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A novel frequency tracking method based on complex adaptive linear neural network state vector in power systems

机译:电力系统中基于复杂自适应线性神经网络状态向量的频率跟踪新方法

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This paper presents the application of a Complex Adaptive Linear Neural Network (CADALINE) in tracking the fundamental power system frequency. In this method, by using stationary-axes Park transformation in addition to producing a complex input measurement, the decaying DC offset is eliminated. As the proposed method uses first-order differentiator to estimate frequency changes, a Hamming filter is used to smoothen the response and cancel high-frequency noises. The most distinguishing features of the proposed method are the reduction in the size of observation state vector required by a simple Adaptive Linear Neural Network (ADALINE) and increase in the accuracy and convergence speed under transient conditions. This paper concludes with the presentation of the representative results obtained in numerical simulation and simulation in PSCAD/EMTDC software as well as in practical study.
机译:本文介绍了复杂自适应线性神经网络(CADALINE)在跟踪电力系统基本频率中的应用。在这种方法中,除了产生复杂的输入测量值之外,还通过使用固定轴Park变换来消除衰减的DC偏移。由于所提出的方法使用一阶微分器来估计频率变化,因此使用汉明滤波器来平滑响应并消除高频噪声。所提出的方法的最大特色是减少了简单的自适应线性神经网络(ADALINE)所需的观察状态向量的大小,并提高了瞬态条件下的准确性和收敛速度。本文以在数值模拟和PSCAD / EMTDC软件中进行的模拟以及在实践研究中获得的代表性结果的介绍作为结束。

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