The Concept of Risk and Possibilities of Application of Mathematical Methods in Supporting Decision Making for Sustainable Energy Development
Abstract
:1. Introduction
2. Literature Review
3. Models Limiting the Risk of Decision Making Support in the Energy Sector
- -
- competitive goals—when increasing the value of one of the objectives reduces the implementation of the other, e.g., maximizing profit and increasing its risk;
- -
- conjugated goals—between which there is a relationship wherein progress in achieving one goal is accompanied by the increase of the other;
- -
- complementary goals—goals that support each other;
- -
- supplementary aims—independent of one another, reducing or increasing the implementation of one does not affect the size of the second goal [34].
4. Application of the Lexicographic Model for Addressing Risk in Decision Support in the Energy Sector
- -
- a clear interpretation of the solutions obtained;
- -
- the possibility of including more functionalities than in other multi-criteria methods, with no need to consider substitutability of particular criteria;
- -
- the possibility of using it for large optimization tasks, the possibility of considering various types of criteria in the task: linear, quotient, non-linear;
- -
- dialogic nature allowing continuation of the procedures until a satisfactory user’s compromise solution is obtained.
- -
- no guarantee that the solution received is Pareto-optimal;
- -
- labor consumption of the method, to obtain a satisfactory solution for a compromised user;
- -
- the solution is achieved through multi-criteria recurrence of calculations, in each case verifying the initial, fixed threshold values, or permissible deviations from the maximum values.
- minimal cost of electricity production;
- maximum level of renewable energy use;
- minimal impact on the natural environment.
5. Construction of an Exemplary Model of a Regional System of Alternative Energy Sources in Terms of Risk Taking
5.1. Installed Renewable Energy Capacities and Electricity Demand Forecast in the West Pomeranian Region
5.2. Policy Schemes to Support Electricity from Renewables in the West Pomeranian Region
- -
- revenue from the sale of property rights from certificates of origin;
- -
- revenue from the sale of electricity.
- (a)
- Green certificates—the co-financing system for renewable sources producing electricity has been conditioned on the ability to obtain certificates of origin. Therefore, all types of renewable energy sources based on renewable primary fuels can benefit from the following type of support.
- (b)
- Brown certificates—these are certificates that create a certificate of production, and at the same time introduce biogas for distribution to the gas network.
- (c)
- Yellow certificates—a co-financing system in the form of yellow certificates were directed to entities producing electricity in high-efficiency cogeneration, in installations fired with gaseous fuels.
- (d)
- Purple certificates—a co-financing system in the form of purple certificates were directed to units fired with methane released and captured at underground mining works in active, liquidated, or liquidated hard coal mines or gas obtained from biomass processing within the meaning of article 2, paragraph 1, point 2 of the Act on biocomponents and liquid biofuels, regardless of the installed capacity of such units.
5.3. Renewable Energy Potential in the West Pomeranian Region
5.4. Energy Planning Optimization Model for the West Pomeranian Region
- x1—
- production of conventional energy (kWh)—energy coming from fossil fuels (e.g., hard and brown coal, oil, natural gas);
- x2—
- production of energy from co-firing (kWh)—energy from the same generation unit, from the combustion of biomass or biogas with other fuels used to generate electricity;
- x3—
- hydro energy production (kWh) until December 31, 2017—energy coming from an industrial plant, converting potential energy of water into electricity;
- x4—
