Next Article in Journal
Hybrid Fibres as Shear Reinforcement in High-Performance Concrete Beams with and without Openings
Next Article in Special Issue
Screening Contract Excitation Models Involving Closed-Loop Supply Chains Under Asymmetric Information Games: A Case Study with New Energy Vehicle Power Battery
Previous Article in Journal
EMD-Shannon Entropy-Based Methodology to Detect Incipient Damages in a Truss Structure
Previous Article in Special Issue
Investigation on Coal Fragmentation by High-Velocity Water Jet in Drilling: Size Distributions and Fractal Characteristics
 
 
Font Type:
Arial Georgia Verdana
Font Size:
Aa Aa Aa
Line Spacing:
Column Width:
Background:
Article

A Multi-Criteria Decision Making (MCDM) for Renewable Energy Plants Location Selection in Vietnam under a Fuzzy Environment

1
Department of Industrial Engineering and Management, National Kaohsiung University of Science and Technology, Kaohsiung 80778, Taiwan
2
Department of Industrial Engineering and Management, Fortune Institute of Technology, Kaohsiung 83160, Taiwan
3
Department of Industrial Systems Engineering, CanTho University of Technology, Can Tho 900000, Vietnam
*
Authors to whom correspondence should be addressed.
Appl. Sci. 2018, 8(11), 2069; https://doi.org/10.3390/app8112069
Submission received: 27 September 2018 / Revised: 19 October 2018 / Accepted: 23 October 2018 / Published: 26 October 2018
(This article belongs to the Special Issue Green Energy and Applications)

Abstract

:
In the context of increasing energy demands in Vietnam, and as a result of the limited supply of domestic energy (oil/gas/coal reserves are exhausted), the potential for renewable energy sources in Vietnam is significant. Thus, building wind power plants in Vietnam is necessary. Access to this type of renewable energy not only contributes to society’s energy supply but also helps to save energy and reduce environmental pollution. Although some works have reviewed applications of the Multi-Criteria Decision Making (MCDM) model in wind power plant site selection, little research has focused on this problem in a fuzzy environment. This is the reason why a hybrid Fuzzy Analytic Hierarchy Process (FAHP) and The Technique for Order of Preference by Similarity to Ideal Solution (TOPSIS) are developed for wind power plant site selection in Vietnam. In the first stages of this research, an FAHP model is proposed for determining the weight of each potential location for building a wind power plant, based on qualitative and quantitative factors. A TOPSIS is applied for ranking all potential alternatives in the final stage. The authors collected data from seven locations, which have good conditions for investment in a wind power plant. The results indicate that Binh Thuan (Binh Thuan Province is located on coast of South Central Vietnam) is the best place for building a wind power plant in Vietnam. The contributions of this work proposed an MCDM approach under fuzzy environments for wind power plant location selection in Vietnam. This paper also resides in the evolution of a new approach that is flexible and practical for a decision-maker. This work also provides a useful guideline for wind power plant location selection in others countries.

1. Introduction

Wind power is the use of air flow through wind turbines to provide the mechanical power to turn electric generators. Wind power, as an alternative to burning fossil fuels, is plentiful, renewable, widely distributed, clean, produces no greenhouse gas emissions during operation, consumes no water, and uses little land [1].
Nowadays, at least 90 other countries are using wind power to supply their electric power grids [2]. Annual wind power capacity additions in 2018 is 539.581 MW [3]. Yearly wind energy production is also growing rapidly and has reached around 10.8% of worldwide electric power usage [4].
Existing coal and gas fields in the near future will be exhausted, so many countries are now focused on developing wind resources. Wind energy is the latest and most powerful source of energy in the world today. The development of wind energy in Vietnam toward the objective of mitigating the impacts of climate change is among the solutions that are considered feasible today. Currently, the first 100 MW wind farm has been operating and is conducting research into phases up to 2025, for up to 1000 MW.
In this work, the author considered seven Decision Making Units (DMUs) including Quang Ninh, Binh Thuan, Quang Tri, Ninh Thuan, Ninh Thuan, Tra Vinh and Hai Van for building wind power plants in Vietnam. This is because these provinces have the greatest potential for harnessing wind energy. Wind power could reach 800 MW. In addition to high average speed, local wind tends to be steady due to the small number of storms. During the monsoon period, winds reach speeds of six to seven meters per second. Wind power plant site selection is identified as a critical issue that could affect economic, environmental, technological, and social factors. Further, location selection is complicated, in that decision-makers must have broad perspectives concerning qualitative and quantitative criteria. Furthermore, there is no work that applies these models for wind power plant location selection in Vietnam Thus, the authors propose a Multi-Criteria Decision Making (MCDM) model, including Fuzzy Analytic Hierarchy Process (FAHP) and The Technique for Order of Preference by Similarity to Ideal Solution (TOPSIS), to select the optimal location for construction of wind power plants in Vietnam. FAHP is proposed for defining the weight of each potential location in the first stages of this work. The FAHP embeds the fuzzy theory to basic analytic hierarchy process (AHP), which was developed by Saaty [5]. FAHP is a widely used decision-making technique in many MCDM problems. In a general AHP model, the objective is in the first level, and the criteria and subcriteria are in the second and third levels, respectively. Finally, the options are found in the fourth level. A general MCDM process model is shown in Figure 1.
The FAHP can be used for ranking alternatives, but the disadvantage of the FAHP model is that input data, expressed in linguistic terms, depends on the experience of experts. Thus, the authors proposed TOPSIS models for ranking potential locations in the final stages. TOPSIS is a multi-criteria decision analysis method. TOPSIS is based on the concept that the chosen alternative should have the shortest geometric distance from the positive ideal solution (PIS) and the longest geometric distance from the negative ideal solution (NIS).
The remainder of the article provides background materials to assist in developing the MCDM model. Then, hybrid FAHP–TOPSIS approaches are presented to select the best location for wind power plant construction from seven potential locations in Vietnam. The results and contributions will be discussed at the end of this paper.

2. Literature Review

Much research has been conducted on MCDM approaches, applying them to various fields of science and engineering. This research has been increasing, including works from G. C. Biswal, S. P. Shukla [8], who applied Geographic Information System (GIS) integrated with MCDM for effective site selection for large wind turbine. Dragan Pamucar et al. [9] combined use of GIS with multi-criteria techniques of Best-Worst method (BWM) and Multi-Attributive Ideal-Real Comparative Analysis (MAIRCA) for Wind farms location selection. Geovanna Villacreses et al. [10] was to implement a geographical information system with multi-criteria decision making methods, to select the most feasible location for installing wind power plants in continental Ecuador. Ali Azizi et al. [11] used analytic network process (ANP) and decision making trial and evaluation laboratory (DEMATEL) in a GIS environment for Land suitability assessment for wind power plant site selection. This study assessed the possibility of establishing wind farms in Ardabil province in northwestern Iran by using a combination of ANP and DEMATEL methods in a GIS environment. DEMATEL was used to determine the criteria relationships. The weights of the criteria were determined using ANP and the overlaying process was done on GIS [11]. Patrict Scherhaufer [12] analyzed two main challenges in the assessment: (i) the integration of various relevant stakeholders into the research process, (ii) the integration of different research methods into one conceptionally and methodologically reliable assessment investigating the social acceptance of wind energy
Ahmet Aktasa and Mehmet Kabak [13] proposed a MCDM approach based on hesitant fuzzy linguistic terms set to solve the wind turbine site selection problem. Shafiqur Rehman and Salman A. Khan [14] presented a Multi-Criteria Wind Turbine Selection using Weighted Sum Approach. E. Chamanehpour et al. [15] proposed MCDM methods in GIS for Site selection of wind power plants. Chia-Nan Wang et al. [16] proposed a MCDM approach for Solid Waste to Energy Plant Location Selection in Vietnam. The research also provides a special, useful guideline for solid waste to energy plant location selection in many countries, as well as provides a guideline for location selection in other industries [16]. Chia-Nan Wang et al. [17] presented a MCDM model for Solar Power Plant Location Selection. Supplier selection has been defined as an important problem which could affect the efficiency of an organization. Solar panel supplier selection is complicated in that decision-makers must have a wide range of insight and perspectives about the qualitative and quantitative factors [17].
V. Mytilinou1 and A. J. Kolios [18] proposed a multi-objective optimization approach applied to offshore wind farm location selection in United Kingdom (UK). Varvara Mytilinou et al. [19] presented a Framework for the Selection of Optimum Offshore Wind Farm Locations for Deployment in UK.
Yousaf Ali et al. [20] used AHP for selection of suitable sites in Pakistan for wind power plant installation. Abdel Rahman Al-Shabeeb et al. [21] presented AHP with GIS for a Preliminary Site Selection of Wind Turbines in the North West of Jordan. Yasir Ahmed Solangi [22] used A Factor Analysis, AHP, and Fuzzy-TOPSIS for The Selection of Wind Power Project Location in the Southeastern Corridor of Pakistan. Dragan Pamucar et al. [9] proposed a GIS Multi-Criteria Hybrid Model for Location Selection for Wind Farms. Lütfü ŞağbanşuaandFigenBalo [23] used the MCDM model for 1.5 MW wind turbine selection. James Gaede and Ian H. Rowlands [24] studied a bibliometric review of the social acceptance literature for energy technology and fuels. Tufan Demirel and Ugur Yalcin [25] applied FAHP for selecting the best location for the power station. Chia-Nan Wang et al. [26] proposed a hybrid fuzzy analysis network process (FANP) and Data Envelopment Analysis (DEA) approach for supplier evaluation and selection. Babak Daneshvar Rouyendegh et al. [27] used Intuitionistic Fuzzy TOPSIS in site selection of Wind Power Plants in Turkey. Dimitra G. Vagiona and Manos Kamilakis [28] applied GIS–AHP–TOPSIS for Site Selection for Offshore Wind Farms in the South Aegean—Greece. Mostafa Rezaei-Shouroki [29] proposed a MCDM model for the location optimization of wind turbine sites. Kajal CHATTERJEE and Samarjit KAR [30] proposed Complex Proportional Assessment (COPRAS) -Z methodology, and Z-number model fuzzy numbers with a reliable degree to represent imprecise judgment of decision makers’ in evaluating the weights of criteria and selection of renewable energy alternatives. Baban, S. and Parry, T. [31] developed and applied a GIS-based approach to locating wind farms in the UK.
Pedro G. Lind et al. [32] compared the resulting data reconstruction with that of a model based on a neural network, which has been previously reported as a data-mining algorithm suitable for reconstructing this signal. The results present evidence that the stochastic approach outperforms the neural network in the high frequency domain (1 Hz). Through a Simple Stochastic Model, Pedro G. Lind et al. [33] proposed a procedure to estimate the fatigue loads on wind turbines, based on a recent framework used for reconstructing data series of stochastic properties measured at wind turbines. Ana Russo et al. [34] presented a simple neural network and data pre-selection framework, discriminating the most essential input data for accurately forecasting the concentrations of PM10, based on observations for the years between 2002 and 2006 in the metropolitan region of Lisbon, Portugal. Robert Gennaro Sposatoa and Nina Hampla [35] presented worldviews as predictors of wind and solar energy support in Austria. Ana Russo, Frank Raischel and Pedro G. Lind [36] applied recent methods in stochastic data analysis for discovering a set of a few stochastic variables that represent the relevant information on a multivariate stochastic system, used as input for artificial neural network models for air quality forecast.

