation of demand in time/% representing the possibility to satisfy the required load. | |
ENE4: Market concentration on supply | The market concentration on the supply of primary sources of energy that could lead to disruption due to economic or political reasons. | |
ENE5: Resilience to climate change | The degree of resilience of the energy technology to the future climactic changes and extreme weather events. | |
Technological/market | TEC1: Technological maturity | The extent to which the technology is technically mature. The criterion refers to the level of technology’s technological development and furthermore the spread of the technology at the market. |
TEC2: Market size (domestic) | Demand for final products (of energy technologies) and potential market size domestically. The potential market size plays an important role to establish industrial competitiveness and stimulate economic growth. | |
TEC3: Market size (potential export) | Demand for final products (of energy technologies) and potential market size internationally. | |
TEC4: Innovative ability | Flexibility and potential of the technology to integrate technological innovations. |
2.2. Three Stages of Validation of Evaluation Criteria
3. Methodology
3.1. Weighting Preferences Elicitation Approach
- Step 1: Criteria Sorting: The respondents were asked to rate and distribute the evaluation criteria according to their level of importance in three groups: low, moderate, and high. The aim of this step was to break down the large number of criteria in three manageable sub-groups to gradually reduce the cognitive burden of the respondents.
- Step 2: Initial Ranking: The second step introduces a simple initial ranking step for stakeholders to get familiar with the notion of criteria importance. For each level (group) of importance, the respondents carried out direct ranking by assigning numbers (1 as the most important criterion; 2 as the second most important criterion, and so forth till the least important criterion). The criteria were presented to the respondents by highlighting the worst and best performance of each criterion and the impact range (the difference between the worst and best performance). The criteria rankings of the three (3) different levels of criteria importance were consolidated in one overall criteria ranking.
- Step 3: Weighting Preferences Elicitation: The weighting preferences elicitation process utilized two identical and compatible MCA weighting techniques that are both consistent with Multi-Attribute Value Theory (MAVT) which treats weights as scaling factors [40]. Respondents might feel more comfortable by using one weighting technique in favor of another, therefore the provision of the different weighting elicitation techniques enhances the flexibility of process according to respondents’ preferences [39]. The techniques that were used are:
- Pairwise comparisons: A series of pair-wise comparisons based on an abbreviated format (i.e., a–b, b–c, c–d, etc.) [36,38] was utilized. The respondents expressed their preferences in three steps for a smooth and gradual elicitation of their preferences: (a) verbally; (b) numerically as well as (c) graphically. The values obtained from the pairwise comparisons are normalized in criteria weights (percentages).
- Swing method: As the worst and best scores based on the selected evaluation criteria for each alternative energy technology were presented, respondents carefully look at the potential gains from moving from worst to best performance and then decide which of the criteria they want to first shift to best performance. As the first swing is valued at 100 units on a hypothetical value scale, the stakeholders assign a value (<100) to the second criterion they want to move to its best performance, then to the third and so forth until the last criterion is moved to its best performance. Likewise, the values obtained from this swing weighting process are normalized in criteria weights (percentages).
- Step 4: Consistency Test and Revision: The elicitation of weighting preferences included a consistency test and possibility for revision. The ranking derived from the weighting preferences’ elicitation step (either through pairwise comparisons or swing method) was compared with the initial ranking. A consistency check, which is based on Spearman’s rank order correlation coefficient, was generated. The survey respondents were asked to revise their preferences should the consistency index is below the consistency threshold value (0.7). If the consistency index equaled to or exceeded the threshold value, the weighting process was completed (step 5). Otherwise, the respondents had to revise the initial ranking or the weighting preferences elicitation to achieve high consistency [36].
- Step 5: Final Weights Elicitation: The weights of the respondents who have achieved high consistencies as well as those who have preferred the weights elicitation process were retained and considered as final weights. In cases where respondents achieved low consistency, and they expressed preference of the initial ranking, the elicitation of weights was determined taking into account only the initial ranking. The initial ranking that has been preferred by the respondent was used to obtain numerical weights from the rank order using the rank sum method [57].
