Assessment of Wind Power Potential and Economic Analysis at Hyderabad in Pakistan: Powering to Local Communities Using Wind Power

: Wind power is the fastest growing and environmentally sustainable source of energy among all available renewable energy resources. The primary objective of this paper is to analyze the wind characteristics and power potential at Hyderabad, Southeastern province in Pakistan. Two years of wind speed data measured at 10 m above ground level (AGL) have been considered in this study. The annually, monthly, and seasonal variations in wind speed were analyzed, and minimum, maximum, and average values of recorded wind speeds are presented in this paper. Weibull and Rayleigh distribution functions have been applied to analyze the wind characteristics and evaluate the wind power potential of the proposed site. The Weibull shape k and scale c parameters have been estimated using the Weibull function. The higher values of k showed that the wind speed is steady at the site. The average wind speed was found above 6 m/s throughout the year. The most probable wind speed (V mp ) and maximum carrying energy (V maxE ) wind speed were also calculated using Weibull parameters. Root mean square error (RMSE), the coefﬁcient of determination (R 2 ), and mean bias error (MBE) were computed to ensure the good ﬁt of Weibull distribution function. The annual average wind power and energy densities were estimated at more than 255 W/m 2 and 2245 kWh/m 2 , respectively. The power density calculated by Weibull and Rayleigh functions was compared with that calculated by using measured wind data. The energy output and capacity factor of different commercially available wind turbines (WTs), i.e., power ratings from 0.33 to 2.75 MW, have been calculated. The cost of energy was estimated and ranged from $19.27 to $32.80 per MWh. Wind power potential and economic analysis of the collected data reveals that the site is suitable for developing wind power generation projects to power the local communities. and supervision: N.T.; methodology, review & editing, and validation: W.H.; data collection, software, and validation, M.H.N. and M.Y.


Introduction
The cost of the industrial revolution is a massive increase in the use of fossil fuels, which include coal, natural gas, oil, and gasoline, resulting in highly infected air. Due to this, global climate is changing and is affected severely; high amounts of greenhouse gases are emitted due to the mismanaged use of these fuels in a vast range of applications that can be found in producing and consuming energy. Carbon dioxide (CO 2 ) is one of the most common of these gases and is the leading cause of these changes in the behavior of the earth's atmosphere. However, even this intensive use of resources cannot In this work, the potential of wind energy is evaluated for the city of Hyderabad in Sindh province located in the southern part of Pakistan. The wind speed data were measured at the height of 10 m in 10 min time intervals over two years (May 2015 to April 2017), and data were obtained from the combined project of the Government of Pakistan and the World Bank Group, funded by the Energy Sector Management Assistance Program. However, in this study, the authors used the Weibull and Rayleigh distribution methods to understand the wind characteristics. Root mean square error (RMSE), the determination of coefficient (R 2 ), and the mean bias error (MBE) were computed to assess the performance of the distribution functions. In addition to the mean speed of the wind, the maximum energy carrying wind and the most probable wind speeds were calculated. Moreover, the wind energy and wind power density were predicted. Conclusively, economic analyses for standalone wind systems were carried out considering commercially available wind turbines in the selected areas so as to determine whether assessments are economically adaptable. It is worth saying here that, for the Hyderabad area, this kind of detailed study is rarely carried out. It is hoped that this study contributes to understanding the characteristics of wind in this area. The outcomes of the study can help government officials and potential investors to make efficient energy plans for the proposed area.

