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以中国知网(CNKI)和Web of Science (WOS)数据库内的文献作为数据来源,以2013—2023年为检索年限,将CNKI中以“空中交通流量管理”为主题的956篇文献和WOS中以“air traffic flow management”为主题的379篇文献作为研究对象,使用VOSviewer和CiteSpace文献计量工具生成了作者合作网络图,研究机构共现图、关键词共现图以及关键词突变图,以此来了解并分析有关空中交通流量管理的研究内容。结果表明,对空中交通流量管理的研究关注度较高,发文量总体呈现上升趋势,研究机构大多集中在高校。关键词研究显示,空中交通流量管理研究的方向包括流量管理、深度学习等方面。结论为空中交通流量管理研究提供理论依据。
Abstract:In this study,the literature in China Knowledge Network(CNKI) and Web of Science(WOS) databases is used as the data source,and the search years of 2013-2023 are used as the search years,and the 956 documents with the theme of "air traffic flow management" in CNKI and the 956 documents with the theme of "air traffic flow management" in WOS are used as the search years.We used VOSviewer and CiteSpace bibliometric tools to generate author cooperation network diagrams,research organization co-occurrence diagrams,keyword co-occurrence diagrams and keyword mutation diagrams to understand and analyze the literature on the topic of "air traffic flow management" in CNKI and WOS.Keyword mutation maps were generated to understand and analyze the international research on air traffic flow management. The results of the study show that the international research on air traffic flow management has a high degree of concern,the overall trend of the number of articles issued is increasing,most of the research institutions are concentrated in universities,and the keyword study shows that the direction of air traffic flow management research includes traffic management, deep learning and other aspects. The conclusions of the study provide a theoretical basis for air traffic flow management research.
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基本信息:
DOI:10.19327/j.cnki.zuaxb.1007-1199.2024.06.004
中图分类号:V355.1
引用信息:
[1]佀庆民,李俊艳,赵永航.基于VOSviewer和CiteSpace的空中交通流量管理研究综述[J].管理工程师,2024,29(06):27-33.DOI:10.19327/j.cnki.zuaxb.1007-1199.2024.06.004.
基金信息:
河南省高等学校青年骨干教师培养计划(2020GGJS174); 河南省高等学校重点科研项目(24A620005)