3.2. Data Collection Methods
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- Survey: LGs that were participating in the Covenant CapaCITY project were included in the list of potential participants. In addition, through an extensive review of SEAP-related databases, such as the CoM of the European Commission and the Carbonn of ICLEI, major European cities were identified and their LGs contacted either by email or phone. LG representatives were offered the option to fill in the excel tool with guidance and support from the research team. Twenty (20) LGs responded out of 100 that were contacted (20% response rate) and one of these was a representative of a LGs’ association.
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- Face to face workshop: A face to face workshop was conducted within the framework of the Covenant CapaCITY project, wherein LG representatives from different cities were invited to participate. In total, 18 participants filled out the excel tool under close guidance by the research analysts. Seven (7) out of the 18 participants were LG representatives.
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- Webinar: Furthermore, as part of the Covenant CapaCITY project activities, a two-stage webinar was organized for European energy local stakeholders and LGs to participate in the survey and to discuss the results interactively. In total, twenty five (25) participants were involved in the interactive webinar, wherein five (5) were LG representatives.
4. Results
4.1. Overall Priorities
Criteria | Average Weight | Rank | StDev |
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ENV1: CO2eq emissions | 0.073 | 1 | 0.032 |
SOC3:Mortality and morbidity | 0.063 | 2 | 0.034 |
ENV5: Ecosystem damages | 0.061 | 3 | 0.025 |
ENE5: Resilience to climate change | 0.059 | 4 | 0.034 |
EC2: Employment generation | 0.058 | 5 | 0.018 |
SOC4: Accident fatalities | 0.054 | 6 | 0.023 |
EC1: Levelised costs | 0.054 | 7 | 0.027 |
ENV3: Radioactive waste | 0.049 | 8 | 0.034 |
SOC1:Level of public resistance/opposition | 0.048 | 9 | 0.018 |
ENV4:Waste disposal (infrastructure) | 0.047 | 10 | 0.015 |
ENV7: Fuel use | 0.046 | 11 | 0.020 |
ENE1: Energy cost sensitivity to fuel price fluctuation | 0.044 | 12 | 0.014 |
ENV6: Land use requirement | 0.041 | 13 | 0.018 |
ENE3: Peak load response | 0.038 | 14 | 0.015 |
ENE2:Stability of energy generation | 0.036 | 15 | 0.012 |
TEC4: Innovative ability | 0.036 | 16 | 0.015 |
TEC1: Technological maturity | 0.035 | 17 | 0.013 |
TEC2: Market size (domestic) | 0.035 | 18 | 0.014 |
ENV2: Noise | 0.034 | 19 | 0.017 |
SOC2: Aesthetic/functional impact | 0.032 | 20 | 0.017 |
ENE4: Market concentration on supply | 0.031 | 21 | 0.013 |
TEC3: Market size (potential export) | 0.028 | 22 | 0.013 |
4.2. Priorities of Different LG Groups
4.3. Relationships of Criteria Weights
5. Discussion
6. Conclusions
Acknowledgments
Author Contributions
Conflicts of Interest
Appendix A: Reference European Electricity Generation Technologies under Investigation in 2030
Low-Carbon Energy Technologies | Descriptions | |
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1 | Integrated Gasification Combined Cycle (IGCC) coal | Future reference technology for 2030 is an IGCC power plant. IGCC technology is an emerging advanced power generation system having the potential to generate electricity from coal with high efficiency and lower air pollution (NOx, SO2, CO and PM10) than other current coal-based technologies. |
