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中国农学通报 ›› 2026, Vol. 42 ›› Issue (13): 189-195.doi: 10.11924/j.issn.1000-6850.casb2025-0455

• 农业信息·科技教育 • 上一篇    下一篇

北京中轴线古树知识图谱构建与应用

刘乾凝1(), 李国敏1, 王佳美2()   

  1. 1 北京农学院园林学院, 北京 102206
    2 北京农学院人事处, 北京 102206
  • 收稿日期:2025-06-12 修回日期:2026-06-01 出版日期:2026-07-15 发布日期:2026-07-09
  • 通讯作者:
    李国敏,男,助理研究员,主要研究领域:教育管理研究。
    王佳美,女,助理研究员,主要研究领域:教育管理。E-mail:
  • 作者简介:

    刘乾凝,女,副研究馆员,研究生,研究方向:文献计量学、图书情报学。E-mail:

Construction and Application of Knowledge Graph of Ancient Tree Along Beijing Central Axis

LIU Qianning1(), LI Guomin1, WANG Jiamei2()   

  1. 1 College of Landscape Architecture, Beijing University of Agriculture, Beijing 102206
    2 Personnel Office, Beijing University of Agriculture, Beijing 102206
  • Received:2025-06-12 Revised:2026-06-01 Published:2026-07-15 Online:2026-07-09

摘要:

当前北京中轴线古树资源存在多源数据分散、语义异构突出、文化价值挖掘不足、知识关联呈现薄弱等问题,难以支撑古树文化遗产数字化保护与传播。为实现古树自然、历史、文化、生态等多维知识的结构化整合与智能化应用,以北京中轴线古树为对象,融合激光扫描、卫星遥感、OCR档案识别等多源数据采集方式,基于自然语言处理(NLP)技术完成实体抽取与关系标注,通过数据清洗与标准化解决语义异构问题;构建包含古树个体、保护信息、价值维度、时空、人物、机构、文献等8类核心概念的扩展本体模型,基于Neo4j图数据库实现知识存储、可视化查询与语义推理。所建知识图谱可清晰呈现“古树-树种-人物-事件-地点-价值”的关联路径,可视化交互性强、文化表达直观,能有效支撑古树资源精准检索与隐性知识挖掘。研究认为,进一步融合多源数据与优化推理机制将是提升图谱覆盖率与精度的关键路径,建议建立行业数据共享标准,加强区域合作,为古树文化数字工程提供可复制范式。

关键词: 北京中轴线, 古树保护, 知识图谱, 多维文化融合, 区域合作, 时空-语义推理, 领域自适应NLP, Neo4j图数据库

Abstract:

The current issues concerning the ancient tree resources along Beijing Central Axis include fragmented multi-source data, prominent semantic heterogeneity, insufficient exploration of cultural value, and weak representation of knowledge associations, which hinder the digital preservation and dissemination of ancient tree cultural heritage. To achieve the structured integration and intelligent application of multi-dimensional knowledge related to the nature, history, culture, and ecology of ancient trees, this study focuses on ancient trees along Beijing Central Axis. It integrates multi-source data acquisition methods such as laser scanning, satellite remote sensing, and OCR-based archive recognition. Based on natural language processing (NLP) techniques, entity extraction and relation annotation are carried out, and data cleaning and standardization are performed to address semantic heterogeneity. An extended ontology model comprising eight core concepts (individual tree, protection information, value dimensions, spatiotemporal data, people, institutions, and literature) is constructed. Knowledge storage, visual querying, and semantic reasoning are implemented using the Neo4j graph database. The results show that the constructed knowledge graph can clearly present the association paths of ‘ancient tree-tree species-people-events-locations-value’, demonstrating strong interactive visualization and intuitive cultural expression, effectively supporting precise retrieval of ancient tree resources and mining of implicit knowledge. The study suggests that further integration of multi-source data and optimization of reasoning mechanisms are key pathways to improving the coverage and accuracy of the knowledge graph. It also recommends establishing industry standards for data sharing and strengthening regional cooperation to provide a replicable paradigm for digital projects focused on ancient tree culture.

Key words: Beijing Central Axis, ancient tree conservation, knowledge map, multi-dimensional cultural integration, regional cooperation, spatio-semantic reasoning, domain-adaptive NLP, Neo4j graph database

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