Multi-Criteria Decision-Making Approach for Selecting Wind Energy Power Plant Locations

: In pursuit of green technology innovations, the energy industry is showing an interest in sustainable sources such as wind energy generation. The Saudi Arabian energy industry has a 2030 target to generate and transmit electricity to major customers nationwide and other neighboring Gulf countries. However, the selection of wind energy power plant locations is a concern because the decision process involves social, technological, economical, and environmental factors. The originality of this study lies in (1) proposing an integrated quantitative and qualitative multi-criteria decision making framework for selecting wind-energy power plant locations; (2) applying the proposed framework in the context of the energy industry in a gulf region country and investigating expert-based and entropy-based criterion weight assignments; (3) choosing ﬁve possible alternative wind energy power plant locations with 17 response criteria for each alternative to help decision makers identify the best possible alternative; and (4) establishing the superiority of one alternative over another (if it exists). The presented approach extends considerable support to the comparing and ranking of alternatives along with its validation and sensitivity analysis. Based on the proposed multi-criteria decision-making approach, an appropriate wind energy power plant location has been successfully selected among the ﬁve alternatives.


Introduction
Non-renewable sources of energy are being continuously depleted. Moreover, the use of fossil fuels is perilous to the environment, and their precarious nature is gradually becoming prominent [1]. In addition, the concept of a smart city is gaining popularity. By 2050, 66% of the earth's inhabitants will reside in cities [2]. Therefore, there will be an increase in the demand for energy. Several other factors also contributed to the increase in the demand of energy, such as, increases in population [3], climate change [4], advances in technology increase the availability of products which require energy [5], increases in means of transportation (cars, aero planes, etc.) [6]. Progress in the use of renewable energy (RE) is an imperative part of realizing the sustainable and smart cities of the future [7]. Since 1997, renewable energy sources have been gaining more attention with the adoption of the Kyoto protocol [8], and the focus is now on harnessing renewable sources of energy such as solar, wind, geothermal, hydropower, and tidal [1,9]. In late 2008, European countries set up a 20-20-20 climate and energy package with three targets to achieve until 2020. The first one requires to cut the greenhouse gas emissions of European nations by 20% with 1990 as baseline year. The second target is to receive 20% of energy consumption from renewable energy sources (RES). The final target is to cut total primary energy Figure 1 shows that African and Middle Eastern countries are still lagging behind in exploiting wind energy. However, initiatives, which will improve the situation, have been considered by these countries. Saudi Arabia has started efforts to launch the country's first large-scale wind farm, which has a total output of 400 MW [24]. The demand for electrical energy in Saudi Arabia is surging at a startling rate and is anticipated to reach approximately 55 GW by 2020 [25]. Therefore, it is vital for Saudi Arabia to exploit renewable energy, especially wind energy.
Numerous studies on wind resource estimation have been reported for various places in Saudi Arabia [25][26][27]. The performance of wind turbine generators (WTG) depends on numerous factors, not only technical, but also depending on the location in which they are installed. Eltamaly and Farh [28] studied five locations across Saudi Arabia to assess the wind energy resources. Both technical  Figure 1 shows that African and Middle Eastern countries are still lagging behind in exploiting wind energy. However, initiatives, which will improve the situation, have been considered by these countries. Saudi Arabia has started efforts to launch the country's first large-scale wind farm, which has a total output of 400 MW [24]. The demand for electrical energy in Saudi Arabia is surging at a startling rate and is anticipated to reach approximately 55 GW by 2020 [25]. Therefore, it is vital for Saudi Arabia to exploit renewable energy, especially wind energy.
