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首页> 外文期刊>International Journal of Renewable Energy Technology >Optimal active and reactive power control of wind turbine driven DFIG using TLBO algorithm and artificial neural networks
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Optimal active and reactive power control of wind turbine driven DFIG using TLBO algorithm and artificial neural networks

机译:基于TLBO算法和人工神经网络的风力发电机DFIG的有功与无功最优控制。

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This paper investigates the optimal active and reactive power control capabilities for typical wind turbine (WT) driven doubly fed induction generator (DFIG). The main objective is to determine the optimal rotor voltage to extract certain active and reactive power from the DFIG over wide ranges of wind speed. Teaching learning-based optimisation (TLBO) algorithm is a new heuristic optimisation technique, used to obtain the optimum rotor voltages to achieve reference active and reactive powers overall operating points. Artificial neural network (ANN) controller is used as an adaptive controller to predict the value of rotor voltage for all operating points. The ideal power curve of a 2 MW wind turbine has been estimated to design the active power controller. 1 he stator reactive power control capability with the range of ±1.6 MVAR is developed. With the proposed control strategy, the DFIG-based wind farm provides maximum power point tracking (MPPT), fully active and reactive powers control. For all operated wind speeds, the adaptive proposed controller develops useful network support compared to the conventional DFIG-based wind farm. The proposed system is developed in MATLAB/Simulink environment.
机译:本文研究了典型风力涡轮机(WT)驱动的双馈感应发电机(DFIG)的最佳有功和无功功率控制能力。主要目标是确定最佳转子电压,以在大风速范围内从DFIG中提取某些有功和无功功率。基于教学的学习优化(TLBO)算法是一种新的启发式优化技术,用于获得最佳转子电压,以实现参考有功和无功功率的总体工作点。人工神经网络(ANN)控制器用作自适应控制器,以预测所有工作点的转子电压值。已估算出2兆瓦风力涡轮机的理想功率曲线,以设计有功功率控制器。开发了1种定子无功功率控制能力,范围为±1.6 MVAR。通过提出的控制策略,基于DFIG的风电场可提供最大功率点跟踪(MPPT),完全有功和无功功率控制。对于所有运行的风速,与常规的基于DFIG的风电场相比,自适应建议控制器可提供有用的网络支持。该系统是在MATLAB / Simulink环境下开发的。

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