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Enhancement of Power Equipment Management Using Knowledge Graph

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arxiv 1904.12242 v1 pith:6YLKBGQ3 submitted 2019-04-28 cs.AI cs.DB

Enhancement of Power Equipment Management Using Knowledge Graph

classification cs.AI cs.DB
keywords powergraphknowledgedataequipmentmanagementinformationefficiency
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Accurate retrieval of the power equipment information plays an important role in guiding the full-lifecycle management of power system assets. Because of data duplication, database decentralization, weak data relations, and sluggish data updates, the power asset management system eager to adopt a new strategy to avoid the information losses, bias, and improve the data storage efficiency and extraction process. Knowledge graph has been widely developed in large part owing to its schema-less nature. It enables the knowledge graph to grow seamlessly and allows new relations addition and entities insertion when needed. This study proposes an approach for constructing power equipment knowledge graph by merging existing multi-source heterogeneous power equipment related data. A graph-search method to illustrate exhaustive results to the desired information based on the constructed knowledge graph is proposed. A case of a 500 kV station example is then demonstrated to show relevant search results and to explain that the knowledge graph can improve the efficiency of power equipment management.

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