Variable-Gain Higher-Order Sliding Mode Pitch Control of Floating Offshore Wind Turbine

: A variable-gain higher-order sliding mode pitch control strategy is proposed for a strongly nonlinear and coupled ﬂoating offshore wind power system. The main goal of the proposed strategy is to suppress platform motion caused by random disturbances such as waves and wind speed and to reduce fatigue loads and power ﬂuctuations. Feedback control and super-twisting second-order sliding mode algorithm were adopted to carry out collective pitch control and track the rated rotor speed, which involves the factor of platform pitch. To adaptively adjust the collective pitch control parameters according to random wave and wind speed disturbances, the barrier function method was used to conceive adaptive sliding mode control gains. For comparison purposes, the proposed control strategy and PI control were executed under different wind and wave conditions on a FAST and MATLAB/Simulink platform. Furthermore, the fatigue load was calculated by Mlife. The results demonstrate that the proposed scheme is effective and robust. Moreover, it has advantages in resisting external disturbances, especially in suppressing the platform pitch and roll, as well as reducing the power ﬂuctuations and the fatigue load on the blade root.


Introduction
To cope with the challenges posed by energy depletion and climate change, countries around the world are vigorously turning towards renewable energy. Wind energy, which can be captured by wind turbines, has become one of the most important aspects of renewable energy [1]. However, the development of onshore wind turbine systems has produced limitations due to the scarcity of land resources, unstable wind speeds, and noise nuisance. This has led to a shift of research focus from shore to offshore wind turbines. The advantages of offshore wind turbines can be found in utilizing high-speed, stable wind resources, and reducing wind shear and physical constraints caused by hills or artificial buildings [2,3].
Offshore wind turbines can be divided into two types according to different installation foundations. The first one is the fixed offshore wind turbine. For economic feasibility, it is usually installed at a maximum sea depth of 40-50 m. This, in turn, causes great limitations for countries with small shallow water areas [4]. The other type is the floating offshore wind turbine (FOWT). Unlike fixed offshore wind turbines, FOWT is based on a floating structure that can keep the entire wind turbine stable at sea. A floating foundation offers the possibility of installing deep-sea wind turbines. The common floating foundations include the Spar, Barge, Tension-Leg Platform (TLP), and a semi-submersible type.
Although FOWTs have great development potential, they also bring about some challenges. Floating platform foundations are more easily excited by wind and wave loads than fixed ones. Consequently, this can lead to increased platform movement and structural fatigue load on turbines. The structural fatigue load increases the likelihood of damage and generator failure. Moreover, it increases maintenance costs. Therefore, to suppress the applied to onshore wind turbines [24,25]. However, chattering of the classical sliding mode can affect the control accuracy and may even cause system oscillation. By hiding the discontinuous sign function in higher-order time derivatives of the sliding variables, higher accuracy and less chattering than the conventional first-order sliding mode are obtained [26][27][28]. As a type of high-order sliding mode, super-twisting second-order sliding mode control has been applied for variable-speed wind turbines [29,30]. Implementation of these controllers requires knowledge of the upper bound on the perturbation derivatives. However, the upper bound is unknown and hard to calculate in the FOWT system. In this case, conservative switching gain can cause sliding mode control chattering and generator torque saturation problems. Therefore, when the upper bound of the uncertainty derivative is unknown, an adaptive sliding mode control strategy should be considered for the wind turbine system [19,31,32].
In this paper, a barrier function-based adaptive high-order sliding mode control strategy (BAHOSM) for the nonlinear and strongly coupled barge type FOWT is proposed. BAHOSM strategy ensures that the states of the FOWT converge in finite time to a given neighborhood of sliding variables. Their size does not depend on the upper bound of the uncertainty derivative [33]. Collective pitch control of the FOWT blades, which allows the rotor speed to track the rated speed considering the platform motion, is carried out based on BAHOSM. With the help of the barrier function, the designed pitch controller can adaptively adjust the control gains according to the random disturbance of sea waves and wind speed. This, in turn, stabilizes platform operation and restrains both the structure dynamic load and power fluctuations. This paper is organized as follows. In Section 2, wind turbine and barge-type platform models are presented. Details of the BAHOSM control strategy and its application to the barge type FOWT are presented in Section 3. In Section 4, simulation results under the proposed control scheme, and PI control, are analyzed. Lastly, the concluding remarks are given in Section 5.

