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首页> 外文期刊>Research journal of applied science, engineering and technology >A Differential Evolution Based Adaptive Neural Network Pitch Controller for a Doubly Fed Wind Turbine Generator System
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A Differential Evolution Based Adaptive Neural Network Pitch Controller for a Doubly Fed Wind Turbine Generator System

机译:双馈风力发电机组基于差分进化的自适应神经网络变桨控制器

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摘要

Extraction of maximum energy from wind and transferring it to the grid with high efficiency are challenging problems. To this end, this study proposes a smart pitch controller for a wind turbine-doubly fed induction generator system using a Differential Evolution (DE) based adaptive neural network. The nominal weights for the back-propagation neural network controller are obtained from input-output training data generated by DE optimization method. These weights are then adaptively updated in time domain depending on the variation of the system outputs. The adaptive control strategy has been tested through simulation of complete system dynamics comprising of the turbine-generator system and its various components. It has been observed that the DE based smart pitch controller is able to achieve efficient energy transfer to the grid and at the same time provide a good damping profile. Locally collected wind data was used in the testing phase.
机译:从风中提取最大能量并将其高效传输到电网是具有挑战性的问题。为此,本研究提出了一种基于基于差分进化(DE)的自适应神经网络的风力发电机双馈感应发电机系统的智能变桨控制器。反向传播神经网络控制器的标称权重是通过DE优化方法生成的输入输出训练数据获得的。然后,根据系统输出的变化,在时域中自适应更新这些权重。自适应控制策略已通过模拟完整的系统动力学进行了测试,其中包括涡轮发电机系统及其各种组件。已经观察到,基于DE的智能桨距控制器能够实现向电网的有效能量传递,同时提供良好的阻尼曲线。测试阶段使用了本地收集的风数据。

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