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Power entity recognition based on bidirectional long short-term memory and conditional random fields

Zhixiang Ji, Xiaohui Wang, Changyu Cai, Hongjian Sun

2020Global Energy Interconnection19 citationsDOIOpen Access PDF

Abstract

With the application of artificial intelligence technology in the power industry, the knowledge graph is expected to play a key role in power grid dispatch processes, intelligent maintenance, and customer service response provision. Knowledge graphs are usually constructed based on entity recognition. Specifically, based on the mining of entity attributes and relationships, domain knowledge graphs can be constructed through knowledge fusion. In this work, the entities and characteristics of power entity recognition are analyzed, the mechanism of entity recognition is clarified, and entity recognition techniques are analyzed in the context of the power domain. Power entity recognition based on the conditional random fields (CRF) and bidirectional long short-term memory (BLSTM) models is investigated, and the two methods are comparatively analyzed. The results indicated that the CRF model, with an accuracy of 83%, can better identify the power entities compared to the BLSTM. The CRF approach can thus be applied to the entity extraction for knowledge graph construction in the power field.

Topics & Concepts

Conditional random fieldComputer scienceNamed-entity recognitionKnowledge graphField (mathematics)Domain knowledgeTerm (time)Context (archaeology)CRFSKey (lock)Artificial intelligenceData miningNatural language processingMachine learningComputer securityEngineeringSystems engineeringPhysicsQuantum mechanicsMathematicsPaleontologyPure mathematicsBiologyTask (project management)Advanced Graph Neural NetworksTopic ModelingTechnology and Security Systems
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