Optimal Planning for Wind Turbines in Mega Seaports Considering Practical Application Constraints: A Case Study of Ningbo-Zhoushan Port

: In the context of global carbon neutrality, ports face signi ﬁ cant electricity demand for cargo handling and pressure to reduce carbon emissions. The abundant wind energy resources in port areas make wind power highly promising for port applications. The optimal selection of site and turbine types for wind power systems can e ﬀ ectively reduce emissions in ports, achieving sustainability and improving economic bene ﬁ ts. The practical implementation of wind energy systems considering practical constraints holds signi ﬁ cant research signi ﬁ cance. Taking Ningbo-Zhoushan Port as an example, this paper analyzes the wind energy resources in the port area and provides an overview of wind power system construction sites. Based on the actual conditions of the port area, this paper comprehensively reviews the site selection of wind turbines from the perspectives of wind resources, speci ﬁ c climates, and noise impacts. With the consideration of engineering preferences, this paper selects performance indicators based on the four mainstream turbine models and proposes a comprehensive weight determination method using the entropy weight method and analytic hierarchy process (AHP) to determine the weights of the indicators. The Technique for Order of Preference by Similarity to Ideal Solution (TOPSIS) method is then employed to score and compare four turbine plans, enabling the turbine selection process to consider both engineering preferences and objectivity, thereby enhancing the accuracy and reliability of wind turbine planning and achieving signi ﬁ cant ecological and economic bene ﬁ ts through bene ﬁ t analysis.


Introduction
The port is the interface for maritime transportation and serves as the engine of port cities.The economic development of modern society relies heavily on ports.At the same time, ports are involved in the industrial and commercial sectors and have enormous energy demands [1,2].With these increasing energy demands, ports face significant pressure to reduce pollution and improve economic efficiency [3].In recent years, there has been rapid growth in the implementation of and theoretical research on wind energy, making it one of the most mature renewable energy technologies.It can provide renewable energy for industrial production and reduce energy consumption and emissions [4].The key to the efficient utilization of wind energy lies in the design and layout of wind turbine systems.Therefore, designing efficient, reliable, and economically viable wind power systems has become an important research topic [5,6].
In recent years, the construction of wind power systems in ports has gradually developed in response to greening efforts.Unlike on land and offshore, port areas have more compact site utilization and harsher surrounding climatic conditions, with diverse variations in wind speed and wind energy [7].When designing wind power systems, there are more complex factors to consider [8,9].The construction of wind power systems in ports also faces difficulties and challenges in terms of safety and site utilization [10,11].
Some scholars have conducted research on the site selection of wind turbines.For example, Kazak [12] proposed a selection method based on spatial decision characteristics.They established an optimization model for selecting the optimal location of wind turbines based on spatial location factors and their weights for target site selection.Rodrigo [13] developed an evaluation method for wind turbine siting based on wind resources, considering the trade-off between the accuracy of wind conditions and costs.They analyzed wind turbine layout from the perspective of atmospheric boundary layer driving factors and site characteristics.Golestani [14] proposed a decision framework based on a game theory approach to determine the best location for installing offshore wind farms, while considering the relevant objectives of finance, performance, and availability.
In terms of wind turbine selection, Gualtieri [15] proposed a method based on the characteristics of commercial wind turbines to determine the optimal layout for onshore wind farms.Narayanamoorthy [16] in order to handle the various ambiguities and complex hesitancies caused by the selection of turbine models, employs the newly proposed Normal Wiggly Hesitant Fuzzy (NWHF) method for criterion importance through intercriteria correlation (NWHF-CRITIC) and the Normal Wiggly Hesitant Fuzzy multi-attribute utility theory (NWHF-mat).These methods are used to rank turbine models based on criteria such as quality, power level, voltage, and capacity.Xu [17] established a comprehensive evaluation model for wind turbine selection based on BP neural networks and optimized it using the particle swarm algorithm.However, the diversity of evaluation criteria, uncertainty in the decision environment, and different risk preferences of decision-makers can all influence wind turbine selection.To address such issues, Yang [18] proposed a hybrid multi-criteria decision-making framework and validated its robustness and reliability through sensitivity and comparative analysis.Pang [19] clarified the relationships between evaluation indicators and introduced triangular fuzzy numbers to accurately reflect experts' preference information.They combined fuzzy preference programming with network analysis to construct a fuzzy analytic network process model for wind turbine selection.Li [20] proposed a selection decision system for offshore wind turbines that combines principal component analysis with D numbers theory to reduce the subjectivity and uncertainty of expert judgment.Wang et al. [21] used the Dempster-Shafer evidence theory to handle uncertain information in the selection process and combined it with multi-criteria decision-making methods to establish a decision model for offshore wind turbine selection.
Based on the analysis above, it can be seen that most of the current research focuses on the design of onshore or offshore wind turbines, with relatively little emphasis on wind turbine design specifically for port environments.Coastal ports, as important hubs for sea and land transportation, have unique geographical locations, complex climatic environments, high site utilization rates, and existing port machinery and power infrastructure.These factors present more challenging issues in terms of wind turbine siting and selection.In this study, we focus on the Chuanshan Port Area of Ningbo-Zhoushan Port as the research object.Firstly, we analyze the basic requirements for wind turbine selection and siting in port environments.Based on these requirements, we select four types of commercial wind turbines and use a multi-criteria decision-making method to choose the optimal wind turbine type.
The rest of the paper is organized as follows.Section 2 introduces the studied port in the present research.The basic requirements for the site and type selection of wind turbines are introduced in Section 3, and then, the type selection of wind turbines is determined based on the proposed AHP-entropy weight-TOPSIS method in Section 4. In Section 5, the proposed method is applied to the case of Ningbo-Zhoushan Port, and the whole work is concluded in Section 6.

