Artificial Intelligence in Aviation Safety: Systematic Review and Biometric Analysis

Abstract This study aims to offer aviation safety researchers, practitioners, and decision-makers a comprehensive exploration of integrating advanced technologies, such as artificial intelligence and machine learning, to inform and fortify future safety strategies. Focusing on systematic and bibliom...

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Main Authors: Gülay Demir, Sarbast Moslem, Szabolcs Duleba
Format: Article
Language:English
Published: Springer 2024-11-01
Series:International Journal of Computational Intelligence Systems
Subjects:
Online Access:https://doi.org/10.1007/s44196-024-00671-w
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author Gülay Demir
Sarbast Moslem
Szabolcs Duleba
author_facet Gülay Demir
Sarbast Moslem
Szabolcs Duleba
author_sort Gülay Demir
collection DOAJ
description Abstract This study aims to offer aviation safety researchers, practitioners, and decision-makers a comprehensive exploration of integrating advanced technologies, such as artificial intelligence and machine learning, to inform and fortify future safety strategies. Focusing on systematic and bibliometric perspectives, the paper reviewed 224 articles in the Scopus database from 2004 to 2024 (January). Key findings highlight China’s notable contributions to aviation safety research, underscoring its leadership in international collaboration. The techniques employed encompass machine learning, time series models, deep learning, AI, neurophysiological modeling, and optimization algorithms. The analysis discerns prominent research trends, including aviation accident analysis, pilot behavior, aviation safety measures, and endeavors to enhance safety standards. The aviation industry’s steadfast commitment to safety, efficiency, and technological innovation is evident. By uncovering the main structures, foci, and trends in aviation safety research, this study equips researchers and practitioners with crucial insights into ongoing endeavors and potential future developments, fostering a more profound understanding of aviation safety.
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institution Kabale University
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series International Journal of Computational Intelligence Systems
spelling doaj-art-7b7114584be147b289d7ed2aa395fbc32024-12-01T12:44:03ZengSpringerInternational Journal of Computational Intelligence Systems1875-68832024-11-0117113010.1007/s44196-024-00671-wArtificial Intelligence in Aviation Safety: Systematic Review and Biometric AnalysisGülay Demir0Sarbast Moslem1Szabolcs Duleba2Sivas Cumhuriyet UniversitySchool of Architecture Planning and Environmental Policy, University College DublinBudapest University of Technology and EconomicsAbstract This study aims to offer aviation safety researchers, practitioners, and decision-makers a comprehensive exploration of integrating advanced technologies, such as artificial intelligence and machine learning, to inform and fortify future safety strategies. Focusing on systematic and bibliometric perspectives, the paper reviewed 224 articles in the Scopus database from 2004 to 2024 (January). Key findings highlight China’s notable contributions to aviation safety research, underscoring its leadership in international collaboration. The techniques employed encompass machine learning, time series models, deep learning, AI, neurophysiological modeling, and optimization algorithms. The analysis discerns prominent research trends, including aviation accident analysis, pilot behavior, aviation safety measures, and endeavors to enhance safety standards. The aviation industry’s steadfast commitment to safety, efficiency, and technological innovation is evident. By uncovering the main structures, foci, and trends in aviation safety research, this study equips researchers and practitioners with crucial insights into ongoing endeavors and potential future developments, fostering a more profound understanding of aviation safety.https://doi.org/10.1007/s44196-024-00671-wAviation safetyArtificial intelligenceBiblioshinyVOSviewerSystematic reviewBibliometric analysis
spellingShingle Gülay Demir
Sarbast Moslem
Szabolcs Duleba
Artificial Intelligence in Aviation Safety: Systematic Review and Biometric Analysis
International Journal of Computational Intelligence Systems
Aviation safety
Artificial intelligence
Biblioshiny
VOSviewer
Systematic review
Bibliometric analysis
title Artificial Intelligence in Aviation Safety: Systematic Review and Biometric Analysis
title_full Artificial Intelligence in Aviation Safety: Systematic Review and Biometric Analysis
title_fullStr Artificial Intelligence in Aviation Safety: Systematic Review and Biometric Analysis
title_full_unstemmed Artificial Intelligence in Aviation Safety: Systematic Review and Biometric Analysis
title_short Artificial Intelligence in Aviation Safety: Systematic Review and Biometric Analysis
title_sort artificial intelligence in aviation safety systematic review and biometric analysis
topic Aviation safety
Artificial intelligence
Biblioshiny
VOSviewer
Systematic review
Bibliometric analysis
url https://doi.org/10.1007/s44196-024-00671-w
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