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Article

The Effect of a Flexible Blade for Load Alleviation in Wind Turbines

by
Azael Duran Castillo
1,
Juan C. Jauregui-Correa
1,
Francisco Herbert
2,
Krystel K. Castillo-Villar
2,
Jesus Alejandro Franco
3,*,
Quetzalcoatl Hernandez-Escobedo
3,*,
Alberto-Jesus Perea-Moreno
4,* and
Alfredo Alcayde
5,*
1
Faculty of Engineering, Universidad Autonoma de Queretaro, Cerro de las Campanas S/N, Queretaro 76010, Mexico
2
Mechanical Engineering Department, Texas Sustainable Energy Research Institute, University of Texas at San Antonio, One UTSA Circle, San Antonio, TX 78249, USA
3
Escuela Nacional de Estudios Superiores Unidad Juriquilla, UNAM, Queretaro 76230, Mexico
4
Departamento de Física Aplicada, Radiología y Medicina Física, Universidad de Córdoba, Campus de Rabanales, 14071 Córdoba, Spain
5
Department of Engineering, University of Almería, La Cañada de San Urbano, 04120 Almería, Spain
*
Authors to whom correspondence should be addressed.
Energies 2021, 14(16), 4988; https://doi.org/10.3390/en14164988
Submission received: 8 July 2021 / Revised: 6 August 2021 / Accepted: 10 August 2021 / Published: 13 August 2021

Abstract

:
This article presents the analysis of the performance of a flexible wind turbine blade. The simulation analysis is based on a 3 m span blade prototype. The blade has a flexible surface and a cam mechanism that modifies the aerodynamic profile and adapts the surface to different configurations. The blade surface was built with a flexible fiberglass composite, and the internal mechanism consists of a flexible structure actuated with an eccentric cam. The cam mechanism deforms five sections of the blade, and the airfoil geometry for each section was measured from zero cam displacement to full cam displacement. The measured data were interpolated to obtain the aerodynamic profiles of the five sections to model the flexible blade in the simulation process. The simulation analysis consisted of determining the different aerodynamic coefficients for different deformed surfaces and a range of wind speeds. The aerodynamic coefficients were calculated with the BEM method (QBlade®); as a result, the data performance of the flexible blade was compared for the different deformation configurations. Finally, a decrease of up to approximately 6% in the mean bending moment suggests that the flexible turbine rotor presented in this article can be used to reduce extreme and fatigue loads on wind turbines.

