Bibliometric Analysis of Studies in the Field of Aviation and Artificial Intelligence


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Authors

DOI:

https://doi.org/10.5281/zenodo.13732160

Keywords:

Aviation, Artificial Intelligence, Bibliometric Analysis, Co-Word Analysis, Systematic Literature Review

Abstract

Artificial intelligence has gained an important place in social and economic life with today's technological developments. Artificial intelligence applications, which are used in many sectors to facilitate business processes and gain time and cost advantages, are also actively involved in the aviation sector. Artificial intelligence; applications such as flight charts, policies, customer tracking and security systems, maintenance and maintenance control, as well as data security suitable for effective use in the distribution sector, come with a number of problems such as cyber attacks and new technology costs. With new applications emerging every day and the advantages it provides, artificial intelligence finds new areas of use in addition to its existing benefits in the aviation industry, providing convenience for both airline companies and passengers.

The study aimed to analyze academic studies and literature in which the concepts of aviation and artificial intelligence are discussed together from various perspectives. The findings showed that studies dealing with both concepts together have increased significantly since 2020, the most publications and the highest number of citations belong to the IEEE Access journal, and the journal with the highest h index value is the Aerospace journal. In the findings of the authors, it was determined that the most productive authors were Annemarie Landman, Xiang Li, Jiaxing Shang, Van Paassen M.M.R., Huawei Wang, China was the leader in terms of the country of the responsible author, and Italy was the leader in terms of the number of citations by country. In the findings regarding the keywords, the word performance emerged as the most frequently used word, and it was seen that the performance effect of artificial intelligence was at the forefront in studies where the two concepts were associated.

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Published

2024-08-31

How to Cite

Şahin, Y. (2024). Bibliometric Analysis of Studies in the Field of Aviation and Artificial Intelligence. INTERNATIONAL JOURNAL OF SOCIAL HUMANITIES SCIENCES RESEARCH, 11(110), 1637–1648. https://doi.org/10.5281/zenodo.13732160