FOWT Model
A FOWT is a wind energy capture device. Under the action of blades, the wind energy is first converted to mechanical energy. Then, the generator converts the mechanical energy into electrical energy, which varies with the wind speed. According to aerodynamic theory, the captured mechanical power can be expressed as [34,35]: where ρ is the air density, v w is the incoming wind speed, R is the rotor radius, β is the pitch angle, and λ is the tip speed ratio (TSR) which is expressed as: where ω is the angular velocity, and C P (λ, β) is the power capture coefficient which represents maximum wind energy utilization efficiency captured by the FOWT. By substituting Equation (2) into Equation (1), mechanical power extracted by FOWT can be expressed: Considering the relationship between aerodynamic power and torque P WT = T WT · ω, mechanical torque is expressed as: Desired power output is achieved by controlling C P (λ, β) to either increase or limit the conversion rate of wind energy. This coefficient is a nonlinear function of blade pitch angle β and TSR λ. It is expressed as [36]: where C i (i = 1, 2, . . . , 5) are fitting parameters. Their values are uncertain and dependent upon the blade shape and aerodynamic performance, i.e., where C i is a nominal value and ∆C i is uncertain. As mentioned in [25], nominal values in NREL 5 MW wind turbine are C 1 = 7.02 , C 2 = −0.0418, C 3 = −0.386,C 4 = −14.52, C 5 = 6.909. Then: The mechanical dynamics of a wind turbine can be expressed [25]: .
where B is the viscous friction coefficient at the low-speed shaft, J is the moment of inertia, N g is the gearbox ratio, and T g is the torque produced by the generator. The viscous friction coefficient and the moment of inertia are similar to the power capture coefficient. However, a certain deviation between the actual value and the nominal value exists. These values are bounded but unknown: By combining Equations (4), (7) and (10), the wind turbine model represented by Equation (9) can be expressed as: where d 1 (λ, β, v w , ω) is system uncertainty mainly induced by the uncertainties in Equations (7) and (10).
Considering the physical limitations of the wind turbine, the numerical range of the wind speed, rotor speed, and blade pitch angle is limited. Thus, bounded and the upper bound is unknown.
Similarly, variables and parameters in the model are restricted by the actual physical values. The parameter . d(λ, β, ω, ν w ) has the upper bound whose value is difficult to calculate.

FOWT Parameters
NREL 5 MW wind turbine and the ITI Energy barge floating platform are used in this study. This type of platform has a larger waterline surface area, which can provide a larger recovery moment to maintain the stability of the platform and ensure that the entire floating foundation does not capsize under various sea conditions. Furthermore, to prevent the drift of the floating foundation, the mooring system utilizes eight suspension chains to secure the platform. Two suspension chains are fixed at each corner of the bottom of the platform. Compared with the other forms of floating wind turbines, such as Spar floating foundation or TLP floating foundation, the Barge floating foundation has the lowest unit mass cost and the simplest structure in terms of the current manufacturing technology level. Consequently, the Barge floating platform is chosen for this study.
Detailed specifications of the 5 MW wind turbine and the ITI barge platform can be obtained according to [38,39]. The basic parameters of the wind turbine are provided in Table 1.