Site Description and Data Collection
Hyderabad is the second largest city of the southeastern province in Pakistan, located at longitude 68.3578 • E and latitude 25.3960 • N with an elevation of 29 m. The city is part of one of the major geographical regions in Pakistan and situated at the east bank of the Indus River plain. The provincial capital Karachi is almost 150 km away, which has the largest seaport of Pakistan. The Hyderabad is considered to be in the wind corridor of Pakistan and with a good average speed virtually throughout all the seasons. The location and elevation topography view of Hyderabad city is shown in Figure 1a,b. Figure 1b shows an elevation map of the Hyderabad area. Altitudes range from 16 to 35 m, and warmer colors indicate higher altitudes. In a recent study, a Geographic Information Systems (GIS)-based map showed that areas in the southern part of Sindh province are most suitable for installing wind turbines [48].
Sustainability 2019, 11, x FOR PEER REVIEW 3 of 23 In this work, the potential of wind energy is evaluated for the city of Hyderabad in Sindh province located in the southern part of Pakistan. The wind speed data were measured at the height of 10 meters in 10 min time intervals over two years (May 2015 to April 2017), and data were obtained from the combined project of the Government of Pakistan and the World Bank Group, funded by the Energy Sector Management Assistance Program. However, in this study, the authors used the Weibull and Rayleigh distribution methods to understand the wind characteristics. Root mean square error (RMSE), the determination of coefficient (R 2 ), and the mean bias error (MBE) were computed to assess the performance of the distribution functions. In addition to the mean speed of the wind, the maximum energy carrying wind and the most probable wind speeds were calculated. Moreover, the wind energy and wind power density were predicted. Conclusively, economic analyses for standalone wind systems were carried out considering commercially available wind turbines in the selected areas so as to determine whether assessments are economically adaptable. It is worth saying here that, for the Hyderabad area, this kind of detailed study is rarely carried out. It is hoped that this study contributes to understanding the characteristics of wind in this area. The outcomes of the study can help government officials and potential investors to make efficient energy plans for the proposed area.

Site Description and Data Collection
Hyderabad is the second largest city of the southeastern province in Pakistan, located at longitude 68.3578° E and latitude 25.3960° N with an elevation of 29 meters. The city is part of one of the major geographical regions in Pakistan and situated at the east bank of the Indus River plain. The provincial capital Karachi is almost 150 kilometers away, which has the largest seaport of Pakistan. The Hyderabad is considered to be in the wind corridor of Pakistan and with a good average speed virtually throughout all the seasons. The location and elevation topography view of Hyderabad city is shown in Figure 1a,b. Figure 1b shows an elevation map of the Hyderabad area. Altitudes range from 16 to 35 m, and warmer colors indicate higher altitudes. In a recent study, a Geographic Information Systems (GIS)-based map showed that areas in the southern part of Sindh province are most suitable for installing wind turbines [48]. The wind tower was installed on land with flat terrain and a wind site easily accessible by various kinds of vehicles. All instruments/sensors were tested by connecting them to the data logger before assembling to the site, and correct functioning of all the instruments during commissioning was also verified. A team of maintenance engineers and observers visited the site every month for data collection and to inspect the apparatus, and sensors were cleaned weekly. Monthly measured The wind tower was installed on land with flat terrain and a wind site easily accessible by various kinds of vehicles. All instruments/sensors were tested by connecting them to the data logger before assembling to the site, and correct functioning of all the instruments during commissioning was also verified. A team of maintenance engineers and observers visited the site every month for data Sustainability 2019, 11, 1391 4 of 23 collection and to inspect the apparatus, and sensors were cleaned weekly. Monthly measured data were analyzed by the experts to ensure the quality of the collected wind data. The site terrain is flat with no major obstacles or roughness in the area surrounding the wind tower, except for some medium height trees and buildings with a maximum of approximately 3 m; these are about 200 m away from the tower. The coastal area and southern areas of Sindh province have land with flat terrain, with no major obstacles and roughness. Therefore, the surface roughness is between 0.03 to 0.04 m, and the roughness class for these areas is between 1.0 and 1.2 [49][50][51]. The technical specification of meteorological sensors is given in Table 1. Wind speed (m/s), wind direction (degrees), atmospheric temperature (centigrade), and pressure (hPa) were measured in 10 min time intervals at the site.

