供应链知识图谱的构建与应用在轨道交通行业中的应用

Shuo Li, Yu Zhang, Mengxing Huang, Hongwen Wu, Weihua Cai
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引用次数: 0

摘要

近年来,特定垂直领域的数据驱动研究势头迅猛。有大量的供应链数据分布在企业信息系统和网络中,我们可以用它们来构建知识图谱。对于轨道交通行业来说,知识图谱可以系统、结构化、整合轨道交通领域的基本事实,也是存储、查询、处理大数据的有力工具。然而,由于数据来源的异质性和数据量的规模,分析这些数据以构建知识图谱是困难的。本文提出了一种利用语义技术构建供应链知识图谱的方法,以协调从不同来源连续抓取的数据,并支持对数据的交互式查询,进一步辅助决策。图形实现了重要数据的重构和存储,并使用Neo4j实现了图形的可视化。实例研究表明,该方法在构建供应链知识图谱方面具有很大的潜力,从而提高轨道交通行业的供应链绩效。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Building and Using a Supply Chain Knowledge Graph applied to the rail transit industry
In recent years, data-driven research in specific vertical fields has gained tremendous momentum. There is a huge amount of supply chains data spread across the enterprise information systems and web that we can use to build knowledge graphs. For the rail transit industry, the knowledge graph can systematically, structure and integrate the basic facts of the rail transit field, and it is also a powerful tool for storing, querying, and processing big data. However, analyzing these data to build knowledge graphs is difficult due to the heterogeneity of the sources and scale of the amount of data. This article proposes an approach to building supply chain knowledge graph by exploiting semantic technologies to reconcile the data continuously crawled from diverse sources and to support interactive queries on the data and further assist decision-making. The graph realizes the reconstruction and storage of important data, and uses Neo4j to realize the visualization of the graph. Case studies on a realistic example have shown that the approach has major potential in building supply chain knowledge graph, therefore improving the supply chain performance of the rail transit industry.
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