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Intelligent harmonic load model based on neural networks

机译:基于神经网络的智能谐波负荷模型

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摘要

In this study, we developed a RBFNs(Radial Basis Function Networks) based load modeling method with harmonic components. The developed method implemented by using harmonic information as well as fundamental frequency and voltage which are essential input factors in conventional method. Thus, the proposed method makes it possible to effectively estimate load characteristics in power lines with harmonics. The RBFNs have certain advantage such as simple structure and rapid computation ability compared with multilayer perceptron which is extensively applied for load modeling. To show the effectiveness, the proposed method has been intensively tested with various dataset acquired under the different frequency and voltage and compared it with conventional methods such as polynominal 2nd equation method, MLP and RBF without considering harmonic components.
机译:在这项研究中,我们开发了一种基于RBFNs(径向基函数网络)的具有谐波分量的负荷建模方法。通过使用谐波信息以及基本频率和电压(传统方法中必不可少的输入因素)来实现此开发方法。因此,所提出的方法使得可以有效地估计具有谐波的电力线中的负载特性。与广泛应用于负荷建模的多层感知器相比,RBFN具有结构简单,计算速度快等优点。为了证明这种方法的有效性,该方法已经在不同频率和电压下采集的各种数据集中进行了深入测试,并与多项式二阶方程法,MLP和RBF等常规方法进行了比较,而没有考虑谐波分量。

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