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Relationship Extraction and Processing for Knowledge Graph of Welding Manufacturing

Kainan Guan, Liang Du, Xinhua Yang

2022IEEE Access21 citationsDOIOpen Access PDF

Abstract

Acquiring welding domain relationships and forming a knowledge graph can positively impact complex engineering problem solving and intelligent manufacturing applications. However, relationships are lacking in the welding domain. The relationship extraction and processing solution are designed to handle data with different characteristics in welding fabrication. The BiLSTM+Attention and CR-CNN models are employed to extract relations in unstructured documents. The neighborhood rough set-based association rule model is proposed for project-specific documents to accomplish relationship acquisition, in which invalid attributes are removed via neighborhood rough sets and attribute values are related via association rules. In addition, the knowledge graph is built based on extracted relationships, and unique empirical relationships are handled by introducing relational nodes and databases. The results show that BiLSTM+Attention gets a good score with Macro-average metrics (0.788 for Precision, 0.846 for Recall, and 0.816 for F1-score). The relational rules obtained via the proposed model are consistent with the production experience. The constructed knowledge graph effectively handles empirical relationships while positively impacting knowledge retrieval, intelligent question and answer, and decision-making for complex engineering problems.

Topics & Concepts

Computer scienceRough setWeldingGraphAssociation rule learningKnowledge engineeringRelational databaseDomain knowledgeKnowledge acquisitionKnowledge graphData miningArtificial intelligenceTheoretical computer scienceEngineeringMechanical engineeringRough Sets and Fuzzy LogicNatural Language Processing TechniquesStructural Integrity and Reliability Analysis