1. Introduction

Growing concerns about global warming, environmental pollution, and energy security have increased interest in developing renewable and environmentally friendly energy sources. Electricity generation is the most significant driver of emissions; electricity/heat generation produces two-thirds of all greenhouse gases. A global energy transition is urgent to mitigate the changes occurring on earth, such as current global warming. The energy transition requires technological innovations to create increasingly efficient renewable energy systems [1].
Nowadays, wind and solar power dominate growth in renewable energy generation, according to the roadmap global energy model of the International Renewable Energy Agency (IRENA) that analyzes the technical and economic parameters of an energy transition to 2050. Wind energy can provide suitable solutions for global climate change and the energy crisis; this energy resource will occupy 24% of renewables in total final energy consumption terms by 2050 [2].
The constant growth of wind turbine capacities has required the research and development of novel control strategies to reduce stress loads on the blades as well as increase performance and efficiency by reducing the cost per kWh of energy produced. This problem control has been approached from different perspectives by researchers today. Several studies have studied new classical methods with advanced pitch control, such as Zhang and Plestan [3] who proposed a new control strategy that combines collective and individual blade pitch control for power regulation. The control system showed a high-level of performance. Colombo et al. [4] proved a robust sliding mode approach control using the pitch as a control input; the proposed solution was validated through simulation of a 5 MW wind turbine; similarly, a novel control was presented by Wiens et al. [5]. This method was used to mitigate the gust effects using a collective twist and pitch control; as a result, the simulations revealed that this control could lead to the reduction of loads in the turbine. Recent studies have proposed new designs of rotors with double-pitched blades; these new techniques have a similar principle as active smart rotors since they are based on modifying the blade pitch angle in independent sections along the blade; the simulation results of the study showed flutter suppression [6]. However, with the growth in the diameters of the current wind turbines, faster and more efficient controls have become more critical. Currently, a large sector of research has suggested the use of smart blade techniques in wind turbines; these smart rotors are capable of modifying or adapting the blade profile in response to various operating conditions with the integration of several sections with active elements. The main objective of these elements is a fast response to the changes in the operating variables that would, thereby, reduce loads in real-time.
The technology behind smart rotors can be divided into two main strategies. The first is the use of rigid structures that change aerodynamic geometry through trailing and leading edge fins or ailerons, such as Bernhammer et al. [7] who analyzed the reductions in fatigue and extreme loads of wind turbine components using an individual flap. As a result, they demonstrated a fatigue load reduction of the blade root bending of 24%. Oltmann et al. [8] investigated the feasibility of using trailing edge flaps as an active control mechanism for load reduction; the results revealed a configuration that eliminated the cyclic variation of the blade root bending moment. Sun et al. [9] designed and simulated an external blade-flap configuration for wind turbine blades. A reduction in the fluctuation of the blade root bending was obtained as a result. A study carried out by Chen and Qin [10] showed the performance of trailing-edge flow control devices such as microtabs, microjets, and a divergent trailing edge; the simulation results showed the advantages and disadvantages of the use of these devices in wind turbines. Boulamatsis et al. [11] presented an active control concept based on the blade tip sweep variation as a constant fatigue load alleviator.
In recent studies, several solutions have been proposed to implement deformable structures with flexible and continuous surfaces in the blades of wind turbines. These structures have shown significant advantages over smart rotors that use rigid elements due to the rigid structures that produce discontinuities in the aerodynamic surfaces of the blades, as well as the use of elements with mechanical wear such as various joints or external bearings that generate frequent maintenance, reduce operating costs, and aerodynamic efficiency. Lachenal et al. [12] presented a review of the active morphing concepts and the details of candidate materials for morphing structures in wind turbines; they concluded that the future of the next-generation wind turbines would be the integration of these compliant structures into blades that provide more efficiency and increase the turbine life. Jost et al. [13] studied the aerodynamics effects and influence of a rotor with trailing edge flaps on a wind turbine; they confirmed the necessity to consider the 3D effects in the design of trailing edge flaps. Rasmussen and Johansen [14] developed a rotor with flexible blades; this rotor showed advantages against a standard rotor in experimental tests. In this way, Momeni et al. [15] analyzed the performance of a novel plant leaf-mimetic wind blade; the results showed that this design may solve flutter issues in wind turbines. Franco et al. [16,17] developed a method to optimize the efficiency of wind turbine blades by modifying the aerodynamic profile and demonstrated the applicability of the shape morphing concept with the integration of a mechanism to deform the profile of a wind turbine blade. Its design considers two actuators; one to deform the leading edge and the second to curve the trailing edge. A study carried out by Khakpour and Hall [18] proposed a methodology for designing a blade with flexible modular segments; this blade uses five actuators and can achieve a full range of twist angle distribution.
The advances in new materials have led to the implementation of the concept of shape morphing in more studies In this way, Cognet et al. [19] proposed a method that finds the optimal soft materials of flexible blades to maximize the turbine efficiency by up to +35%. Similarly, MacPhee and Beyene [20] examined a morphing bladed turbine through experimental and numerical analysis; as a result, they found the flexible design outperforms the rigid design and increases the power coefficient by up to +32.6%. Zhuang et al. [21] studied the effect of a morphed trailing edge flap on the aerodynamic load control in a large wind turbine blade; the simulations revealed excellent load control capability. According to this, it is possible to observe the advantages that have been found due to the use of the shape morphing concept in wind turbines from the point of view of increasing the total efficiency of the turbine as well as controlling the load, reducing costs, and increasing the useful life of the overall renewable energy system.
In this article, the analysis is based on the paper presented by Jauregui et al. [22] who developed a novel blade design with deformable airfoil sections; the blade deformation changes from a baseline airfoil to another aerodynamic profile depending on the actuation of the cam mechanism; in this way, a singular elastic element that represents the line of the profile chord follows a third-order polynomial path. Figure 1 shows the shape morphing mechanism, which consists of a flexible strip (leaf spring) parallel to the airfoil chord, and a leaf spring attached to the blade external profile through rigid posts. These posts transmit the spring deflections to the flexible surface, and a cam mechanism moves the leaf spring, controlling the vertical displacements of the posts.
The inner structure of the flexible blade is revealed in Figure 2; the leading and trailing edge reinforcements provide the blade rigidity and the flexibility is achieved by the combination of the resins. In the figure, it can be observed that the cam and flexible strips positions are inside the flexible blade; the materials used in the manufacturing process of the blade prototype allowed achievement of local deformations without deforming the material in the chord direction. The Horizontal Axis Wind Turbine (HAWT) base rotor was designed with an optimal Tip Speed Ratio (TSR) equaling 6, and a configuration of the base profiles that corresponds to zero cam displacement. The rotation of the cam mechanism is carried out with the aim of obtaining maximum performance, maintaining an optimal energy capture, and reducing loads when the turbine experiences changes in operating conditions. This article seeks to demonstrate the benefits of using a flexible blade based on a simple cam mechanism to reduce loads on wind turbine rotors. Future work is necessary to formulate the control and instrumentation models to represent an overall load control strategy for wind turbines.
The article is divided into four main sections. Section 1 describes the state of the art technologies used in wind turbine smart rotors; in Section 2, the methodology for evaluating the power increment of the shape morphing blade design is established. For this purpose, the airfoil geometry for each cam section of the blade was measured setting the cam mechanism at different angles to implement the BEM simulations with the software QBlade®; the simulation results and discussions are revealed in Section 3; finally, in Section 4 the conclusions of the paper and future work are presented.