3. Material and Methodology

3.1. Research Development

In this work, the authors proposed an MCDM model, including fuzzy AHP and TOPSIS approaches, for selecting the optimal location for wind power plant construction in Vietnam. There are three stages in this research, as shown in Figure 2.
Stage 1: Defining goal and criteria. In this step, the criteria for selecting the optimal location will be identified. All the criteria have been built through expert interviews and literature reviews.
Stage 2: Applying the FAHP model. There are seven alternatives that can be highly effective for building wind power plants in Vietnam. In this stage, an FAHP is proposed to determine the weight of all criteria and subcriteria.
Stage 3: TOPSIS model is one of the best techniques for addressing complex problems of decision-making, which has a connection with various qualitative and quantitative factors. Thus, the TOPSIS model is applied in this stage. The ranking list will also be defined in this stage.

3.2. Methodology

A brief introduction about fuzzy sets and fuzzy numbers, AHP and TOPSIS models are shown in Section 3.2.1, Section 3.2.2 and Section 3.2.3 of this paper.

3.2.1. Fuzzy Sets and Fuzzy Number

Zadeh (1965) [37] proposed a theory to deal with uncertainty environment conditions. The triangular fuzzy number (TFN) can be defined as (l, m, u). The value l, m and u (lmu), indicate the smallest, the promising and the largest value. A TFN is shown in Figure 3.
A triangular fuzzy number can be described as:
  μ ( x F ˜ ) = { 0 , x l m l u x u m 0 ,     x < l , l x m , m x u , x > u ,  
A fuzzy number (FN) is given by the representatives of each level of membership function as follows:
  M ˜ = ( M l ( y ) , M r ( y ) ) = [ l + ( m l ) y ,   u + ( m u ) y ] , y   [ 0 , 1 ]  
where l(y) and r(y) denote the left-side representation and the right-side representation of a fuzzy number, respectively. Two positive TFN (l11, m11, u11) and ( l 12 ,   m 12 , u 12 ) are presented as following:
  ( l 11 ,   m 11 ,   u 11 ) + ( l 12 ,   m 12 ,   u 12 ) = ( l 11 + l 12 ,   m 11 + m 12 , u 11 + u 12 )   ( l 11 ,   m 11 ,   u 11 ) ( l 12 ,   m 12 ,   u 12 ) = ( l 11 l 12 ,   m 11 m 12 , u 11 u 12 )   ( l 11 ,   m 11 ,   u 11 ) × ( l 12 ,   m 12 ,   u 12 ) = ( l 11 × l 12 ,   m 11 × m 12 , u 11 × u 12 )   ( l 11 ,   m 11 ,   u 11 ) ( l 12 ,   m 12 ,   u 12 ) = ( l 11 / u 12 ,   m 11 / m 12 , u 11 / l 12 )  

3.2.2. Fuzzy Analytical Hierarchy Process (AHP)

FAHP was developed by Saaty [5]. There are seven stages of the procedure as follows:
Step 1: Decision maker compares the criteria via linguistic terms as shown in Table 1.
Step 2: Calculation of K ˜ 1
A pairwise comparison and relative scores is completed as follows:
  K 1 ˜ = ( l A , m A , u A )  
  l A = ( l A 1 l A 2 l A i ) 1 i ,   A = 1 ,   2 ,   i  
  m A = ( m A 1 m A 2 m A i ) 1 i ,   A = 1 ,   2 ,   i  
  u A = ( u A 1 u A 2 u A i ) 1 i ,   A = 1 ,   2 ,   i  
Step 3: Calculation of K ˜ Y
The geometric fuzzy mean is established by (28):
  K ˜ Y =   ( A = 1 i l A , A = 1 i m A , A = 1 i u A )  
Step 4: Calculation of F ˜
The fuzzy geometric mean is determined as:
  F ˜ = K ˜ A Q ˜ Y = ( l A , m A , u A ) A = 1 i l A , A = 1 i m A , A = 1 i u A = [ l A A = 1 i u A , m A A = 1 i m A , u A A = 1 i l A ]  
Step 5: Calculation of P A µ l
The criteria depending on µ cut values are defined for the calculated β. The fuzzy priorities will apply for lower and upper bounds for each µ value:
  P A µ l = ( P A l µ l , P A u µ l ) ; A = 1 ,   2 ,   i ; l = 1 ,   2 ,   L  
Step 6: Calculation of PAl, PAu
Values of PAl, PAu are calculated by combining the lower and the upper values, and dividing them by the total µ values:
  P A l = A = 1 i µ ( P A l ) l l = 1 L µ A ; A = 1 ,   2 ,   i ; l = 1 ,   2 ,   L  
  P A u = A = 1 i µ ( P A u ) l l = 1 L µ A ; A = 1 ,   2 ,   i ; l = 1 ,   2 ,   L  
Step 7: Calculation of Xbd
Combining the upper and the lower bounds values by using the optimism index ( α ) in order to defuzzify:
  P A d = α × P A u + ( 1 α ) × P A l ; α   [ 0 , 1 ] ; A = 1 ,   2 , i  
Step 8: Calculation of PAz
  P A z = P A d A = 1 i P A d ; A = 1 , 2 , i  

3.2.3. Technique for Order Preference by Similarity to Ideal Solution (TOPSIS)

TOPSIS approach is presented by Hwang and Yoon [38]. The main concept of TOSIS is that optimal alternatives must have the shortest geometric distance from the PIS and NIS [39].
Step 1: Determine the normalized decision matrix, and raw values (xij) are converted to normalized values (nij) by:
  h c d = y c d c g y a b 2 ,   c = 1 , g ; d = 1 , h .  
Step 2: Calculate the weight normalized value (vij), by:
  l c d = P c d h c d ,   c = 1 , . , g ; d = 1 , , h .  
where Pj is the weight of the cth criterion and c = 1 h p p = 1 .
Step 3: Calculate the PIS ( F + ) and PIS ( F ), where l c + indicate the maximum values of l c d and l c indicates the minimum value l c d   .
  F + = { l 1 + , , l h + } = { ( max d l c d | c C ) , ( min d l c d | d D ) } ,  
  F = { l 1 , , l n } = { ( min d l c d | c C ) , ( max d l c d | d D ) } ,  
where A is related to profit criteria, and F is related to cost criteria.
Step 4: Determine a distance of the PIS ( Q c + ) separately by:
  Q c + = { d = 1 h ( l c d l d + ) 2 } 1 2 ,   c = 1 ,   .   ,   g  
Similarly, the separation from the NIS ( Q c ) is given as:
  Q c = { d = 1 h ( l c d l d ) 2 } 1 2 ,   c = 1 ,   .   ,   g  
Step 5: Determine the relationship proximal to the problem-solving approaches, proximal relationship from option F c to option F +
  C c = Q c Q c + + Q c ,   c = 1 , , g .  
Step 6: Rank alternatives to determine the best option with the maximum value of C c