Numerous studies on wind resource estimation have been reported for various places in Saudi Arabia [25][26][27]. The performance of wind turbine generators (WTG) depends on numerous factors, Sustainability 2019, 11, 6112 3 of 20 not only technical, but also depending on the location in which they are installed. Eltamaly and Farh [28] studied five locations across Saudi Arabia to assess the wind energy resources. Both technical and economical assessments were conducted. A computer program was developed, and based on collected data, the most suitable type of WTG was recommended for each wind farm site that will minimize the cost of energy generation. Shaahid et al. [25] presented a feasibility study to establish a wind power plant in the western part of Saudi Arabia. The study was based on economic parameters. The wind speed during the year was studied, and based on that, the cost of wind energy production was calculated. Tagle et al. [29] investigated the potential of wind energy resources in Saudi Arabia. A simulation system was used to examine the effect of the change in internal climate on the periodic wind power density.
Meteorological factors such as temperature, relative humidity, atmospheric pressure, and worldwide solar fallout are greatly reliant on site and time, while wind speed and direction are extremely varying components amid these factors. Therefore, it is essential to understand the fluctuation in wind speed and accessibility through different hours of the day and various months of the year for the efficacious and cost-effective utilization of wind energy [30]. Thus, it is necessary to thoroughly investigate the site of interest to determine the viability of wind farm development.
The site selection for wind power plants requires an exhaustive assessment of numerous factors, and tradeoffs among these factors need to be made. Many socio-economic issues are associated with finalizing a site for a wind power plant. Therefore, when dealing with various factors and their interactions to determine the best solution, multi-criteria decision making (MCDM) techniques offer an efficient solution. Compared with single criterion approaches, the benefit of MCDM is that several factors or characteristics are engaged to obtain a unified decision. Several studies have been conducted by researchers in this field. MCDM approaches have been widely used in different fields such as site selection for electrical grids for hybrid renewable energy systems [31], location selection of shopping malls [32], and for ranking sustainable sugarcane farms [33]. Wang et al. [7] presented a comprehensive literature survey about the application of multi-criteria decision analysis in the decision making process of sustainable energy development. Ioannou et al. [34] used the soil and water assessment tool (SWAT) and hydrologic simulation model for predicting the streamflow data. This data is useful for selecting the sites for hydropower projects. Ioannou et al. [35] developed a spatial decision support system for the selection of sites for biomass power plant. Decision system was based on analytic hierarchy process (AHP) combined with fuzzy logic. Six criteria were selected and the importance of each criterion was assigned based on experts' opinion.
Noorollahi et al. [36] analyzed wind energy resources based on technical, monetary, ecological, and geographical factors. An MCDM technique with equal weights was applied, and the best locations for wind power plants were obtained. Rodman and Meentemeyer [37] applied a GIS (Geographic Information Science) model, in which vital factors were classified into three groups (physical, ecological and socio-economic), with a set of rules to investigate the appropriateness of wind-energy power plants in Northern California, US. San Cristóbal [38] presented a case study in Spain in which a compromise technique known as the VIKOR method was applied as an MCDM for selecting the renewable energy project launched by the Spanish government. The weight was selected through an analytical hierarchy process, and a biomass project followed by wind power plants emerged as the most suitable option. The adopted MCDM technique uses the outranking principle to rank the options, integrated with ease of use and reduced intricacy. The method conducts a pair-wise comparison of options to rank them according to various criteria. The technique has been applied in geothermal projects [39][40][41] and for hydroelectrical power plant site selection [42]. Kyriakopoulos