Wind Data Analysis Procedure
Several wind characteristics such as the wind speed, the times of its occurrence, its continuity, and its direction have great significance in analyzing the wind power potential at a defined location. It is essential to have a preliminary estimate of the distribution of wind characteristics for precise feasibility of a wind farm. The total energy generation is also dependent on different factors; some of which are the air density, pressure, and turbine characteristics such as hub height and rotor diameter. Figure 2 shows a schematic diagram of the wind data analysis procedure. The two years of measured wind data were analyzed using Weibull and Rayleigh functions. Weibull parameters were estimated and used to predict different indicators for the assessment of wind power potential at the site. Wind speed for different heights was determined using the power law. Finally, the economic analysis was carried out by considering commercially available wind turbines, and mentioned aspects are discussed below.
Sustainability 2019, 11, x FOR PEER REVIEW 4 of 23 data were analyzed by the experts to ensure the quality of the collected wind data. The site terrain is flat with no major obstacles or roughness in the area surrounding the wind tower, except for some medium height trees and buildings with a maximum of approximately 3 meters; these are about 200 m away from the tower. The coastal area and southern areas of Sindh province have land with flat terrain, with no major obstacles and roughness. Therefore, the surface roughness is between 0.03 to 0.04 m, and the roughness class for these areas is between 1.0 and 1.2 [49][50][51]. The technical specification of meteorological sensors is given in Table 1. Wind speed (m/s), wind direction (degrees), atmospheric temperature (centigrade), and pressure (hPa) were measured in 10 min time intervals at the site.

Wind Data Analysis Procedure
Several wind characteristics such as the wind speed, the times of its occurrence, its continuity, and its direction have great significance in analyzing the wind power potential at a defined location. It is essential to have a preliminary estimate of the distribution of wind characteristics for precise feasibility of a wind farm. The total energy generation is also dependent on different factors; some of which are the air density, pressure, and turbine characteristics such as hub height and rotor diameter. Figure 2 shows a schematic diagram of the wind data analysis procedure. The two years of measured wind data were analyzed using Weibull and Rayleigh functions. Weibull parameters were estimated and used to predict different indicators for the assessment of wind power potential at the site. Wind speed for different heights was determined using the power law. Finally, the economic analysis was carried out by considering commercially available wind turbines, and mentioned aspects are discussed below.

Wind Speed Extrapolation
Measured wind speed is extrapolated, when data is collected at a limited number of heights, to determine the wind speed for multiple numbers of heights. Different methods can be used for wind extrapolation; the power law is used in this study for its simplicity. This law is considered a useful tool and is commonly used in the assessment of wind power potential to extrapolate wind speed data at different heights, which is defined as [52,53] where V represents the wind speed at respective height Z, V r represents the wind speed at reference height Z r , and α is the wind shear exponent. The shear exponent is a function of surface topology and varies depending on the land texture. A typical value of α is 1/7, which is assumed to be constant for flat terrain and low roughness surfaces. The exponent values vary from less than 0.10 for a very flat terrain, water, or ice surfaces to more than 0.25 for forest and woodlands [26,54]. The value 1/7 for α was considered in this study.

Weibull and Rayleigh Probability Density Functions
Various distribution functions have been used to analyze the wind data, but the two-parameter Weibull distribution is found to be the most effective [29,[52][53][54][55]. Besides its many advantages, the Weibull function has a limitation: it cannot precisely represent the probabilities of zero or very low wind speeds. Therefore, a Rayleigh distribution can be used and tested, which is a special case of the two-parameter Weibull distribution function, with shape parameter k fixed at a value of 2 [26]. Probability density function and cumulative density function were used to read the wind speed variation, which indicates and compares the average speed data. The probability density function, f (v), gives the probability for a given speed v, while the cumulative density function, F(v), gives the probability for the velocity equal to or less than v. The Weibull probability density function (WPDF) is given as [53][54][55][56][57] where 'k' (dimensionless) and 'c (m/s) represent the factor for shape and scale, respectively, which means that k and c store the complete information about the distribution. The cumulative distribution function is the area under the curve for the probability density function. Therefore, the Weibull cumulative distribution function (WCDF), obtained by taking an integral of (WPDF), which is represented by F(v), is given as The parameters for Weibull distribution can be calculated using various methods. Some of these are found strong while others are relatively weak. In this work, the standard deviation is used to calculate the shape and scale parameters and can be calculated as follows [29,[58][59][60][61]: Moreover, where Γ denotes the Gamma function, which is obtained as The scale parameter can also be computed as Given the Weibull parameters, C r and k r , at the reference height, h r , the respective parameters, C d and k d , at a desired height h d is given as [60,62] Moreover, The exponent β can be calculated as Rayleigh distribution function (RPDF) and cumulative distribution function (RCDF) are given as follows [26,63,64]: Two other essential wind speed indicators can be calculated using Weibull parameters, which are the most probable wind speed (V mp ) and maximum energy carrying wind speed (V maxE ). Some useful numerical expressions for wind data are mentioned in Appendix A. The V mp represents the most frequently occurred wind speed for a given distribution, whereas V maxE is essential for considering the wind turbines for a site. After calculating shape and scale parameters, the V mp and V maxE can be determined by the following expressions [26,29,64]: The most significant indicator for wind is the wind power density (WPD), which describes the quantity of energy produced by various wind speeds at a specific site. The WPD using Weibull distribution parameters can be computed as follows [63,64]: where ρ is the standard air density, mostly considered a constant, 1.225 kg/m 3 at sea level, a pressure of 1 atm, and a temperature of 15 • C. Air density (ρ) of a month is calculated using the following equation: where P av stands for monthly averaged air pressure in pascals. R t represents specific gas constant (287 J/kgK) for air, and T av refers to monthly an average temperature in Kelvin (K). Wind power density (WPD Ry ) using Rayleigh function is calculated as follows: Since power density is calculated, Equations (15) and (17) can be used to estimate wind energy density (WED) for Weibull and Raleigh as follows: Moreover, Equations (18) and (19) can be used to compute WED of a particular site over a desired period T (in hours) for different wind speed frequency distributions. According to the Betz theorem, only 59.3% of wind power can be extracted using a wind turbine (WT), which is referred to as the Betz limit. By applying this limit, the probable maximum extractable power from wind is the product of the Betz limit (0.593) and the obtained results from Equation (15).

