基于Hopfield神经网络的励磁系统参数辨识

Q. F. Liao, D.C. Liu, L. Ying, X. Cui, Y. Li, W.T. He
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引用次数: 8

摘要

将基于Hopfield神经网络(HNN)的参数辨识方法应用于静态励磁系统。详细给出了该识别方法的适用算法。对九参数励磁系统进行了研究。为了识别这些参数,设计了20个神经元的HNN。最后进行模型验证。数值仿真结果表明,该方法精度高,收敛速度快。该方法可以用电子电路实现,有利于励磁系统的在线参数辨识,对任何可以用状态空间模型描述的系统都有一定的指导意义。
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Parameter Identification of Excitation Systems Based on Hopfield Neural Network
The parameter identification based on Hopfield neural network (HNN) was applied to a static excitation system. The applicable algorithm of the identification method was given in detail. Nine-parameter excitation system was studied. The HNN of twenty neurons were designed in order to identify these parameters. Finally model validation was performed. Numerical simulation results testify that this method has high precision and quick convergence. The method can be implemented with electronic circuit, so it will benefit the on-line parameter identification of the excitation system and will have significance to any system that can be described by state space model.
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