et al. [43] applied hierarchical cluster analysis to develop two typologies for regions in Greece based on energy consumption characteristics such as domestic, industrial etc. energy consumption, number of renewable energy sources installed. Cluster analysis was applied twice, firstly using electrical consumption variables only, and then using variables of electricity consumption, number and installed power of RES plants. Based on developed methodology and characteristics, the regions were classified into four clusters. Alkaradaghi et al. [44] proposed a model for landfill site selection that was based on GIS data, and the MCDM method integrated with a weighted linear combination (WLC) was used for decision making. Thirteen scientific and environmental criteria were chosen and based on these criteria, seven sites were recommended as suitable for landfill sites. Gavériaux et al. [45] used the multi-criteria decision analysis and GIS based methodology to predict the most appropriate area for offshore wind turbine farm. In the phase of analysis, inappropriate areas were identified, then the appropriate ones were ranked, and finally a cost analysis was done. The case study was for Hong Kong bay. Several zones were identified for the offshore wind power plant based on the developed methodology. Erdin and Ozkaya [46] used elimination and choice translating reality (ELECTRE), an MCDM approach, to select a site for any type of renewable energy, such as solar, wind, biomass, and hydroelectricity, in Turkey. The objective was to show the energy firms the potential of the different regions in Turkey as renewable energy sources. Seven regions were selected, and based on experts' scores, weights were calculated for different types of renewable energy sources. Based on their approach, the Mediterranean region was selected as the most suitable for renewable energy sources. Konstantinos et al. [47] developed a methodology for selecting wind farm location using the AHP, and the Technique for Order Preference by Similarity to Ideal Solution (TOPSIS), combined with GIS. The region under study was Eastern Macedonia and Thrace in Greece. Seven qualitative criteria (Wind speed, slope, elevation/height, distance from cities, distance from coastline, etc.), and three qualitative criteria were selected. Wind Speed came out to be the most important criteria. Based on a decision support method, 34 locations were allocated that were further refined to 17 and ranked by TOPSIS.
Therefore, according to the literature, it can be said that the decision-making process for selecting locations for wind power plants is very complex. The selection has to take into consideration numerous contrary objectives due to the existence of multifaceted social, technological, economical, and ecological aspects. Conventional single-criterion decision-making techniques are no longer able to handle these issues.
The objective of this study is to propose an integrated quantitative and qualitative MCDM framework for selecting wind-energy power plant locations, and the proposed framework takes into consideration the strategies of the energy sector in the gulf region. In this study, five possible wind-energy power plant locations were chosen with 17 response criteria for each alternative to assist decision makers in identifying the best possible alternative. In addition, this study will assist in establishing the superiority of one alternative over another. The 17 criteria were selected after discussion with experts and from literature [47][48][49]. One researcher focused on a certain criterion and the other focused on another. For example, Al-Awami et al. [50] considered economic and environmental impact; Strazzera et al. [51] focused on social acceptability; Heydarian-Forushani et al. [52] concentrated on power demand; Alsyouf [53] discussed about the natural/unnatural events that affects the operation if wind energy plants, and so on. However, none of the previous research used as many criteria as the authors have considered in this research work.
This paper is organized in five sections: Section 1 is an introduction; Section 2 presents the problem and visual preference ranking organization method for enrichment of evaluations (PROMETHEE) approach for selecting wind power plant locations; Section 3 compares and rank orders the alternatives; subsequently, Section 4 presents a sensitivity analysis with subjective and objective criteria weights; and finally, Section 5 concludes the research findings.