Statistical Error Analysis
In order to analyze the measured parameters, a criterion must be devised to validate the above-mentioned Weibull parameters. Errors can be computed using various statistical methods and then evaluated to find the best technique for these computations. There are different error techniques. Root mean square error (RMSE), the coefficient of determination (R 2 ) and mean bias error (MBE) were used in this work and determined using Equations (20)- (22) [29,65]: where n, y i , x i and m represent observation count, actual i th wind speed, predicted i th wind speed, and the average wind speeds. In Equations (20)- (22), all the three formulas have different characteristics. The values for these errors are positive except for the MBE. Because in the case of a good fit ∑ n i=1 (x i − m) 2 should approach zero. Therefore, lower RMSE and MBE values and higher R 2 values will indicate a better fit.

Cost Assessment
It is imperative to assess the cost factor for the feasibility of wind farms in a region. The cost assessment of installing the different wind turbines was estimated using the following equations and assumptions [29,51].
Let I c be the initial investment cost (including wind turbine cost and installation cost). Moreover, C om is the annual operation and maintenance cost, which is 1.5-2% of wind turbine cost [29,66]. The discount operation cost for s years (the lifespan of the wind turbine) to an initial year is equal to the present cost, which can be calculated as where C om includes salary, tax, rent, and insurance. C om can be expressed as a percentage n of I c , while r i is the real interest rate, and s is the lifespan of the wind turbine. Therefore, the accumulated net present cost with an effect of the initial investment cost can be obtained using the equation below: Similarly, the turbine annual operation cost can be obtained as The annual energy output of the turbine E o can be estimated using the following equation: where C f is the capacity factor, and P ra is rated the power of the turbine. Finally, the cost per kilowatt-hour of wind turbine generated electricity can be determined as follows:

