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Neural Network Model Reference Adaptive System Speed Estimation for Sensorless Control of a Doubly Fed Induction Generator

机译:双馈感应发电机无传感器控制的神经网络模型参考自适应系统速度估计

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摘要

This article proposes a neural network model reference adaptive system for the rotor angle and speed estimation of the doubly fed induction generator used in wind turbines. The model reference adaptive system reference signal is the measured rotor current. The adaptive neural network adjusts the weights minimizing the rotor current vector squared error using the steepest descent algorithm. The neural network maximum stable learning rate will be determined for this application. The validity of the proposed neural network model reference adaptive system is verified and analyzed in a real prototype of 7.5-kW doubly fed induction generator. To validate the proposed estimator, the estimated rotor angle and speed in the process of connecting the doubly fed induction generator to the grid and the sensorless regulation according to a random wind speed profile are presented.
机译:本文提出了一种神经网络模型参考自适应系统,用于风力发电机中双馈感应发电机的转子角和速度估计。模型参考自适应系统参考信号是测得的转子电流。自适应神经网络使用最速下降算法调整权重,以使转子电流矢量平方误差最小。将为此应用确定神经网络的最大稳定学习率。在一个7.5 kW双馈感应发电机的真实原型中验证并分析了所提出的神经网络模型参考自适应系统的有效性。为了验证所提出的估计器,提出了在将双馈感应发电机连接到电网的过程中估计的转子角度和速度以及根据随机风速分布的无传感器调节。

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