- production of hydropower (kWh) from January 1, 2018—energy coming from an industrial plant, converting potential energy of water into electricity;
- x5—
- solar energy production (kWh)—energy generated inside the Sun as a result of thermonuclear transformations, mainly the synthesis of hydrogen atoms;
- x6—
- energy production from household windmills (kWh)—energy generated from a set of field devices used for generation and storage of electricity for the purposes of its use in one or several houses;
- x7—
- production of energy from wind farms (kWh) until December 21, 2017—energy defined as a generating unit or a set of these units, using wind energy connected to the grid at one connection point for the production of electricity;
- x8—
- new installations producing energy from wind (kWh) from January 1, 2018—energy defined as a generating unit or a set of these units that use wind energy connected to the grid at one connection point to generate electricity;
- x9—
- production of energy from biogas (kWh)—energy generated from gas obtained from biomass, in particular from installations for processing animal or vegetable waste, sewage treatment plants, and landfills;
- x10—
- energy from biogas in high-efficiency co-generation with a total installed electric power of less than 1 MW (in kWh)—energy generated from gas obtained from biomass, in particular from installations for processing animal or vegetable waste, sewage treatment plants, and landfills;
- x11—
- new installations producing energy from biogas (kWh) from January 1, 2018—energy generated from gas obtained from biomass, in particular from installations for treating animal or vegetable waste, sewage treatment plants, and landfills;
- x12—
- production of energy from biofuels (kWh)—energy from biofuels obtained from raw materials derived from biological processes, able to be used in electrical power equipment;
- x13—
- production of energy from biomass combustion in existing boilers (kWh)—energy coming from plant or animal substances that are biodegradable, coming from products, waste, and residues from agricultural or forestry production, as well as the industry processing their products, as well as other parts of waste that are biodegradable;
- x14—
- new installations producing energy from biomass combustion in new boilers (kWh) from January 1, 2018—energy coming from substances of vegetable or animal origin that are biodegradable, coming from products, waste, and residues from agricultural or forestry production as well as from the industry processing their products, as well as other parts of waste that are biodegradable;
- x15—
- total energy production (kWh)—total annual production of electricity from various energy sources;
- x16—
- volume of raw materials for biomass burning (kWh)—energy willow: a fast growing species with high biomass production potential, perfectly suited for energy use;
- x17—
- volume of raw materials for biomass burning (kWh)—miscatus: a plant that produces a large biomass increase in a relatively short time, suitable mainly for combustion;
- x18—
- volume of raw materials for biomass burning (kWh)—poplar: a species of tree belonging to the willow family, perfectly suited for energy use;
- x19—
- volume of raw materials for biomass burning (kWh)—sidaz: perennial plant from North America, growing in the form of clumps composed of several stems with a diameter of up to 25–35 mm and a height of 3.0–3.5 m, suitable for energy use;
- x20—
- volume of raw materials for biomass burning (kWh)—topinambur: perennial plant originating from North America; utility crop—dried stems with a diameter of 2–3 cm, a height of 2–3 m, and a tuber, suitable for energy use;
- x21—
- volume of raw materials for biomass burning (kWh)—oilseed rape;
- x22—
- volume of raw materials for biomass burning (kWh)—cereals;
- x23—
- volume of raw materials for biomass burning (kWh)—maize;
- x24—
- volume of raw materials for biomass burning (kWh)—beets.
5.5. The Objective Function and Parameters of the Optimization Model
- -
- costs related to energy production;
- -
