Construction and application of knowledge graph for grid dispatch fault handling based on pre-trained model

IF 1.9 Q4 ENERGY & FUELS Global Energy Interconnection Pub Date : 2023-08-01 DOI:10.1016/j.gloei.2023.08.009
Zhixiang Ji , Xiaohui Wang , Jie Zhang , Di Wu
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Abstract

With the construction of new power systems, the power grid has become extremely large, with an increasing proportion of new energy and AC/DC hybrid connections. The dynamic characteristics and fault patterns of the power grid are complex; additionally, power grid control is difficult, operation risks are high, and the task of fault handling is arduous. Traditional power-grid fault handling relies primarily on human experience. The difference in and lack of knowledge reserve of control personnel restrict the accuracy and timeliness of fault handling. Therefore, this mode of operation is no longer suitable for the requirements of new systems. Based on the multi-source heterogeneous data of power grid dispatch, this paper proposes a joint entity–relationship extraction method for power-grid dispatch fault processing based on a pre-trained model, constructs a knowledge graph of power-grid dispatch fault processing and designs, and develops a fault-processing auxiliary decision-making system based on the knowledge graph. It was applied to study a provincial dispatch control center, and it effectively improved the accident processing ability and intelligent level of accident management and control of the power grid.

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基于预训练模型的电网调度故障处理知识图的构建与应用
随着新型电力系统的建设,电网已经变得非常庞大,新能源和交直流混合连接的比例越来越高。电网的动态特性和故障模式复杂;电网控制难度大,运行风险大,故障处理任务繁重。传统的电网故障处理主要依靠人的经验。控制人员知识储备的差异和不足制约了故障处理的准确性和及时性。因此,这种操作方式已不再适合新系统的要求。基于电网调度多源异构数据,提出了一种基于预训练模型的电网调度故障处理联合实体关系提取方法,构建了电网调度故障处理知识图并进行了设计,开发了基于知识图的故障处理辅助决策系统。应用于某省级调度控制中心的研究,有效提高了电网事故处理能力和事故管控的智能化水平。
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来源期刊
Global Energy Interconnection
Global Energy Interconnection Engineering-Automotive Engineering
CiteScore
5.70
自引率
0.00%
发文量
985
审稿时长
15 weeks
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