Results and Discussion
In this study, two years of wind data, from May 2015 to April 2017, collected at 10 m AGL at Hyderabad in Pakistan, were analyzed. Weibull and Rayleigh distribution functions were used to investigate the probability distribution of the wind speed data. Statistical descriptors such as the mean and standard deviations were used to compute the power and energy density for the output. Wind directions were analyzed to yield an optimum evaluation of the respective wind field. Finally, economic analysis was conducted to determine complete feasibility of the wind profile in the area. The following section is a discussion of the results obtained. Figure 3 shows the diurnal wind speeds for the two years, 2015 to 2017, for 24 h (hourly change), and both years and mean wind speed show a consistent pattern. It can be seen that higher wind speeds occur from 7 a.m. to 6 p.m. in the daytime. The wind speeds remain above 6 m/s for more than 16 h and above 5.5 m/s all day. A maximum wind speed of 7.3 m/s was found at 5 p.m. The wind speed is relatively lower during the night and reaches a minimum of 5.2 m/s at 6 a.m., although a constant wind speed from 10 a.m. to 2 p.m. can be seen, ranging from 6 m/s to 6.5 m/s, followed by an increase to a maximum speed of 7.3 m/s, which occurs at 5 p.m. It can be seen from the graph that the average wind speed throughout the day is very steady, within a range of 6 m/s and the wind speed in the year 2016-2017 is slightly higher compared to the year 2015-2016. Figure 3 does not show the variations in the wind speed on a daily or monthly basis; this comparison is concluded in the following section. an increase to a maximum speed of 7.3 m/s, which occurs at 5 p.m. It can be seen from the graph that the average wind speed throughout the day is very steady, within a range of 6 m/s and the wind speed in the year 2016-2017 is slightly higher compared to the year 2015-2016. Figure 3 does not show the variations in the wind speed on a daily or monthly basis; this comparison is concluded in the following section.      As evident from the previous analysis, the first half of the two years has higher wind speeds, while the other half shows more steady but lower wind speeds. This trend is supported by Figure 6  As evident from the previous analysis, the first half of the two years has higher wind speeds, while the other half shows more steady but lower wind speeds. This trend is supported by Figure 6     The whole year is divided into four seasons: summer (from May to August), autumn (September to November), winter (December to February), and spring (March to May). It can be seen that summer is the most suitable, the highest wind speed and mean wind speed being 8.

Wind Speed Frequency Distribution Analysis
The monthly and annual mean wind speed, standard deviation (St.dev.), turbulence intensity (Tr. I), Weibull parameters, i.e., k and c calculated using Equations (4) and (5), and specific wind characteristics (Vmp & VmaxE) of the site for both years (2015-2017) are summarized in Table 2, and seasonal measurements are shown in Table 3. The average value of the shape parameter for the two

Wind Speed Frequency Distribution Analysis
The monthly and annual mean wind speed, standard deviation (St.dev.), turbulence intensity (Tr. I), Weibull parameters, i.e., k and c calculated using Equations (4) and (5), and specific wind characteristics (V mp & V maxE ) of the site for both years (2015-2017) are summarized in Table 2, and seasonal measurements are shown in Table 3. The average value of the shape parameter for the two years is 2.097, and this parameter is almost the same for both years individually. Maximum shape parameter was in August 2015, where its value was 5.4, while the minimum was in February 2016 with a value of 2.031. The values of k for the whole data set were above 2, which indicates that the wind speed was moderate steady at a 10 m height at the candidate site. The scale parameter for the two years was 7.1 m/s, which is almost the same as that for the two years independently. The maximum scale parameter was found to be 11.  A comparison of Weibull and Rayleigh probability density functions and cumulative density functions with real data histograms is presented in Figures 8 and 9 for 2015-2016 and 2016-2017, respectively. For the Rayleigh distribution, the value of k is fixed, i.e., 2. The k calculated using Equation (4) for the Weibull distribution is not constant and was found greater than 2 for both years. This trend can be seen in the related figures.
Equations (20)- (22) were used to calculate the errors and verify the accuracy of the results computed from the Weibull distribution. The errors-RMSE, R 2 , and MBE-are given in Table 4. The values of all these errors are found in an acceptable range for the candidate site and verify the better fit of the Weibull distribution. Although the errors are small, the most probable wind speed was predicted to be 5 m/s by the Weibull distribution for both years, compared to around 6 m/s for the measured data.
A comparison of Weibull and Rayleigh probability density functions and cumulative density functions with real data histograms is presented in Figures 8 and 9 for 2015-2016 and 2016-2017, respectively. For the Rayleigh distribution, the value of k is fixed, i.e., 2. The k calculated using Equation (4) for the Weibull distribution is not constant and was found greater than 2 for both years. This trend can be seen in the related figures.  Table 4. The values of all these errors are found in an acceptable range for the candidate site and verify the better fit of the Weibull distribution. Although the errors are small, the most probable wind speed was predicted to be 5 m/s by the Weibull distribution for both years, compared to around 6 m/s for the measured data.