- costs related to certificates;
- -
- ecological costs;
- -
- loss of soil fertility.
6. Discussion
7. Conclusions
Author Contributions
Funding
Conflicts of Interest
References
- Jankowski, B. Modeling of the Development of the National Energy System, Taking into Account the Requirements of Stabilizing the Reduction of Carbon Dioxide Emissions in Poland; IPPT PAN: Warsaw, Poland, 1997; p. 26. [Google Scholar]
- Gawrońska-Nowak, B.; Walerysiak, G. Economic Decisions Quantitative Approach, Polskie; Wydawnictwo Ekonomiczne: Warsaw, Poland, 2016; p. 11. [Google Scholar]
- Chen, J.; Cheng, S.; Nikic, V.; Song, M. Quo Vadis? Major Players in Global Coal Consumption and Emissions Reduction. Transform. Bus. Econ. 2017, 17, 112–132. [Google Scholar]
- Thangavelu, S.R.; Khambadkone, A.M.; Karimi, I.A. Long-term optimal energy mix planning towards high energy security and low GHG emission. Appl. Energy 2015, 154, 959–969. [Google Scholar] [CrossRef]
- Ji, L.; Zhang, X.P.P.; Huang, G.H.H.; Yin, J.G.G. Development of an inexact risk-aversion optimization model for regional carbon constrained electricity system planning under uncertainty. Energy Convers. Manag. 2015, 94, 353–364. [Google Scholar] [CrossRef]
- Ioannou, A.; Angus, A.; Brennan, F. Risk-based methods for sustainable energy system planning: A review. Renew. Sustain. Energy Rev. 2017, 74, 602–615. [Google Scholar] [CrossRef]
- Wing, L.C.; Jin, Z. Risk management methods applied to renewable and sustainable energy: A review. Renew. Energ. Syst. 2015, 3, 1–12. [Google Scholar] [CrossRef]
- Feurtey, É.; Ilinca, A.; Sakout, A.; Saucier, C. Institutional factors influencing strategic decision-making in energy policy; a case study of wind energy in France and Quebec (Canada). Renew Sustain. Energy Rev. 2016, 59, 1455–1470. [Google Scholar] [CrossRef]
- Strantzali, E.; Aravossis, K. Decision making in renewable energy investments: a review. Renew Sustain. Energy Rev. 2016, 55, 885–898. [Google Scholar] [CrossRef]
- Gatzert, N.; Kosub, T. Risks and risk management of renewable energy projects: The case of onshore and off-shore wind parks. Renew. Sustain. Energy Rev. 2016, 60, 982–998. [Google Scholar] [CrossRef]
- Bhahattacharya, A.; Kojima, S. Power sector investment risk and renewable energy: A Japanese case study using portfolio risk optimization method. Energ. Policy 2012, 40, 69–80. [Google Scholar] [CrossRef]
- Escribano Francés, G.; Marín-Quemada, J.M.; San Martín González, E. RES and risk: Renewable energy’s contribution to energy security. A portfolio-based approach. Renew. Sustain. Energy Rev. 2013, 26, 549–559. [Google Scholar] [CrossRef]
- Soroudi, A.; Amraee, T. Decision making under uncertainty in energy systems: State of the art. Renew Sustain. Energy Rev. 2013, 28, 37–84. [Google Scholar] [CrossRef]
- Stewart, T.J. Dealing with Uncertainties in MCDA, in Multiple Criteria Decision Analysis: State of the Art Surveys; Springer: Berlin, Germany, 2005. [Google Scholar]
- Zhang, L.; Zhou, P.; Newton, S.; Fang, J.; Zhou, D.; Zhang, L. Evaluating clean energy alternatives for Jiangsu, China: An improved multi-criteria decision making method. Energy 2015, 90, 953–964. [Google Scholar] [CrossRef]
- Kolios, A.J.; Rodriguez-Tsouroukdissian, A.; Salonitis, K. Multi-criteria decision analysis of off-shore wind turbines support structures under stochastic inputs. Ships. Offshore Struct. 2016, 1, 38–49. [Google Scholar]
- Cobuloglu, H.I.; Büyüktahtak, I.E. A stochastic multi-criteria decision analysis for sustainable biomass crop selection. Expert. Syst. Appl. 2015, 42, 6065–6074. [Google Scholar] [CrossRef]
- Zeng, Z.; Nasri, E.; Chini, A.; Ries, R.; Xu, J. A multiple objective decision making model for energy generation portfolio under fuzzy uncertainty: Case study of large scale investor-owned utilities in Florida. Renew. Energy 2015, 75, 224–242. [Google Scholar] [CrossRef]
- Kolios, A.; Read, G.; Ioannou, A. Application of multi-criteria decision-making to risk prioritisation in tidal energy developments. Int. J. Sustain. Energy 2016, 35, 59–74. [Google Scholar] [CrossRef]
