Data mining techniques applied to increasing aircrew situational awareness
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Universidad de Granada
Director
Moral Callejón, SerafínDepartamento
Universidad de Granada. Programa de Doctorado en Tecnologías de la Información y ComunicaciónDate
2025Fecha lectura
2025-05-09Referencia bibliográfica
Morales Ramos, Carlos Bernardo. Data mining techniques applied to increasing aircrew situational awareness. Granada: Universidad de Granada, 2025. [https://hdl.handle.net/10481/104898]
Patrocinador
Tesis Univ. Granada.; Spanish Ministry of Education and Science Project TIN2013-46638-C3-2- P and the European Regional Development Fund (FEDER); Spanish Ministry of Education and Science Project TIN2016-77902-C3-2- P and the European Regional Development Fund (FEDER); Spanish Ministry of Education and Science Project PID2019-106758GBC31; Spanish Ministry of Education and Science Project PID2022-139293NBC32 TOPAI (Hacia una Inteligencia Artificial Probabilística Confiable)Résumé
Situation Awareness (SA) is a fundamental concept in the field of human
factors in aviation. In the case of aircraft pilots, the most relevant models of
SA focus on studying the individual perception of the critical aspects that influence
decision making in complex and dynamic environments, i.e., during
the flight. In this thesis, we have attempted to provide a comprehensive summary
of the factors that surround information management in the cockpit of
the aircraft, with special attention to the management of information in air
navigation.
The research has tried to analyse existing SA models, which already take information
management into account, and adapt their interpretation so that the
parameters can be measured using Bayesian networks, ultimately intending to
provide an estimation of SA.
Throughout the research, we have carried out experiments on different machine
learning tasks, such as discretization, regression, clustering, and therefore
we have improved our knowledge about how to process aeronautical data
of various types.
We have managed data from several sources with multiple computer tools,
using various types of databases, different information exchange formats, testing
cloud environments, and successfully sharing information between different
applications, including flight simulators. We have developed a set of tools
for collecting data in simulated flights, to analyse them, and to estimate models
(dynamic Bayesian networks) able of computing and online probability of
the SA conditioned to the observations.
The thesis also contains the results of the situation awareness estimation.