A quasi-dynamic air traffic assignment model for mitigating air traffic complexity and congestion for high-density UAM operations

In spite of the significant effects of COVID-19, UAM operations are still expected to grow smoothly and healthily in the near future. If such dense UAM traffic relies on tactical planning to resolve conflicts in a decentralized control scheme, urban airspace could soon be heavily congested and airsp...

Full description

Saved in:
Bibliographic Details
Main Authors: Wang, Zhengyi, Delahaye, Daniel, Farges, Jean-Loup, Alam, Sameer
Other Authors: Air Traffic Management Research Institute
Format: Article
Language:English
Published: 2023
Subjects:
Online Access:https://hdl.handle.net/10356/171397
Tags: Add Tag
No Tags, Be the first to tag this record!
Institution: Nanyang Technological University
Language: English
id sg-ntu-dr.10356-171397
record_format dspace
spelling sg-ntu-dr.10356-1713972023-10-24T02:27:31Z A quasi-dynamic air traffic assignment model for mitigating air traffic complexity and congestion for high-density UAM operations Wang, Zhengyi Delahaye, Daniel Farges, Jean-Loup Alam, Sameer Air Traffic Management Research Institute Engineering::Civil engineering::Transportation Urban Air Mobility Unmanned Traffic Management In spite of the significant effects of COVID-19, UAM operations are still expected to grow smoothly and healthily in the near future. If such dense UAM traffic relies on tactical planning to resolve conflicts in a decentralized control scheme, urban airspace could soon be heavily congested and airspace complexity could be overwhelming. In this paper, we propose a Quasi-dynamic Air Traffic Assignment (QATA) model, which aims to allocate traffic flows among air routes in the planning horizon in order to organize UAM traffic flows and reduce air traffic congestion and complexity within a centralized strategic planning scheme while meeting the demand and respecting some criteria. Firstly, UAM traffics are modeled as flows that operate on a 3D two-way UAM route network. Next, the QATA problem is formulated as an optimization problem involving network dynamics to minimize the air traffic complexity evaluated by the linear dynamical system and congestion defined by traffic density and energy consumption. A simulation-based rolling horizon framework is introduced to decompose the QATA problem into several modified static air traffic assignment problems in each time interval. In order to overcome the limitations of conventional dynamic traffic assignment algorithms, a simulated annealing algorithm using parallel computing and a novel neighborhood generation strategy is proposed to efficiently optimize the problem. By applying the model to a pre-designed large-scale UAM route network in Singapore's urban airspace, Experimental studies demonstrate the performance of the proposed framework and its applicability. Parallel computing can achieve up to three times faster than the original algorithm. The proposed algorithm significantly reduces the value of the objective function by (32.20±0.29)% in 143.47±3.74 seconds at the 95% confidence interval of 100 experiments, far better compared to the representative conventional dynamic traffic assignment algorithms. This study could be useful to assist air traffic control authorities and air navigation service providers in addressing various issues in unmanned traffic management. This work is partially supported by the research project CONCORDE of the Defense Innovation Agency (AID) of the French Ministry of Defense (2019650090004707501). 2023-10-24T02:27:31Z 2023-10-24T02:27:31Z 2023 Journal Article Wang, Z., Delahaye, D., Farges, J. & Alam, S. (2023). A quasi-dynamic air traffic assignment model for mitigating air traffic complexity and congestion for high-density UAM operations. Transportation Research Part C: Emerging Technologies, 154, 104279-. https://dx.doi.org/10.1016/j.trc.2023.104279 0968-090X https://hdl.handle.net/10356/171397 10.1016/j.trc.2023.104279 2-s2.0-85167453386 154 104279 en Transportation Research Part C: Emerging Technologies © 2023 Elsevier Ltd. All rights reserved.
institution Nanyang Technological University
building NTU Library
continent Asia
country Singapore
Singapore
content_provider NTU Library
collection DR-NTU
language English
topic Engineering::Civil engineering::Transportation
Urban Air Mobility
Unmanned Traffic Management
spellingShingle Engineering::Civil engineering::Transportation
Urban Air Mobility
Unmanned Traffic Management
Wang, Zhengyi
Delahaye, Daniel
Farges, Jean-Loup
Alam, Sameer
A quasi-dynamic air traffic assignment model for mitigating air traffic complexity and congestion for high-density UAM operations
description In spite of the significant effects of COVID-19, UAM operations are still expected to grow smoothly and healthily in the near future. If such dense UAM traffic relies on tactical planning to resolve conflicts in a decentralized control scheme, urban airspace could soon be heavily congested and airspace complexity could be overwhelming. In this paper, we propose a Quasi-dynamic Air Traffic Assignment (QATA) model, which aims to allocate traffic flows among air routes in the planning horizon in order to organize UAM traffic flows and reduce air traffic congestion and complexity within a centralized strategic planning scheme while meeting the demand and respecting some criteria. Firstly, UAM traffics are modeled as flows that operate on a 3D two-way UAM route network. Next, the QATA problem is formulated as an optimization problem involving network dynamics to minimize the air traffic complexity evaluated by the linear dynamical system and congestion defined by traffic density and energy consumption. A simulation-based rolling horizon framework is introduced to decompose the QATA problem into several modified static air traffic assignment problems in each time interval. In order to overcome the limitations of conventional dynamic traffic assignment algorithms, a simulated annealing algorithm using parallel computing and a novel neighborhood generation strategy is proposed to efficiently optimize the problem. By applying the model to a pre-designed large-scale UAM route network in Singapore's urban airspace, Experimental studies demonstrate the performance of the proposed framework and its applicability. Parallel computing can achieve up to three times faster than the original algorithm. The proposed algorithm significantly reduces the value of the objective function by (32.20±0.29)% in 143.47±3.74 seconds at the 95% confidence interval of 100 experiments, far better compared to the representative conventional dynamic traffic assignment algorithms. This study could be useful to assist air traffic control authorities and air navigation service providers in addressing various issues in unmanned traffic management.
author2 Air Traffic Management Research Institute
author_facet Air Traffic Management Research Institute
Wang, Zhengyi
Delahaye, Daniel
Farges, Jean-Loup
Alam, Sameer
format Article
author Wang, Zhengyi
Delahaye, Daniel
Farges, Jean-Loup
Alam, Sameer
author_sort Wang, Zhengyi
title A quasi-dynamic air traffic assignment model for mitigating air traffic complexity and congestion for high-density UAM operations
title_short A quasi-dynamic air traffic assignment model for mitigating air traffic complexity and congestion for high-density UAM operations
title_full A quasi-dynamic air traffic assignment model for mitigating air traffic complexity and congestion for high-density UAM operations
title_fullStr A quasi-dynamic air traffic assignment model for mitigating air traffic complexity and congestion for high-density UAM operations
title_full_unstemmed A quasi-dynamic air traffic assignment model for mitigating air traffic complexity and congestion for high-density UAM operations
title_sort quasi-dynamic air traffic assignment model for mitigating air traffic complexity and congestion for high-density uam operations
publishDate 2023
url https://hdl.handle.net/10356/171397
_version_ 1781793790768447488