2 | IGCC coal with Carbon Capture and Storage (CCS) | IGCC technology lends itself very well to carbon capture and storage (CCS) due to the higher pressure of the gas stream and the possibility to achieve the highly concentrated formation of CO2 prior to combustion. For this to be possible then after having been cleaned of particulates the syngas enters a shift reaction unit in which the methane is reacted with steam to produce hydrogen and CO2. The preferred technique for CO2 separation in applications at higher pressure (i.e., IGCC) is currently physical absorption using solvents commonly used in commercial processes. Once captured, the CO2 can then be treated in the same way as for the other technologies incorporating CCS. The resulting power plant net efficiency for this technology scenario is 48.5%. CO2 transport and storage is modelled in the same way as for Pulverized Coal power plants. |
3 | Gas Turbine Combined Cycle (GTCC) | GTCC power plant involves the direct combustion of natural gas in a gas turbine generator. The waste heat generated by this process is then used to create steam for use in a steam generator, in a similar manor to that of IGCC technologies. In this combined cycle power plant around two-thirds of the overall plant capacity is provided by the gas turbine. Reference technology for large natural gas power plants is a 500 MW Combined Cycle (CC) unit. The analysis focuses on a base load power plant. Technology development until 2030 is taken into account with higher power plant efficiencies. |
4 | GTCC with CCS | The electricity generation aspect of this technology is exactly the same as the GTCC without CCS. The flue gas from the GTCC then enters the same CO2 separation, stripping, drying, transportation and sequestration process to that used for coal and lignite CO2 capture. |
5 | Nuclear European Pressure Water Reactor (EPR) | This “Generation III” design of nuclear reactor uses either uranium oxide enriched to 4.9% fissile material (uranium-235) or a mix of uranium-235 and mixed uranium plutonium oxide (MOX), with pressurized water as the moderator and cooling agent. The heat from the reaction is used to produce steam to drive a steam turbine generator. It features not only superior reliability and safety over its current “Generation II” counterparts but also higher efficiency. This results in less high-level radioactive waste per unit of electricity generated that requires either reprocessing or long term storage in geological repositories. |
6 | Wind onshore | The exploitation of wind energy has increased exponentially during the last decades, and there is still large unexploited wind energy potential in many parts of the world—both onshore and offshore. However, the success story of onshore wind energy has led to a shortage of land sites in many parts of Europe, particular in north-western Europe. Vestas’ V80 2 MW turbine serves as current reference technology for onshore wind power in Germany The capacity factor for a generic optimal site near to the coast of the North Sea is assumed to be 0.29. Future wind turbines in 2030 with higher capacities are assumed to be located at the same or similar sites. |
7 | Wind offshore | The shortage of land sites for onshore wind energy has spurred the interest in exploiting offshore wind energy. Offshore wind farms consisting of multiple wind turbines all connected to a single transformer station are more financially viable than individual turbines. Offshore sites also enjoy the advantage of having significantly more stable and higher wind speeds than onshore sites and which leads to a longer turbine life. Future wind turbines in 2030 with higher capacities than the current ones are assumed to be located at the Danish part of the North Sea (HornsRev) or similar sites. The whole park is assumed to consist of eighty Vestas V80 turbines with monopile steel foundations. |
8 | Solar Photovoltaics (PVs)—crystalline silicon | The PV installation is small and integrated onto a new or existing building. At 420 kW, this is suited to the roof of a public or commercial building and is too large for most domestic residences. Photovoltaic (PV) reference technology for crystalline silicon is the laminated, integrated slanted-roof multicrystalline-Si module in, which is adapted to the electricity production of 850 kWh kWp. Not only efficiency increase for the PV-cells as such, but also reduced energy demand in the production steps of the PV chains are taken into account for the modeling of the future 2030 reference PV units. |