4. Case Study

Located in the monsoon subtropical area with a long coastline, Vietnam has fundamental advantages for developing wind energy. When comparing the average wind speed in the East Sea of Vietnam and the surrounding sea areas, the result shows that wind in the East Sea of Vietnam is fairly strong and seasonally changes. A wind speed map of Vietnam is shown in Figure 4.
For this research, the authors collected data from seven potential locations that are viable for wind power plants, as shown in Table 2.
The AHP model with fuzzy logic is applied in the first stage of this work. A hierarchical structure to select the best location is built with four main criteria (including 12 sub-criteria). Completion of a questionnaire for analyzing the FAHP model is done by interviewing experts, and preferences from other research. The weight of each criteria is defined by the comparison matrix. The Hierarchical Structures for the FAHP approach are shown in Figure 5.
A fuzzy comparison matrix for GOAL from the FAHP model is shown in Table 3.
The fuzzy numbers were converted to real numbers by using the TFN. During the defuzzification, the authors obtain the coefficients α = 0.5 and β = 0.5 (Tang and Beynon) [41]. In it, α represents the uncertain environment conditions, and β represents the attitude of the evaluator is fair.
g 0.5 , 0.5 ( a E C , S C ¯ ) = [ ( 0.5 × 2.5 ) + ( 1 0.5 ) × 3.5 ] = 3
f0.5(LEC,SC) = (3 − 2) × 0.5 + 2 = 2.5
f0.5(UEC,SC) = 4 − (4 − 3) × 0.5 = 3.5
g 0.5 , 0.5 ( a S C , E C ¯ ) = 1 / 3
The remaining calculations for others criteria are similar to the above calculation. The real number priority when comparing the main criteria pairs are shown in Table 4.
For calculating the maximum individual value as following:
OA1 = (1 × 3 × 4 × 3)1/4 = 2.44
OA2 = (1/3 × 1 × 2 × 5)1/4 = 1.35
OA3 = (1/4 × 1/2 × 1 x 2)1/4 = 0.71
OA4 = (1/3 × 1/5 × 1/2 × 1)1/4 = 0.43
O A = OA 1 + OA 2 + OA 3 + OA 4 = 4.9
ω 1 = 2.44 4.93 = 0.49
ω 2 = 1.35 4.93 = 0.27
ω 3 = 0.71 4.93 = 0.14
ω 4 = 0.43 4.93 = 0.09
[ 1 3 4 2 1 / 3 1 2 5 1 / 4 1 / 2 1 2 1 / 3 1 / 5 1 / 2 1 ] × [ 0.49 0.27 0.14 0.09 ] = [ 2.04 1.16 0.58 0.38 ]
[ 2.04 1.16 0.58 0.38 ] / [ 0.49 0.27 0.14 0.09 ] = [ 4.16 4.30 4.14 4.22 ]
Based on the number of main criteria, the authors get n = 4, λmax and CI is calculated as follows:
λ m a x = 4.16 + 4.30 + 4.14 + 4.22 4 = 4.21
C I = λ m a x n n 1 = 4.21 4 4 1 = 0.07
To calculate CR value, we get RI = 0.9 with n = 4.
C R = C I R I = 0.04 0.9 = 0.08
Because CR = 0.08 ≤ 0.1, so we need not to be re-evaluated. A fuzzy comparison matrix for all sub-criteria are shown in Appendix A.
After evaluating the interaction between all the criteria in the FAHP model, the results from Microsoft Excel are shown in Table 5.
Based on the weight of all criteria as defined by the FAHP model, all the potential locations will be ranked by the TOPSIS model in this stage. The normalized weight matrix is shown in Table 6.

5. Results and Discussion

Wind power plant site selection is identified as a critical issue that could affect economic, environmental, technological, and social factors. Further, location selection is complicated, in that decision-makers must have broad perspectives concerning qualitative and quantitative criteria.
In this research, seven potential locations in Vietnam are considered. In this stage, the identification of key criteria and sub-criteria is based on a review of the literature and scientific reports related to the content of the research to determine the necessary criteria. A hierarchical structure to select the optimal place was built with four main criteria. The FAHP was used to define a priority of each potential sites. Then, the TOPSIS model is proposed for ranking potential location. The distance of the PIS Q c + and the separation from the NIS Q c are shown in Table 7.
Results of the TOPSIS model are summarized in Figure 6 and Figure 7; based on the final performance score C c in Table 8, the final location ranking list is DMU2, DMU1, DMU3, DMU5, DMU4, DMU6, and DMU7, respectively. The results show that Binh Thuan (DMU2) is the best location for building a wind power plant in Vietnam.
In Figure 6, DMU2 has the shortest geometric distance from the PIS and the longest geometric distance from the NIS.
This research can be used for ranking potential locations for building wind power plants in many countries, but the number of locations selection is practically limited because of the number of pairwise comparisons that need to be made and a disadvantage of the FAHP approach is that input data, expressed in linguistic terms, depends on experience of decision makers and thus involves subjectivity. Thus, the authors propose to extend these using the MCDM model by combining different methodologies in future research.

6. Conclusions

Location is among the most important decisions that management faces. Thus, wind power plant location decision-making is a highly complex process. The purpose of a location study is to determine an area and site at which the projected operation and investment can be carried out under optimal conditions, with the best monetary return, and with the least number of problems.
Although researchers have applied the FAHP and TOPSIS models in location selection, very few have considered wind power plant location selection under fuzzy environment conditions. Furthermore, there is no work that applies these models for wind power plant location selection in Vietnam. This is a reason why the authors proposed a hybrid AHP model with fuzzy logic and TOPSIS approach for wind power plant location selection. The results in Table 8 show that DMU2 (Binh Thuan) is an optimal place for building a wind power plant in Vietnam.
The contributions of this work proposed a MCDM approach under fuzzy environments for wind power plant location selection in Vietnam. This paper also resides in the evolution of a new fuzzy MCDM model that is flexible and practical for the decision-maker. This research also provides a useful guideline for wind power plant location selection in others countries.
For improving these MCDM models, it is suggested that applications be increased through development of new factors, subfactors, or different methodologies, e.g., fuzzy analysis network process (FANP), etc., which can also be combined for different scenarios regarding energy issues.

Author Contributions

In this research, C.-N.W., Y.-F.H. built the research ideas, and reviewed manuscript. V.-T.N., Y.-C.C. designed the frameworks, collected data, analyzed the data, summarized and wrote the manuscript.

Funding

This research received partly supported by National Kaohsiung University of Science and Technology and MOST107-2622-E-992-012-CC3 from the Ministry of Sciences and Technology in Taiwan.

Conflicts of Interest

The authors declare no conflict of interest.

