Nuno Moura Lopes, Manuela Aparicio, Fátima Trindade Neves
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This bibliometric research underscores the key focus on air traffic management, human factors, environmental initiatives, training, logistics, flight operations, and safety through co-occurrence and co-citation analyses. A chronological examination of keywords reveals a central research trajectory centered on machine learning, models, deep learning, and the impact of automation on human performance in aviation. Burst keyword analysis identifies the leading-edge research on AI within predictive models, unmanned aerial vehicles, object detection, and convolutional neural networks. The primary objective is to bridge this knowledge gap and gain comprehensive insights into AI in the aviation sector. This study delineates the scholarly terrain of AI in aviation using a bibliometric methodology to facilitate this exploration. The results illuminate the current state of research, thereby enhancing academic understanding of developments within this critical domain. Finally, a new conceptual framework was constructed based on the primary elements identified in the literature. This framework can assist emerging researchers in identifying the fundamental dimensions of AI in the aviation industry.</div></div>","PeriodicalId":100353,"journal":{"name":"Data Science and Management","volume":"8 2","pages":"Pages 207-223"},"PeriodicalIF":0.0000,"publicationDate":"2025-06-01","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Challenges and prospects of artificial intelligence in aviation: a bibliometric study\",\"authors\":\"Nuno Moura Lopes, Manuela Aparicio, Fátima Trindade Neves\",\"doi\":\"10.1016/j.dsm.2024.11.001\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<div><div>The primary motivation for this study is the recent growth and increased interest in artificial intelligence (AI). 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引用次数: 0
摘要
这项研究的主要动机是最近人工智能(AI)的增长和兴趣的增加。尽管人们普遍认识到人工智能的重要性,但在现有的学术论述中,仍然存在明显的科学差距,特别是在航空工业中对人工智能的详尽系统评论方面。这一差距促使我们对来自Web of Science (WoS)核心数据库的1213篇文章进行了细致的分析,以进行文献计量知识映射。该分析强调中国是论文的主要贡献者,其中南京财经大学是论文贡献的主要机构。人工智能课堂讲稿和IEEE AIAA数字航空电子系统会议是该领域的主要期刊。这项文献计量学研究通过共现和共引分析强调了空中交通管理、人为因素、环境举措、培训、物流、飞行运营和安全的重点。按时间顺序对关键词进行检查,揭示了以机器学习、模型、深度学习以及自动化对航空领域人类表现的影响为中心的研究轨迹。突发关键字分析确定了预测模型、无人机、目标检测和卷积神经网络中人工智能的前沿研究。主要目标是弥合这一知识差距,并全面了解航空领域的人工智能。本研究使用文献计量学方法描绘了航空领域人工智能的学术领域,以促进这一探索。研究结果阐明了目前的研究状况,从而加强了对这一关键领域发展的学术理解。最后,基于文献中确定的主要要素,构建了一个新的概念框架。该框架可以帮助新兴研究人员确定航空工业中人工智能的基本维度。
Challenges and prospects of artificial intelligence in aviation: a bibliometric study
The primary motivation for this study is the recent growth and increased interest in artificial intelligence (AI). Despite the widespread recognition of its critical importance, a discernible scientific gap persists within the extant scholarly discourse, particularly concerning exhaustive systematic reviews of AI in the aviation industry. This gap spurred a meticulous analysis of 1,213 articles from the Web of Science (WoS) core database for bibliometric knowledge mapping. This analysis highlights China as the primary contributor to publications, with the Nanjing University of Finance and Economics as the leading institution in paper contributions. Lecture Notes in Artificial Intelligence and the IEEE AIAA Digital Avionics System Conference are the leading journals within this domain. This bibliometric research underscores the key focus on air traffic management, human factors, environmental initiatives, training, logistics, flight operations, and safety through co-occurrence and co-citation analyses. A chronological examination of keywords reveals a central research trajectory centered on machine learning, models, deep learning, and the impact of automation on human performance in aviation. Burst keyword analysis identifies the leading-edge research on AI within predictive models, unmanned aerial vehicles, object detection, and convolutional neural networks. The primary objective is to bridge this knowledge gap and gain comprehensive insights into AI in the aviation sector. This study delineates the scholarly terrain of AI in aviation using a bibliometric methodology to facilitate this exploration. The results illuminate the current state of research, thereby enhancing academic understanding of developments within this critical domain. Finally, a new conceptual framework was constructed based on the primary elements identified in the literature. This framework can assist emerging researchers in identifying the fundamental dimensions of AI in the aviation industry.