A machine learning framework for predicting ATC conflict resolution strategies for conformal automation
Conformal automation allows for increased acceptability of automation tools in air traffic control. The key enabler for achieving conformity of automation tools in performing expert tasks, for example, air traffic conflict resolution, is the identification of ATCO preferences (conflict resolution st...
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sg-ntu-dr.10356-1546682022-03-05T20:10:21Z A machine learning framework for predicting ATC conflict resolution strategies for conformal automation Guleria, Yash Tran, Phu Pham, Duc-Thinh Durand, Nicolas Alam, Sameer 11th SESAR Innovation Days (SIDs 2021) Air Traffic Management Research Institute Engineering::Computer science and engineering conformance, conflict resolution, machine learning, air traffic control Conformal automation allows for increased acceptability of automation tools in air traffic control. The key enabler for achieving conformity of automation tools in performing expert tasks, for example, air traffic conflict resolution, is the identification of ATCO preferences (conflict resolution strategies) and its ability to learn and recommend similar strategies. This research proposes a machine learning-based framework to learn and predict the air traffic conflict resolution strategies using an ensemble model of regressor and classifier chains. This framework enables the prediction and generation of a complete conflict resolution profile of the maneuvered aircraft. Similar and contrasting ATCO conflict resolution strategies are collected through human-in-the-loop experiments, using a real-time, high fidelity simulation environment, for model training and evaluation. The prediction results demonstrate that the ATCOs strategies encoded in the collected data can be learned by the model with high accuracy (95.1%, 93.7% for choice of aircraft) and low MAE( 0.38 Nm and 0.52 Nm for maneuver initiation distance) for the ATCOs' datasets. These results demonstrate high conformance of the model predicted maneuvered trajectories with the original ATCOs maneuvers. Civil Aviation Authority of Singapore (CAAS) National Research Foundation (NRF) Accepted version This research was supported by the National Research Foundation, Singapore, and the Civil Aviation Authority of Singapore, under the Aviation Transformation Programme. Any opinions, findings, and conclusions or recommendations expressed in this material are those of the authors and do not reflect the views of National Research Foundation, Singapore, and the Civil Aviation Authority of Singapore. 2022-03-04T00:40:09Z 2022-03-04T00:40:09Z 2021 Conference Paper Guleria, Y., Tran, P., Pham, D., Durand, N. & Alam, S. (2021). A machine learning framework for predicting ATC conflict resolution strategies for conformal automation. 11th SESAR Innovation Days (SIDs 2021), 2021-85. https://hdl.handle.net/10356/154668 https://www.sesarju.eu/sesarinnovationdays 2021-85 en © 2021 SESAR 3 Joint Undertaking. All rights reserved. This paper was published in Proceedings of 11th SESAR Innovation Days (SIDs 2021) and is made available with permission of SESAR 3 Joint Undertaking. application/pdf |
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Engineering::Computer science and engineering conformance, conflict resolution, machine learning, air traffic control Guleria, Yash Tran, Phu Pham, Duc-Thinh Durand, Nicolas Alam, Sameer A machine learning framework for predicting ATC conflict resolution strategies for conformal automation |
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Conformal automation allows for increased acceptability of automation tools in air traffic control. The key enabler for achieving conformity of automation tools in performing expert tasks, for example, air traffic conflict resolution, is the identification of ATCO preferences (conflict resolution strategies) and its ability to learn and recommend similar strategies. This research proposes a machine learning-based framework to learn and predict the air traffic conflict resolution strategies using an ensemble model of regressor and classifier chains. This framework enables the prediction and generation of a complete conflict resolution profile of the maneuvered aircraft. Similar and contrasting ATCO conflict resolution strategies are collected through human-in-the-loop experiments, using a real-time, high fidelity simulation environment, for model training and evaluation. The prediction results demonstrate that the ATCOs strategies encoded in the collected data can be learned by the model with high accuracy (95.1%, 93.7% for choice of aircraft) and low MAE( 0.38 Nm and 0.52 Nm for maneuver initiation distance) for the ATCOs' datasets. These results demonstrate high conformance of the model predicted maneuvered trajectories with the original ATCOs maneuvers. |
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11th SESAR Innovation Days (SIDs 2021) |
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11th SESAR Innovation Days (SIDs 2021) Guleria, Yash Tran, Phu Pham, Duc-Thinh Durand, Nicolas Alam, Sameer |
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Conference or Workshop Item |
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Guleria, Yash Tran, Phu Pham, Duc-Thinh Durand, Nicolas Alam, Sameer |
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Guleria, Yash |
title |
A machine learning framework for predicting ATC conflict resolution strategies for conformal automation |
title_short |
A machine learning framework for predicting ATC conflict resolution strategies for conformal automation |
title_full |
A machine learning framework for predicting ATC conflict resolution strategies for conformal automation |
title_fullStr |
A machine learning framework for predicting ATC conflict resolution strategies for conformal automation |
title_full_unstemmed |
A machine learning framework for predicting ATC conflict resolution strategies for conformal automation |
title_sort |
machine learning framework for predicting atc conflict resolution strategies for conformal automation |
publishDate |
2022 |
url |
https://hdl.handle.net/10356/154668 https://www.sesarju.eu/sesarinnovationdays |
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1726885511924023296 |