Data Link Fault Location Model Based on Machine Learning

Shuo Cui, Jiangbo Yin, Jun Wang, Peixin Xu
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Abstract

As the scale of national grid data continues to grow, data link fault location becomes more and more important. The traditional fault location method has many shortcomings due to its cognitive and technical limitations. With the rapid development of artificial intelligence technology today, using machine learning technology for data link fault location has become an effective method. Therefore, this paper proposes an autoencoder-BP neural network model, which uses the autoencoder to extract data features, and then uses the BP neural network for classification. Finally, it is proved through experiments that the combination of the two deep learning algorithms can effectively improve Accuracy of fault location.
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基于机器学习的数据链路故障定位模型
随着国家电网数据规模的不断增长,数据链路故障定位变得越来越重要。传统的故障定位方法由于认知和技术的限制,存在许多不足。在人工智能技术飞速发展的今天,利用机器学习技术进行数据链路故障定位已成为一种有效的方法。为此,本文提出了一种自编码器-BP神经网络模型,利用自编码器提取数据特征,再利用BP神经网络进行分类。最后,通过实验证明,两种深度学习算法的结合可以有效提高故障定位的精度。
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