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Article

The Study of a Multicriteria Decision Making Model for Wave Power Plant Location Selection in Vietnam

1
Department of Industrial Engineering and Management, National Kaohsiung University of Science and Technology, Kaohsiung 80778, Taiwan
2
Hi-P International Limited, Singapore 609926, Singapore
3
Department of Logistics and Supply Chain Management, Hong Bang International University, Ho Chi Minh City 72320, Vietnam
4
Metal Industries and Research Centre, Kaohsiung 83158, Taiwan
*
Authors to whom correspondence should be addressed.
Processes 2019, 7(10), 650; https://doi.org/10.3390/pr7100650
Submission received: 22 August 2019 / Revised: 14 September 2019 / Accepted: 18 September 2019 / Published: 23 September 2019
(This article belongs to the Section Advanced Digital and Other Processes)

Abstract

:
With about a 7% average annual economic growth rate in Vietnam, the demand for electricity production is increasing, and, with more than 3000 km of coastline, the country has great potential for developing wave energy sources to meet such electricity production. This energy source, also known as renewable energy, comes from tides, wind, heat differences, flows, and waves. Both wind and wave energy are considered to have the most potential for energy sources in Vietnam. Just as hydropower projects are controversial due to depleting water resources and regulating floods, nuclear power projects cause safety concerns. To overcome this problem, Vietnamese scientists are considering using abundant wave energy resources for electricity. Nowadays, the ocean energy sector offers many new technologies to help minimize carbon dioxide emissions (CO2) in the living environment. Further, many countries already have wave power plants. In this research, an integrated model, combining the fuzzy analytical network process (FANP) and the technique for order of preference by similarity to ideal solution (TOPSIS), is proposed for wave energy plant location selection. As a result, Con Co (SITE3) is determined the best site for wave energy production. The primary aim of this study is to provide insight into site selection problems for renewable energy investments of Vietnam. The contribution of this research is to propose a fuzzy multiple-criteria decision-making (MCDM) model for site selection in the renewable energy sector. The proposed model also can address different complex problems in location selection; it is also a flexible design model for considering the evaluation criteria; further, it is applicable to site selection of other renewable energies in the world.

1. Introduction

The oceans form one of the largest yet least explored renewable energy sources on earth. Ocean energy has the potential to provide a substantial amount of renewable and reliable energy all over the world. Different technologies employ different strategies for harvesting that energy. The main sources of ocean energy are tidal streams, ocean currents, tidal range (rise and fail), waves, ocean thermal energy, and salinity gradients [1,2].
Vietnam has a sea area of about 1 million km2, stretching 3260 km along the length of the country, which is a favorable factor for developing energy from the sea. The calculation results show that wave energy along the coastal strip of Vietnam is very high. The weakest average energy flow reaches 15 kW/m; the strongest 30 kW/m [3].
According to calculations, if a wave has a height of 1 m, at a length of about 1.8 km of coast, it is possible to create an energy source equal to 35,000 horsepower [4]. Vietnam has the ability to utilize an extra source of renewable energy, that is, energy from ocean waves. However, one of the major problems with wave energy is that it is location-dependent, where many factors that increase its utilization potential are dependent on the feasibility of the locations. In this research, the authors propose a new fuzzy multiple-criteria decision-making (MCDM) method, which is both objective and cognitive, to identify suitable locations where the optimal amount of wave energy can be produced in Vietnam. Site selection is an important issue for the MCDM model. Many studies have applied the MCDM approach to various fields in the energy sector, e.g., J. Huang et al. [5]; E. Løken et al. [6], Soumya Ghosh et al. [7]. Utilizing any decision-making technique involving numerical analysis of alternatives requires three steps: [6].
  • Determine the relevant factors and options.
  • Attach numerical measures to the relative importance of the factors and to the impacts of the options on these factors.
  • Process the numerical values to determine a ranking of each option.
In the first stage of this research, all criteria affecting location selection were determined by experts and literature reviews, and fuzzy analytical network process (FANP) method was utilized to identify the weight of all criteria in the second stage. The technique for order of preference by similarity to ideal solution (TOPSIS) is a multicriteria decision analysis method, which was used for ranking potential sites in the final stage.