- Streimikiene, D.; Balezentis, T.; Krisciukaitienė, I.; Balezentis, A. Prioritizing sustainable electricity production technologies: MCDM approach. Renew. Sustain. Energy Rev. 2012, 16, 3302–3311. [Google Scholar] [CrossRef]
- Beccali, M.; Cellura, M.; Mistretta, M. Decision-making in energy planning. Application of the Electre method at regional level for the diffusion of renewable energy technology. Renew. Energy 2003, 28, 2063–2087. [Google Scholar] [CrossRef]
- Kaya, T.; Kahraman, C. Multicriteria decision making in energy planning using a modified fuzzy TOPSIS methodology. Expert Syst. Appl. 2011, 38, 6577–6585. [Google Scholar] [CrossRef]
- Beccali, M.; Cellura, M.; Ardente, D. Decision making in energy planning: The ELECTRE multicriteria analysis approach compared to a fuzzy-sets methodology. Energy Convers. Manag. 1998, 39, 1869–1881. [Google Scholar] [CrossRef]
- Yazdani, M.; Chatterjee, P.; Zavadskas, E.K.; Streimikiene, D. A novel integrated decision-making approach for the evaluation and selection of renewable energy technologies. Clean. Technol. Envir. 2018, 20, 403–420. [Google Scholar] [CrossRef]
- Baležentis, T.; Streimikiene, D. Multi-criteria ranking of energy generation scenarios with Monte Carlo simulation. Appl. Energy 2017, 185, 862–871. [Google Scholar] [CrossRef]
- Taha, A.F.; Panchal, J.H. Decision-making in energy systems with multiple technologies and uncertain preferences. IEEE Transactions on Systems, Man, and Cybernetics: Systems 2014, 44, 894–907. [Google Scholar] [CrossRef]
- Nerini, F.F.; Keppo, I.; Strachan, N. Myopic decision making in energy system decarbonisation pathways. A UK case study. Energy Strateg. Rev. 2017, 17, 19–26. [Google Scholar] [CrossRef]
- Cipriano, X.; Vellido, A.; Cipriano, J.; Martí-Herrero, J.; Danov, S. Influencing factors in energy use of housing blocks: A new methodology, based on clustering and energy simulations, for decision making in energy refurbishment projects. Energ. Effic. 2017, 10, 359–382. [Google Scholar] [CrossRef]
- Meisel, S.; Powell, W.B. Dynamic decision making in energy systems with storage and renewable energy sources. In Advances in Energy System Optimization; Birkhäuser: Cham, Switzerland, 2017; pp. 87–101. [Google Scholar]
- Sobczyk, E.J.; Wota, A.; Krężołek, S. Application of mathematical multicriteria methods to choose the optimal variant of the source of hard coal mining. Min. Resour. Econ. 2011, 27, 34–39. [Google Scholar]
- Simpson, A.P.; Edwards, C.F. The utility of environmental exergy analysis for decision making in energy. Energy 2013, 55, 742–751. [Google Scholar] [CrossRef]
- Gillingham, K.; Newell, R.G.; Palmer, K. Energy efficiency economics and policy. Annu. Rev. Resour. Econ. 2009, 1, 597–620. [Google Scholar] [CrossRef]
- Wimmler, G.; Hejazi, E.; de Oliveira Fernandes, E.; Moreira, C.; Connors, S. Multi criteria decision support methods for renewable energy systems on islands. J. Clean. Energy Technol. 2015, 3, 185–195. [Google Scholar] [CrossRef]
- Malicki, M. Risk in the Planning of Feed Economy; Wyd. AR Szczecin: Szczecin, Poland, 1999; p. 44. [Google Scholar]
- Malicki, M. The Lexographic Method in Planning the Production of a Farm; Wyd. AR Szczecin: Szczecin, Poland, 1993. [Google Scholar]
- Konarzewska-Gubała, E. Programming for Multiple goals; PWN: Warsaw, Poland, 1980; p. 98. [Google Scholar]
- Kasprzak, T. Multicriteria Decision Support Systems; UW Publishing House: Warsaw, Poland, 1992; p. 143. [Google Scholar]
- Krawiec, B. Optimization Methods in Agriculture; PWN: Warsaw, Poland, 1992; p. 35. [Google Scholar]
- Jovovic, R.; Simanaviciene, Z.; Dirma, V. Assessment of Heat Production Savings Resulting from Replacement of Gas with Biofuels. Transform. Bus. Econ. 2017, 16, 34–51. [Google Scholar]
- Program for the development of the energy sector in the West Pomeranian Region until 2015 with a prospect until 2030, Szczecin 2016. Available online: http://www.beif.pl/wp-content/uploads/2018/02/PRMEPM_EN.pdf?x30829 (accessed on 10 January 2019).