Wind Power and Energy Density
It is significant to discuss the output generated by the wind in the form of power and energy density. The monthly values for air density ( ) were calculated using Equation (16) and ranged from 1.131 to 1.205 kg/m 3 . The average annual of the proposed site was found to be 1.161 kg/m 3 . Table  5 illustrates the average monthly and yearly trends in power density and energy density calculated using the measured data and the Weibull and Rayleigh estimations. The Rayleigh function overestimates the power density for months with high wind speeds, and shows a relatively better fit for months with low wind speeds. The Weibull functions for months with low wind speeds show a slight underestimation of power density. In [21], researchers found that the Weibull function can predict the wind speed data better in comparison with the Rayleigh function. Almost similar results were found in this study, and this trend can be seen in Table 5.
For the years 2015-2016 and 2016-2017, the annual mean power density based on actual data

Wind Power and Energy Density
It is significant to discuss the output generated by the wind in the form of power and energy density. The monthly values for air density (ρ) were calculated using Equation (16) and ranged from 1.131 to 1.205 kg/m 3 . The average annual ρ of the proposed site was found to be 1.161 kg/m 3 . Table 5 illustrates the average monthly and yearly trends in power density and energy density calculated using the measured data and the Weibull and Rayleigh estimations. The Rayleigh function overestimates the power density for months with high wind speeds, and shows a relatively better fit for months with low wind speeds. The Weibull functions for months with low wind speeds show a slight underestimation of power density. In [21], researchers found that the Weibull function can predict the wind speed data better in comparison with the Rayleigh function. Almost similar results were found in this study, and this trend can be seen in Table 5. For the years 2015-2016 and 2016-2017, the annual mean power density based on actual data was found to be 256.3 W/m 2 and 259.1 W/m 2 , while the energy density was found to be 2245.88 kWh/m 2 and 2265.01 kWh/m 2 , respectively. The monthly maximum average power density was observed to be 626.44 and 587.03 W/m 2 in July and August 2015 and for the year 2016-2017, and 695.42 W/m 2 and 539.11 W/m 2 in June and July 2016, respectively. The monthly minimum average power densities were 41.38 W/m 2 and 49.11 W/m 2 , observed in the December of both years, whereas the highest and lowest values of energy density were found in the above-mentioned months for both years. In order to scale these outputs, the following wind classification at a 10 m height was used [29].
Fair P/A < 100 W/m 2 Fairly good 100 ≤ P/A < 300 W/m 2 Good 300 ≤ P/A < 700 W/m 2 Very good P/A ≥ 700 W/m 2 Furthermore, there is another wind power class (WPC) at 10 m height that can be used for the assessment of wind resources based on wind speed and power density [26,67]. According to this WPC, the regions classified as Class 3 or higher are considered suitable for wind power production. The calculated results of annual power density (>250 W/m 2 ), which are given in Table 5, show that the Hyderabad area is in Class 5 and suitable for installation of wind turbines. It can be seen in Figure 10 that the higher wind speeds in the summer season resulted in a higher wind power density for both years, calculated to be more than 500 W/m 2 . According to the defined scale for the wind power class, the summer season is in Power Class 7. The spring season is in Class 5, as the calculated power density is around 260 W/m 2 for both years. Finally, based on the annual estimate for the power density, the power output is relatively good for both years. The power curves of all selected WTs (curves obtained and compared using Windographer software) are shown in Fig. 11 and other technical specifications are given in Table 6. To operate with its optimal capacity, the wind turbine design parameters, for example, rated power, cut out and cut in velocity, rated velocity, and hub height, were selected according to the wind characteristics of a particular site. The operating range of wind turbines was typically between 2.5 and 14 m/s, which can affect the capacity factor and cost of energy, as well as changes depending on the size of the turbine; the average maximum energy carrying wind speed (VmaxE) for this location was almost the same as the rated wind speed of the wind turbines. The power produced (P), the annual energy delivered (E), and the corresponding capacity factor using these WTs are summarized in Table 7. The maximum energy generated (E) per year by the GE 2.75-103 wind turbine was 11227.16 MWh followed by Suzlon S95-2.1 (8948.70 MWh) and Vestas V90-2.0 (8580.12 MWh), while the minimum energy was produced by Enercon E-33/330 (1056.82 MWh). The maximum capacity factor (CF) was 0.56 for the GE 1.6-100 wind turbine, whereas the minimum value was 0.33 for Nordex N80/2500 turbine. Overall, the selected turbines showed a good amount of energy production. Some showed a low output but still had a good CF.

