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Short text data model of secondary equipment faults in power grids based on LDA topic model and convolutional neural network

机译:基于LDA主题模型和卷积神经网络的电网辅助设备故障短信数据模型

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With the comprehensive development of the smart grid, along with the large amount of operational data generated by the operation of the power grid, a lot of attention has been paid to the short-text information about the secondary electrical equipment failures that have occurred. This article analyzes the fault data that occurs during the operation of the secondary equipment. With reference to the general process of Chinese natural language processing, considering the overall characteristics of the fault information, the LDA topic model is used to generate a topic text model of short text data. For local features, use the Word2Vec word vector model is used for characterization. Finally, convolutional neural network (CNN) is used to categorize the fault categories of the information, and a short text classification model of secondary equipment in smart grid based on the LDA topic model and CNN is proposed. The example results show that the proposed Chinese short text classification model can improve the classification accuracy, and the classification effect is also considerable.
机译:随着智能电网的综合开发,随着电网运行产生的大量操作系统,已经支付了大量关注的关于已经发生的二次电气设备故障的短文本信息。本文分析了在二级设备操作期间发生的故障数据。参考中国自然语言处理的一般过程,考虑到故障信息的整体特征,LDA主题模型用于生成短文本数据的主题文本模型。对于本地功能,使用Word2Vec Word向量模型用于表征。最后,卷积神经网络(CNN)用于对信息的故障类别进行分类,并提出了基于LDA主题模型和CNN的智能电网中辅助设备的短文本分类模型。示例结果表明,拟议的中国短文本分类模型可以提高分类准确性,分类效果也相当可观。

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