Mental Workload as a Predictor of ATCO’s Performance: Lessons Learnt from ATM Task-Related Experiments
Metadatos
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MDPI
Materia
mental workload task complexity performance prediction
Date
2024-08-22Referencia bibliográfica
Muñoz-de-Escalona, E.; Leva, M.C.; Cañas, J.J. Aerospace 2024, 11, 691. [https://doi.org/10.3390/aerospace11080691]
Patrocinador
Irish Research Council under grant number [EPSPD/2022/151]Résumé
Air Traffic Controllers’ (ATCos) mental workload is likely to remain the specific greatest
functional limitation on the capacity of the Air Traffic Management (ATM) system. Developing
computational models to monitor mental workload and task complexity is essential for enabling
ATCOs and ATM systems to adapt to varying task demands. Most methodologies have computed
task complexity based on basic parameters such as air-traffic density; however, literature research
has shown that it also depends on many other factors. In this paper, we present a study in which we
explored the possibility of predicting task complexity and performance through mental workload
measurements of participants performing an ATM task in an air-traffic control simulator. Our
findings suggest that mental workload measurements better predict poor performance and high task
complexity peaks than other established factors. This underscores their potential for research into
how different ATM factors affect task complexity. Understanding the role and the weight of these
factors in the overall task complexity confronted by ATCos constitutes one of the biggest challenges
currently faced by the ATM sphere and would significantly contribute to the safety of our sky.