Selection of Wind Power Plant Locations: the MCDM Approach
In pursuit of green technology innovations, the energy industry in the gulf shows an interest in sustainable wind energy generation. The industry has a 2030 target to generate and transmit electricity to major customers in Saudi Arabia and other Gulf countries. It needs to be concerned with multiple factors, for example, gulf energy generation policies, public awareness, industrial base, and possibility of risk and future uncertainty. An alternative power plant location and adopted technology for wind power plant has its own risks in terms of security and safety, and there is also uncertainty due to natural or unnatural future events. Government policies, development and incentive schemes should support and encourage significant investment in renewable energy sector. Given the continuously increasing consumption of electricity in the gulf region, the industry decided to build a renewable wind power plant. Five site locations have been proposed by the management, who are interested in the careful selection and evaluation of alternative wind power plant site locations. A systematic multi-criteria analysis approach is adopted to identify the competitiveness of each alternative. The multiple criteria chosen to evaluate the wind power plant sites are availability and speed of the wind; advantages and disadvantages of the site; risk and uncertainty of the technology used; expected energy demand; and government policies and support (see Figure 2). locations. A systematic multi-criteria analysis approach is adopted to identify the competitiveness of each alternative. The multiple criteria chosen to evaluate the wind power plant sites are availability and speed of the wind; advantages and disadvantages of the site; risk and uncertainty of the technology used; expected energy demand; and government policies and support (see Figure 2). The most commonly used MCDM approaches include the AHP, ELECTRE, and the PROMETHEE [54]. Compared with AHP and ELECTRE, PROMETHEE has the ability to incorporate decision-making using positive and negative preference flows. Concepts such as preference flow, weights, geometrical analysis for interactive aid (GAIA) planes, as well as sensitivity analyses, make the PROMETHEE approach attractive in the assessment of alternatives. Partial and complete rankings also help identify the most preferred alternative. However, decision makers are often interested not only in ranking alternatives but also in establishing the superiority of one alternative over another (if it exists). The adopted MCDM methodology for an efficient selection of wind power plant location (WPPL) is explained in detail below.
Step 1: Construction of decision matrix: Suppose there are m alternative WPPLs and n evaluation criteria in ranking these WPPLs; Xij is the j th criterion's value for the i th WPPL. The structure of the decision matrix is as presented in Table 1 below.  The most commonly used MCDM approaches include the AHP, ELECTRE, and the PROMETHEE [54]. Compared with AHP and ELECTRE, PROMETHEE has the ability to incorporate decision-making using positive and negative preference flows. Concepts such as preference flow, weights, geometrical analysis for interactive aid (GAIA) planes, as well as sensitivity analyses, make the PROMETHEE approach attractive in the assessment of alternatives. Partial and complete rankings also help identify the most preferred alternative. However, decision makers are often interested not only in ranking alternatives but also in establishing the superiority of one alternative over another (if it exists). The adopted MCDM methodology for an efficient selection of wind power plant location (WPPL) is explained in detail below.
Step 1: Construction of decision matrix: Suppose there are m alternative WPPLs and n evaluation criteria in ranking these WPPLs; X ij is the j th criterion's value for the i th WPPL. The structure of the decision matrix is as presented in Table 1 below.
Step 2: Estimation of Criterion Weight: The estimation of weights is either subjective or objective. In the adopted approach, variations in criteria weights are used to evaluate the deviation in the ranking of alternative WPPLs. Wj is the weight associated with the j th criterion. The adopted approach considers both types of weights. The objective weight method makes use of mathematical models such as the entropy analysis [55]; one can quantify the amount of uncertainty using the entropy analysis; details of this method are explained below.
To eliminate the influence of criteria units or scale of measurements, it is necessary to standardize the criteria using equations of relative optimum membership degree. The decision matrix values of the j th criterion in the i th WPPL can be standardized using Equation (1).
where S ij is the standardized criterion value for the j th criterion of the i th WPPL; X ij is the j th criterion's value for the i th WPPL; and (i = 1, . . . , m) and (j = 1, . . . , n); refer to Table 1.
After standardization of all evaluation criteria, the decision matrix is expressed as: . . S 1n : : : : : : According to the definition of entropy, E j is the entropy (for the objective weight) of the j th criterion and is determined by Equation (3).
Subsequently, based on E j of the j th criterion, W j , the criterion objective weight, is determined by using Equation (4).
The entropy weight represents useful information of the evaluation criterion. Therefore, the higher the entropy weight of the evaluation criterion, the more important the criterion. The reverse is also true.