2. Literature Review

Soumya Ghosh et al. [8] proposed an artificial neural network model (ANN) and MCDM models for selecting suitable location for developing of the location suitability index for wave energy production. Tilottama et al. [9] applied an Analytic Hierarchy Process (AHP) model for wave power plant location selection. This study introduces a new way to identify location where maximum utilization of ocean energy resources can be possible with minimum expenditure.
S. Astariz et al. [10] proposed new approach to identifying suitable sites for co-located wave and wind farms. The goal of this research is to develop a new model to defining suitable location for co-located wave and wind farms. Cigdem Ozkan et al. [11] used observed data to estimate the ocean wave power available in coastal Florida. CN. Wang et al. [12] proposed an MCDM model including fuzzy analytical hierarchy process (FAHP), data envelopment analysis (DEA), and the TOPSIS to find the optimal location for solar plant site selection in Vietnam. This research is part of the evolution of a new model that is flexible and practical for decision makers and this work also provides useful guidelines for renewable energy sector.
Özge Pınar Akkaş et al. [13] applied an MCDM model for solar power plant location selection in the Central Anatolian Region of Turkey. In this research, various suggestions are identified about site selection, which is an important step in the photovoltaic power systems (PVPS) establishment. Hence, the factors for selecting the appropriate location are analyzed by the MCDM model. Laura Zubiate et al. [14] introduced a new approach for site selection for wave energy projects. In this study, the authors integrated the data as layers into a GIS (Geographic Information Systems) tool, given the spatial nature of the project. This tool will provide an accurate and convenient visual aid for choosing a suitable area.
M. Vasileiou et al. [15] combined an MCDM model and GIS for site selection of hybrid offshore wind and wave energy systems in Greece. Those that are unsuitable for the deployment of HOWiWaES marine areas are determined through the GIS database at the first step of this research. Then, the AHP model is applied for evaluating and ranking all criteria in the second step. Chang-Lin Yang et al. [16] applied a ANP/AHP model for location selection. A. Azizi et al. [17] applied hybrid ANP and decision making trial and evaluation (DEMATEL) methods in a GIS environment. DEMATEL is used to identify the factor’s relationships. The weights of the criteria were calculated using an ANP model and the overlaying process was identified in GIS environment.
Dragan Pamucar et al. [18] applied a GIS multi-criteria hybrid model, an approach based on fuzzy and rough numbers for wind farm site selection. Saeedeh Nasehi et al. [19] used a hybrid model including fuzzy GIS and ANP for wind power plant location selection. The primary goal of this research was the location selection based on the fuzzy logic and weighted linear combination (WLC).
Nazmul Ahsan et al. [20] proposed fuzzy ANP extent analysis to assess and select locations for wind power plants. The primary goal of this research is to present a comprehensive pairwise comparison of factors and subfactors for selecting the optimal location for wind power plant. A.K Jaiswal et al. [21] proposed geospatial multicriteria decision making based site sustainability analysis for solid waste disposal using a TOPSIS model. I. Konstantinos, et al. [22] proposed a spatial decision support system framework for the evaluation of biomass energy production locations: case study in the regional unit of Drama, Greece.
Wang et al. [23] proposed an MCDM model for wind power plant location section in Vietnam. In this research, the author applied a hybrid model by using FAHP and TOPSIS for finding optimal locations for wind power plants. I. Konstantinos et al. [24] proposed decision support system methodology for selecting wind farm installation locations using AHP and TOPSIS. The application of this methodology can help decision makers to easily overcome conflicting parameters and propose optimal solutions which are acceptable from citizens and stake holders while at the same time are economical and environmentally friendly. B. Asl-Rousta [25] applied a TOPSIS model to aggregate different efficiency criteria and to discriminate between the models. Results show the usefulness of the proposed MCDA-based approach to rank different alternatives (settings) of model calibration. M. Erbaş et al. [26] applied a GIS-based fuzzy multi-criteria decision analysis for optimal siting of electric vehicle charging stations.
As shown in the literature review, the MCDM model has been applied to various fields of science and technology, and its use has increased over the years. One of the areas in which this model has been applied is the location selection process, but few have considered this issue in wave energy power plant location selection. This is the main reason why this study proposes an MCDM model for wave power plant site selection. The primary goal of this research is to provide an MCDM model and detail the decision-making steps in site selection in the renewable energies sector. The goal of this study is also to propose useful guidelines for location selection in other fields.