- Szymański, B. How to Compare the Power of Renewable Energy Plants with Conventional Ones; Solaria: Warsaw, Poland, 2013. [Google Scholar]
- Chang, M.-C.; Shieh, H.-S. The Relations between Energy Efficiency and GDP in the Baltic Sea Region and Non-Baltic Sea Region. Transform. Bus. Econ. 2017, 16, 235–247. [Google Scholar]
- Wang, H.; Jiao, W.; Lahdelma, R.; Zhu, C.; Zou, P. Stochastic Multicriteria Acceptability Analysis for Evaluation of Combined Heat and Power Units. Energies 2015, 8, 59–78. [Google Scholar] [CrossRef]
- Cavallaro, F.; Zavadskas, E.K.; Raslanas, S. Evaluation of Combined Heat and Power (CHP) Systems Using Fuzzy Shannon Entropy and Fuzzy TOPSIS. Sustainability 2016, 8, 556. [Google Scholar] [CrossRef]
- Shaaban, M.; Scheffran, J.; Böhner, J.; Elsobki, M.S. Sustainability Assessment of Electricity Generation Technologies in Egypt Using Multi-Criteria Decision Analysis. Energies 2018, 11, 1117. [Google Scholar] [CrossRef]
- Wu, D.; Yang, Z.; Wang, N.; Li, C.; Yang, Y. An Integrated Multi-Criteria Decision Making Model and AHP Weighting Uncertainty Analysis for Sustainability Assessment of Coal-Fired Power Units. Sustainability 2018, 10, 1700. [Google Scholar] [CrossRef]
- Brożyna, J.; Mentel, G.; Szetela, B. Influence of double seasonality on economic forecasts on the example of energy demand. J. Int. Stud. 2016, 9, 9–20. [Google Scholar] [CrossRef] [PubMed]
- Tvaronavičienė, M.; Prakapienė, D.; Garškaitė-Milvydienė, K.; Prakapas, R.; Nawrot, Ł. Energy Efficiency in the Long-Run in the Selected European Countries. Econ. Sociol. 2018, 11, 245–254. [Google Scholar] [CrossRef] [PubMed]
Author | Key Idea | Research Object | Outcome of the Study |
---|---|---|---|
Strantzali, E. and Aravossis, K. [8] | The paper presents a review of the current state of the art in decision support methods applied to renewable and sustainable energy throughout the literature in the field of energy planning. | Decision making in renewable energy investments. | The selected papers were classified by their year of publication, decision making technique, energy type, the criteria used, geographic distribution, and the application areas. |
Feurtey, É., Ilinca, A., Sakout, A., and Saucier, C. [9] | A comparative transnational study of Quebecois (Canada) and French research confirms that political choices are dynamic and vary with changes in the wind energy context, the balance of power between pressure groups, supranational influences, energy evaluation approaches, and social acceptance. | Institutional factors that influence a strategic wind energy decision-making process. | 1. Used an innovative conceptualization of energy policy to investigate under what circumstances a wind energy policy can be successful. 2. The model was built in four steps and nine components. 3. Strategic choices are directly influenced by the initial state of the environment, the economy, and the society, and indirectly affected by industrial sector dissemination process, social acceptance, and the type of energy policy evaluation used. |
Streimikiene, D., Balezentis, T., Krisciukaitienė, I., and Balezentis, A. [20] | To develop the multi-criteria decision support framework for choosing the most sustainable electricity production technologies. | Sustainable electricity production technologies. | 1. The indicator system covering different approaches of sustainability was established. 2. The analysis proved that future energy policy should be oriented towards the sustainable energy technologies, namely water and solar thermal ones. |
Beccali, M., Cellura, M., and Mistretta, M [21] | Application of the multi-criteria decision-making methodology used to assess an action plan for the diffusion of renewable energy technologies at regional scale. | Decision making in energy planning. | 1. This methodological tool gives the decision maker considerable help in the selection of the most suitable innovative technologies in the energy sector, according to preliminary fixed objectives. 2. Case study was carried out for the island of Sardinia. 3. This region presents, on one hand, a high potential for energy resource exploitation, but, on the other hand, it represents a specific case among other Italian regions, because of its socio-economic status and history. 4. Three decision scenarios were supposed, each one representing a coherent set of actions, on the basis of which strategies of diffusion were developed. |