Step 3: Estimation of outranking flows: A generalized preference function P j (a, b) is initially constructed and assigns P j (a, b) to each criterion j. Each P j (a, b) has a value between 0 and 1. The outcome implies the following (where (a, b) is a pair of alternatives, and j is the criterion; refer to Table 1): For criterion j (j 1, . . . ,n) any one of the following preferences occurs if the a alternative is compared with b: if P j (a, b) = 0, then there is no preference for alternative a over b; or if P j (a, b) ≈ 0, then a weak preference exists for alternative a over b; or if P j (a, b) ≈ 1, a strong preference exists for alternative a over b; or if P j (a, b) = 1, a strict preference exists for alternative a over b for criterion j. Subsequently, using the preference function, the preference index Π(a, b) which has a value in the interval between 0 and 1, is computed for each pair of alternatives using Equation (5).
In Equation (5), W j is the weight associated with each criterion, and the preference index Π (a, b) expresses the preference for alternative a over alternative b, considering all k criteria (j 1, . . . , k). If Π (a,b) = 0, then there is a zero preference for alternative a over b; or if Π (a, b) ≈ 0, then a low preference exists for a over b; or if Π (a, b) ≈ 1, then a high preference exists for alternative a over b, or if Π (a, b) = 1, then a perfect preference exists for a over b.
Finally, using the preference index, outranking flows Φ a + and Φ a − are quantified using Equations (6) and (7), respectively, where m is number of alternatives (i m), excluding a. Step A complete ranking is subsequently obtained as follows: If Φ a > Φ b , then alternative a has a complete preference over alternative b; if Φ a = Φ b , then alternative a has a complete indifference over alternative b.

Application of the MCDM Approach
The stepwise application of the above presented approach is as follows.
Step 1: Construction of decision matrix: This step is used to designate possible alternative wind power plant locations to evaluate. The MCDM approach compares various activities that are assessed on numerous criteria. A menu-driven online expert survey is used to obtain the relevant data for each alternative. There are 17 criteria to evaluate each WPPL; scales of measurement, weights, and preference functions are associated with these criteria; initially, equal weights are set for these criteria (see Table 2). From Table 2, it is evident that the wind power plant location (WPPL) alternative WPPL1 has an average wind speed and availability of 4 m/s and 500 W/m 2 , respectively. The choice of alternative WPPL1 has high concern with respect to environmental impact. According to the judgement of experts, WPPL1 has highly supportive government policies and local community for the project endeavor along with an elevated demand for power. Similarly, geo-experts found the topography of the WPPL1 location to be good and suitable for the wind energy power plant installation. The same location is found to have a very low security and safety threat as well as availability of alternative power at a distance of 9.5 km at a moderate cost.
Step 2: Estimation of criterion weight: The adopted approach accommodates multiple qualitative and quantitative criteria, and the choice of preference function depends on the type of criterion and the deviation in criteria values. The set of weights and preference functions are presented in Table 3. Set 1 represents an equal weight allocation for all response/criteria measures. Set 2 represents technical experts who have knowledge about the working of wind turbines; the variation in the expert scale is due to subjectivity. Finally, Set 3 is an objective weighting, which eliminates the manmade disturbances and ensures that the results are in a better accordance with the facts. Thus, V-shaped and L-shaped preference functions are chosen for quantitative and qualitative criteria, respectively [56]. A V-shaped preference function is preferred when there is a need to accommodate a small deviation in criteria values, whereas for moderate deviations in criteria values, an L-shaped preference function is desired. Step 3: Estimation of outranking flows: As presented in the previous section, a number of experts were surveyed, and their opinions are taken as different scenarios for ranking and evaluation purposes. As large mathematical computations are needed, the adoption of the VISUAL PROMETHEE software is preferred.
There are two PROMETHEE rankings: PROMETHEE I and PROMETHEE II. In PROMETHEE I two preference flows (Φ + and Φ − ) are used, and it is a partial ranking method that allows for an incomparability between WPPL alternatives when both (Φ + and Φ − ) preference flows produce conflicting rankings. In PROMETHEE II, a net preference flow (Φ) is used, and it is a complete ranking method.
