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Self-organizing maps applied to monitoring and diagnosis of ZnO surge arresters

机译:自组织图用于ZnO电涌放电器的监视和诊断

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摘要

In this work a monitoring and diagnostic technique for ZnO surge arresters is proposed. This technique is based on a special kind of Artificial Neural Network (ANN) known as Self-Organizing Maps (SOM), which is a network, trained using unsupervised learning. The proposed technique performs the thermal profile analysis of ZnO surge arresters when submitted to their operating voltage. From this analysis, the SOM network can determine the status of the surge arrester. So, this technique may be a very useful tool to power system utilities in their predictive monitoring activities, as well as to the manufactures, assisting the project of more robust surge arresters.
机译:在这项工作中,提出了一种用于ZnO电涌放电器的监测和诊断技术。此技术基于一种称为自组织图(SOM)的特殊类型的人工神经网络(ANN),该网络是使用无监督学习进行训练的网络。所提出的技术在对ZnO电涌放电器施加其工作电压时会进行热剖面分析。根据此分析,SOM网络可以确定电涌放电器的状态。因此,该技术对于电力系统实用程序的预测性监视活动以及制造商而言可能是非常有用的工具,有助于更强大的电涌放电器的项目。

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