Energy Production
Total energy production and capacity factor are fundamental aspects of a wind power project. To determine the optimum energy output, it is essential to select the right turbine for a location. The wind data used in this research were measured at the height of the 10 m AGL. The power law was used to compute the average wind speed for different hub heights given in Equation (1). The considered hub heights were between 40 and 95 m, whereas the average wind speeds were between 7.5 and 8.5 m/s. The average wind speed was around 6.2 m/s for the whole data set, and the average maximum energy carrying wind speed (V maxE ) was about 9.7 m/s by Weibull estimation at 10 m height. The average V maxE ranging from 9.7 to 13.4 m/s was computed up to the height of 80 m. For estimation of V maxE at higher altitudes, the values for k and c were calculated using Equations (8) and (9). For this purpose, 18 wind energy conversion systems of different manufacturing companies (such as GE, DeWind, Enercon, Nordex, Vestas, Suzlon, and EWT DW) were selected to find the wind power, the annual energy production, and the capacity factor of the investigated site. The selected WTs' power rating ranged from 0.33 to 2.75 MW.
The power curves of all selected WTs (curves obtained and compared using Windographer software) are shown in Figure 11 and other technical specifications are given in Table 6. To operate with its optimal capacity, the wind turbine design parameters, for example, rated power, cut out and cut in velocity, rated velocity, and hub height, were selected according to the wind characteristics of a particular site. The operating range of wind turbines was typically between 2.5 and 14 m/s, which can affect the capacity factor and cost of energy, as well as changes depending on the size of the turbine; the average maximum energy carrying wind speed (V maxE ) for this location was almost the same as the rated wind speed of the wind turbines. The power produced (P), the annual energy delivered (E), and the corresponding capacity factor using these WTs are summarized in Table 7. The maximum energy generated (E) per year by the GE 2.75-103 wind turbine was 11227.16 MWh followed by Suzlon S95-2.1 (8948.70 MWh) and Vestas V90-2.0 (8580.12 MWh), while the minimum energy was produced by Enercon E-33/330 (1056.82 MWh). The maximum capacity factor (CF) was 0.56 for the GE 1.6-100 wind turbine, whereas the minimum value was 0.33 for Nordex N80/2500 turbine. Overall, the selected turbines showed a good amount of energy production. Some showed a low output but still had a good CF.

Windrose Diagrams
In order to determine the maximum outputs, an optimum configuration for the wind farm is required; wind direction plays an integral part in obtaining this optimization. Wind directions can be analyzed using rose diagrams, where 0 • is north and a 15-degree arc divides the whole into 24 sectors. Figures 12 and 13 show the average annual wind rose diagrams for the two years. Windographer was used to construct the wind rose diagram to find the overall wind direction frequency of the selected site. It can be seen from the rose graph that more than 45% of the wind is directed between 195 • and 240 • degrees clockwise. The critical fact is that, during the spring and summer seasons, the most productive seasons, the wind blows in the same direction.

Windrose Diagrams
In order to determine the maximum outputs, an optimum configuration for the wind farm is required; wind direction plays an integral part in obtaining this optimization. Wind directions can be analyzed using rose diagrams, where 0° is north and a 15-degree arc divides the whole into 24 sectors. Figures. 12 and 13 show the average annual wind rose diagrams for the two years. Windographer was used to construct the wind rose diagram to find the overall wind direction frequency of the selected site. It can be seen from the rose graph that more than 45% of the wind is directed between 195° and 240° degrees clockwise. The critical fact is that, during the spring and summer seasons, the most productive seasons, the wind blows in the same direction.