2. Materials and Methods

2.1. Flexible Blade Prototype

The prototype analyzed in this article is a 3.1 m long blade made with two types of resins: a flexible resin with 69% polyester and 31% styrene, and a rigid resin with 51% styrene and 49% polyester with a proportion of 60% rigidity and 40% flexibility with a fiberglass-reinforced core; Young’s modulus is 270 GPa, the yield point is 93,600 MPa, and the deformation is 0.0001656 mm/mm. Inside the blade, the eccentric cam mechanism, which rotates the axis along the blade, deforms the spring located in the chord of the aerodynamic profile in a singular cam section. The chord changes from a horizontal baseline to a third-order polynomial shape.
The airfoil geometry was measured at the location of the five eccentric cams on the low-pressure (upper) and high-pressure (lower) surfaces of the airfoil. The measurement points are localized by seven points across the width of both surfaces, and the measurements were performed at the different turning positions (0°, 30°, 45°, 60°, and 90° degrees) of the cam mechanism of the flexible blade (Figure 3). The displacements were recorded with a high precision dial sensor to obtain the data of the deformed airfoils along the blade for each configuration, which were used in the simulation process.
Figure 3a shows the measurement points located on the low-pressure (upper) surface of the blade, and the location of the corresponding points on the high-pressure surface is presented in Figure 3b.

