社区燃气风险的时间知识图预测方法

Lei Zhao, Yuntao Shi, Zhang Tao, Meng Zhou
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引用次数: 0

摘要

针对复杂的社区燃气风险预警问题,提出了一种基于时间知识图的社区燃气风险预测方法。首先,根据燃气事故的风险源和影响因素,构建了社区燃气安全风险评价指标体系。从指标体系中提取实体特征和关系特征,构建社区燃气系统时序知识图谱。然后,提出了一种基于时间知识图的燃气系统风险预测方法,该方法利用RGCN算法对知识图在空间上的相邻节点信息进行聚合,利用RNN算法得到知识图的时间顺序信息,并对其进行编码和解码,基于这两种信息进行风险预测。最后,以北京市某社区废弃历史数据为例,在实验室条件下进行了仿真,验证了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A temporal knowledge graphs prediction method for community gas risk
A community gas risk prediction method based on temporal knowledge graphs is proposed to solve the complex community gas risk early warning problem. First, a community gas safety risk assessment indicator system is constructed based on the risk sources and factors influencing gas accidents. The entity and relationship features are extracted from the index system to construct a temporal knowledge graph of the community gas system. Then, a gas system risk prediction method based on the temporal knowledge graphs is proposed, which uses the RGCN algorithm to aggregate the information of neighboring nodes of the knowledge graphs in space and RNN to get the knowledge graphs information in temporal order and encodes and decodes it to make risk prediction based on the two kinds of information. Finally, the method’s effectiveness is verified by simulation under laboratory conditions based on a community in Beijing discarding historical data.
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