Overview of the Considered Port
Ningbo-Zhoushan Port is the largest port in the world, and the Chuanshan Port Area is the largest port area under Zhoushan Port.The port area has a storage yard area of 1.837 million square meters, with a total of 163 gantry cranes, 49 bridge cranes, and a total quay length of 3740 m.Additionally, it is the second-largest container terminal globally, accounting for nearly 40% of the annual container volume of the entire Ningbo-Zhoushan Port.Since 2017, it has been handling over 10 million standard containers in transshipments annually.The port area has a front water depth of 17-22 m and is equipped with 11 deep-water berths for containers, capable of simultaneously berthing multiple large container vessels.
Figure 1 shows the distribution of wind speed and wind direction in the Chuanshan Port Area of Ningbo-Zhoushan Port in 2022.From the figure, it can be observed that the prevailing wind directions in the Chuanshan Port Area in 2022 were NNW (north-northwest) and SSE (south-southeast), while the predominant wind energy directions were NW (northwest) and NNW.The distribution of wind energy density follows a similar pattern to the frequency of wind directions, indicating a higher concentration compared to the wind directions [22,23].Figure 2 displays the distribution of wind speed and wind energy at a height of 125 m in the Chuanshan Port Area of Ningbo-Zhoushan Port.It can be observed that the wind speeds mainly range from 2 to 8 m/s, with an annual average wind speed of 5.03 m/s.The average wind power is calculated to be 197 W/m 2 .

Safety Analysis
The port area has a dense layout with high land utilization and clear functional zoning.Wind turbines, being large-scale energy equipment, can pose safety hazards to the operation of equipment within the port area.Therefore, there are higher requirements for the spatial location and safety of wind turbine construction sites.This study selects potential wind turbine construction sites in the port area from the perspective of the safety distance of wind turbines and conducts a simulation analysis on the blade tip vortices generated by the turbines.Typically, the preliminary selection of wind turbine locations needs to meet the following three criteria: not interfering with the normal operation of cargo handling equipment in the storage yard, staying away from hazardous materials, and having a relatively large open area.Therefore, the space between the quay and yard sides is suitable for wind turbine installation.To study the influence of container-handling equipment (CHE), the wind turbine with the largest rotor diameter among mainstream models on the market is selected as a reference.Even under these conditions, selecting other turbine models would still meet the distance requirements.Figure 3 illustrates the mutual influence between wind turbines in one of the target areas and other operating equipment within the port area.From Figure 3, it can be observed that installing wind turbines in the target area allows for a safety distance of 20 m from the port buildings while maintaining a significant safety distance from the quay cranes, without affecting operation in the port area.To provide a clearer visualization of the relative positions of the wind turbines, port buildings, and operating equipment, a three-dimensional positioning of the wind turbine in the port area is shown in Figure 4. From Figure 4, it is evident that the wind turbines maintain a safe distance from the port buildings in both horizontal and vertical dimensions.The safe operation of the wind turbines indicates that the chosen sites meet the safety requirements for the construction of wind turbine units.Based on the analysis process described above, three potential construction sites that comply with the preliminary screening criteria have been identified.The coordinates for these sites are as follows: the planned construction location for the first turbine is 29.893986, 122.034032; for the second turbine, it is 29.895043, 122.04509; and for the third turbine, it is 29.888718, 122.042381.The construction locations within the port area are shown in Figure 5. Tip vortices affect the airflow around wind turbine blades, leading to changes in the flow pattern in the tip region.These tip vortices can propagate to surrounding buildings, affecting the air flow characteristics near these structures.Such aerodynamic interference may result in changes in the pressure distribution on the surfaces of buildings, thereby affecting their aerodynamic stability and structural safety.Moreover, as tip vortices propagate, they generate noise, which may disrupt the living or working environment within nearby buildings.Therefore, further analysis of wind turbine tip vortices is crucial to ensure safety.By simulating the wind speed on the surface of the wind turbine blades, as shown in Figure 6, the influence range of the tip vortices can be determined to be approximately 1.07 times the rotor diameter (L ≈ 1.07 d).For example, when the rotor diameter is 156 m, the influence range of the tip vortices extends to 166.9 m.Similarly, when the rotor diameter is 190 m, the influence range of the tip vortices is 203.3 m. Figure 7 presents the wind speed distribution, wind direction changes, turbulence intensity, and aerodynamic parameters of the blades provided by the manufacturer at the hub height (125 m) for statistical analysis.The simulated vorticity distribution shows that the intensity of the tip vortices within the wind turbine is relatively low (0-2/s) and dissipates over a short distance (less than 1D).Therefore, the safety hazards caused by the distance between the wind turbine blade tips and surrounding buildings, as shown in Figure 3, can be considered negligible, further ensuring the safety of the engineering project.

