基于知识图谱和溯因推理的智能电网故障诊断方法

A Fault Diagnosis Method for Smart Grids Based on Knowledge Graph and Abductive Reasoning

  • 摘要: 在电网发生复杂故障后,准确判断故障位置和原因是正确处理故障、快速恢复电网运行的关键。针对这个问题,提出一种以知识图谱作为知识表示方法、以溯因推理作为推理机制的智能电网故障诊断方法。首先,建立了包含一次系统拓扑和二次保护逻辑的故障诊断知识图谱,并基于知识图谱的形式化模型与CIM/E文件和SCD文件提出了知识图谱自动构建方法。然后,提出了由后向推理、前向推理和迭代证据融合环节构成的电网故障诊断溯因推理框架,能够有效处理时间约束与多源冲突证据,且保持知识与推理的相对独立。最后,通过实际电网中的两个实际历史故障案例,验证了在电网发生单一故障和多重故障时所提方法的有效性。

     

    Abstract: Accurately identifying the location and cause following the occurrence of multiple faults in the power grid is crucial for effective fault management and rapid restoration of power supply. To address this issue, a smart grid fault diagnosis method using knowledge graphs (KGs) as the knowledge representation and abductive reasoning as the reasoning mechanism is proposed. First, fault diagnosis KGs containing primary system topology and secondary protection logic are established, and an automatic construction method for KGs is proposed based on the formal model of KGs, CIM/E files, and SCD files. Subsequently, an abductive reasoning framework is proposed for power grid fault diagnosis, consisting of backward reasoning, forward reasoning, and iterative evidence fusion stages. This framework is capable of effectively handling time constraints and multi-source conflicting evidence while preserving the relative independence of knowledge and reasoning. Finally, the effectiveness of the methodology proposed in this paper is verified by two actual historical fault cases from the actual power grid when single and multiple faults occur in the grid.

     

/

返回文章
返回