Kaya, T. and Kahraman, C. [22] | Selection of the best energy technology requires the consideration of conflicting quantitative and qualitative evaluation criteria The fuzzy set theory is a strong tool which can deal with the uncertainty in case of subjective, incomplete, and vague information. | Multi-criteria decision making in energy planning. | In the proposed methodology, the weights of the selection criteria are determined by fuzzy pairwise comparison matrices. |
Beccali, M., Cellura, M., and Ardente, D. [23] | This paper aims to introduce a methodological tool able to organize and synthesize the large set of variables coming from several specific judgements (or assessments), helping the decision maker to read the complex problem, understand it, and make choices. | Decision making in energy planning. | 1. The ELECTRE methods family was presented for energy planning application. It is a flexible ranking method, which takes into account the uncertainties of all the specific assessments, the qualitative nature of some indexes, and the weight of the preferences or willingness systems of the decision maker. 2. A decision making support method, based on fuzzy logic, was tested and compared to the previous one. 3. A case study developed by the authors shows differences among these two different approaches. 4. Advantages and drawbacks of both methods were explored and suggestions proposed. |
Yazdani, M., Chatterjee, P., Zavadskas, E. K., and Streimikiene, D. [24] | Finding a set of energy sources and conversion devices to meet energy demands in an optimal way. | Decision making in the energy sector. | 1. The hybrid decision making trial and evaluation laboratory and analytic network process (DEMATEL-ANP) model was proposed in order to stress the importance of the evaluation criteria when selecting alternative renewable energy sources (RES) and the causal relationships between the criteria. 2. Sensitivity analysis, result validation and critical outcomes are provided as well, to offer guidelines for policy makers in the selection of the best alternative RES with the maximum effectiveness. |
Baležentis, T. and Streimikiene, D. [25] | The paper aims at ranking European Union (EU) energy development scenarios based on several integrated assessment models (IAMs) with respect to multiple criteria. | Energy policy analysis, effective energy planning. | 1. IAMs can successfully handle uncertainty pertinent to energy planning problems. 2. Multi-criteria decision making (MCDM) tools are relevant in aggregating diverse information, and thus comparing alternative energy planning options. 3. Accounting for uncertainty surrounding policy priorities outside the IAM. 4. Assigning different importance to objectives. 5. The rankings provided for the scenarios by different MCDM techniques diverge. |
Taha, A. F. and Panchal, J. H. [26] | Helping the ISO (independent system operators) in modeling the lower-level GENCOs’ (energy generation companies) decision problems. GENCOs compete in energy production, while maximizing their net present values and minimizing their capital investments. | Decision making in energy systems with multiple technologies and uncertain preferences. | 1. The study of the effect of stakeholders’ preferences on the solution of the complementarity problem. 2. Analysis of the effect of the ISO’s parameters on the generation equilibrium quantities. 3. Simulation of the stochastic complementarity problem using different techniques. 4. The market players’ decisions result in a lower-level market equilibrium problem, which is formulated as a complementarity problem. 5. The uniqueness of the solutions for the lower-level problem are shown. |
Nerini, F. F., Keppo, I., and Strachan, N. [27] | Myopic planning might result in delayed strategic investments and in considerably higher costs for achieving decarbonization targets, compared to estimates done with perfect foresight optimization energy models. | Myopia in energy system investments. | 1. Carbon prices obtained from perfect foresight energy models might be under-estimated. 2. Increasing myopia in energy system investments could result in the postponement (or cancellation) of strategic investments on key technologies, such as low-carbon transportation infrastructure. 3. With increasing myopia of the system, those carbon prices would result in the non-achievement of UK’s climate goals. 4. In order to reach the set targets, significantly higher carbon prices are required under myopia. |