2.2. BEM Simulations

One of the most critical parameters to evaluate the wind turbine performance is the power coefficient Cp; this is defined as the ratio between the power captured by the turbine P and the wind power available in a swept area A (see Equation (1))
C P = P 1 2 ρ A V 3
where V is the wind velocity, and ρ is the air density.
The power coefficient can be obtained by several mathematical models; in this article, the blade element momentum (BEM) method was selected due to its low computational cost; according to this, the BEM method allows us to analyze the performance of the shape morphing rotor for the different angles of the cam mechanism and a range of wind velocities.
The BEM method estimates the Cp for a discretized blade through an iterative calculation of the induction factors; the axial a, and the tangential a’, then the Cp is given by Equation (2) [16]
C P = 8 λ 2 λ h λ λ r 3 a 1 a 1 C D C L arctan δ d λ r
where λ is the tip speed ratio (TSR), λh is the TSR in the hub position, λr is the TSR for each radial position, and δ is the relative flow angle. The lift CL and CD drag coefficients are obtained from the following calculated with the XFoil software integrated into QBlade® [23].
The QBlade® simulation procedure is summarized in the scheme of Figure 4. These stages were defined for each single blade deformation by the cam mechanism angle. The foil coordinates data were obtained through the measurements in the points in the surface of the blade (see Figure 3), and these values were introduced in the software in order to model the different aerodynamic profiles for each configuration of the cam mechanism; Figure 5 shows the different airfoils for the cam angle of 0°. This article presents a particular configuration and design of the cam mechanism along the flexible blade that belong to the airfoils shown in Table 1. These airfoil families have a modified NACA base by the cam mechanism displacement, and their references names were established by the authors (Mod 4638, Mod 4529, Mod 4530, etc.)
The blade was 3D modeled and introduced in QBlade® to process the BEM method; the BEM algorithm of QBlade® has been validated against experimental data and compared with different certified BEM tools [24]. The results presented in these studies showed a good accuracy/error relation with respect to the experimental data and the simulation results of the BEM tools compared.
Table 1 presents the blade data for the baseline blade (Cam 0°), and Figure 6 reveals the wind turbine blade model (Cam 0°).
After this, the aerodynamics parameters of the different airfoils were calculated; an essential parameter for an airfoil design is the aerodynamic efficiency given by the ratio between CL/CD (Figure 7); this parameter changes depending on the angle of attack of the blade section and was 360° extrapolated by software for every single airfoil at the different cam configuration of the flexible blade.
Figure 8 presents the rotor model including parameters as the number of blades and hub radius equaling 0.2 m. In the last stage of the BEM, simulations were established for the different operating parameters such as wind velocities, rotational speed, variable increments, among others; then, QBlade® calculated the output variables for the various configuration cam angles of the flexible blade wind turbine. Figure 9 shows the power output of the flexible rotor vs TSR for the different cam angles at 6 m/s; this process was repeated for a range of wind speeds to obtain a set of data to compare different blade deformations presented in the next section.
In the simulation process, different variables were analyzed, among them one of great importance such as the thrust coefficient Ct; this was evaluated for the different deformations of the blade and at different wind speeds. From Figure 10 it is possible to infer that at different TSR values the same geometry deformed by the angle of the cam can generate maximum or minimum values in the thrust coefficient; these capabilities of the flexible rotor to control the bending moments of the turbine could result in a relevant strategy for load control.

3. Results and Discussion

The BEM method and the computational simulation strategy were presented in the last section. The results and discussion are presented in this section to compare and discuss the performance and the advantages of the flexible blade compared to the blade design without a deformation mechanism. The results were calculated using QBlade®, and the power output data were analyzed to compare the performance of the different configurations of the flexible blade.
The simulation results of the rotor are presented in Table 2; this set of data were obtained from the several calculations plotted with the different simulation parameters of the flexible blade (see Figure 11). It can be observed how the power coefficient varies as well as the power generated at the different positions of the cam. The minimum variation in power calculation for similar Cp values are due to rounding of the decimal numbers shown in Table 2.
To illustrate the effect of the position of the cam mechanism along the flexible blade, Figure 12 shows the summary of the maximum (polar) lift and drag coefficients of the aerodynamic profiles along the length of the blade when changing the position of the cams at 0, 30, 45, 60, and 90°; it is detected how this relationship increases by varying the position of the cam in the intermediate sections of the blade, mainly between 1.0 and 2.3 m. In contrast, at the base and the tip there was no variation since the mechanism did not modify these sections. Despite this increase in the CL/CD ratio, in Table 2 it is possible to observe that this effect does not significantly impact the output power and Cp.
One crucial aspect to take into account is the fact that the angle of attack of the intermediate positions of the blade shows a drastic variation when the position of the cam changes from 0° to 30° (Figure 13); this confirms that in the 30° position there is an increase in the power coefficient in comparison with 45, 60, and 90° positions; however, at the tip and root blade there were no relevant angle variations and, therefore, this did not contribute to a significant increase in the aerodynamic efficiency in the turbine.
The analysis of the effect of using the flexible blade on aerodynamic efficiency resulted in minimal increases in power output for different wind conditions; however, Figure 14 shows the plot of the bending moment versus wind velocity. According to the figure, it is suggested that the camber morphing mechanism presented in this article can be implemented as a load control system that allows for the variation in the angle of the cam mechanism depending on the wind conditions. Concerning the simulation data, a decrease of up to approximately 6% (see Figure 14) can be observed for speeds greater than 10 m/s, while at lower speeds, the configuration of the flexible blade can be changed to maintain the best performance of generated power.
The plot in Figure 15 presents the trend of the thrust coefficient to the wind velocity; the plot values confirm that the flexible turbine rotor can be used to reduce and mitigate extreme and fatigue loads.
This analysis has demonstrated the promising potential of using active mechanisms to deform the blades in the new generation of wind turbines. Despite the results obtained in this article, it is strongly recommended for new studies to be carried out in the future, including experimental tests and the development of a control model.