Appendix A

Table A1. Input data of GOAL.
Table A1. Input data of GOAL.
CriteriaPriorityCriteria
(9,9,9)(7,8,9)(6,7,8)(5,6,7)(4,5,6)(3,4,5)(2,3,4)(1,2,3)(1)(1,2,3)(2,3,4)(3,4,5)(4,5,6)(5,6,7)(6,7,8)(7,8,9)(9,9,9)
EC X SC
EC X SO
EC X TE
SC X SO
SC X TE
SO X TE
Table A2. Input data of Economic (EC).
Table A2. Input data of Economic (EC).
CriteriaPriorityCriteria
(9,9,9)(7,8,9)(6,7,8)(5,6,7)(4,5,6)(3,4,5)(2,3,4)(1,2,3)(1,1,1)(1,2,3)(2,3,4)(3,4,5)(4,5,6)(5,6,7)(6,7,8)(7,8,9)(9,9,9)
CTC X OMC
CTC X PTD
OMC X PTD
Table A3. Input data of Environmental (SC).
Table A3. Input data of Environmental (SC).
CriteriaPriorityCriteria
(9,9,9)(7,8,9)(6,7,8)(5,6,7)(4,5,6)(3,4,5)(2,3,4)(1,2,3)(1,1,1)(1,2,3)(2,3,4)(3,4,5)(4,5,6)(5,6,7)(6,7,8)(7,8,9)(9,9,9)
CTC X OMC
CTC X PTD
OMC X PTD
Table A4. Input data of Social (SO).
Table A4. Input data of Social (SO).
CriteriaPriorityCriteria
(9,9,9)(7,8,9)(6,7,8)(5,6,7)(4,5,6)(3,4,5)(2,3,4)(1,2,3)(1,1,1)(1,2,3)(2,3,4)(3,4,5)(4,5,6)(5,6,7)(6,7,8)(7,8,9)(9,9,9)
DCA X DRN
DCA X WEP
DRN X WEP
Table A5. Input data of Technological (TE).
Table A5. Input data of Technological (TE).
CriteriaPriorityCriteria
(9,9,9)(7,8,9)(6,7,8)(5,6,7)(4,5,6)(3,4,5)(2,3,4)(1,2,3)(1,1,1)(1,2,3)(2,3,4)(3,4,5)(4,5,6)(5,6,7)(6,7,8)(7,8,9)(9,9,9)
LRC X DRN
LRC X WEP
PTL X WEP
Table A6. Input data of Construction cost (CTC).
Table A6. Input data of Construction cost (CTC).
CriteriaPriorityCriteria
(9,9,9)(7,8,9)(6,7,8)(5,6,7)(4,5,6)(3,4,5)(2,3,4)(1,2,3)(1,1,1)(1,2,3)(2,3,4)(3,4,5)(4,5,6)(5,6,7)(6,7,8)(7,8,9)(9,9,9)
PL1 X PL2
PL1 X PL3
PL1 X PL4
PL1 X PL5
PL1 X PL6
PL1 X PL7
PL1 X PL3
PL2 X PL4
PL2 X PL5
PL2 X PL6
PL2 X PL7
PL3 X PL4
PL3 X PL5
PL3 X PL6
PL3 X PL7
PL4 X PL5
PL4 X PL6
PL4 X PL7
PL5 X PL6
PL5 X PL7
PL6 X PL7
Table A7. Input data of Distance from the city/urban area (DCA).
Table A7. Input data of Distance from the city/urban area (DCA).
CriteriaPriorityCriteria
(9,9,9)(7,8,9)(6,7,8)(5,6,7)(4,5,6)(3,4,5)(2,3,4)(1,2,3)(1,1,1)(1,2,3)(2,3,4)(3,4,5)(4,5,6)(5,6,7)(6,7,8)(7,8,9)(9,9,9)
PL1 X PL2
PL1 X PL3
PL1 X PL4
PL1 X PL5
PL1 X PL6
PL1 X PL7
PL1 X PL3
PL2 X PL4
PL2 X PL5
PL2 X PL6
PL2 X PL7
PL3 X PL4
PL3 X PL5
PL3 X PL6
PL3 X PL7
PL4 X PL5
PL4 X PL6
PL4 X PL7
PL5 X PL6
PL5 X PL7
PL6 X PL7
Table A8. Input data of Distance from main road network (DRN).
Table A8. Input data of Distance from main road network (DRN).
CriteriaPriorityCriteria
(9,9,9)(7,8,9)(6,7,8)(5,6,7)(4,5,6)(3,4,5)(2,3,4)(1,2,3)(1,1,1)(1,2,3)(2,3,4)(3,4,5)(4,5,6)(5,6,7)(6,7,8)(7,8,9)(9,9,9)
PL1 X PL2
PL1 X PL3
PL1 X PL4
PL1 X PL5
PL1 X PL6
PL1 X PL7
PL1 X PL3
PL2 X PL4
PL2 X PL5
PL2 X PL6
PL2 X PL7
PL3 X PL4
PL3 X PL5
PL3 X PL6
PL3 X PL7
PL4 X PL5
PL4 X PL6
PL4 X PL7
PL5 X PL6
PL5 X PL7
PL6 X PL7
Table A9. Input data of Effect on the ecological environment (EEE).
Table A9. Input data of Effect on the ecological environment (EEE).
CriteriaPriorityCriteria
(9,9,9)(7,8,9)(6,7,8)(5,6,7)(4,5,6)(3,4,5)(2,3,4)(1,2,3)(1,1,1)(1,2,3)(2,3,4)(3,4,5)(4,5,6)(5,6,7)(6,7,8)(7,8,9)(9,9,9)
PL1 X PL2
PL1 X PL3
PL1 X PL4
PL1 X PL5
PL1 X PL6
PL1 X PL7
PL1 X PL3
PL2 X PL4
PL2 X PL5
PL2 X PL6
PL2 X PL7
PL3 X PL4
PL3 X PL5
PL3 X PL6
PL3 X PL7
PL4 X PL5
PL4 X PL6
PL4 X PL7
PL5 X PL6
PL5 X PL7
PL6 X PL7
Table A10. Input data of Effect on life quality of resident (ELR).
Table A10. Input data of Effect on life quality of resident (ELR).
CriteriaPriorityCriteria
(9,9,9)(7,8,9)(6,7,8)(5,6,7)(4,5,6)(3,4,5)(2,3,4)(1,2,3)(1,1,1)(1,2,3)(2,3,4)(3,4,5)(4,5,6)(5,6,7)(6,7,8)(7,8,9)(9,9,9)
PL1 X PL2
PL1 X PL3
PL1 X PL4
PL1 X PL5
PL1 X PL6
PL1 X PL7
PL1 X PL3
PL2 X PL4
PL2 X PL5
PL2 X PL6
PL2 X PL7
PL3 X PL4
PL3 X PL5
PL3 X PL6
PL3 X PL7
PL4 X PL5
PL4 X PL6
PL4 X PL7
PL5 X PL6
PL5 X PL7
PL6 X PL7
Table A11. Input data of Land use (LAN).
Table A11. Input data of Land use (LAN).
CriteriaPriorityCriteria
(9,9,9)(7,8,9)(6,7,8)(5,6,7)(4,5,6)(3,4,5)(2,3,4)(1,2,3)(1,1,1)(1,2,3)(2,3,4)(3,4,5)(4,5,6)(5,6,7)(6,7,8)(7,8,9)(9,9,9)
PL1 X PL2
PL1 X PL3
PL1 X PL4
PL1 X PL5
PL1 X PL6
PL1 X PL7
PL1 X PL3
PL2 X PL4
PL2 X PL5
PL2 X PL6
PL2 X PL7
PL3 X PL4
PL3 X PL5
PL3 X PL6
PL3 X PL7
PL4 X PL5
PL4 X PL6
PL4 X PL7
PL5 X PL6
PL5 X PL7
PL6 X PL7
Table A12. Input data of Legal and Regulatory compliance (LTC).
Table A12. Input data of Legal and Regulatory compliance (LTC).
CriteriaPriorityCriteria
(9,9,9)(7,8,9)(6,7,8)(5,6,7)(4,5,6)(3,4,5)(2,3,4)(1,2,3)(1,1,1)(1,2,3)(2,3,4)(3,4,5)(4,5,6)(5,6,7)(6,7,8)(7,8,9)(9,9,9)
PL1 X PL2
PL1 X PL3
PL1 X PL4
PL1 X PL5
PL1 X PL6
PL1 X PL7
PL1 X PL3
PL2 X PL4
PL2 X PL5
PL2 X PL6
PL2 X PL7
PL3 X PL4
PL3 X PL5
PL3 X PL6
PL3 X PL7
PL4 X PL5
PL4 X PL6
PL4 X PL7
PL5 X PL6
PL5 X PL7
PL6 X PL7
Table A13. Input data of Operation and Maintenance Cost (OMC).
Table A13. Input data of Operation and Maintenance Cost (OMC).
CriteriaPriorityCriteria
(9,9,9)(7,8,9)(6,7,8)(5,6,7)(4,5,6)(3,4,5)(2,3,4)(1,2,3)(1,1,1)(1,2,3)(2,3,4)(3,4,5)(4,5,6)(5,6,7)(6,7,8)(7,8,9)(9,9,9)
PL1 X PL2
PL1 X PL3
PL1 X PL4
PL1 X PL5
PL1 X PL6
PL1 X PL7
PL1 X PL3
PL2 X PL4
PL2 X PL5
PL2 X PL6
PL2 X PL7
PL3 X PL4
PL3 X PL5
PL3 X PL6
PL3 X PL7
PL4 X PL5
PL4 X PL6
PL4 X PL7
PL5 X PL6
PL5 X PL7
PL6 X PL7
Table A14. Input data of Potential demand (PTD).
Table A14. Input data of Potential demand (PTD).
CriteriaPriorityCriteria
(9,9,9)(7,8,9)(6,7,8)(5,6,7)(4,5,6)(3,4,5)(2,3,4)(1,2,3)(1,1,1)(1,2,3)(2,3,4)(3,4,5)(4,5,6)(5,6,7)(6,7,8)(7,8,9)(9,9,9)
PL1 X PL2
PL1 X PL3
PL1 X PL4
PL1 X PL5
PL1 X PL6
PL1 X PL7
PL1 X PL3
PL2 X PL4
PL2 X PL5
PL2 X PL6
PL2 X PL7
PL3 X PL4
PL3 X PL5
PL3 X PL6
PL3 X PL7
PL4 X PL5
PL4 X PL6
PL4 X PL7
PL5 X PL6
PL5 X PL7