Windrose Diagrams
In order to determine the maximum outputs, an optimum configuration for the wind farm is required; wind direction plays an integral part in obtaining this optimization. Wind directions can be analyzed using rose diagrams, where 0° is north and a 15-degree arc divides the whole into 24 sectors. Figures. 12 and 13 show the average annual wind rose diagrams for the two years. Windographer was used to construct the wind rose diagram to find the overall wind direction frequency of the selected site. It can be seen from the rose graph that more than 45% of the wind is directed between 195° and 240° degrees clockwise. The critical fact is that, during the spring and summer seasons, the most productive seasons, the wind blows in the same direction.

Cost Prospect Analysis
An economic assessment of wind energy systems depends on many factors that vary in the regions. For wind energy projects, the fuel is free but requires a very high initial investment. The site is suitable for most wind turbine applications, from small standalone turbines to large wind power

Cost Prospect Analysis
An economic assessment of wind energy systems depends on many factors that vary in the regions. For wind energy projects, the fuel is free but requires a very high initial investment. The site is suitable for most wind turbine applications, from small standalone turbines to large wind power plants. The cost of substantial investments needed for the wind farm requires a detailed analysis of wind farm cost. Advantages and optimization of the wind farm layout are beyond the scope of this article, but an approximate economic analysis of standalone or large systems for powering the local community is described below. Wind turbines with different hub heights were selected. Hub height turbine analysis can be a benefit and provide an initial approach for the government and local investors to set up a wind farm.
The cost analysis of the selected wind turbines was calculated using Equation (27). The cost of wind turbines with power ratings above 200 kW ranged from 0.7 to 1.6 M$/MW, and an average specific cost of 1.15 M$/MW was considered [41,68]. The cost of a wind turbine in this study was estimated by assuming an initial price of 1.2 M$/MW. The initial investment cost was considered 30% of the wind turbine cost and the real interest rate was considered 10% [47]. The lifespan (s) of a wind turbine was supposed to be 20 years, whereas operation and maintenance cost were taken as 2% of the wind turbine cost [29,47]. By considering the above assumptions, the cost of energy (COE) per MW generated by the preferred wind turbines was computed, and the outcomes of these calculations are given in Table 7. To simplify the calculations, other losses, such as grid and distribution losses, transformer losses, wake losses, and cables losses were neglected and are beyond the scope of this study. The cost of energy (COE) per unit ranged from 19.27 to 32.80$/MWh. The highest cost was 32.80$/MWh for the Nordex N80/2500 wind turbine, and the lowest was 19.27$/MWh for the GE 1.6-100 wind turbine.

Conclusions
The wind power potential and economic analysis for electricity generation of the Hyderabad area was carried out in this research work. Two years' worth of real-time 10-min-interval-measured wind data were analyzed to compute different indicators for the assessment of wind power potential of the proposed area. The research results indicated that the investigated site was potentially suitable for using wind energy for power generation that meets the demand for the local communities. The outcomes of this study are concluded as follows:

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The diurnal wind speed variation analysis of the site showed that higher wind speeds occurred during the daytime and reached a maximum after 5 p.m., whereas the lowest wind speeds occurred after midnight and achieved the minimum at 6 a.m. The diurnal mean wind speed remained steady throughout the two years.  The findings of the study show that, for Hyderabad, wind power could be considered an alternative source of energy. The cost of energy (COE)/MWh generated by WTs is comparable to the cost of energy/MWh generated using fossil fuels. Therefore, the proposed location can be considered as a promising zone for wind power generation projects such as small standalone systems or large wind farms. Occasionally, it is not feasible to extend the main grids to small and far-flung locations. Thus, some small renewable energy resources based on standalone or off-grid power supply systems may be installed in this area to serve local communities. Further research may be directed toward selecting other types of wind turbines. Similarly, optimization of wind farm layout should also be carried out to intensify the electric power production.

Acknowledgments:
The authors would like to acknowledge the Pakistan Meteorological Department, the Government of Pakistan, and the World Bank Group for providing access to the technical data for this research.

Appendix A
Some basic numerical descriptors for wind data are the wind speed average (V avg ), speed standard deviation (σ), turbulence intensity (Tr.I), and wind power (P w ) can be expressed as follows: The wind turbine capacity factor (CF) is an indicator that estimates the performance of wind turbines (WTs). It is the ratio of the total power P of WTs delivered in a certain period to the turbine's maximum rated power P ra if the turbine was utilized with full capacity over the same period and is expressed as