Construction of Knowledge Graph of Power Communication Planning based on Deep Learning

Sun Haibo, Li Sunxin, Tong Weiyue, Li Li
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引用次数: 1

Abstract

In order to improve the intelligent level of power communication network planning, a method for constructing a knowledge graph of power communication planning based on deep learning is proposed for the problems of lengthy power communication planning report text and low information extraction efficiency. This article takes the power communication planning text as the research object, constructs the knowledge organization structure of the power communication knowledge graph from top to bottom, and defines the entity concept and the relation concept. A variety of deep learning models are comprehensively used for knowledge extraction. Bi-LSTM-CRF model is used for named entity recognition, and PCNN model is used for entity relationship extraction, forming entity relationship table in power communication planning text. The effectiveness of the above method is verified by simulation experiment. Finally, the data storage and visualization are realized through Neo4j graph database.
基于深度学习的电力通信规划知识图谱构建
为了提高电力通信网络规划的智能化水平,针对电力通信规划报告文本冗长、信息提取效率低的问题,提出了一种基于深度学习的电力通信规划知识图谱构建方法。本文以电力通信规划文本为研究对象,从上到下构建了电力通信知识图谱的知识组织结构,定义了实体概念和关系概念。综合运用多种深度学习模型进行知识提取。采用Bi-LSTM-CRF模型进行命名实体识别,采用PCNN模型进行实体关系提取,形成电力通信规划文本中的实体关系表。仿真实验验证了上述方法的有效性。最后,通过Neo4j图形数据库实现数据的存储和可视化。
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