PL6 X PL7
Table A15. Input data of Protection law (PTL).
Table A15. Input data of Protection law (PTL).
CriteriaPriorityCriteria
(9,9,9)(7,8,9)(6,7,8)(5,6,7)(4,5,6)(3,4,5)(2,3,4)(1,2,3)(1,1,1)(1,2,3)(2,3,4)(3,4,5)(4,5,6)(5,6,7)(6,7,8)(7,8,9)(9,9,9)
PL1 X PL2
PL1 X PL3
PL1 X PL4
PL1 X PL5
PL1 X PL6
PL1 X PL7
PL1 X PL3
PL2 X PL4
PL2 X PL5
PL2 X PL6
PL2 X PL7
PL3 X PL4
PL3 X PL5
PL3 X PL6
PL3 X PL7
PL4 X PL5
PL4 X PL6
PL4 X PL7
PL5 X PL6
PL5 X PL7
PL6 X PL7
Table A16. Input data of Regulations and support policies (RSP).
Table A16. Input data of Regulations and support policies (RSP).
CriteriaPriorityCriteria
(9,9,9)(7,8,9)(6,7,8)(5,6,7)(4,5,6)(3,4,5)(2,3,4)(1,2,3)(1,1,1)(1,2,3)(2,3,4)(3,4,5)(4,5,6)(5,6,7)(6,7,8)(7,8,9)(9,9,9)
PL1 X PL2
PL1 X PL3
PL1 X PL4
PL1 X PL5
PL1 X PL6
PL1 X PL7
PL1 X PL3
PL2 X PL4
PL2 X PL5
PL2 X PL6
PL2 X PL7
PL3 X PL4
PL3 X PL5
PL3 X PL6
PL3 X PL7
PL4 X PL5
PL4 X PL6
PL4 X PL7
PL5 X PL6
PL5 X PL7
PL6 X PL7
Table A17. Input data of Wind energy potential (WEP).
Table A17. Input data of Wind energy potential (WEP).
CriteriaPriorityCriteria
(9,9,9)(7,8,9)(6,7,8)(5,6,7)(4,5,6)(3,4,5)(2,3,4)(1,2,3)(1,1,1)(1,2,3)(2,3,4)(3,4,5)(4,5,6)(5,6,7)(6,7,8)(7,8,9)(9,9,9)
PL1 X PL2
PL1 X PL3
PL1 X PL4
PL1 X PL5
PL1 X PL6
PL1 X PL7
PL1 X PL3
PL2 X PL4
PL2 X PL5
PL2 X PL6
PL2 X PL7
PL3 X PL4
PL3 X PL5
PL3 X PL6
PL3 X PL7
PL4 X PL5
PL4 X PL6
PL4 X PL7
PL5 X PL6
PL5 X PL7
PL6 X PL7
Table A18. Comparison matrix for SC.
Table A18. Comparison matrix for SC.
Sub-CriteriaEEEELRLANWeight
EEE(1,1,1)(1/4,1/3,1/2)(2,3,4)0.258284876
ELR(2,3,4)(1,1,1)(4,5,6)0.636985704
LAN(1/4,1/3,1/2)(1/6,1/5,1/4)(1,1,1)0.104729421
Total1
CR = 0.03703
Table A19. Comparison matrix for SO.
Table A19. Comparison matrix for SO.
Sub-CriteriaLRCPTLRSPWeight
LRC(1,1,1)(2,3,4)(1,2,3)0.527836099
PTL(1/4,1/3,1/2)(1,1,1)(1/4,1/3,1/2)0.139647883
RSP(1/3,1/2,1)(2,3,4)(1,1,1)0.332516017
Total1
CR = 0.05156
Table A20. Comparison matrix for SC.
Table A20. Comparison matrix for SC.
Sub-CriteriaEEEELRLANWeight
EEE(1,1,1)(1/4,1/3,1/2)(2,3,4)0.258284876
ELR(2,3,4)(1,1,1)(4,5,6)0.636985704
LAN(1/4,1/3,1/2)(1/6,1/5,1/4)(1,1,1)0.104729421
Total1
CR = 0.03703
Table A21. Comparison matrix for SO.
Table A21. Comparison matrix for SO.
Sub-CriteriaLRCPTLRSPWeight
LRC(1,1,1)(2,3,4)(1,2,3)0.527836099
PTL(1/4,1/3,1/2)(1,1,1)(1/4,1/3,1/2)0.139647883
RSP(1/3,1/2,1)(2,3,4)(1,1,1)0.332516017
Total1
CR = 0.05156
Table A22. Comparison matrix for TE.
Table A22. Comparison matrix for TE.
Sub-CriteriaDCADRNWEPWeight
DCA(1,1,1)(2,3,4)(1/3,1/2,1)0.319618264
DRN(1/4,1/3,1/2)(1,1,1)(1/5,1/4,1/3)0.121957193
WEP(1,2,3)(3,4,5)(1,1,1)0.558424543
Total1
CR = 0.01759
Table A23. Comparison matrix for CTC.
Table A23. Comparison matrix for CTC.
AlternativesDMU1DMU2DMU3DMU4DMU5DMU6DMU7Weight
DMU1(1,1,1)(1,1,1)(3,4,5)(2,3,4)(4,5,6)(2,3,4)(5,6,7)0.319782
DMU2(1,1,1)(1,1,1)(3,4,5)(1,2,3)(1,1,1)(4,5,6)(2,3,4)0.212268
DMU3(1/5,1/4,1/3)(1/5,1/4,1/3)(1,1,1)(1/4,1/3,1/2)(1/5,1/4,1/3)(1/3,1/2,1)(1,2,3)0.050783
DMU4(1/4,1/3,1/2)(1/3,1/2,1)(2,3,4)(1,1,1)(1/5,1/4,1/3)(2,3,4)(4,5,6)0.124539
DMU5(1/6,1/5,1/4)(1,1,1)(3,4,5)(3,4,5)(1,1,1)(1,2,3)(1,2,3)0.178695
DMU6(1/4,1/3,1/2)(1/6,1/5,1/4)(1,2,3)(1/4,1/3,1/2)(1/3,1/2,1)(1,1,1)(1,2,3)0.069675
DMU7(1/7,1/6,1/5)(1/4,1/3,1/2)(1/3,1/2,1)(1/6,1/5,1/4)(1/3,1/2,1)(1/3,1/2,1)(1,1,1)0.044258
Total1
CR = 0.09203
Table A24. Comparison matrix for DCA.
Table A24. Comparison matrix for DCA.
AlternativesDMU1DMU2DMU3DMU4DMU5DMU6DMU7Weight
DMU1(1,1,1)(1,2,3)(3,4,5)(1,2,3)(5,6,7)(1,2,3)(2,3,4)0.292825713
DMU2(1/3,1/2,1)(1,1,1)(2,3,4)(3,4,5)(1,2,3)(2,3,4)(1,2,3)0.213869561
DMU3(1/5,1/4,1/3)(1/4,1/3,1/2)(1,1,1)(1/3,1/2,1)(1/5,1/4,1/3)(1/4,1/3,1/2)(1/3,1/2,1)0.049046169
DMU4(1/3,1/2,1)(1/5,1/4,1/3)(1,2,3)(1,1,1)(1,2,3)(1,1,1)(1/5,1/4,1/3)0.086112465
DMU5(1/7,1/6,1/5)(1/3,1/2,1)(3,4,5)(1/3,1/2,1)(1,1,1)(1/3,1/2,1)(1/6,1/5,1/4)0.070959901
DMU6(1/3,1/2,1)(1/4,1/3,1/2)(2,3,4)(1,1,1)(1,2,3)(1,1,1)(1/4,1/3,1/2)0.096740938
DMU7(1/4,1/3,1/2)(1/3,1/2,1)(1,2,3)(3,4,5)(4,5,6)(2,3,4)(1,1,1)0.190445253
Total1
CR = 0.09687
Table A25. Comparison matrix for DRN.
Table A25. Comparison matrix for DRN.
AlternativesDMU1DMU2DMU3DMU4DMU5DMU6DMU7Weight
DMU1(1,1,1)(2,3,4)(1,2,3)(2,3,4)(6,7,8)(2,3,4)(1,2,3)0.317502421
DMU2(1/4,1/3,1/2)(1,1,1)(1,2,3)(4,5,6)(2,3,4)(1,2,3)(3,4,5)0.218285913
DMU3(1/3,1/2,1)(1/3,1/2,1)(1,1,1)(2,3,4)(1,2,3)(1,1,1)(2,3,4)0.143736516
DMU4(1/4,1/3,1/2)(1/6,1/5,1/4)(1/4,1/3,1/2)(1,1,1)(1/5,1/4,1/3)(1/3,1/2,1)(1/4,1/3,1/2)0.04558615
DMU5(1/8,1/7,1/6)(1/4,1/3,1/2)(1/3,1/2,1)(3,4,5)(1,1,1)(1/3,1/2,1)(1/3,1/2,1)0.071874529
DMU6(1/4,1/3,1/2)(1/3,1/2,1)(1,1,1)(1,2,3)(1,2,3)(1,1,1)(1,1,1)0.104924547
DMU7(1/3,1/2,1)(1/5,1/4,1/3)(1/4,1/3,1/2)(2,3,4)(1,2,3)(1,1,1)(1,1,1)0.098089925
Total1
CR = 0.07316
Table A26. Comparison matrix for EEE.
Table A26. Comparison matrix for EEE.
AlternativesDMU1DMU2DMU3DMU4DMU5DMU6DMU7Weight
DMU1(1,1,1)(1/3,1/2,1)(2,3,4)(3,4,5)(1/3,1/2,1)(1,2,3)(2,3,4)0.198261784
DMU2(1,2,3)(1,1,1)(1,2,3)(2,3,4)(1/3,1/2,1)(1,2,3)(2,3,4)0.206508609
DMU3(1/4,1/3,1/2)(1/3,1/2,1)(1,1,1)(1,2,3)(1,2,3)(2,3,4)(3,4,5)0.179097455
DMU4(1/5,1/4,1/3)(1/4,1/3,1/2)(1/3,1/2,1)(1,1,1)(1/3,1/2,1)(1/4,1/3,1/2)(1,1,1)0.058657984
DMU5(1,2,3)(1,2,3)(1/3,1/2,1)(1,2,3)(1,1,1)(1,2,3)(2,3,4)0.20408295
DMU6(1/3,1/2,1)(1/3,1/2,1)(1/4,1/3,1/2)(2,3,4)(1/3,1/2,1)(1,1,1)(2,3,4)0.102786784
DMU7(1/4,1/3,1/2)(1/4,1/3,1/2)(1/5,1/4,1/3)(1,1,1)(1/4,1/3,1/2)(1/4,1/3,1/2)(1,1,1)0.050604434
Total1
CR = 0.09031
Table A27. Comparison matrix for DLR.
Table A27. Comparison matrix for DLR.
AlternativesDMU1DMU2DMU3DMU4DMU5DMU6DMU7Weight