Noise Analysis
According to the relevant regulations of GB3096-2008 [24], Chinese wind farms generally implement environmental noise limit requirements.The acoustic environment function is divided into five levels.Among them, the port area and its administrative office buildings belong to the first-level noise standard area and its implementation standards.The sound limit decibel value during the day (6:00-22:00) is 55 dB(A).The sound limit decibel value at night (22:00-6:00 the next day) is 45 dB(A) [25].
Taking the turbine model considered in this study as an example, an analysis of the noise impact of wind turbines on the office building is conducted.A turbine noise curve is shown in Figure 8.According to the standards, the office area is assessed based on Class 1 noise criteria.This noise analysis only includes the cumulative impact of turbine noise and does not consider background noise [26].A noise contour map for the site is shown in Figure 9, with the black line representing the 55 dB(A) contour level.From the Figure 9, it can be observed that the proposed construction sites meet the Class 1 sound environment standards, and the noise impact on sensitive areas is compliant with the requirements.Additionally, the noise levels within a 300 m radius of the turbine location are controlled below 55 dB(A).

Wind Resource Analysis
Based on Section 2 it is determined that the prevailing wind directions at a height of 125 m in the wind farm area are NNE and N, with corresponding frequencies of 12.6% and 11.7%, respectively.The main wind energy directions at a height of 125 m are NNW and N, with corresponding frequencies of 16.3% and 15.9%, respectively.In this section, a specific analysis of wind energy resources at different locations within the port area at a height of 125 m is conducted, and the wind speed distribution is shown in Figure 10.From the figure, it can be observed that the three selected turbine construction sites have similar wind speeds with no significant differences.

Extreme Climate Conditions
The studied port area is located in the southeastern region of Zhejiang Province, China.The special climatic factors that affect wind turbines in this area mainly include strong cold air outbreaks and tropical cyclones.
Taking the center of the Chuanshan Port Area as the reference point, a statistical area with a radius of 100 km is designated as the region for tracking tropical cyclones.The monthly distribution of tropical cyclones during the period from 1949 to 2021 is shown in Figure 11.From the Figure, it can be observed that the time period when tropical cyclones affect the port area is from May to September each year.The peak period of impact is in July, August, and June, with 11, 9, and 6 occurrences, respectively.
For all tropical cyclones that entered the statistical area, their intensities were categorized based on the maximum wind speed within the statistical area.The results show that typhoons have a frequency of 29%, followed by severe tropical storms at 25.8%.Tropical storms and tropical depressions have a frequency of 19.4% each, as shown in Figure 12.
In addition, another factor that influences the selection of wind turbines is the maximum wind speed with a return period of 50 years.Based on meteorological statistics, the maximum wind speed with a return period of 50 years in the port area is estimated to be around 52.1 m/s [27].
According to the design standards outlined in IEC 61400-1:2019 [28], the basic parameters for wind turbine selection should take into account wind resources, special climatic conditions, and other meteorological factors.It is recommended to choose wind turbines with typhoon-resistant special designs that meet IEC Class I or higher, or those that satisfy the typhoon resistance requirements of Class S. The relevant numerical requirements are that the extreme 10 min average wind speed at the hub height over 50 years should reach 57 m/s.Based on preliminary numerical analysis and actual measurement data in the port area, it is inferred that when the average wind speed is 15 m/s, the turbulence intensity at a height of 125 m in the port area is below Class C, which is below the standard of 0.12 for vertical acceleration [29].

