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Individual blade pitch control for floating wind turbine based on RBF-SMC

机译:基于RBF-SMC的浮动风力涡轮机的个体刀片俯仰控制

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In this paper, the aerodynamic model, hydrodynamic model and mooring system model are established and coupled in time domain to obtain the effective wind speed under the disturbance of wind, wave and mooring load. On this basis, the online learning ability of Radial Basis Function (RBF) neural network is used to adjust the gain of sliding mode variable structure controller in real time so that the sliding mode function tends to the switching surface, and the chattering of sliding mode variable structure controller can be effectively reduced. The RBF-SMC individual blade pitch control method which is more suitable for floating wind turbine is obtained. Based on the simulation model of floating wind turbine composed of NREL-5MW wind turbine and OC3-Hywind foundation, the traditional PI control and the control method proposed in this paper are compared and analyzed. The results show that the individual blade pitch control based on RBF-SMC can effectively reduce the sway of floating foundation, restrain the fluctuation of effective wind speed of wind turbine, and ensure the stability of output power.
机译:在本文中,建立和耦合空气动力学模型,流体动力模型和系泊系统模型,在时域中耦合,以获得风,波和系泊载荷的干扰下的有效风速。在此基础上,径向基函数(RBF)神经网络的在线学习能力用于实时调节滑模可变结构控制器的增益,使得滑动模式功能倾向于开关表面,以及滑动模式的抖动可以有效地减少可变结构控制器。获得更适合浮动风力涡轮机的RBF-SMC各个刀片俯仰控制方法。基于NRER-5MW风力涡轮机和OC3-HUWWIND基础组成的浮风式涡轮机的仿真模型,比较了本文提出的传统PI控制和对照方法。结果表明,基于RBF-SMC的各个刀片俯仰控制可以有效地减少浮粉的摇摆,抑制风力涡轮机的有效风速的波动,并确保输出功率的稳定性。

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