DMU1(1,1,1)(1,2,3)(5,6,7)(2,3,4)(3,4,5)(1,2,3)(2,3,4)0.292051312
DMU2(1/3,1/2,1)(1,1,1)(1,2,3)(3,4,5)(1,2,3)(1/3,1/2,1)(2,3,4)0.178575121
DMU3(1/7,1/6,1/5)(1/3,1/2,1)(1,1,1)(1/3,1/2,1)(1,1,1)(1/6,1/5,1/4)(1/3,1/2,1)0.052008315
DMU4(1/4,1/3,1/2)(1/5,1/4,1/3)(1,2,3)(1,1,1)(3,4,5)(1/3,1/2,1)(2,3,4)0.125238171
DMU5(1/5,1/4,1/3)(1/3,1/2,1)(1,1,1)(1/5,1/4,1/3)(1,1,1)(1/5,1/4,1/3)(2,3,4)0.073449212
DMU6(1/3,1/2,1)(1,2,3)(4,5,6)(1,2,3)(3,4,5)(1,1,1)(1,2,3)0.21401434
DMU7(1/4,1/3,1/2)(1/4,1/3,1/2)(1,2,3)(1/4,1/3,1/2)(1/4,1/3,1/2)(1/3,1/2,1)(1,1,1)0.064663529
Total1
CR = 0.08811
Table A28. Comparison matrix for LAN.
Table A28. Comparison matrix for LAN.
AlternativesDMU1DMU2DMU3DMU4DMU5DMU6DMU7Weight
DMU1(1,1,1)(1,2,3)(1,2,3)(4,5,6)(3,4,5)(6,7,8)(1,2,3)0.297109615
DMU2(1/3,1/2,1)(1,1,1)(1/4,1/3,1/2)(2,3,4)(1,2,3)(3,4,5)(1/3,1/2,1)0.124532089
DMU3(1/3,1/2,1)(2,3,4)(1,1,1)(4,5,6)(1,2,3)(4,5,6)(1,2,3)0.234956786
DMU4(1/6,1/5,1/4)(1/4,1/3,1/2)(1/6,1/5,1/4)(1,1,1)(2,3,4)(1,2,3)(1/4,1/3,1/2)0.073137012
DMU5(1/5,1/4,1/3)(1/3,1/2,1)(1/3,1/2,1)(1/4,1/3,1/2)(1,1,1)(2,3,4)(1/5,1/4,1/3)0.066573111
DMU6(1/8,1/7,1/6)(1/5,1/4,1/3)(1/6,1/5,1/4)(1/3,1/2,1)(1/4,1/3,1/2)(1,1,1)(1/3,1/2,1)0.039680622
DMU7(1/3,1/2,1)(1,2,3)(1/3,1/2,1)(2,3,4)(3,4,5)(1,2,3)(1,1,1)0.164010765
Total1
CR = 0.07234
Table A29. Comparison matrix for LRC.
Table A29. Comparison matrix for LRC.
AlternativesDMU1DMU2DMU3DMU4DMU5DMU6DMU7Weight
DMU1(1,1,1)(1,2,3)(2,3,4)(4,5,6)(3,4,5)(1,2,3)(2,3,4)0.320996701
DMU2(1/3,1/2,1)(1,1,1)(1/4,1/3,1/2)(1/3,1/2,1)(3,4,5)(1,2,3)(3,4,5)0.134004031
DMU3(1/4,1/3,1/2)(2,3,4)(1,1,1)(1,2,3)(2,3,4)(1,2,3)(5,6,7)0.208398594
DMU4(1/6,1/5,1/4)(1,2,3)(1/3,1/2,1)(1,1,1)(2,3,4)(1,2,3)(3,4,5)0.143500136
DMU5(1/5,1/4,1/3)(1/5,1/4,1/3)(1/4,1/3,1/2)(1/4,1/3,1/2)(1,2,3)(1,2,3)(1,2,3)0.070266308
DMU6(1/3,1/2,1)(1/3,1/2,1)(1/3,1/2,1)(1/3,1/2,1)(1/3,1/2,1)(1,1,1)(2,3,4)0.08248656
DMU7(1/4,1/3,1/2)(1/5,1/4,1/3)(1/7,1/6,1/5)(1/5,1/4,1/3)(1/3,1/2,1)(1/4,1/3,1/2)(1,1,1)0.040347668
Total1
CR = 0.09685
Table A30. Comparison matrix for OMC.
Table A30. Comparison matrix for OMC.
AlternativesDMU1DMU2DMU3DMU4DMU5DMU6DMU7Weight
DMU1(1,1,1)(1,2,3)(3,4,5)(1,2,3)(2,3,4)(2,3,4)(3,4,5)0.308665923
DMU2(1/3,1/2,1)(1,1,1)(1,2,3)(1,2,3)(1,1,1)(1/4,1/3,1/2)(1/4,1/3,1/2)0.100914216
DMU3(1/5,1/4,1/3)(1/3,1/2,1)(1,1,1)(1/3,1/2,1)(1/6,1/5,1/4)(1/3,1/2,1)(1/3,1/2,1)0.050939728
DMU4(1/3,1/2,1)(1/3,1/2,1)(1,2,3)(1,1,1)(1/5,1/4,1/3)(1/4,1/3,1/2)(1/3,1/2,1)0.06964802
DMU5(1/4,1/3,1/2)(1,1,1)(4,5,6)(3,4,5)(1,1,1)(1,1,1)(2,3,4)0.186425117
DMU6(1/4,1/3,1/2)(2,3,4)(1,2,3)(2,3,4)(1,1,1)(1,1,1)(1,2,3)0.168877067
DMU7(1/5,1/4,1/3)(2,3,4)(1,2,3)(1,2,3)(1/4,1/3,1/2)(1/3,1/2,1)(1,1,1)0.11452993
Total1
CR = 0.08676
Table A31. Comparison matrix for PTD.
Table A31. Comparison matrix for PTD.
AlternativesDMU1DMU2DMU3DMU4DMU5DMU6DMU7Weight
DMU1(1,1,1)(1,2,3)(4,5,6)(2,3,4)(6,7,8)(4,5,6)(1,2,3)0.317733136
DMU2(1/3,1/2,1)(1,1,1)(3,4,5)(4,5,6)(2,3,4)(3,4,5)(1,2,3)0.262261449
DMU3(1/6,1/5,1/4)(1/5,1/4,1/3)(1,1,1)(1/5,1/4,1/3)(2,3,4)(1/4,1/3,1/2)(1/3,1/2,1)0.052969386
DMU4(1/4,1/3,1/2)(1/6,1/5,1/4)(3,4,5)(1,1,1)(2,3,4)(1,2,3)(3,4,5)0.148887171
DMU5(1/8,1/7,1/6)(1/4,1/3,1/2)(1/4,1/3,1/2)(1/4,1/3,1/2)(1,1,1)(1/4,1/3,1/2)(1/3,1/2,1)0.040194693
DMU6(1/6,1/5,1/4)(1/5,1/4,1/3)(2,3,4)(1/3,1/2,1)(2,3,4)(1,1,1)(1,2,3)0.095375409
DMU7(1/3,1/2,1)(1/3,1/2,1)(1,2,3)(1/5,1/4,1/3)(1,2,3)(1/3,1/2,1)(1,1,1)0.082578756
Total1
CR = 0.09832
Table A32. Comparison matrix for PTL.
Table A32. Comparison matrix for PTL.
AlternativesDMU1DMU2DMU3DMU4DMU5DMU6DMU7Weight
DMU1(1,1,1)(3,4,5)(2,3,4)(1,2,3)(3,4,5)(4,5,6)(5,6,7)0.351089881
DMU2(1/5,1/4,1/3)(1,1,1)(2,3,4)(1,2,3)(3,4,5)(2,3,4)(2,3,4)0.200265621
DMU3(1/4,1/3,1/2)(1/4,1/3,1/2)(1,1,1)(1/5,1/4,1/3)(1/4,1/3,1/2)(1,2,3)(1/4,1/3,1/2)0.054487897
DMU4(1/3,1/2,1)(1/3,1/2,1)(3,4,5)(1,1,1)(2,3,4)(4,5,6)(2,3,4)0.180208506
DMU5(1/5,1/4,1/3)(1/5,1/4,1/3)(2,3,4)(1/4,1/3,1/2)(1,1,1)(1,2,3)(2,3,4)0.098704044
DMU6(1/6,1/5,1/4)(1/4,1/3,1/2)(1/3,1/2,1)(1/6,1/5,1/4)(1/3,1/2,1)(1,1,1)(1/4,1/3,1/2)0.040650718
DMU7(1/7,1/6,1/5)(1/4,1/3,1/2)(2,3,4)(1/4,1/3,1/2)(1/4,1/3,1/2)(2,3,4)(1,1,1)0.074593332
Total1
CR = 0.09284
Table A33. Comparison matrix for RSP.
Table A33. Comparison matrix for RSP.
AlternativesDMU1DMU2DMU3DMU4DMU5DMU6DMU7Weight
DMU1(1,1,1)(1,2,3)(4,5,6)(4,5,6)(3,4,5)(4,5,6)(1,2,3)0.316504491
DMU2(1/3,1/2,1)(1,1,1)(2,3,4)(4,5,6)(3,4,5)(2,3,4)(5,6,7)0.280026948
DMU3(1/6,1/5,1/4)(1/4,1/3,1/2)(1,1,1)(1/3,1/2,1)(1/4,1/3,1/2)(1/5,1/4,1/3)(1/5,1/4,1/3)0.039448039
DMU4(1/6,1/5,1/4)(1/6,1/5,1/4)(1,2,3)(1,1,1)(1/3,1/2,1)(1/5,1/4,1/3)(1/4,1/3,1/2)0.045923993
DMU5(1/5,1/4,1/3)(1/5,1/4,1/3)(2,3,4)(1,2,3)(1,1,1)(1/3,1/2,1)(1,2,3)0.094718777
DMU6(1/6,1/5,1/4)(1/4,1/3,1/2)(3,4,5)(3,4,5)(1,2,3)(1,1,1)(1/3,1/2,1)0.10995477
DMU7(1/3,1/2,1)(1/7,1/6,1/5)(3,4,5)(2,3,4)(1/3,1/2,1)(1,2,3)(1,1,1)0.113422982
Total1
CR = 0.09493
Table A34. Comparison matrix for WEP.
Table A34. Comparison matrix for WEP.
AlternativesDMU1DMU2DMU3DMU4DMU5DMU6DMU7Weight
DMU1(1,1,1)(1,1,1)(2,3,4)(3,4,5)(1,2,3)(4,5,6)(2,3,4)0.258369063
DMU2(1,1,1)(1,1,1)(3,4,5)(3,4,5)(1,2,3)(4,5,6)(5,6,7)0.293351061
DMU3(1/4,1/3,1/2)(1/5,1/4,1/3)(1,1,1)(3,4,5)(1,2,3)(1,2,3)(2,3,4)0.142468303
DMU4(1/5,1/4,1/3)(1/5,1/4,1/3)(1/5,1/4,1/3)(1,1,1)(1/4,1/3,1/2)(2,3,4)(1,2,3)0.07703134
DMU5(1/3,1/2,1)(1/3,1/2,1)(1/3,1/2,1)(2,3,4)(1,1,1)(1/3,1/2,1)(2,3,4)0.109773315
DMU6(1/6,1/5,1/4)(1/6,1/5,1/4)(1/3,1/2,1)(1/4,1/3,1/2)(1,2,3)(1,1,1)(1,2,3)0.075558663
DMU7(1/4,1/3,1/2)(1/7,1/6,1/5)(1/4,1/3,1/2)(1/3,1/2,1)(1/4,1/3,1/2)(1/3,1/2,1)(1,1,1)0.043448255
Total1
CR = 0.0986