The Proposed Method for Wind Turbine Selection
Under the conditions of meeting the aforementioned wind turbine selection types, a multi-criteria decision-making method is employed to select specific wind turbine design solutions.In order to improve the accuracy and universality of wind turbine selection, this study considers both the inherent statistical regularities and authority of the evaluation criteria when selecting evaluation indicators and allocating weights to them.It also reflects the degree of importance placed by decision-makers on different indicators, aiming to control subjective randomness within a certain range.Therefore, this study proposes a comprehensive weight method using AHP-entropy, which serves as the weight input for the TOPSIS method in wind turbine comparison.The specific implementation steps are shown in Figure 13.The relevant parameters of the comprehensive evaluation model are shown in Table 1.

Method Models Parameter Parameter Description
Entropy weight method ij The standardized value of the j-th index for the i-th evaluation object ij The original value of the j-th index for the i-th evaluation object max The maximum value of the j-th index min The minimum value of the j-th index ij The The subjective weight of the j-th index j The comprehensive weight of the j-th index TOPSIS method R The comprehensive weighted judgment matrix

𝑟
The index parameters after comprehensive weighting The positive ideal solution of the j-th index The negative ideal solution of the j-th index

𝑓
The Euclidean distance between the i-th evaluation object and the positive ideal solution

𝑓
The Euclidean distance between the i-th evaluation object and the negative ideal solution The relative closeness degree of the i-th evaluation object

Comprehensive Weighting Method
The evaluation criteria system for wind turbine selection is divided into the target layer, criteria layer, and indicator layer.The criteria layer consists of four key factors: electricity generation, engineering investment, economic indicators, and technical characteristics.In addition, practical indicators related to the project are incorporated into the four criteria, establishing a connection between adjacent levels.The structure of the wind turbine selection criteria system is shown in Figure 14.

Weight Calculation using Entropy Method
The weights of the evaluation criteria are determined using the entropy method, and the specific process is as follows: (1) Since different indicators have differences in dimensions and values, it is necessary to standardize the data.The specific calculation method is as follows: For benefit-type indicators, min max min In this equation, " ij " represents the standardized value of the j-th indicator for the ith evaluation object; " ij " represents the original value of the j-th indicator for the i-th evaluation object; max i x represents the maximum value of the j-th indicator; and min i x represents the minimum value of the j-th indicator.
For cost-type indicators, min max min (2) The specific calculation method to indicate the information entropy and weights is shown in Equations ( 3)-( 5): In these equations, " ij " represents the feature weight of the indicator; m represents the number of evaluation objects; "j" represents the entropy value; " j1 " represents the objective weight; and n represents the number of evaluation indicators [30].

Construction of AHP Judgment Matrix Based on Entropy Weighting Method
The AHP judgment matrix is used to represent the relative importance of a certain criterion at the previous level for each criterion at different levels [31].In this study, the objective weights provided by the entropy weighting method are used as the basis for judgment.Pairwise comparisons of indicators within the same level are conducted, and the relative coefficients in the matrix are assigned using the 1-9 scale method.The specific coefficients and their meanings are shown in Table 2 [32].

Coefficient Meaning 1
The two indices are equally important 3 Comparing the two indices, the former is slightly more important than the latter 5 Comparing the two indices, the former is more important than the latter 7 Comparing the two indices, the former is very important compared to the latter 9 Comparing the two indices, the former is much more important than the latter 2,4,6,8 The intermediate value of the above scale In the consistency test of AHP, the ratio of the consistency index (CI) to the average random index (RI) of the judgment matrix of the same order represents the random consistency ratio of the judgment matrix.When the random consistency ratio is less than 0.1, the consistency of the judgment matrix considered to be within an acceptable range.Otherwise, it is necessary to reconstruct the judgment matrix.The consistency index and the ratio of random consistency can be obtained using Equations ( 6) and (7), respectively: In these equations,  represents the consistency index, max λ represents the maxi- mum eigenvalue, CR represents the random consistency ratio, and RI represents the random consistency index.The order value is determined as shown in Table 3.To make the weightings of various criteria in wind turbine selection more scientifically sound and in line with actual engineering conditions, the objective weights obtained from the entropy weighting method are coupled with the subjective weights obtained from the AHP method.The combined weight " j " is calculated based on Equation ( 8).