Cipriano, X., Vellido, A., Cipriano, J., Martí-Herrero, J., and Danov, S. [28] | To identify which are the factors with highest influence in the energy consumption of residential buildings. To report a new methodology for the assessment of the energy performance of large groups of buildings when considering the real use of energy. | Energy performance of large groups of buildings. | Simulation of energy demand and indoor temperature against the monitored comfort conditions in a short period was performed to obtain end use load disaggregation. This methodology was applied in a district at Terrassa City (Spain), and six reference dwellings were selected. The method was able to identify the main patterns and provide occupants with feasible recommendations so that they can make required decisions at neighborhood level. |
Meisel, S. and Powell, W. B. [29] | Energy system optimization: dynamic decision making in energy systems with storage and renewable energy sources. | Energy system with a storage device, a renewable energy source with market access | Model of an energy system with a storage device, a renewable energy source, and with market access as a Markov decision process. Identified four classes of pure policies, each of which may work best depending on the characteristics of the system (volatility of prices, stationarity, and accuracy of forecasts). Each of the four classes can work best on a particular instance of the problem. |
Sobczyk, E. J., Wota, A., and Krężołek, S. [30] | Energy production planning exercise was developed based on clustering the relative closeness of actual values to the target values. The relative closeness was obtained by the TOPSIS method while technological clusters were formed by fuzzy techniques. | The optimal variant of the source for hard coal mining was selected. | The Technique for Order Preference by Similarity to Ideal Solution (TOPSIS ) method was applied for MCDA in selection of hard coal mining sources; the risks were assessed by applying fuzzy techniques; the risks were integrated in MCDA for selection of the best option. |
Simpson, A. P. and Edwards, C. F. [31] | The analysis framework discussed and employed in this paper utilizes the recent recognition that exergy is a form of environmental free energy to provide a fundamental basis for valuing environmental interactions independent from their secondary impacts. A key attribute of the framework is its ability to evaluate the environmental performance of energy systems on a level playing field, regardless of the specifics of the systems, i.e., resources consumed, products and by-products produced, or system size and time scale. | The utility of environmental exergy analysis for decision making in energy. | 1. Extends the principles of technical exergy analysis to the environment in order to quantify the location, magnitudes, and types of environmental impact state change, alteration of natural transfers, and destruction change. 2. Anthropocentric sensitivity analysis enables the results of environmental exergy analysis to be interpreted for decision making. 3. The utility of the analysis framework for decision making is demonstrated through application to three example energy systems. |
Gillingham, K., Newell, R. G., and Palmer, K [32] | Energy efficiency and conservation are considered key means for reducing greenhouse gas emissions and achieving other energy policy goals, but associated market behavior and policy responses have engendered debates in the economic literature. The article reviews economic concepts underlying consumer decision making in energy efficiency and conservation, and examines related empirical literature. | Energy efficiency economics and policy. | 1. The article provides an economic perspective on the range of market barriers, market failures, and behavioral failures that have been cited in the energy efficiency context. 2. Assess the extent to which these conditions provide a motivation for policy intervention in energy-using product markets, including an examination of the evidence oil policy effectiveness and cost. |
Wind energy | Biomass | Solar energy | Hydro and geothermal power |
---|---|---|---|
Wind farms on land 726.429 MW (43 installations) |
| Installations generating energy from solar energy 3.867 MW (88 installations) |
|
Energy Production in 2006 in the West Pomeranian Region [GWh] | Energy Production in 2030 in the West Pomeranian Region [GWh] |
---|---|
7713.6 | 9333.45 |
Type of Renewable | Energy Potential of the West Pomeranian Region GWh |
---|---|
Wind farms | 26,600 |
Installations producing energy from biogas | 638.7 |
Installations producing energy from biomass | 7156.5 |
Installations generating energy from solar energy | 393.2 |
Hydroelectric power plants | 14.3 |
Power Plants | Electricity Generation | Units | Coefficient of Use Maximum Power |