References

  1. Fthenakis, V.; Kim, H.C. Land use and electricity generation: A life-cycle analysis. Renew. Sustain. Energy Rev. 2009, 13, 1465–1474. [Google Scholar] [CrossRef] [Green Version]
  2. Rana Adib. Global Status Report; Renewables: Paris, France, 2011. [Google Scholar]
  3. Global Wind Energy Council. Global Wind Statistics; Global Wind Energy Council: Brussels, Belgium, 2014. [Google Scholar]
  4. World Wind Energy Association. World Wind Energy Report; World Wind Energy Association: Bonn, Germany, 2014. [Google Scholar]
  5. Biswal, G.C.; Shukla, S.P. Site Selection for Wind Farm Installation. Int. J. Innov. Res. Electr. Electron. Instrum. Control Eng. 2015, 3, 59–61. [Google Scholar]
  6. Pamučar, D.; Gigović, L.; Bajić, Z.; Janošević, M. Location Selection for Wind Farms Using GIS Multi-Criteria Hybrid Model: An Approach Based on Fuzzy and Rough Numbers. Sustainability 2017, 9, 1315. [Google Scholar] [CrossRef]
  7. Villacreses, G.; Gaona, G.; Martínez-Gómez, J.; Jijón, D.J. Wind farms suitability location using geographical information system (GIS), based on multi-criteria decision making (MCDM) methods: The case of continental Ecuador. Renew. Energy 2017, 109, 275–286. [Google Scholar] [CrossRef]
  8. Azizi, A.; Malekmohammadi, B.; Jafari, H.R.; Nasiri, H.; Parsa, V.A. Land suitability assessment for wind power plant site selection using ANP-DEMATEL in a GIS environment: Case study of Ardabil province, Iran. Environ. Monit. Assess. 2014, 186, 6695–6709. [Google Scholar] [CrossRef] [PubMed]
  9. Aktas, A.; Kabak, M. A model proposal for locating wind turbines. Procedia Comput. Sci. 2016, 102, 426–433. [Google Scholar] [CrossRef]
  10. Rehman, S.; Khan, S.A. Multi-Criteria Wind Turbine Selection. Int. J. Adv. Comput. Sci. Appl. 2017, 8, 128–132. [Google Scholar]
  11. Chamanehpour, E.; Ahmadizadeh, A. Site selection of wind power plant using multi-criteria decision-making methods in GIS: A case study. Comput. Ecol. Softw. 2017, 7, 49–64. [Google Scholar]
  12. Wang, C.-N.; Nguyen, V.T.; Duong, D.H.; Thai, H.T.N. A Hybrid Fuzzy Analysis Network Process (FANP) and the Technique for Order of Preference by Similarity to Ideal Solution (TOPSIS) Approaches for Solid Waste to Energy Plant Location Selection in Vietnam. Appl. Sci. 2018, 8, 1100. [Google Scholar] [CrossRef]
  13. Wang, C.-N.; Nguyen, V.T.; Thai, H.T.N.; Duong, D.H. Multi-Criteria Decision Making (MCDM) Approaches for Solar Power Plant Location Selection in Viet Nam. Energies 2018, 11, 1504. [Google Scholar] [CrossRef]
  14. Ali, Y.; Butt, M.; Sabir, M.; Mumtaz, U.; Salman, A. Selection of suitable site in Pakistan for wind power plant installation using analytic hierarchy process (AHP). J. Control Decis. 2017, 5, 117–128. [Google Scholar] [CrossRef]
  15. Al-Shabeeb, A.R.; Al-Adamat, R.; Mashagbah, A. AHP with GIS for a Preliminary Site Selection of Wind Turbines in the North West of Jordan. Int. J. Geosci. 2016, 7, 1208–1221. [Google Scholar] [CrossRef]
  16. Solangi, Y.A.; Tan, Q.; Khan, M.W.A.; Mirjat, N.H.; Ahmed, I. The Selection of Wind Power Project Location in the Southeastern Corridor of Pakistan: A Factor Analysis, AHP, and Fuzzy-TOPSIS Application. Energies 2018, 11, 1940. [Google Scholar] [CrossRef]
  17. Şağbanşua, L.; Balo, F. Multi-criteria decision making for 1.5 MW wind turbine selection. Procedia Comput. Sci. 2017, 111, 413–419. [Google Scholar] [CrossRef]
  18. Demirel, T.; Yalcin, U. Multi-criteria wind power plant location selection using fuzzy AHP. In Computational Intelligence in Decision and Control; World Scientific: Singapore, 2008; pp. 1063–1068. [Google Scholar]
  19. Wang, C.N.; Nguyen, V.; Duong, D.; Do, H. A Hybrid Fuzzy Analytic Network Process (FANP) and Data Envelopment Analysis (DEA) Approach for Supplier Evaluation and Selection in the Rice Supply Chain. Symmetry 2018, 10, 221. [Google Scholar] [CrossRef]
  20. Daneshvar Rouyendegh, B.; Yildizbasi, A.; Arikan, Ü.Z. Using Intuitionistic Fuzzy TOPSIS (IFT) in Site Selection of Wind Power Plants in TURKEY. Adv. Fuzzy Syst. 2018, 2018, 6703798. [Google Scholar]
  21. Vagiona, D.G.; Kamilakis, M. Sustainable Site Selection for Offshore Wind Farms. Sustainability 2018, 10, 749. [Google Scholar] [CrossRef]
  22. Rezaei-Shouroki, M. The location optimization of wind turbine sites with using the MCDM approach: A case study. Energy Equip. Syst. 2017, 5, 165–187. [Google Scholar]
  23. Chatterjee, K.; Kar, S. A multi-criteria decision making for renewable energy selection using Z-numbers in uncertain environment. Technol. Econ. Dev. Econ. 2018, 24, 739–764. [Google Scholar] [CrossRef] [Green Version]
  24. Zadeh, L. Fuzzy sets. Inf. Control 1965, 8, 338–353. [Google Scholar] [CrossRef] [Green Version]
  25. Saaty, T.L. The Analytic Hierarchy Process: Planning, Priority Setting, Resources Allocation; McGraw-Hill: New York, NY, USA, 1980. [Google Scholar]
  26. Assari, A.; Maheshand, T.; Assari, E. Role of public participation in sustainability of historical city: Usage of TOPSIS method. Indian J. Sci. Technol. 2012, 5, 2289–2294. [Google Scholar]
  27. Jahanshahloo, G.R.; Lotfi, F.H.; Izadikhah, M. Extension of the TOPSIS Method for Decision-Making Problems with Fuzzy Data. Appl. Math. Comput. 2006, 181, 1544–1551. [Google Scholar] [CrossRef]
  28. Lind, P.G.; Vera-Tudela, L.; Wächter, M.; Kühn, M.; Peinke, J. Normal Behaviour Models for Wind Turbine Vibrations: Comparison of Neural Networks and a Stochastic Approach. Energies 2017, 10, 1944. [Google Scholar] [CrossRef]
  29. Lind, P.G.; Herráez, I.; Wächter, M.; Peinke, J. Fatigue Load Estimation through a Simple Stochastic Model. Energies 2014, 7, 8279–8293. [Google Scholar] [CrossRef] [Green Version]
  30. Russo, A.; Lind, P.G.; Raischel, F.; Trigo, R.; Mendes, M. Neural network forecast of daily pollution concentration using optimal meteorological data at synoptic and local scales. Atmos. Pollut. Res. 2015, 6, 540–549. [Google Scholar] [CrossRef]
  31. Russo, A.; Raischel, F.; Lind, P.G. Air quality prediction using optimal neural networks with stochastic variables. Atmos. Environ. 2013, 79, 822–830. [Google Scholar] [CrossRef] [Green Version]
  32. Scherhaufera, P.; Höltinger, S.; Salaka, B.; Schauppenlehner, T.; Schmidt, J. A participatory integrated assessment of the social acceptance of wind. Energy Res. Soc. Sci. 2018. [Google Scholar] [CrossRef]
  33. Gaede, J.; Rowlands, I.H. Visualizing social acceptance research: A bibliometric review of the social acceptance literature for energy technology and fuels. Energy Res. Soc. Sci. 2018, 40, 142–158. [Google Scholar] [CrossRef]