3. Methodology

3.1. Research Development

In this work, the authors proposed a fuzzy multicriteria decision-making (FMCDM) model for analyzing a suitable site for wave energy production via FANP and TOPSIS models. This research involves three main steps, as shown in Figure 1.
Step 1: The authors identified all criteria and sub-criteria effects in regard to the wave power plant location selection process through experts and literature reviews.
Step 2: The FANP was proposed to identify the weight of all criteria in the second stage.
Step 3: The technique for order of preference by similarity to an ideal solution (TOPSIS) is an MCDM method. In this research, TOPSIS was used for ranking potential sites in the final stage.

3.2. Basic Model Theory

3.2.1. Fuzzy Analytic Network Process (FANP)

A fuzzy set is a class of objects with continuity of membership levels [27]. Such a set is characterized by a member function, which assigns each object a member level between [0,1]. The TFN can be defined as (q, w, e), q, w and e (qwe) are parameters, indicating the smallest, the promising, and the largest value in TFN. TFN are shown in Figure 2.
Triangular Fuzzy Number: a fuzzy number M ˜ = (q, w, e) is called triangular fuzzy number if its membership function is given by:
μ ( x M ˜ ) = { 0 ,             x < w , x q w q       q x w , e x e w   w x e , 0 ,           x > e   .     .
Consider two positive triangular fuzzy numbers M 1 = ( q 1 ,   w 1 ,   e 1 ) and M 2 = ( q 2 ,   w 2 ,   e 2 ).
The basic calculations of fuzzy numbers are shown in:
M ˜ = ( M o ( y ) , M i ( y ) ) = [ q + ( w q ) y ,   e + ( w e ) y ] , y   [ 0 , 1 ] .
o(y), i(y) indicates both the left side and the right side of a fuzzy number as:
( q 1 ,   w 1 ,   e 1 ) + ( q 2 ,   w 2 ,   e 2 ) = ( q 1 + q 2 ,   w 1 + w 2 , e 1 + e 2 ) ( q 1 ,   w 1 ,   e 1 ) ( q 2 ,   w 2 ,   e 2 ) = ( q 1 q 2 ,   w 1 w 2 , e 1 e 2 ) ( q 1 ,   w 1 ,   e 1 ) × ( q 2 ,   w 2 ,   e 2 ) = ( q 1 × q 2 ,   w 1 × w 2 , e 1 × e 2 ) ( q 1 ,   w 1 ,   e 1 ) ( q 2 ,   w 2 ,   e 2 ) = ( q 1 / q 2 ,   w 1 / w 2 , e 1 / e 2 ) .
ANP is a development of AHP model [24]. The model of ANP is in the form of a network hence we can see the interactions between each element on the same factor, or the elements of different factor.
•  Calculate Consistency Index (CI):
CI = (λmaxq)/(q − 1),
where:
  • CI: Consistency Index
  • q: is the number of compared elements.
•  Calculate the Consistency Ratio (CR), using a random index as following:
CR: CI/UI,
where: UI = random index (CI of randomly generated pairwise comparison matrix), random index are shown in Table 1.

