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Enhancing aviation safety: An 80-year data-driven model for classification of aviation incident and accident
by
Tayubi, Iftikhar Aslam
, BaruKab, Omar
, Qureshi, Sawera
, Khan, Sher Afzal
in
Accidents
/ Accidents, Aviation - classification
/ Accidents, Aviation - statistics & numerical data
/ Aeronautics
/ Air safety
/ Aircraft accidents
/ Aircraft accidents & safety
/ Aviation
/ Bayes Theorem
/ Canada
/ Classification
/ Computational linguistics
/ Computer and Information Sciences
/ Datasets
/ Engineering and Technology
/ Humans
/ Language processing
/ Machine Learning
/ Management systems
/ Natural language interfaces
/ Natural language processing
/ Pipelines
/ Robustness
/ Safety
/ Safety and security measures
/ Safety critical
/ Safety Management
/ Safety regulations
/ Support Vector Machine
/ Support vector machines
/ Transportation safety
2026
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Enhancing aviation safety: An 80-year data-driven model for classification of aviation incident and accident
by
Tayubi, Iftikhar Aslam
, BaruKab, Omar
, Qureshi, Sawera
, Khan, Sher Afzal
in
Accidents
/ Accidents, Aviation - classification
/ Accidents, Aviation - statistics & numerical data
/ Aeronautics
/ Air safety
/ Aircraft accidents
/ Aircraft accidents & safety
/ Aviation
/ Bayes Theorem
/ Canada
/ Classification
/ Computational linguistics
/ Computer and Information Sciences
/ Datasets
/ Engineering and Technology
/ Humans
/ Language processing
/ Machine Learning
/ Management systems
/ Natural language interfaces
/ Natural language processing
/ Pipelines
/ Robustness
/ Safety
/ Safety and security measures
/ Safety critical
/ Safety Management
/ Safety regulations
/ Support Vector Machine
/ Support vector machines
/ Transportation safety
2026
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Do you wish to request the book?
Enhancing aviation safety: An 80-year data-driven model for classification of aviation incident and accident
by
Tayubi, Iftikhar Aslam
, BaruKab, Omar
, Qureshi, Sawera
, Khan, Sher Afzal
in
Accidents
/ Accidents, Aviation - classification
/ Accidents, Aviation - statistics & numerical data
/ Aeronautics
/ Air safety
/ Aircraft accidents
/ Aircraft accidents & safety
/ Aviation
/ Bayes Theorem
/ Canada
/ Classification
/ Computational linguistics
/ Computer and Information Sciences
/ Datasets
/ Engineering and Technology
/ Humans
/ Language processing
/ Machine Learning
/ Management systems
/ Natural language interfaces
/ Natural language processing
/ Pipelines
/ Robustness
/ Safety
/ Safety and security measures
/ Safety critical
/ Safety Management
/ Safety regulations
/ Support Vector Machine
/ Support vector machines
/ Transportation safety
2026
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Enhancing aviation safety: An 80-year data-driven model for classification of aviation incident and accident
Journal Article
Enhancing aviation safety: An 80-year data-driven model for classification of aviation incident and accident
2026
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Overview
The aviation system is safety-critical by nature, and any occurrence of an incident or accident can lead to the loss of human life and significant operational disruptions. The International Civil Aviation Organization (ICAO) emphasizes that every flight must take off and land safely—a goal achieved over 126,000 times daily. Despite major advancements,mishaps and accidents continue to occur, underscoring the need for robust safety management systems. The accurate classification of aviation occurrences (Incident or Accident) reports is essential for safety management, yet manual review is time-consuming and prone to inconsistency. While incident/accident labels are assigned during reporting, automated classification enables rapid triage, detection of potential mislabeling, and support for severity assessment in high-volume aviation safety operations. To address this,we developed and compared three machine learning classifiers—Multinomial Naive Bayes, Random Forest, and Support Vector Machine—using TF-IDF vectorization on an 80-year dataset of 53,770 aviation occurrence summaries obtained from the Transportation Safety Board of Canada. A two-stage evaluation strategy was employed, consisting of an initial 80/20 train–test split to create an independent test set, followed by 5-fold cross-validation applied exclusively to the training data to ensure robustness and prevent optimistic bias. The Support Vector Machine (SVM) classifier achieved the highest classification performance, attaining an accuracy of 98.06% during 5-fold cross-validation, with consistent results across folds, demonstrating its effectiveness in managing high-dimensional textual data and dataset complexity. The proposed framework provides a robust foundation for automated aviation safety report processing, offering practical value for (1) early triage of safety reports, (2) identification of potentially mislabeled cases requiring expert review, and (3) integration into downstream severity assessment pipelines. This work advances beyond prior classification studies by establishing a benchmark on the largest historical aviation safety dataset while delivering a deployable and operationally relevant framework for real-world safety management applications. The findings offer valuable insights for regulatory authorities and airline operators, contributing to enhanced safety oversight, improved response strategies, and safer aviation operations.
Publisher
Public Library of Science,PLOS,Public Library of Science (PLoS)
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