Control Design
A FOWT represents a strong coupling and uncertain nonlinear system, which is not only affected by the structural elasticity of the tower and the blade, but also by the wind and the waves. Therefore, when the system operating point changes, the control performance of the linear model controllers, which are based on a certain operating point, deteriorate. To achieve robustness and nonlinear control, an adaptive high-order sliding mode control strategy is proposed in this section and described in detail. The blade pitch angle represents the control input, and the rated rotor speed that takes the platform displacement into account is the target to follow. Based on functional characteristics of the barrier function, a high-order sliding mode collective pitch controller can adaptively adjust the control parameters in the case of external random disturbance. The proposed control scheme aims to solve the problems of fatigue structure load and power fluctuation. Moreover, it improves the robustness of the FOWT control system. Given that this study was conducted in region 3, the generator torque was fixed at the rated, and the relationship between generator power, torque and rotor speed is p = N g T rated g ω, where N g is the gearbox ratio, T rated g is the rated generator torque. The integral sliding mode surface is chosen as: (17) where c is the design parameter, and ω * is the rated rotor speed which accounts for the platform displacement. Rated generator speed function which considers platform displacement is represented as [16,40]: where 1173.7 rpm is the rated generator speed, θ Plat and . θ Plat are the platform pitch angle and platform pitch angular speed, respectively. In this study, positive platform pitch speed is defined as the downwind platform pitch to ensure a negative k value, which is set as −0.0375/(deg/s). Multiplying both sides of Equation (18) by the rated torque of the generator (43,093.55 Nm), the following expression is obtained: It can be observed that the FOWT power changes along with the platform pitch speed, and 5 MW results when . θ Plat is zero. The low speed of the shaft at the rotor side can be expressed as: where N g is the gearbox ratio. By analyzing Equation (20), it can be concluded that when the rotor is pitched upwind, more energy is extracted from the wind by increasing the rated rotor speed. Thus, platform motion is suppressed. When the rotor is downwind pitched, less energy is extracted due to a reduction of the rated rotor speed. Hence, platform motion is once again restrained. By substituting Equation (15) into an integral sliding surface expressed by Equation (17), the following expression is obtained: where a, b are nominal values, ∆ is the system uncertainty, and M is the unknown upper bound of the uncertainty derivative. Then, the control objectives can be achieved by constructing the appropriate control law. Preliminary feedback for Equation (21) is carried out as: Then, Equation (21) is converted as: Conventional first-order sliding mode control can be adopted for Equation (23) to establish the sliding mode with respect to s: However, high-frequency switching can cause serious chattering of the blade pitch under this conventional first-order sliding mode. As the special high-order sliding mode algorithm, the standard super-twisting second-order sliding mode control can be used for the FOWT: where λ 1 and λ 2 are the control gains. If two parameters are chosen as λ 1 = 1.5 √ M and λ 2 = 1.1M, second-order sliding mode with respect to s can be established [41]. Hence, finite-time stability of the closed-loop system can be achieved. However, it is hard to acquire the values of M in the FOWT control system. Thus, in this paper, adaptive control gains are presented based on the