9 | Hydropower | The hydro plant Illanz/Panix (Switzerland) is used as the reference reservoir site. Lifetime of the dam is assumed to be 150 years. |
10 | Biogas CHP | Biogas (SNG) from forest wood gasification is assumed to fuel CHP units. Basis for the production of SNG via wood gasification is the assessment of a 50 MW demonstration plant. A commercialized methanation unit with double capacity and increased efficiency, as well as improved CHP unit SNG combustion, reflect the expected technology development until 2030. |
Appendix B: List of Participating LGs in the Study
Country | Local Government | Geographical Location | Population | Gdp (Euros)/Capita | |
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1 | Italy | Rome | Southern Europe | 2,638,842 | 29,900 |
2 | France | Paris | Western Europe | 2,249,977 | 25,200 |
3 | Romania | Bucharest | Eastern Europe | 1,883,425 | 15,500 |
4 | Austria | Vienna | Western Europe | 1,794,770 | 45,600 |
5 | Poland | Warsaw | Eastern Europe | 1,724,404 | 15,700 |
6 | Spain | Barcelona | Southern Europe | 1,620,943 | 26,600 |
7 | Turkey | Gaziantep | Eastern Europe | 1,376,352 | 4000 |
8 | Finland | Helsinki (greater city) | Northern Europe | 1,059,631 | 46,200 |
9 | Spain | Asturias | Southern Europe | 1,006,000 | 21,300 |
10 | Netherlands | Rotterdam (greater city) | Western Europe | 978,040 | 35,400 |
11 | Greece | Crete | Southern Europe | 620,000 | 16,000 |
12 | Switzerland | Zürich (greater city) | Western Europe | 605,812 | 44,640 |
13 | United Kingdom | Worcestershire | Northern Europe | 566,500 | 23,300 |
14 | Belgium | Antwerp | Western Europe | 512,230 | 38,900 |
15 | Netherlands | Utrecht | Western Europe | 321,916 | 42,300 |
16 | Italy | Bari | Southern Europe | 313,213 | 17,100 |
17 | Serbia | Nis | Eastern Europe | 255,518 | 4922 |
18 | Spain | Vitoria-Gasteiz City | Southern Europe | 242,223 | 30,500 |
19 | Switzerland | Lausanne (greater city) | Western Europe | 220,846 | 50,829 |
20 | Italy | Padova | Southern Europe | 207,245 | 30,200 |
21 | Georgia | Batumi | Eastern Europe | 170,000 | 2936 |
22 | Spain | León | Southern Europe | 131,680 | 22,300 |
23 | Bosnia and Herzegovina | Tuzla | Eastern Europe | 125,000 | 3837 |
24 | United Kingdom | Wychavon | Northern Europe | 117,100 | 22,700 |
25 | Greece | Thessaloniki | Southern Europe | 111,703 | 14,400 |
26 | Croatia | Osijek | Eastern Europe | 108,048 | 10,400 |
27 | France | Colombes | Western Europe | 83,220 | 25,200 |
28 | Denmark | Roskilde | Western Europe | 81,800 | 30,200 |
29 | Greece | Amarrousion | Southern Europe | 72,480 | 24,800 |
30 | Italy | Mantua (Mantova) | Southern Europe | 48,353 | 33,900 |
31 | Denmark | Vordingborg | Western Europe | 46,600 | 30,200 |
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Grafakos, S.; Enseñado, E.M.; Flamos, A.; Rotmans, J. Mapping and Measuring European Local Governments’ Priorities for a Sustainable and Low-Carbon Energy Future. Energies 2015, 8, 11641-11666. https://doi.org/10.3390/en81011641
Grafakos S, Enseñado EM, Flamos A, Rotmans J. Mapping and Measuring European Local Governments’ Priorities for a Sustainable and Low-Carbon Energy Future. Energies. 2015; 8(10):11641-11666. https://doi.org/10.3390/en81011641
Chicago/Turabian StyleGrafakos, Stelios, Elena Marie Enseñado, Alexandros Flamos, and Jan Rotmans. 2015. "Mapping and Measuring European Local Governments’ Priorities for a Sustainable and Low-Carbon Energy Future" Energies 8, no. 10: 11641-11666. https://doi.org/10.3390/en81011641
APA StyleGrafakos, S., Enseñado, E. M., Flamos, A., & Rotmans, J. (2015). Mapping and Measuring European Local Governments’ Priorities for a Sustainable and Low-Carbon Energy Future. Energies, 8(10), 11641-11666. https://doi.org/10.3390/en81011641