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

The results of the analysis in some studies that used the TOPSIS method show that quality evaluation indicators affect the results of the evaluation, hence the selection of precise indicators is very important [25,26,27].
Determining TOPSIS needs performance ranking in every Ai option over every normalized Cj factor. This can be seen from the formula below:
e i j = X i j i = 1 m X i j 2 ,
with i = 1, 2, … m; and j = 1, 2, … n.
Calculating the normalized weighted decision matrix
S i j =   W i e i j ,
with i = 1, 2, …, m and j = 1, 2, …, n.
Calculating positive ideal solution (PIS) A + matrix and negative ideal solution (NIS) A matrix.
A + =   s 1 + ,   s 2 + , , s n + ; A =   s 1 ,   s 2 , , s n ;
where: s j + is Max s i j if j is an advantage factor. Max s i j if j is a cost factor. s j Is Min s i j if j is an advantage factor. Min s i j if j is a cost factor.
Identifying the gap between the values of each options with PIS matrix and NIS matrix.
Options to positive ideal solution (PIS).
D i + =   j = 1 m ( s i + s i j ) 2 ; i = 1 ,   2 ,   ,   m
Options to negative ideal solution (NIS).
D i =   j = 1 m ( s i j s i ) 2 ; i = 1 ,   2 ,   ,   m ,
where D i +   is the distance to the PIS for I option and D i   is the distance to the NIS.
Calculating the preference value for every alternative ( G i )
G i = D i D i + D i +                             i = 1 ,   2 ,   ,   m .

4. Case Study

Ocean waves, with their vast widths, contain significant energy resources. Energy density in waves is high compared with other renewable energy sources, e.g., wind and solar energy. Just less than 0.1% of the ocean’s renewable energy is converted into electricity, which can satisfy more than five times the current global electricity demand. The World Energy Commission (WEC) estimates that the global wave energy market is ~5.5 TWh/year; in the future, it will exceed 2000 TWh. Many countries around the world have put into practice many wave-power-generating stations, with capacities ranging from a few dozen to several hundred kW to several MW, providing electricity for residential areas, especially for offshore islands [28].
As with other types of renewable energy resources, wave energy is invaluable and environmentally friendly. Technology to exploit ocean energy contributes to minimizing CO2 emissions into the living environment. In this case study, the authors considered eight potential locations for building a wave power plant in Vietnam. These locations are judged to be highly effective based on natural and socioeconomic conditions. Eight potential locations are able to invest in wave power plants, as shown in Table 2.
Finding the best site for building a wave power farm is an important criterion affecting the time at which the project reaches completion. In order to select an optimal location, the decision-maker must first understand the criteria of location evaluation. Based on experts and literature reviews, a decision-maker has to consider four main criteria, i.e., energy resources, location suitability, environment suitability, social suitability. The hierarchy of the objectives of this study is shown in Table 3.
A fuzzy comparison matrix for GOAL from the FANP approaches is shown in Table 4.
The authors obtain the coefficients α = 0.5 and β = 0.5 (Tang and Beyond). α represents the uncertain environment conditions, while β represents the attitude of the evaluator is fair.
g 0.5 ,   0.5 ( a E R , S S ¯ )   =   [ ( 0.5   ×   2.5 )   +   ( 1     0.5 )   ×   3.5 ]   =   3
f0.5 (LER, SS) = (3 − 2) × 0.5 + 2 = 2.5
f0.5 (UER, SS) = 4 − (4 − 3) × 0.5 = 3.5
g 0.5 ,   0.5 ( a S S , E R ¯ )   =   1 / 3 .
The real number priority when comparing the main criteria pairs are shown in Table 5.
For calculating the maximum individual value as following:
PO1 = (1 × 2 × 4 × 3)1/4 = 2.21
PO2 = (1/2 × 1 × 2 × 3)1/4 = 1.32
PO3 = (1/4 × 1/2 × 1 × 1/3)1/4 = 0.45
PO4 = (1/3 × 1/3 × 3 × 1)1/4 = 0.76
  P O   =   PO 1   +   PO 2   +   PO 3   +   PO 4   =   4.74
ω 1 = 2.21 4.74 = 0.47
ω 2 = 1.32 4.74 = 0.28
ω 3 = 0.45 4.74 = 0.09
ω 4 = 0.76 4.74 = 0.16
[ 1 2 4 3 1 / 2 1 2 3 1 / 4 1 / 2 1 1 / 3 1 / 3 1 / 3 3 1 ] × [ 0.47 0.28 0.09 0.16 ] = [ 1.87 1.18 0.48 0.68 ]
[ 1.87 1.18 0.48 0.68 ] / [ 0.47 0.28 0.09 0.16 ] = [ 4.0 4.2 4.44 4.25 ] .
Based on number of main criteria, the authors get n = 4, λmax and CI are calculated as following:
λ m a x = 4.0 + 4.2 + 4.44 + 4.25 4 = 4.23 ,
C I = λ m a x n n 1 = 4.23 4 4 1 = 0.08 .
To calculate CR value, we get RI = 0.9 with n = 4.
C R = C I R I = 0.08 0.9 = 0.0889 .
As CR = 0.0889 ≤ 0.1, we did not need to re-evaluate. The weight of all sub-criteria are shown in Table 6.
Based on the weight of all sub-criteria defined by the FANP model, the TOPSIS approach was utilized to identify the score of all potential locations. The normalized matrix and normalized weight matrix are shown in Table 7 and Table 8.

