A quantum-inspired model for human-automation trust in air traffic control derived from functional magnetic resonance imaging
With a greater proliferation of automation tools in the domain of Air Traffic Management due to exponential growth in air traffic, human factors, and more specifically, trust, becomes a crucial component of Air Traffic Controller (ATCO)-automation teams. An attempt to better represent trust behavio...
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sg-ntu-dr.10356-1476282023-03-04T17:08:03Z A quantum-inspired model for human-automation trust in air traffic control derived from functional magnetic resonance imaging Pushparaj, Kiranraj Ayeni, Alvin John Ky, Gregoire Alam, Sameer Vijayaragavan, Vimalan Gulyás, Balázs Duong, Vu N. School of Mechanical and Aerospace Engineering SESAR Innovation Days 2019 Air Traffic Management Research Institute Engineering::Aeronautical engineering::Aviation Air Traffic Management Human Factors With a greater proliferation of automation tools in the domain of Air Traffic Management due to exponential growth in air traffic, human factors, and more specifically, trust, becomes a crucial component of Air Traffic Controller (ATCO)-automation teams. An attempt to better represent trust behaviours in ATCOs was made by juxtaposing two philosophies of trust using the principles of superposition and complementarity from quantum mechanics. Neuroimaging evidence of this simultaneous concurrence was demonstrated with use of functional Magnetic Resonance Imaging (fMRI) data. The robustness in this proposed model is higher due to the use of objective data to explain ATCO trusting behaviour under uncertainty. This is an improvement on current models that are context-dependent and based on subjective data. Civil Aviation Authority of Singapore (CAAS) Published version This work is partially supported by NTU-CAAS Research Grant M4062429.052 by Air Traffic Management Research Institute, School of MAE, NTU, Singapore. Ethics approval for this research was granted by the Nanyang Technological University (NTU) institutional review board (IRB) (NTU IRBIRB-2018-12-002). A participant information sheet was provided and signed consent form was collected. At no point were participants asked to reveal names or other identifiable information, and only anonymised data was collected. 2021-04-22T01:02:52Z 2021-04-22T01:02:52Z 2019 Conference Paper Pushparaj, K., Ayeni, A. J., Ky, G., Alam, S., Vijayaragavan, V., Gulyás, B. & Duong, V. N. (2019). A quantum-inspired model for human-automation trust in air traffic control derived from functional magnetic resonance imaging. SESAR Innovation Days 2019. https://hdl.handle.net/10356/147628 en M4062429.052 © 2019 Air Traffic Management Research Institute. All rights reserved. This paper was published in SESAR Innovation Days 2019 and is made available with permission of Air Traffic Management Research Institute. application/pdf |
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Engineering::Aeronautical engineering::Aviation Air Traffic Management Human Factors Pushparaj, Kiranraj Ayeni, Alvin John Ky, Gregoire Alam, Sameer Vijayaragavan, Vimalan Gulyás, Balázs Duong, Vu N. A quantum-inspired model for human-automation trust in air traffic control derived from functional magnetic resonance imaging |
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With a greater proliferation of automation tools in the domain of Air Traffic Management due to exponential
growth in air traffic, human factors, and more specifically, trust, becomes a crucial component of Air Traffic Controller (ATCO)-automation teams. An attempt to better represent trust behaviours in ATCOs was made by juxtaposing two philosophies of trust using the principles of superposition and complementarity from quantum mechanics. Neuroimaging evidence of this simultaneous concurrence was demonstrated with use of functional Magnetic Resonance Imaging (fMRI) data. The robustness in this proposed model is higher due to the use of objective data to explain ATCO trusting behaviour under uncertainty. This is an improvement on current models that are context-dependent and based on subjective data. |
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School of Mechanical and Aerospace Engineering |
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School of Mechanical and Aerospace Engineering Pushparaj, Kiranraj Ayeni, Alvin John Ky, Gregoire Alam, Sameer Vijayaragavan, Vimalan Gulyás, Balázs Duong, Vu N. |
format |
Conference or Workshop Item |
author |
Pushparaj, Kiranraj Ayeni, Alvin John Ky, Gregoire Alam, Sameer Vijayaragavan, Vimalan Gulyás, Balázs Duong, Vu N. |
author_sort |
Pushparaj, Kiranraj |
title |
A quantum-inspired model for human-automation trust in air traffic control derived from functional magnetic resonance imaging |
title_short |
A quantum-inspired model for human-automation trust in air traffic control derived from functional magnetic resonance imaging |
title_full |
A quantum-inspired model for human-automation trust in air traffic control derived from functional magnetic resonance imaging |
title_fullStr |
A quantum-inspired model for human-automation trust in air traffic control derived from functional magnetic resonance imaging |
title_full_unstemmed |
A quantum-inspired model for human-automation trust in air traffic control derived from functional magnetic resonance imaging |
title_sort |
quantum-inspired model for human-automation trust in air traffic control derived from functional magnetic resonance imaging |
publishDate |
2021 |
url |
https://hdl.handle.net/10356/147628 |
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1759857392812556288 |