---|---|---|---|
Theoretical maximum production for 1 MW of power plant | 8.76 | GWh | 100.0% |
Photovoltaic power plant | 0.97 | GWh | 11.1% |
Wind power plant, good location | 2.10 | GWh | 24.0% |
Biomass power plant | 2.19 | GWh | 25.0% |
Hydroelectric power plant | 2.7 | GWh | 30.8% |
Biogas power plant | 3.35 | GWh | 38.3% |
Waste power station | 2.75 | GWh | 31.5% |
Coal power station | 6.9 | GWh | 78.8% |
Types of Energy | x1 | x2 | x3 | x4 | x5 | x6 | x7 | x8 | x9 | x10 | x11 | x12 | x13 | x14 |
---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
Costs of production | 0.47 | 0.61 | 0.70 | 0.7 | 1.10 | 0.65 | 0.65 | 0.65 | 0.70 | 0.65 | 1.39 | 1.10 | 0.45 | 0.45 |
The cost of the certificate | 0.00388 | 0.00388 | 0.12385 | 0.12385 | 0.12385 | 0.12385 | 0.12385 | 0.2012 | 0.12385 | 0.12385 | 0.2012 | 0.12385 | 0.12385 | 0.2012 |
Ecological costs | 0.0316 | 0.0252 | 0.0006 | 0.0006 | 0.00072 | 0.0006 | 0.0006 | 0.0006 | 0.0116 | 0.0116 | 0.012 | 0.012 | 0.00042 | 0.00042 |
Total costs | 0.44 | 0.58 | 0.5755 | 0.5755 | 0.9755 | 0.52555 | 0.52555 | 0.4482 | 0.56455 | 0.51455 | 1.1768 | 0.96415 | 0.32573 | 0.24838 |
Energy Resources | x16 | x17 | x18 | x19 | x20 | x21 | x22 | x23 | x24 |
---|---|---|---|---|---|---|---|---|---|
Loss of soil fertility | 1.4 | 1.4 | 1.4 | 1.4 | 1.4 | 0.53 | 0.53 | 1.15 | 1.15 |
Energy Resources | x16 | x17 | x18 | x19 | x20 | x21 | x22 | x23 | x24 |
---|---|---|---|---|---|---|---|---|---|
Manufacturing cost | 0.18 | 0.35 | 0.17 | 0.07 | 0.04 | 0.5 | 0.34 | 0.5 | 0.21 |
Types of Energy | x1 | x2 | x3 | x4 | x5 | x6 | x7 | x8 | x9 | x10 | x11 | x12 | x13 | x14 | x15 |
---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
Energy production | 0 | 3016.53 | 59.86 | 8.23 | 383.53 | 0 | 1452.85 | 1502.29 | 21.521 | 23.39 | 533.92 | 0 | 416.51 | 1914.57 | 9333.45 |
Energy raw materials | x16 | x17 | x18 | x19 | x20 | x21 | x22 | x23 | x24 | ||||||
Crop size | 0 | 0 | 0 | 0 | 0 | 0 | 0 | 0.059 | 0 |
Types of Energy | x1 | x2 | x3 | x4 | x5 | x6 | x7 | x8 | x9 | x10 | x11 | x12 | x13 | x14 | x15 |
---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
Energy production | 0 | 7305.1 | 44.21 | 0.71 | 243.16 | 0 | 1071.71 | 0 | 25.23 | 13.87 | 0 | 0 | 173.15 | 0 | 8877.5 |
Energy raw materials | x16 | x17 | x18 | x19 | x20 | x21 | x22 | x23 | x24 | ||||||
Crop size | 0 | 0 | 0 | 0 | 0 | 0 | 0 | 0.059 | 0 |
Types of Energy | x1 | x2 | x3 | x4 | x5 | x6 | x7 | x8 | x9 | x10 | x11 | x12 | x13 | x14 | x15 |
---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
Energy production | 0 | 7274.15 | 61.79 | 1.00 | 34.8 | 0 | 1634.83 | 147.14 | 31.52 | 21.52 | 0 | 0 | 416.515 | 0 | 8877.5 |
Energy raw materials | x16 | x17 | x18 | x19 | x20 | x21 | x22 | x23 | x24 | ||||||
Crop size | 0 | 0 | 0 | 0 | 0 | 0 | 0 | 0.0423 | 0 |
Type of Renewable Energy | Number of Jobs Scenario 1 | Number of Jobs Scenario 2 | Number of Jobs Scenario 3 |
---|---|---|---|
Hydropower | 3 | 0.28 | 1 |
Solar energy | 2558 | 1617 | |
Wind energy | 9137 | 434 | 434 |
Energy produced from biogas | 1880 | ||
Energy produced from biomass | 2447 |
Type of Renewable Energy | Budget Receipts from VAT Scenario 1 | Budget Receipts from VAT Scenario 2 | Budget Receipts from VAT Scenario 3 |
---|---|---|---|
Hydropower | 8.75 mln zł | 0.74 mln zł | 2.88 mln zł |
Solar energy | 708.46 mln zł | 448.05 mln zł | |
Wind energy | 1.728 mld zł | 82.105 mln zł | |
Energy produced from biogas | 458.98 mln zł | ||
Energy produced from biomass | 2.203 mld zł |
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Rabe, M.; Streimikiene, D.; Bilan, Y. The Concept of Risk and Possibilities of Application of Mathematical Methods in Supporting Decision Making for Sustainable Energy Development. Sustainability 2019, 11, 1018. https://doi.org/10.3390/su11041018
Rabe M, Streimikiene D, Bilan Y. The Concept of Risk and Possibilities of Application of Mathematical Methods in Supporting Decision Making for Sustainable Energy Development. Sustainability. 2019; 11(4):1018. https://doi.org/10.3390/su11041018
Chicago/Turabian StyleRabe, Marcin, Dalia Streimikiene, and Yuriy Bilan. 2019. "The Concept of Risk and Possibilities of Application of Mathematical Methods in Supporting Decision Making for Sustainable Energy Development" Sustainability 11, no. 4: 1018. https://doi.org/10.3390/su11041018
APA StyleRabe, M., Streimikiene, D., & Bilan, Y. (2019). The Concept of Risk and Possibilities of Application of Mathematical Methods in Supporting Decision Making for Sustainable Energy Development. Sustainability, 11(4), 1018. https://doi.org/10.3390/su11041018