  34. Sposato, R.G.; Hampl, N. Worldviews as predictors of wind and solar energy support in Austria: Bridging social acceptance and risk perception research. Energy Res. Soc. Sci. 2018, 42, 237–246. [Google Scholar] [CrossRef]
  35. Mytilinou, V.; Lozano-Minguez, E.; Kolios, A. A Framework for the Selection of Optimum Offshore Wind Farm Locations for Deployment. Energies 2018, 11, 1855. [Google Scholar] [CrossRef]
  36. Baban, S.; Parry, T. Developing and applying a GIS-based approach to locating wind farms in the UK. Renew. Energy 2001, 24, 59–71. [Google Scholar] [CrossRef]
  37. Mytilinou, V.; Kolios, A.J. A multi-objective optimisation approach applied to offshore. J. Ocean Eng. Mar. Energy. Energy 2017, 3, 265–284. [Google Scholar] [CrossRef]
  38. Energypedia. Available online: energypedia.info/wiki/Wind_Energy_Country_Analysis_Vietnam (accessed on 15 August 2018).
  39. Tang, Y.C.; Beynon, M.J. Application and Development of a Fuzzy Analytic Hierarchy Process within a Capital Investment Study. J. Bus. Econ. Manag. 2005, 1, 207–230. [Google Scholar]
  40. Bhushan, N.; Rai, K. Strategic Decision Making: Applying the Analytic Hierarchy Process; Springer: New York, NY, USA, 2004. [Google Scholar]
  41. Baker, D.; Bridges, D.; Hunter, R.; Johnson, G.; Krupa, J.; Murphy, J.; Sorenson, K. Guidebook to Decision-Making Methods; NASA: Washington, DC, USA, 2002. [Google Scholar]
Figure 1. General Multi-Criteria Decision Making (MCDM) process [6,7].
Figure 1. General Multi-Criteria Decision Making (MCDM) process [6,7].
Applsci 08 02069 g001
Figure 2. Research methodology.
Figure 2. Research methodology.
Applsci 08 02069 g002
Figure 3. Triangular Fuzzy Number (TFN).
Figure 3. Triangular Fuzzy Number (TFN).
Applsci 08 02069 g003
Figure 4. Wind speed map of Vietnam [40].
Figure 4. Wind speed map of Vietnam [40].
Applsci 08 02069 g004
Figure 5. Hierarchical structures of the Fuzzy Analytic Hierarchy Process (FAHP) model.
Figure 5. Hierarchical structures of the Fuzzy Analytic Hierarchy Process (FAHP) model.
Applsci 08 02069 g005
Figure 6. Geometric distance from positive ideal solution (PIS) and negative ideal solution (NIS).
Figure 6. Geometric distance from positive ideal solution (PIS) and negative ideal solution (NIS).
Applsci 08 02069 g006
Figure 7. Results from TOPSIS model.
Figure 7. Results from TOPSIS model.
Applsci 08 02069 g007
Table 1. Linguistic terms and the corresponding TFN.
Table 1. Linguistic terms and the corresponding TFN.
Saaty ScaleDefinitionFTN Scale
1Equally important(1,1,1)
3Weakly important(2,3,4)
5Fairly important(4,5,6)
7Strongly important(6,7,8)
9Absolutely important(9,9,9)
2The intermittent values between two adjacent scales(1,2,3)
4(3,4,5)
6(5,6,7)
8(7,8,9)
Table 2. Seven potential locations for building wind power plants in Vietnam.
Table 2. Seven potential locations for building wind power plants in Vietnam.
NoLocationsSymbol
1Quang NinhDMU1
2Binh ThuanDMU2
3Quang TriDMU3
4Ninh ThuanDMU4
5Tra VinhDMU5
6Hai VanDMU6
7Bac LieuDMU7
Table 3. Fuzzy comparison matrices for GOAL.
Table 3. Fuzzy comparison matrices for GOAL.
CriteriaEconomic (EC)Environmental (SC)Social (SO)Technological (TE)
Economic (EC)(1,1,1)(2,3,4)(3,4,5)(2,3,4)
Environmental (SC)(1/4,1/3,1/2)(1,1,1)(1,2,3)(4,5,6)
Social (SO)(1/5,1/4,1/3)(1/3,1/2,1)(1,1,1)(1,2,3)
Technological (TE)(1/4,1/3,1/2)(1/6,1/5,1/4)(1/3,1/2,1)(1,1,1)
Table 4. Real number priority.
Table 4. Real number priority.
CriteriaEconomic (EC)Environmental (SC)Social (SO)Technological (TE)
Economic (EC)1343
Environmental (SC)1/3125
Social (SO)¼1/212
Technological (TE)1/31/51/21
Table 5. Results of the FAHP model.
Table 5. Results of the FAHP model.
No.Sub-CriteriaWeight
1Land use (LAN)0.02858
2Construction cost (CTC)0.26503
3Distance from main road network (DRN)0.01089
4Wind energy potential (WEP)0.04987
5Effect on the ecological environment (EEE)0.07047
6Effect on life quality of resident (ELR)0.17379
7Legal and Regulatory compliance (LTC)0.07166
8Potential demand (PTD)0.07012
9Operation and Maintenance Cost (OMC)0.16696
10Distance from the city/urban area (DCA)0.02854
11Protection law (PTL)0.01896
12Regulations and support policies (RSP)0.04514
Table 6. Normalized Weight Matrix from The Technique for Order of Preference by Similarity to Ideal Solution (TOPSIS) model.
Table 6. Normalized Weight Matrix from The Technique for Order of Preference by Similarity to Ideal Solution (TOPSIS) model.
DMULANCTCDRNWEPEEEELRLTCPTDOMCDCAPTLRSP
DMU10.00340.06440.00520.01860.02620.05480.02730.03310.04020.01150.00810.0171
DMU20.00500.03220.00400.01860.02620.07310.02730.02940.04020.00860.00810.0171
DMU30.00670.08050.00350.01860.02620.06390.01820.02940.04020.01150.00600.0196
DMU40.01180.11270.00460.01860.02620.07310.03640.02940.08040.01010.00600.0220
DMU50.01180.11270.00290.02470.02620.07310.01820.02580.06030.01300.00700.0147
DMU60.01510.12880.00460.01240.03500.05480.03640.01840.08040.01010.00500.0147
DMU70.01510.12880.00350.01860.01750.06390.01820.01470.08040.01010.00910.0122
Table 7. Q c + and Q c value from TOPSIS model.
Table 7. Q c + and Q c value from TOPSIS model.
DMUsDMU1DMU2DMU3DMU4DMU5DMU6DMU7
Q(+,c)0.04000.01550.05080.09290.08560.11110.1079
Q(−,c)0.08050.10890.06940.03230.03930.01360.0280
Table 8. Ranking list of TOPSIS model.
Table 8. Ranking list of TOPSIS model.
DMUsDMU1DMU2DMU3DMU4DMU5DMU6DMU7
C(c)0.66790.87540.57750.25800.31500.10880.2059
Rank2135476

Share and Cite

MDPI and ACS Style

Wang, C.-N.; Huang, Y.-F.; Chai, Y.-C.; Nguyen, V.T. A Multi-Criteria Decision Making (MCDM) for Renewable Energy Plants Location Selection in Vietnam under a Fuzzy Environment. Appl. Sci. 2018, 8, 2069. https://doi.org/10.3390/app8112069

AMA Style

Wang C-N, Huang Y-F, Chai Y-C, Nguyen VT. A Multi-Criteria Decision Making (MCDM) for Renewable Energy Plants Location Selection in Vietnam under a Fuzzy Environment. Applied Sciences. 2018; 8(11):2069. https://doi.org/10.3390/app8112069

Chicago/Turabian Style

Wang, Chia-Nan, Ying-Fang Huang, Yu-Chien Chai, and Van Thanh Nguyen. 2018. "A Multi-Criteria Decision Making (MCDM) for Renewable Energy Plants Location Selection in Vietnam under a Fuzzy Environment" Applied Sciences 8, no. 11: 2069. https://doi.org/10.3390/app8112069

Note that from the first issue of 2016, this journal uses article numbers instead of page numbers. See further details here.

Article Metrics

Back to TopTop