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A methodology for training artificial neural networks for islanding detection of distributed generators

机译:训练人工神经网络进行孤岛检测的方法

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The anti-islanding protection of synchronous generators is typically performed by voltage and frequency relays. However, one of the main issues related to setting these relays is to identify and differentiate the magnitude and frequency variations of an islanding event from other disturbances that may occur along the system, such as severe load switching. By using an Artificial Neural Network (ANN) based algorithm, it is possible to recognize existent patterns on the distributed generator voltage waveform, which makes possible to obtain an accurate response about islanding events. However, the ANN training process is not so easy, because it involves important issues such as the definition of the ANN architecture, the size of data window, sampling rate and selection of a representative training set for the studied problem. In this context, this paper discusses the fundamental aspects for training an ANN used for islanding detection of synchronous distributed generators.
机译:同步发电机的防孤岛保护通常由电压和频率继电器执行。但是,与设置这些继电器相关的主要问题之一是,将孤岛事件的幅度和频率变化与系统可能发生的其他干扰(例如严重的负载切换)区别开来,并将它们区分开。通过使用基于人工神经网络(ANN)的算法,可以识别分布式发电机电压波形上的现有模式,从而有可能获得有关孤岛事件的准确响应。但是,人工神经网络的训练过程并不容易,因为它涉及到重要的问题,例如人工神经网络架构的定义,数据窗口的大小,采样率以及针对所研究问题的代表性训练集的选择。在这种情况下,本文讨论了训练用于同步分布式发电机的孤岛检测的ANN的基本方面。

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