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An Electric System Abnormal Analysis Framework based on Natural Language Processing

机译:基于自然语言处理的电力系统异常分析框架

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The stable operation of power grid system is essential for our daily lives. The on-site patrol and examining play an important rule to detect the potential damage and stabilize the power grid system. In this paper, we propose a framework to analyze possible errors in electric system by natural language processing method so that the on-site workers can directly describe the phenomenon and get the instruction to deal with the situation. The framework applies the word2vec algorithm to calculate the similarity between the words, and Earth Movers’ Distance method is adopted to compute the overall semantic similarity between the on-site situation and the history record. Based on the similar records, the next step operation is generated to guide the on-site workers. We implement the proposed framework for electric distribution network and the experimental results indicate that the proposed method has better accuracy (93%) compared with existing methods (84%) and can be used to improve the management of power grid system.
机译:电网系统的稳定运行对于我们的日常生活至关重要。现场巡逻和检查扮演一个重要规则来检测潜在的损坏并稳定电网系统。在本文中,我们提出了一个框架,通过自然语言处理方法分析电力系统可能的错误,以便现场工人可以直接描述现象并获得指示处理情况。该框架将Word2Vec算法应用于计算单词和地球移动器之间的相似性,以计算现场情况和历史记录之间的整体语义相似性。基于类似的记录,生成下一步操作以指导现场工作人员。我们实施建议的配电网络框架,实验结果表明,该方法与现有方法(84%)相比具有更好的准确度(93%),可用于改善电网系统的管理。

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