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Knowledge Graph Model of Power Grid for Human-machine Mutual Understanding | IEEE Conference Publication | IEEE Xplore

Knowledge Graph Model of Power Grid for Human-machine Mutual Understanding


Abstract:

In power grid research, the high complexity of the power generation and distribution requires the power grid system to be robust and resilient. To assure the stability of...Show More

Abstract:

In power grid research, the high complexity of the power generation and distribution requires the power grid system to be robust and resilient. To assure the stability of the power grid, massive human intervention is necessary currently, which is labor intensive and inflexible. However, considering the vital importance of the power grid, it is impossible to leave human being out of the power system at present. To increase the degree of automation in power grid and keep the system robust meanwhile, a smart grid with human in the loop is required. A novel modeling method of the power grid is developed in this study to enable efficient human-machine operation. Specifically, a knowledge graph model of power grid is developed which incorporates the operation rules and knowledge from corresponding documents and literatures. According to the property of the documents, two task oriented methods have been designed to extract the entities and relations from texts. For regularized document with items well organized, TextRank algorithm is adopted to extract the keyword entities and grammatical rule analysis is used to extract the logical relation entities and related event entities. For general literatures, semantic role labeling based on dependency parsing has been employed to extract event triplets to simplify the text analysis. The original sentence of the event triplet is used to extract the logical relation and co-occurrence relation. Based on the text analysis results, knowledge fusion and knowledge processing are carried out and the results are imported into Neo4j to form a visual knowledge graph which can be queried and used. The constructed model could facilitate mutual understanding of power grid for both human and machine.
Date of Conference: 06-08 November 2020
Date Added to IEEE Xplore: 29 January 2021
ISBN Information:

ISSN Information:

Conference Location: Shanghai, China

I. Introduction

Power grid system is one huge, high complexed, dynamic and interactive cyber-physical system (CPS) [1] which strictly requires stability, reliability and high tolerance. Power grid system is constantly influenced by a number of cyber factors and physical parameters [2]. In a lot of practical application scenarios, such as power flow calculation, stability calculation, transient stability calculation and fault diagnosis and so on [3], human experts or operators are required to intervene the computation, operation and decision making of the power grid system for security and reliability. Nowadays, the interaction between human and machines from the power grid system remains challenging. Usually, physical parameters of power grid, visualization of the grid topology and various alarm signals are provided for human to assist their computation and decision making, which either requires intensive and laborious processing or only could provide limited information. On the other hand, there does not exist any efficient way for the machines to take advantage of human knowledge and expert experience. Establishing a feasible method to implement the interaction and cooperation between human and machines in power grid system is of great importance and potential. To this end, appropriate modeling of the power grid is necessary which must be friendly to both machines and human.

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