barrier function. Characteristics of the barrier function can be obtained from [42]. Here, the barrier function is chosen as: where L is a positive constant, and ε is a provided fixed value. Then, adaptive virtual control law ν can be constructed as: Adaptive control gain L(t, s) is conceived as: where t 1 is the time required for |s| to reach ε /2. For any ε > 0, there exists a t 1 > 0. |s|< ε is satisfied for any initial state s(0) when t ≥ t 1 . Real sliding mode with respect to s can be established after t ≥ t 1 , which means that the rotor speed of the FOWT can converge to the error range of the rated rotor speed ω * . The proof for the above convergence conclusion includes two steps. First, it should be proven that |s| can reach ε/2 in finite time t 1 . Under the assumption that s(0) > ε 2 is satisfied, adaptive control gain is determined by . L a (t) =L 1 . The following variable transformation is considered: Derivatives for z 1 , z 2 are represented as: The Lyapunov function is then chosen: where P is a constant symmetric positive definite matrix, ξ T (t) = |z 1 | 1/2 sign(z 1 ) z 2 . Then, the time derivative of ξ(t) can be expressed as: .
The time derivative of V 1 is: where K T P + PK = −Q, Λ T P + PΛ = −R. Based on [43], symmetric positive definite matrix P exits. Then, Q, R are positive definite. In other words: . where λ min (P) 1 2 , λ min , λ max are minimum eigenvalue and maximum eigenvalue of the relative matrix, respectively. The parameter p 11 is the first element of the matrix P. The first part of the right side in Equation (34) is negative and the second part is positive. Here, the second part decreases with an increase in the adaptive control gain. The adaptive control gain becomes large enough to overcome uncertainties. Thus, the second part becomes very small. The third part is negative and further reduced when . L is negative. As previously discussed, the first part is larger than the second one, and the third part becomes smaller. Then, the right side of Equation (34) is negative and . V 1 ≤ −aV 1/2 1 is satisfied, i.e., finite time stability is achieved. Moreover, V 1 continues to decrease and |s| can reach ε/2.
It is proven in the first step that |s| can reach ε/2 when the time is t = t 1 . The next step is to prove that |s|≤ ε can be obtained after t ≥ t 1 .
The Lyapunov function is chosen as: Then: .
According to the barrier function of Equation (26): The right side of Equation (38) is considered to define: F = 0 is a quadratic equation, and the two roots can be calculated as: It is observed that the second root, which is the only one that has to be further investigated, is negative. According to Equation (40): According to the well-known inequation a 2 + b 2 ≤ (a + b) 2 : Then, the upper bound of |s 11 | can be written as: Finally, the inequality (44) can be deduced as: If |s| ≥ |s 11 | is satisfied, then F is a positive definite. Thus, . V 2 < 0 is satisfied for |s 11 | ≤ |s| < ε.Variable s will always satisfy |s| < |s 11 |, and |s 11 | is smaller than ε for any derivative of ∆.
Therefore, real sliding mode with respect to s is established in finite time. The rotor speed can track the prescribed value with an unknown upper bound of the uncertainty derivative. Thus, the stability of the entire control system is guaranteed.
The proposed BAHOSM control scheme is depicted in Figure 1. Therefore, real sliding mode with respect to s is established in finite time. The rotor speed can track the prescribed value with an unknown upper bound of the uncertainty derivative. Thus, the stability of the entire control system is guaranteed.
The proposed BAHOSM control scheme is depicted in Figure 1. In addition, the traditional PI control method, which is shown in Figure 2, is used to compare the control performance.