4. Conclusions

Recently, several studies using smart rotors in wind turbines have demonstrated the capabilities of these load control technologies in extreme load mitigation, alleviation of fatigue loads, as well as the increase in the power output performance, allowing the wind turbines to adapt to variable operating conditions. This article presented the simulation analysis of a small horizontal axis wind turbine power with flexible blades based on the paper presented by Jauregui et al. [22]. The several values of the measurement points were obtained through the high precision dial sensor in order to model the different rotor geometries at different cam angles of the flexible blade.
The effects on the aerodynamic efficiency of the change in the cam angle position in the blade sections were analyzed through the BEM method.
The simulation results implemented in the QBlade® software revealed minimal changes in the output power and the Cp for the different wind conditions. It strongly suggests modifying the design at the tip and root of the flexible blade to obtain better results in the power output performance; nevertheless, the data obtained for the thrust coefficient and the average bending moment in Figure 14 and Figure 15 advocate that the flexible blade design could be used to mitigate extreme and fatigue loads. According to the simulation data, a decrease of up to approximately 6% of the mean bending moment was observed.
The results of this article demonstrated the benefits of using a flexible blade based on a simple cam mechanism to reduce loads in wind turbine rotors. In addition, the mechanism proposed in this paper allows modifying multiple airfoil sections of the blade using a single actuator element in comparison with the different existing shape morphing mechanisms [8,10,16,17] that modify the blade profile implementing multiple actuators, thus, the presented flexible blade reduces energy consumption by active control elements, and the investment and maintenance costs.
New studies are required to define a control model and the implementation of an instrumentation system to integrate these flexible blades as a smart rotor system. These control and instrumentation models will represent new challenges as well as the opening to new lines of research on the subject.
For future work, an analysis of stresses and fatigue is necessary to determine the benefit of deforming aerodynamic profile in the lifetime of the wind turbine rotor. It is strongly advocated to conduct a redesign so that the smart rotor can achieve higher Cp in the wind speeds range; this could include different cam individual position angles along the blade sections.

Author Contributions

Conceptualization, A.D.C., J.C.J.-C., F.H., K.K.C.-V., J.A.F., Q.H.-E., A.-J.P.-M. and A.A.; methodology, A.D.C., J.C.J.-C., F.H., K.K.C.-V., J.A.F., Q.H.-E., A.-J.P.-M. and A.A.; formal analysis, A.D.C., J.C.J.-C., F.H., K.K.C.-V., J.A.F., Q.H.-E., A.-J.P.-M. and A.-J.P.-M.; investigation, A.D.C., J.C.J.-C., F.H., K.K.C.-V., J.A.F., Q.H.-E., A.-J.P.-M. and A.A.; writing—review and editing, A.D.C., J.C.J.-C., F.H., K.K.C.-V., J.A.F., Q.H.-E., A.-J.P.-M. and A.A. All authors have read and agreed to the published version of the manuscript.

Funding

This material is based upon work supported by 2018 ConTex collaborative projects funded by the University of Texas System, number 1000002471, and the Consejo Nacional de Ciencia y Tecnología de México, number 2018-94B.

Institutional Review Board Statement

Not applicable.

Informed Consent Statement

Not applicable.

Data Availability Statement

Not applicable.

Conflicts of Interest

The authors declare no conflict of interest.