TOPSIS Method
The TOPSIS method, also known as the Technique for Order of Preference by Similarity to Ideal Solution, is an effective ranking method that utilizes the information from the original data to accurately reflect the differences between evaluation alternatives [33].The steps of the TOPSIS method are as follows: (1).Construct the evaluation matrix for wind turbine selection.Assuming the set of wind turbine selection alternatives is  = ( ,  …  ), and the set of evaluation criteria is ( ,  …  ), the evaluation matrix is defined as follows: where  represents the value of evaluation criterion  in the wind turbine selection alternative  .
(2).Normalize the evaluation matrix.Since different evaluation criteria may have different scales, it is necessary to normalize the evaluation matrix according to Equations ( 1) and ( 2).
(3).Construct the weighted decision matrix.The weighted decision matrix is calculated by multiplying the combined weights from the AHP method and the entropy weighting method with the normalized decision matrix, as shown in Equation (10).
* ( 1,2, , ; 1,2, ) (4).Calculate the positive and negative ideal solutions.The equation for calculating the positive and negative ideal solutions for each wind turbine selection alternative are shown in Equation (11).
(5).Calculate the Euclidean distance.The Euclidean distances between each wind turbine selection alternative and the positive and negative ideal solutions are calculated using Equations ( 12) and ( 13), respectively.( ) ) (6).Calculate the comprehensive evaluation value.The comprehensive evaluation value reflects the superiority or inferiority of wind turbine selection alternatives in practical engineering.The calculation formula is as follows [34]: .Based on the comprehensive evaluation values, rank the alternatives in descending order.The alternative with the highest evaluation value is considered the optimal solution.

Case Study
In consideration of the available wind turbine sites, this study considers four wind power generation options, denoted as WTG1 to WTG4, as shown in Table 4.To evaluate the four options, the indicator parameters are constructed as shown in Table 5. Maturity and certification of the turbine (score) 7 8 5.5 6
A method combining expert scoring and a literature review is used to determine the relative importance of each element on the upper-level element, and the judgment matrices for each level are obtained.One-time consistency checks are conducted to determine the weights of each level's indicators.Table 6 presents the relative importance of the indicators at the criterion level based on the objective of wind turbine model comparison.Tables 7-10 further divide the indicators at the criterion level into indicators of power generation, engineering investment, economic indicators, and technical characteristics.
Taking the relative importance at the criterion level as an example, starting from the four aspects of power generation, engineering investment, economic indicators, and technical characteristics in wind turbine selection, the following judgment matrix is obtained using Table 6: Through calculation, the eigenvalue of matrix A,  , is determined to be 4.   11 with the weight vector Wj2.
Finally, by coupling the weights Wj1 and Wj2 according to Formula (8), the comprehensive indicator weights Wj based on the entropy weighting method and AHP method are obtained.The calculation results are shown in Table 11.The calculated comprehensive indicator weights, can be used as inputs for the weights of each indicator in the TOPSIS method.By assigning weights to the indicator parameters, the relative closeness can be calculated.

Analysis Results
Before conducting scoring using the TOPSIS method, the evaluation indicators in Table 5 are first standardized.The results are shown in Table 12.
After processing the wind turbine evaluation indicators according to Equation (10) and assigning the comprehensive weights Wj, the positive and negative ideal solutions for each selection alternative are obtained through comparison.The Euclidean distances between the wind turbine types and the positive and negative ideal solutions are calculated using Equations ( 12) and (13) [35,36], as shown in Table 13.The relative closeness of each wind turbine type is calculated according to Formula (14), and the results are shown in Table 14.Based on the calculated relative closeness, the wind turbine WTG2 is the optimal choice for the project, followed by the WTG4.Based on this analysis, the project plans to install two wind turbines, with the WTG2 model generating an annual electricity output of 23.39 GWh.If the construction cost of the wind turbine is not considered, the reduction in carbon emissions Q and the decrease in economic costs E compared to a conventional coal-fired power plant with the same electricity generation capacity can be calculated using Equations ( 17) and (18).
in which, WT P represents the grid-connected electricity output of the WTG2 wind turbine (kWh); t Δ represents the statistical time interval; 1 ε and 2 ε represent the carbon emissions of grid-supplied electricity (581 g/kWh) and wind turbine electricity generation (25 g/kWh) [37]; and 1 ϕ and 2 ϕ represent the cost of grid-supplied electricity (0.95 yuan/kWh) and wind turbine electricity generation (0.685 yuan/kW•day).By using this equation, the annual reduction in carbon emissions is calculated to be 13,000 tons, and the savings in electricity costs amount to 21.6 million yuan.This demonstrates significant economic and ecological benefits.