Simulation Results
The proposed BAHOSM collective pitch control scheme was built to verify the effectiveness based on the FAST and MATLAB/Simulink platforms. The wind turbine model was a 5 MW ITIBarge4 FOWT model.
In the study, all 24 degrees of freedom in FAST were enabled, simulation runtime was 600 s, and the integration algorithm in Simulink was ode4 (Euler) with a fixed step size set to 0.0125 s. Considering the actual physical application of the wind turbine, the operating interval of the blade pitch angle was set to [0°, 90°] and the pitch rate was limited to 8°/s. In addition, the wind input signal was generated by the TurbSim software. The following two external environments are shown in Table 2. In Figure 3, the change process of the two external environments is shown. In addition, the traditional PI control method, which is shown in Figure 2, is used to compare the control performance. Therefore, real sliding mode with respect to s is established in finite time. The rotor speed can track the prescribed value with an unknown upper bound of the uncertainty derivative. Thus, the stability of the entire control system is guaranteed.
The proposed BAHOSM control scheme is depicted in Figure 1. In addition, the traditional PI control method, which is shown in Figure 2, is used to compare the control performance.

Simulation Results
The proposed BAHOSM collective pitch control scheme was built to verify the effectiveness based on the FAST and MATLAB/Simulink platforms. The wind turbine model was a 5 MW ITIBarge4 FOWT model.
In the study, all 24 degrees of freedom in FAST were enabled, simulation runtime was 600 s, and the integration algorithm in Simulink was ode4 (Euler) with a fixed step size set to 0.0125 s. Considering the actual physical application of the wind turbine, the operating interval of the blade pitch angle was set to [0°, 90°] and the pitch rate was limited to 8°/s. In addition, the wind input signal was generated by the TurbSim software. The following two external environments are shown in Table 2. In Figure 3, the change process of the two external environments is shown.

Simulation Results
The proposed BAHOSM collective pitch control scheme was built to verify the effectiveness based on the FAST and MATLAB/Simulink platforms. The wind turbine model was a 5 MW ITIBarge4 FOWT model.
In the study, all 24 degrees of freedom in FAST were enabled, simulation runtime was 600 s, and the integration algorithm in Simulink was ode4 (Euler) with a fixed step size set to 0.0125 s. Considering the actual physical application of the wind turbine, the operating interval of the blade pitch angle was set to [0 • , 90 • ] and the pitch rate was limited to 8 • /s. In addition, the wind input signal was generated by the TurbSim software. The following two external environments are shown in Table 2. In Figure 3, the change process of the two external environments is shown.   where I and i are the total number and the index of the sampled system output. The smaller the RMS of the rotor speed and the generator power, the better the speed and the power are regulated. Similarly, for the platform pitch, roll, and yaw, the smaller the RMS, the more stable the platform. This also reduces the tower base side-side, fore-aft, and torsional moment. In addition, mechanical stresses of the tower base and the blades were analyzed via MLife. The blade is the key part in the direct extraction of wind energy. Thus, its mechanical stress should be analyzed. The stress of the tower base is amplified by the wave action, and it affects the important parts, such as the tower tube which is characterized by the strong coupling. Therefore, it is also very important to analyze the mechanical stress of the tower base. Here, the damage equivalent load (DEL) was used to quantify the described forces and moments. In this paper, the analysis focuses on the bending moments of the blade root and tower base. The calculated life was 20 years, the frequency of DEL was 1 Hz, and the Wohler index was set as 4 and 10 for the tower and the blade, respectively. Furthermore, the DEL normalized performance metric was calculated and compared with the performance obtained by PI (the metric is always equal to 1). When the The control parameters of the proposed BAHOSM control strategy were set as h 1 = 1.5, h 2 = 0.05, ε = 20, L 1 = 0.1, L = 1.5, t = 20. To compare the control performance, PI control is executed, and the control parameters of the PI controller were chosen as K P = 0.1, K I = 0.01.
The performance of the controller was measured by the root mean squares (RMS) and damage equivalent load (DEL) of several variables. RMS is represented as [20]: where I and i are the total number and the index of the sampled system output. The smaller the RMS of the rotor speed and the generator power, the better the speed and the power are regulated. Similarly, for the platform pitch, roll, and yaw, the smaller the RMS, the more stable the platform. This also reduces the tower base side-side, fore-aft, and torsional moment. In addition, mechanical stresses of the tower base and the blades were analyzed via MLife. The blade is the key part in the direct extraction of wind energy. Thus, its mechanical stress should be analyzed. The stress of the tower base is amplified by the wave action, and it affects the important parts, such as the tower tube which is characterized by the strong coupling. Therefore, it is also very important to analyze the mechanical stress of the tower base. Here, the damage equivalent load (DEL) was used to quantify the described forces and moments. In this paper, the analysis focuses on the bending moments of the blade root and tower base. The calculated life was 20 years, the frequency of DEL was 1 Hz, and the Wohler index was set as 4 and 10 for the tower and the blade, respectively. Furthermore, the DEL normalized performance metric was calculated and compared with the performance obtained by PI (the metric is always equal to 1). When the normalized value is less than 1, the BAHOSM control strategy performs better relative to PI and vice-versa