5. Results and Discussion

The MCDM model has been applied to various fields of science and technology, and its use has increased over the years. One of the areas in which this model has been applied is the location selection process, but few have considered this issue in the wave energy power plant location selection. This is the main reason why this study proposes an MCDM model for wave power plant site selection.
In the first stage of this research, all criteria affecting location selection were determined by experts and literature reviews, and the FANP method was utilized to identify the weight of all criteria in the second stage. The ANP was proposed to overcome the problem of interdependence and feedback between criteria on alternatives. The ANP is the general form of the AHP, which has been used in the MCDM model to release the restrictions of hierarchical structures. However, human judgment varies from person to person, as human perception always contains a certain degree of vagueness and ambiguity. Using such language, decision-makers quantify uncertain events and objects. Fuzzy theory enables decision-makers to tackle the ambiguities involved in the process of the linguistic assessment of the data. Subsequently, in fuzzy ANP, the linguistic assessment is converted to triangular fuzzy numbers. These triangular fuzzy numbers are used to build a pairwise comparison matrix for the ANP, and one can obtain the weights for attributes on each level. The TOPSIS model is a multicriteria decision analysis method, which is used for ranking potential sites in the final stage. 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). Based on the results shown in Figure 3, Con Co (SITE3) is the optimal site for building a wave power plant in Vietnam because it has the highest-ranking score [11,23].
The contribution of this research is to propose a fuzzy MCDM model for site selection in the renewable energy sector under fuzzy environment conditions. The proposed model also can address different complex problems in location selection; further, it is a flexible design model for considering the evaluation criteria. Thus, it is applicable to site selection of other types of renewable energies in the world.

6. Conclusions

In the context of increasing energy demand in Vietnam, the ability to supply domestic energy resources is limited, while the potential of renewable energy in Vietnam is great. In addition to the high demand for electricity for production, the availability of renewable energy sources for power generation is feasible both in technology and economic and environmental efficiency. Thus, many types of renewable energy resources are exploited in Vietnam. However, to compare with other countries in the world, the current results have not yet fully utilized Vietnam’s potential. In order to meet demand while supplying energy faces many problems and challenges, especially with the gradual depletion of domestic fossil fuels, oil prices will fluctuate with increasing trends, and Vietnam will ultimately depend more on world energy prices. Therefore, considering the exploitation of renewable energy sources in the coming period will have important meaning, both economically and socially, for energy security and environmental protection.
This model has also been applied to the location selection process, but few studies have considered this issue in fuzzy environment conditions. This is a reason why the authors proposed the fuzzy multicriteria decision making (FMCDM) model for analyzing a suitable site for wave energy production by the FANP and TOPSIS model.
The limitation of this study is due to the specific nature of the energy investment sector, under the strict management of provisions of legislation. Therefore, the actual implementation process will take a long time.
For future research, this proposed model can be improved by considering more criteria that have an effect on the site selection process. In addition, variations in the MCDM model, such as FAHP, VlseKriterijumska Optimizacija I Kompromisno Resenje in Serbian (VIKOR), etc., can also be combined for future analysis.