Conclusions
This article proposes an engineering design and analysis method for large-scale wind turbine units in the context of a port scenario.The relevant conclusions are as follows: (1).The potential wind energy resources in the Chuanshan Port Area of Ningbo-Zhoushan Port were analyzed.At a height of 125 m, the predominant wind directions were found to be N and NNE.The wind direction and wind energy in the port area exhibited seasonal variations and variations at different times of the day.
(2).In terms of site selection, three potential sites suitable for the construction of large-scale wind turbine units were identified, taking into consideration constraints such as seawalls, port office buildings, power lines, and roads, as well as the layout of the port's storage yards.The three sites were further analyzed in terms of wind resources, special weather conditions, and noise impacts.The results showed that all three construction sites met the criteria in these three aspects and received favorable evaluations.
(3).For wind turbine selection in the port, four mainstream turbine models that meet the requirements in the market were analyzed and compared.A comprehensive indicator weighting system was constructed using the entropy weighting method and the analytic hierarchy process, considering technical investment, power generation capacity, engineering construction, and turbine maturity.The TOPSIS method was used to calculate the relative closeness for the four turbine models.This approach ensured that turbine selection tokes into account engineering preferences and maintain objectivity, resulting in more accurate results.The final turbine selection is determined to be WTG2.(4).An analysis of the benefits of implementing the selected wind turbine units was conducted.By deploying two WTG2 wind turbines, an annual grid-connected electricity

Figure 1 .
Figure 1.Chuanshan Port Area wind direction and wind energy distribution map at 125 m height for 2022.

Figure 2 .
Figure 2. Wind speed and wind energy frequency distribution map of Chuanshan Port Area for the year 2022.

Figure 3 .
Figure 3. Schematic diagram of safety distance for wind turbine construction.

Figure 5 .
Figure 5. Layout of wind turbine array positions.

Figure 9 .
Figure 9. Noise contour map of the considered sites.

Figure 10 .
Figure 10.Wind energy resource distribution map at 125 m height in the considered port area.

Figure 11 .
Figure 11.Monthly distribution of tropical cyclones from 1949 to 2021.

Figure 12 .
Figure 12.Climatic characteristics of maximum wind speed in the statistical region.

Figure 13 .
Figure 13.Flowchart of the proposed method.
index weight of the j-th parameter for the i-th evaluation object m Number of evaluation objects  The entropy value of the j-th index n Number of evaluation indicators j1 The objective weight of the j-th index Analytic hierarchy process (AHP) CI Consistency index max λ The maximum eigenvalue of the judgment matrix  Random consistency index  Random consistency ratio j2

Figure 14 .
Figure 14.The wind turbine selection criteria system.
The consistency test is passed.
weight vector for the first-level indicators is W1= [0.1, 0.2, 0.4, 0.3].From this vector, it can be concluded that economic indicators are the most important factor in the initial selection of wind turbines.The weight vector for the power generation level indicators is W2 = [0.1164,0.1164, 0.1017, 0.6654]; for the engineering investment level indicators is W3 = [0.25,0.75]; for the economic indicator level is W4 = [0.25,0.75]; and for the technical parameters level is W5 = [0.1765,0.0588,0.0272,0.0353].By combining the weights from the first-level and second-level analytic hierarchy processes, the final weights for each indicator are obtained as shown in Table

Table 2 .
Explanation of relative coefficients.

Table 3 .
Values of random consistency index.

Table 5 .
Indicator layer parameters of wind turbine schemes for different models.

Table 6 .
Relative importance of criteria layer.

Table 7 .
Relative importance of electricity generation level indicators.

Table 8 .
Relative importance of engineering investment level.

Table 9 .
Relative importance of economic indicator level.

Table 10 .
Relative importance of technical characteristics.

Table 11 .
Indicator weights for wind turbine selection.

Table 12 .
Standardized results of evaluation indicators for each wind turbine scheme.

Table 13 .
Euclidean distance between wind turbine types and positive/negative ideal solutions.

Table 14 .
Relative comprehensive evaluation scores for each wind turbine selection.