Rotor Speed and Generator Power Regulation
Responses of the rotor speed and the power under the two control strategies are shown in Figures 4 and 5. It can be observed that both control strategies control the system, with the actual speed and the actual power fluctuating above and below the rated value (rated rotor speed is 12.1 rpm and the rated power is 5 MW). With the BAHOSM control strategy, power and speed fluctuations are much smaller. RMS values of the corresponding indicators in the two cases are shown in Tables 3 and 4. J. Mar. Sci. Eng. 2021, 9, x FOR PEER REVIEW 12 of 20 normalized value is less than 1, the BAHOSM control strategy performs better relative to PI and vice-versa

Rotor Speed and Generator Power Regulation
Responses of the rotor speed and the power under the two control strategies are shown in Figures 4 and 5. It can be observed that both control strategies control the system, with the actual speed and the actual power fluctuating above and below the rated value (rated rotor speed is 12.1 rpm and the rated power is 5 MW). With the BAHOSM control strategy, power and speed fluctuations are much smaller. RMS values of the corresponding indicators in the two cases are shown in Tables 3 and 4.  Table 3. RMS values of the rotor speed and generator power for Case 1.

Control Effect on Platform Motion
The time-series response of the platform motion under BAHOSM and PI control is shown in Figures 6 and 7 for the two cases. The BAHOSM control strategy makes the platform pitch and roll less responsive for both cases.
In Figure 8, the RMS of the platform pitch, roll, and yaw is shown. In case 1, the platform pitch, platform roll, and platform yaw decrease by 16%, 19%, and 8%, respectively. In case 2, the platform pitch and platform roll decrease by 7%, and 14%, respectively, while the platform yaw increases by 0.1%. It can be observed that the pitch and roll motion angle of the platform are significantly reduced under the BAHOSM control strategy.
i. Eng. 2021, 9, x FOR PEER REVIEW Figure 6. Platform motion response in Case 1.

Control Effect on the Load
In Figures 9 and 10, normalized DEL data at the blade root and tower base are compared for the two control strategies. Fundamentally, most loads acting on the wind turbine components (such as nacelle towers) ultimately come from blade loads. Thus, reducing the blade root loads on FOWTs is essential. It should be noted that the BAHOSM control strategy is effective in suppressing the loads at the blade root in both environments. In case 1, blade root edgewise moment and blade root moment flap wise are reduced by

Control Effect on the Load
In Figures 9 and 10, normalized DEL data at the blade root and tower base are compared for the two control strategies. Fundamentally, most loads acting on the wind turbine components (such as nacelle towers) ultimately come from blade loads. Thus, reducing the blade root loads on FOWTs is essential. It should be noted that the BAHOSM control strategy is effective in suppressing the loads at the blade root in both environments.
In case 1, blade root edgewise moment and blade root moment flap wise are reduced by 6% and 9%, respectively. The BAHOSM control strategy reduces the tower base fore-aft moment by 6% and the tower base torque by 4% compared to the PI control strategy. However, the side-to-side moment increases by 5%, which was not expected in this design. In case 2, the BAHOSM control strategy can reduce the side-to-side moment by 4% and the tower base torsional moment by 6%, while the tower base fore-aft moment does not change significantly.

Control Effect on the Load
In Figures 9 and 10, normalized DEL data at the blade root and tower base are compared for the two control strategies. Fundamentally, most loads acting on the wind turbine components (such as nacelle towers) ultimately come from blade loads. Thus, reducing the blade root loads on FOWTs is essential. It should be noted that the BAHOSM control strategy is effective in suppressing the loads at the blade root in both environments. In case 1, blade root edgewise moment and blade root moment flap wise are reduced by 6% and 9%, respectively. The BAHOSM control strategy reduces the tower base fore-aft moment by 6% and the tower base torque by 4% compared to the PI control strategy. However, the side-to-side moment increases by 5%, which was not expected in this design. In case 2, the BAHOSM control strategy can reduce the side-to-side moment by 4% and the tower base torsional moment by 6%, while the tower base fore-aft moment does not change significantly.

