XIAO Biao, XU Baode, PENG Shixin, YU Yuan, DING Guozhi, WANG Meng, ZHAO Zhengcai. Study on Machining Knowledge Modeling of Complex Thin-Walled Parts Based on Knowledge Graph[J]. Aeronautical Manufacturing Technology, 2024, 67(11): 76-86.
XIAO Biao, XU Baode, PENG Shixin, YU Yuan, DING Guozhi, WANG Meng, ZHAO Zhengcai. Study on Machining Knowledge Modeling of Complex Thin-Walled Parts Based on Knowledge Graph[J]. Aeronautical Manufacturing Technology, 2024, 67(11): 76-86. DOI: 10.16080/j.issn1671-833x.2024.11.076.
Study on Machining Knowledge Modeling of Complex Thin-Walled Parts Based on Knowledge Graph
Intelligent process design is the core of process design in the digital twin environment
and part process knowledge modeling is a prerequisite for achieving intelligent process design based on digital twins. To address the issues of low structured and difficult to reuse machining process data for complex thin-walled parts in the aerospace field
a onstruction and quality evaluation method for a typical knowledge graph of machining process for complex thin-walled parts is proposed. Firstly
the composition and structure of machining process knowledge are analyzed. Secondly
the visualization of process knowledge was realized through ontology modeling
knowledge extraction
knowledge storage
and other related technologies
and the knowledge retrieval of machining process was realized based on Neo4j database. Finally
the analytic hierarchy process is used to evaluate the constructed knowledge map
and the machining process knowledge of frame and segment parts is taken as the verification object
the comprehensive accuracy of the sub-map is 92.28%. The experimental results show that the process knowledge modeling method based on knowledge map is feasible
which can help to realize the effective organization and reuse of process knowledge
and lay the foundation for digital twin intelligent process design.