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Figure 1. Shape morphing mechanism.
Figure 1. Shape morphing mechanism.
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Figure 2. Inner structure of the flexible blade.
Figure 2. Inner structure of the flexible blade.
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Figure 3. Location of measurement points (a) low-pressure surface (b) high-pressure surface.
Figure 3. Location of measurement points (a) low-pressure surface (b) high-pressure surface.
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Figure 4. Wind turbine analysis using QBlade®.
Figure 4. Wind turbine analysis using QBlade®.
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Figure 5. Blade airfoils at 0° cam mechanism.
Figure 5. Blade airfoils at 0° cam mechanism.
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Figure 6. Blade model.
Figure 6. Blade model.
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Figure 7. CL/CD vs angle of attack.
Figure 7. CL/CD vs angle of attack.
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Figure 8. Three-blade rotor model.
Figure 8. Three-blade rotor model.
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Figure 9. Power (W) vs TSR at 6 m/s.
Figure 9. Power (W) vs TSR at 6 m/s.
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Figure 10. Thrust Coefficient vs TSR at 6 m/s.
Figure 10. Thrust Coefficient vs TSR at 6 m/s.
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Figure 11. Cp vs wind velocity (m/s) (a) power (W) vs. wind velocity (m/s) (b).
Figure 11. Cp vs wind velocity (m/s) (a) power (W) vs. wind velocity (m/s) (b).
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Figure 12. Relationship of maximum lift and drag coefficients ratio for different positions of the cam mechanism along the blade.
Figure 12. Relationship of maximum lift and drag coefficients ratio for different positions of the cam mechanism along the blade.
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Figure 13. Angle of attack (°) vs Blade position (m) (0, 30, 45, 60, and 90° cam angle).
Figure 13. Angle of attack (°) vs Blade position (m) (0, 30, 45, 60, and 90° cam angle).
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Figure 14. Bending Moment (Nm) vs wind velocity (m/s) (0, 30, 45, 60, and 90° cam angle).
Figure 14. Bending Moment (Nm) vs wind velocity (m/s) (0, 30, 45, 60, and 90° cam angle).
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Figure 15. Thrust Coefficient vs wind velocity (m/s) (0, 30, 45, 60, and 90° cam angle).
Figure 15. Thrust Coefficient vs wind velocity (m/s) (0, 30, 45, 60, and 90° cam angle).
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Table 1. Blade design parameters without deformation (0°).
Table 1. Blade design parameters without deformation (0°).
Position (m)Airfoil (NACA Modified)Chord (m)Angle (°)
0.000Circular0.2200
0.195Circular0.2200
Section 10.400Mod 4638 0.33213.42
Section 2 0.440Mod 4638 0.33514.92
Cam 10.568Mod 4634 0.32813.44
Cam 21.070Mod 4530 0.3077.71
Section 31.230Mod 4530 0.3015.86
Section 4 1.500Mod 4529 0.2895.02
Cam 31.708Mod 4528 0.2804.37
Cam 42.346Mod 3524 0.2522.37
Cam 52.872Mod 2520 0.2310.72
Section 5 3.000Mod 1520 0.2260.31
Section 6 3.100Mod 1520 0.2230.00
0.000Circular0.2200
Table 2. Cp, power, and rotor rotation speed vs wind speed.
Table 2. Cp, power, and rotor rotation speed vs wind speed.
Cam Angle30°45°60°90°
Cp0.4070.410.4070.4010.398
Wind Velocity (m/s)RPMPower (W)Power (W)Power (W)Power (W)Power (W)
117.47.17.27.27.17.1
234.857.157.457.357.256.9
352.2192.9194.0193.4192.9191.9
469.6457.1459.9458.3457.4455.1
587.0892.9898.3895.2893.3888.8
6104.31542.91552.31546.91543.61535.9
7121.724502464.92456.42451.22438.9
8139.13657.23679.43666.83658.93640.5
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Castillo, A.D.; Jauregui-Correa, J.C.; Herbert, F.; K. Castillo-Villar, K.; Franco, J.A.; Hernandez-Escobedo, Q.; Perea-Moreno, A.-J.; Alcayde, A. The Effect of a Flexible Blade for Load Alleviation in Wind Turbines. Energies 2021, 14, 4988. https://doi.org/10.3390/en14164988

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Castillo AD, Jauregui-Correa JC, Herbert F, K. Castillo-Villar K, Franco JA, Hernandez-Escobedo Q, Perea-Moreno A-J, Alcayde A. The Effect of a Flexible Blade for Load Alleviation in Wind Turbines. Energies. 2021; 14(16):4988. https://doi.org/10.3390/en14164988

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Castillo, Azael Duran, Juan C. Jauregui-Correa, Francisco Herbert, Krystel K. Castillo-Villar, Jesus Alejandro Franco, Quetzalcoatl Hernandez-Escobedo, Alberto-Jesus Perea-Moreno, and Alfredo Alcayde. 2021. "The Effect of a Flexible Blade for Load Alleviation in Wind Turbines" Energies 14, no. 16: 4988. https://doi.org/10.3390/en14164988

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