Control Gain and Sliding Surface
Blade pitch angle, control gain, and sliding mode variables under the BAHOSM control strategy are shown in Figures 11 and 12. The blade pitch angle actuator produces more response under BAHOSM control strategy. Pitch behavior is acceptable since this design sets the blade pitch at a certain pitch range and a certain pitch rate. Moreover, this does not increase the blade root load. The BAHOSM control gain can be automatically changed with the wind speed and waves. It can be observed that the sliding variables also converge to a near-zero value after a period of transition. When the wind speed exceeds 25 m/s, for safety reasons, the wind turbine assembly must have a mechanical brake. Due to the strongly coupled character of FOWT systems, blade pitch and platform motion are affected by each other and the movement of the platform is influenced by external waves. Therefore, the range of blade pitch is not only depended on the wind, but also affected by the waves. Although the wind speed at the height of the hub is 25 m/s, due to the influence of sea waves, the wind speed does not reach the conditions for triggering the mechanical brake, so the blade pitch is operating normally.

Control Gain and Sliding Surface
Blade pitch angle, control gain, and sliding mode variables under the BAHOSM control strategy are shown in Figures 11 and 12. The blade pitch angle actuator produces more response under BAHOSM control strategy. Pitch behavior is acceptable since this design sets the blade pitch at a certain pitch range and a certain pitch rate. Moreover, this does not increase the blade root load. The BAHOSM control gain can be automatically changed with the wind speed and waves. It can be observed that the sliding variables also converge to a near-zero value after a period of transition. When the wind speed exceeds 25 m/s, for safety reasons, the wind turbine assembly must have a mechanical brake. Due to the strongly coupled character of FOWT systems, blade pitch and platform motion are affected by each other and the movement of the platform is influenced by external waves. Therefore, the range of blade pitch is not only depended on the wind, but also affected by the waves. Although the wind speed at the height of the hub is 25 m/s, due to the influence of sea waves, the wind speed does not reach the conditions for triggering the mechanical brake, so the blade pitch is operating normally. fected by each other and the movement of the platform is influenced by ext Therefore, the range of blade pitch is not only depended on the wind, but als the waves. Although the wind speed at the height of the hub is 25 m/s, due to of sea waves, the wind speed does not reach the conditions for triggering th brake, so the blade pitch is operating normally.       Figure 13 shows two external examples of the blade pitch rate normalized mance index. The application of the BAHOSM control strategy results in increasin pitch use, while making the blade pitch system more sensitive. Despite the increas pitch rate, the effect of blade pitch rate is acceptable when the blade pitch angle o range is set to [0°, 90°], the pitch rate is limited to 8°/s, and the blade root momen not increased.

Conclusions
In this paper, an adaptive higher-order sliding mode control strategy for a F proposed to study platform motion, power, and DEL suppression. Compared w Figure 13. Normalized performance index of blade pitch rate.

Conclusions
In this paper, an adaptive higher-order sliding mode control strategy for a FOWT is proposed to study platform motion, power, and DEL suppression. Compared with the traditional PI control strategy, the BAHOSM control strategy is effective in stabilizing the power and suppressing the platform pitch and roll. Moreover, the BAHOSM control strategy is also efficient in suppressing the blade root load, which is a key objective. Despite the favorable results, it should also be noted that the BAHOSM control strategy is slightly less effective in suppressing the tower base DEL in different environments compared to conventional PI control. Therefore, further reduction in the tower-based DEL should be investigated in future work. In addition, improved control techniques will certainly reduce the costs associated with operation and maintenance, while maintaining FOWT optimality and increasing energy production. Therefore, a strategy combining CPC and IPC control methods may yield positive results, with CPC for good speed and power regulation and IPC to eliminate blade fluctuations. On the flip side, FOWTs face the problems of complex operating environments, uncertain system parameters, various disturbances and coupling effects between wind, waves and turbine structures. Neural network learning strategies may be an effective way to solve these problems.