基于深度学习的故障知识命名实体识别方法

Zhicheng Chen, Xiaobao Liu, Yanchao Yin, Hongbiao Lu
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引用次数: 5

摘要

针对故障文本难以直接解析和利用的问题,提出了一种基于深度学习的故障知识提取方法。首先,分析了故障知识的特征,建立了基于多层神经网络的故障知识提取模型;最后,从提取准确率、召回率和F1值三个方面对该模型进行了综合讨论,证明了该方法的可行性。利用非结构化文本数据为故障诊断和预测提供参考。
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Named Entity Recognition Method for Fault Knowledge based on Deep Learning
Aiming at the problem that fault text is difficult to be directly parsed and utilized, a fault knowledge extraction method is proposed based on deep learning method. Firstly, the characteristics of fault knowledge are analyzed, and a fault knowledge extraction model is established based on multi-layer neural network. Finally, the presented model is discussed comprehensively from the extraction accuracy, recall rate and F1 value, which proves the feasibility of the method. The unstructured text data is used to provide reference for fault diagnosis and prediction.
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