From Table 2 it is evident that no alternative with or without mixing was found to be best, satisfying all criteria. Using PROMETHEE, the outranking flows were obtained for each alternative, as presented in Table 4. Table 4. Outranking flows for each alternative corresponding with the sets of criteria weights. Step 4: Determination of net outranking flow and complete ranking: Using the above estimated outranking flows, the partial and complete ranking and network and GAIA plane values are obtained and presented in Figures 3-6. Step 4: Determination of net outranking flow and complete ranking: Using the above estimated outranking flows, the partial and complete ranking and network and GAIA plane values are obtained and presented in Figures 3 to 6. In Figure 3, the left-hand column corresponds to the outranking flow Φ + and the right-hand column to the outranking flow Φ − for each alternative. Outranking flows are oriented such that the best ones are increasing from left to right. The middle column corresponds to net flow. For each alternative, a representative line is drawn from its Φ + to the corresponding Φscore. For any given two alternatives, if the representative lines are parallel, the alternative represented by the top line is preferred. In contrast, if the two lines intersect, the corresponding alternatives are incomparable. In Figure 3, for the outranking flow Φ + , alternative WPPL3 dominates all other alternatives, and WPPL4 highly underperforms compared with all other possible alternatives. However, for outranking flow Φ − , alternative WPPL4 dominates all other alternatives, and WPPL1 highly underperforms compared with all other possible alternatives. Generally, these two outranking flows induce two different rankings. To circumvent this scenario, a complete ranking based on net flow Φ was obtained and is shown in Figure 4, in which the top half corresponds to Φ+ and the bottom half to Φ− scores for each alternative. From Figure 4 it is evident that WPPL3 supersedes all alternatives. Simultaneously, using the outcome of the PROMETHEE approach, a network was drawn (refer to Figure 5) in which each alternative is represented by a "node" and its preference over other alternatives by an "arrow". Figure  5 also shows alternative WPPL3 to be highly preferred over all other alternatives, and WPPL4 is once again the least preferred. In Figure 3, the left-hand column corresponds to the outranking flow Φ + and the right-hand column to the outranking flow Φ − for each alternative. Outranking flows are oriented such that the best ones are increasing from left to right. The middle column corresponds to net flow. For each alternative, a representative line is drawn from its Φ + to the corresponding Φ − score. For any given two alternatives, if the representative lines are parallel, the alternative represented by the top line is preferred. In contrast, if the two lines intersect, the corresponding alternatives are incomparable. In Figure 3, for the outranking flow Φ + , alternative WPPL3 dominates all other alternatives, and WPPL4 highly underperforms compared with all other possible alternatives. However, for outranking flow Φ − , alternative WPPL4 dominates all other alternatives, and WPPL1 highly underperforms compared with all other possible alternatives. Generally, these two outranking flows induce two different rankings. To circumvent this scenario, a complete ranking based on net flow Φ was obtained and is shown in Figure 4, in which the top half corresponds to Φ+ and the bottom half to Φ− scores for each alternative.

Set 3 Entropy Weights Objective Weights
From Figure 4 it is evident that WPPL3 supersedes all alternatives. Simultaneously, using the outcome of the PROMETHEE approach, a network was drawn (refer to Figure 5) in which each alternative is represented by a "node" and its preference over other alternatives by an "arrow". Figure 5 also shows alternative WPPL3 to be highly preferred over all other alternatives, and WPPL4 is once again the least preferred. Interestingly, alternative WPPL1 is preferred over WPPL2 and WPPL5. Subsequently, to identify conflicts between criteria and to highlight groups of alternatives performing well for a given criterion, Visual PROMETHEE represents the above results in the GAIA plane (refer to Figure 6). Interestingly, alternative WPPL1 is preferred over WPPL2 and WPPL5. Subsequently, to identify conflicts between criteria and to highlight groups of alternatives performing well for a given criterion, Visual PROMETHEE represents the above results in the GAIA plane (refer to Figure 6). Interestingly, alternative WPPL1 is preferred over WPPL2 and WPPL5. Subsequently, to identify conflicts between criteria and to highlight groups of alternatives performing well for a given criterion, Visual PROMETHEE represents the above results in the GAIA plane (refer to Figure 6).  In the GAIA plane in Figure 6, which is widely considered the best two-dimensional representation of any multi-criteria problem, alternatives are represented in the quadrants; alternatives that are similar to each other in performance appear in same quadrant or close to each other, while those that differ are placed in opposite quadrants from each other and away from each other. The response measures showing similar preferences are oriented in same direction in the GAIA plane, while conflicting response measures are pointed in opposite directions. From Figure 6, it is apparent that the WPPL5 score is opposite to WPPL3. WPPL4 scores better for criteria C01, C02, C17, and C12. Furthermore, from the same GAIA results, one can observe that WPPL1 performs well on only two criteria, C10 and C06. Similarly, for the same criteria, WPPL2 scores better but is far away from WPPL4.