Author Contributions

Conceptualization, C.-N.W. and C.-C.S.; Data curation, C.-N.W. and C.-C.S.; Funding acquisition, C.-N.W.; Methodology, C.-N.W., V.T.N., C.-C.S.; Project administration, C.-N.W., V.T.N.; Resources, C.-C.S.; Software, C.-C.S.; Writing—original draft, C.-C.S.; Writing—review and editing, C.-N.W., V.T.N.

Funding

This research was partly supported by National Kaohsiung University of Science and Technology, and project number 108-2622-E-992-017-CC3 from the Ministry of Sciences and Technology in Taiwan.

Conflicts of Interest

The authors declare no conflict of interest.

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Figure 1. Research methodology.
Figure 1. Research methodology.
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Figure 2. Triangular Fuzzy Number.
Figure 2. Triangular Fuzzy Number.
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Figure 3. Final ranking score from the technique for order of preference by similarity to ideal solution (TOPSIS) model.
Figure 3. Final ranking score from the technique for order of preference by similarity to ideal solution (TOPSIS) model.
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Table 1. Random Index.
Table 1. Random Index.
Matrix Size (q)UI Value
1.00.00
2.00.00
3.00.58
4.00.90
5.01.12
6.01.24
7.01.32
8.01.41
9.01.45
10.01.49
Table 2. List of 10 potential locations.
Table 2. List of 10 potential locations.
No.NameSymbol
1Co To IslandSITE1
2Bach Long Vi IslandSITE2
3Con CoSITE3
4Vanh Rai BaySITE4
5Phu QuiSITE5
6Cu Lao ChamSITE6
7Ha Long BaySITE7
8Hon MeSITE8
Table 3. The hierarchy of the objectives.
Table 3. The hierarchy of the objectives.
Main CriteriaSub-CriteriaExperts/Literature ReviewSymbol
* Energy resource;
* Location suitability;
* Environment suitability;
* Social Suitability.
Wave heightChakraborty et al.
Soumya Ghosh et al.
Experts
WAH
Distant between two wavesSoumya Ghosh et al.
Experts
DBW
Number of wavesSoumya Ghosh et al.
Experts
NWA
Wind speedChakraborty et al.
Soumya Ghosh et al.
Experts
WSP
Wind durationChakraborty et al.
Experts
WDU
Depth of the OceanChakraborty et al.
Soumya Ghosh et al. Experts
DTS
TurbulenceSoumya Ghosh et al.
Experts
TBL
Water qualitySoumya Ghosh et al.
Experts
WQU
Coastal erosionSoumya Ghosh et al.
Experts
COE
Shipping densitySoumya Ghosh et al.
Experts
SHD
Protection lawExpertsPRL
Labor resourceExpertsLBR
Safety conditionsExpertsSAC
Table 4. Fuzzy comparison matrices for GOAL.
Table 4. Fuzzy comparison matrices for GOAL.
CriteriaEnergy Resource (ER)Environment Suitability (ES)Location Suitability (LS)Social Suitability (SS)
Energy resource (ER)(1,1,1)(1,2,3)(3,4,5)(2,3,4)
Environment suitability (ES)(1/3,1/2,1)(1,1,1)(1,2,3)(2,3,4)
Location suitability (LS)(1/5,1/4,1/3)(1/3,1/2,1)(1,1,1)(1/4,1/3,1/2)
Social Suitability (SS)(1/4,1/3,1/2)(1/4,1/3,1/2)(4,3,2)(1,1,1)
