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Direct power control of DFIG based wind turbine based on wind speed estimation and particle swarm optimization

机译:基于风速估计和粒子群优化的DFIG基风力涡轮机的直接电源控制

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This paper presents a direct power control (DPC) design of a grid connected doubly fed induction generator (DFIG) based wind turbine system in order to track maximum absorbable power in different wind speeds. A generalized regression neural network (GRNN) is used to estimate wind speed and thereby the maximum absorbable power is determined online as a function of wind speed. Finally the proposed DPC strategy employs a nonlinear robust sliding mode control (SMC) scheme to calculate the required rotor control voltage directly. The concept of sliding mode control is incorporated into particle swarm optimization (PSO) to determine inertial weights. The new DPC based on SMC-PSO scheme has acceptable harmonic spectra of stator current by using space vector modulation (SVM) block with constant switching frequency. Simulation results on 660-kw grid-connected DFIG are provided and show the effectiveness of the new technique, for tracking maximum power in presence machine parameters variation.
机译:本文介绍了基于双馈电机(DFIG)的风力涡轮机系统的网格连接的直接功率控制(DPC)设计,以跟踪不同风速的最大可吸收功率。广义回归神经网络(GRNN)用于估计风速,从而作为风速的函数在线确定最大可吸收力。最后,所提出的DPC策略采用非线性鲁棒滑动模式控制(SMC)方案来直接计算所需的转子控制电压。滑模控制的概念被纳入粒子群优化(PSO)以确定惯性权重。基于SMC-PSO方案的新DPC通过使用具有恒定开关频率的空间矢量调制(SVM)块具有定子电流的可接受的谐波光谱。提供660千瓦网格连接的DFIG的仿真结果,并显示了新技术的有效性,用于跟踪存在机器参数变化中的最大功率。

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