The above analysis was conducted by assigning equal weights (refer to Set 1 in Table 3) to each response measure. As decision-makers may not typically have any predetermined weights in mind, a sensitivity analysis is needed. In the present study, a special feature of the Visual PROMETHEE software, known as walking weights, was adopted for this purpose. The details of the sensitivity analysis and results are presented in the following section.

Sensitivity Analysis
A sensitivity analysis is conducted to understand the effect of input parameter deviations on the outcome parameters of any model. In the present study, variations in criteria weights are used to evaluate deviations in the ranking of alternative wind energy power plant locations. The aim is to validate the inference by conducting a sensitivity analysis which helps to establish the robustness in the decision to finalize the wind energy power plant locations. Three sets (equal weights, expert subjective scaling, and objective weights) of criteria weights (refer to Table 3) are chosen for the sensitivity analysis. The sensitivity analysis was conducted by assigning response criteria weights as listed in Table 3. Set 1 represents an equal weight allocation for all response measures.
Technical experts who have knowledge about the working of wind turbines gave high weights (90%) to wind speed (C01), wind density (C02), surrounding environment (C03), and power loss (C14) compared with other criteria. In contrast, these experts gave the least weight to technology cost (C08), supply cost (C15), and environment concerns (C17). The other group of experts, who are more concerned with government development policies, supported the technical experts on C01 and C02 and added power demand (C05), minimum technology cost (C08), and supply cost (C15) to the maximum weights. In addition, they suggested that moderate weights be given to both development schemes (C16) and environment concerns (C17). The variation in the expert scales is due to subjectivity.
In any outranking multi-criteria decision analysis, decision makers have to use weights to express the importance of criteria and sub-criteria. For example, a set of feasible weights and threshold values are defined with known subjective preference judgments among the alternatives. Numerous methods are available in the literature, and most of them are classified into two groups: subjective and objective weights. Subjective weights are set based on the decision maker's experiences, knowledge expertise, and judgment and perception of the problem; for example. Delphi methods [57] and AHP [58]. However, objective weighting eliminates the manmade disturbances and produces results that are more in accord with the facts. The objective weights method makes use of mathematical models, such as entropy analysis [55]. Accordingly, this sensitivity analysis was done by relying on the expert-assigned weights (refer to Set 2 in Table 3) using Visual PROMETHEE. The outcomes of the sensitivity analysis are presented in Figure 7a-d. Similarly, Figures 8a to 8d represent the analysis corresponding to partial ranking, complete ranking, network diagram, and GAIA plane for the entropy weights application. In the case of the entropy weights application (refer to Set 3 in Table 3), relatively higher weights are assigned to the natural/unnatural events and customer acceptability, and relatively lower weights are assigned to proximity to power supply and environmental issues. Similarly, Figure 8a-d represent the analysis corresponding to partial ranking, complete ranking, network diagram, and GAIA plane for the entropy weights application. In the case of the entropy weights application (refer to Set 3 in Table 3), relatively higher weights are assigned to the natural/unnatural events and customer acceptability, and relatively lower weights are assigned to proximity to power supply and environmental issues. Similarly, Figures 8a to 8d represent the analysis corresponding to partial ranking, complete ranking, network diagram, and GAIA plane for the entropy weights application. In the case of the entropy weights application (refer to Set 3 in Table 3), relatively higher weights are assigned to the natural/unnatural events and customer acceptability, and relatively lower weights are assigned to proximity to power supply and environmental issues. From the results of the sensitivity analysis, it is evident that wind energy power plant locations WPPL4 and WPPL5 are the worst choices compared with the other alternatives, while WPPL3 is the best overall choice. Table 5. Preference order of alternatives corresponding with the sets of criteria weights. From the results of the sensitivity analysis, it is evident that wind energy power plant locations WPPL4 and WPPL5 are the worst choices compared with the other alternatives, while WPPL3 is the best overall choice (Table 5).