Table 5. Real number priority.
Table 5. Real number priority.
Energy Resource (ER)Environment Suitability (ES)Location Suitability (LS)Social Suitability (SS)
Energy resource (ER)1243
Environment suitability (ES)1/2123
Location suitability (LS)1/4½11/3
Social Suitability (SS)1/31/331
Table 6. The weight of sub-criteria.
Table 6. The weight of sub-criteria.
NoSub-CriteriaWeight
1WAH0.0936
2DBW0.0895
3NWA0.1517
4WSP0.0358
5WDU0.0530
6DTS0.0492
7TBL0.0765
8WQU0.0612
9COE0.0636
10SHD0.0669
11PRL0.1040
12LBR0.1119
13SAC0.0432
Table 7. Normalized matrix.
Table 7. Normalized matrix.
SITE1SITE2SITE3SITE4SITE5SITE6SITE7SITE8
WAH0.32190.36780.41380.41380.32190.27590.36780.3219
DBW0.32250.36860.36860.32250.36860.41470.27650.3686
NWA0.31820.36360.36360.36360.36360.31820.40910.3182
WSP0.35810.31340.35810.35810.40290.35810.35810.3134
WDU0.28570.33330.33330.38100.38100.33330.42860.3333
DTS0.36290.40820.36290.31750.40820.31750.31750.3175
TBL0.42240.32850.37550.32850.32850.37550.32850.3285
WQU0.32850.37550.32850.32850.42240.32850.37550.3285
COE0.39620.35220.35220.35220.39620.30820.35220.3082
SHD0.33920.33920.33920.38760.29070.43610.33920.3392
TOP0.42240.32850.37550.32850.32850.37550.32850.3285
PRL0.32850.37550.32850.32850.42240.32850.37550.3285
LBR0.39620.35220.35220.35220.39620.30820.35220.3082
Table 8. Normalized weight matrix.
Table 8. Normalized weight matrix.
SITE1SITE2SITE3SITE4SITE5SITE6SITE7SITE8
WAH0.03010.03440.03870.03870.03010.02580.03440.0301
DBW0.02890.03300.03300.02890.03300.03710.02470.0330
NWA0.04830.05520.05520.05520.05520.04830.06210.0483
WSP0.01280.01120.01280.01280.01440.01280.01280.0112
WDU0.01510.01770.01770.02020.02020.01770.02270.0177
DTS0.01790.02010.01790.01560.02010.01560.01560.0156
TBL0.03230.02510.02870.02510.02510.02870.02510.0251
WQU0.02010.02300.02010.02010.02590.02010.02300.0201
COE0.02520.02240.02240.02240.02520.01960.02240.0196
SHD0.02270.02270.02270.02590.01940.02920.02270.0227
TOP0.04390.03420.03900.03420.03420.03900.03420.0342
PRL0.03680.04200.03680.03680.04730.03680.04200.0368
LBR0.01710.01520.01520.01520.01710.01330.01520.0133

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Wang, C.-N.; Thanh, N.V.; Su, C.-C. The Study of a Multicriteria Decision Making Model for Wave Power Plant Location Selection in Vietnam. Processes 2019, 7, 650. https://doi.org/10.3390/pr7100650

AMA Style

Wang C-N, Thanh NV, Su C-C. The Study of a Multicriteria Decision Making Model for Wave Power Plant Location Selection in Vietnam. Processes. 2019; 7(10):650. https://doi.org/10.3390/pr7100650

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Wang, Chia-Nan, Nguyen Van Thanh, and Chih-Chiang Su. 2019. "The Study of a Multicriteria Decision Making Model for Wave Power Plant Location Selection in Vietnam" Processes 7, no. 10: 650. https://doi.org/10.3390/pr7100650

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