International Journal of Digital Earth (Dec 2024)

Efficient distributed association management method of data, model, and knowledge for digital twin railway

  • Yongxin Guo,
  • Qing Zhu,
  • Yulin Ding,
  • Yun Li,
  • Haoyu Wu,
  • Yang He,
  • Zhihong Li,
  • Hankan Li,
  • Liguo Zhang,
  • Yuanzhen Zhao,
  • Yan Pan,
  • Ting Yang,
  • Mingwei Liu,
  • Haowei Zeng

DOI
https://doi.org/10.1080/17538947.2024.2340089
Journal volume & issue
Vol. 17, no. 1

Abstract

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ABSTRACTDigital twin railway is a pivotal foundation for the intelligent construction and maintenance of railway engineering projects within extensive open spaces. Its essence is the integrated representation and association management of multi-granularity spatiotemporal data, executable analysis models, and professional knowledge. These elements are characterized by the prominent characteristics of multi-source, heterogeneity, and massive volume. However, current decentralized and independent management strategies often neglect the dynamic coupling relationships between them, and numerous multi-path joins and conversion aggregation operations exist across various spatial scale applications. Consequently, this results in challenges such as the inability to dynamically couple data-model-knowledge and conduct global association retrieval, thereby limiting the potential for real-time analysis and intelligent application capabilities. To address these problems, we first constructed a tripartite graph model ([Formula: see text]) that explicitly associates temporal, spatial, and interactive relationships. Subsequently, an association management architecture was proposed, accompanied by a global association graph index ([Formula: see text]) and a global-local indexing mechanism. Finally, a prototype system for railway data-model-knowledge association management was developed. The effectiveness of the distributed association management method was demonstrated by employing a case study of high-temperature safety risk analysis in railway tunnel engineering with multi-physics field coupling.

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