Discussion and Conclusions
Non-renewable energies are continuously being depleted, while the global demand for energy is sharply increasing. Greenhouse effects are gaining more attention, so global energy planners are focusing more on solar, wind, geothermal, hydropower, and tidal energies as renewable energy sources. It is evident that changing from one energy system to another or adopting any new energy system has risk and uncertainty, and one has to evaluate multiple alternatives based on numerous performance parameters. In this study, a framework is suggested through which energy planners can evaluate and select the locations for wind energy power plants with an objective of satisfying the regional competitive energy requirements.
Decision managers had the following major criteria: wind power density and speed, power plant location advantages and disadvantages; technology used, risk and uncertainty, expected energy demand, and government policies as well as government support. Using an interactive tool, wind energy power plant alternative locations and other details were obtained. It is evident that there are numerous contrary objectives due to the multifaceted social, technical, economic, and ecological aspects that exist. As conventional single-criterion decision-making techniques are no longer able to handle this complex task, an efficient MCDM technique is provided to the management to help them choose a site for a wind energy power plant in Saudi Arabia. Furthermore, variations in criteria weights are used to evaluate the sensitivity and the deviation in the rankings of five alternative wind energy power plant locations.
Based on this study, the following conclusions can be drawn: • If the management wants to set equal criteria weights, WPPL3 is the best choice, and WPPL4 and WPPL5 are the worst choices. • However, if the management wants to give a high preference to wind density and speed, or if the concern is for environmental issues over all other criteria, the order of site choices is found to be WPPL3, WPPL1, WPPL5, WPPL2, and WPPL4.

•
Similarly, when the same management wants to give a high and equal preference to wind density and speed and has an objective to minimize the costs related to technology and power distribution, the wind energy power plant locations order of preference is found to be WPPL3, WPPL2, WPPL5, WPPL4, and WPPL1.

•
The presented visual PROMETHEE approach is preferable because it establishes a preference of a wind energy power plant location over other locations and is unbiased in the decisionmaking process.
Thus, the proposed MCDM approach provides flexibility to the decision makers while considering all the criteria and their objectives simultaneously. The application of this approach can assist policy makers to easily overcome contradictory parameters and recommend optimum locations that are suitable for both citizens and stake holders and simultaneously are economically and environmentally friendly. In the future, we hope that this decision support system will allow the search for site locations for wind power plants to be more practical and efficient. Furthermore, the approach can provide guidance to other decision-making problems, such as evaluations of power plant systems, energy sources, new technologies, and other sustainability related decisions. The entropy weight can help decision makers to determine the objective weight of each criterion, so that subjective factors in the evaluation process can be effectively circumvented; and the PROMETHEE method is employed to establish the superiority of an alternative over another (if it exists) based on criterion with linear preference, and then calculates the positive flow, negative flow and net flow of each alternative, then rank alternatives according to the value of net flow. Therefore, it can be said that the combination of these techniques provides an effective framework for selecting the wind power plant locations.