Resumo
Effective air traffic management within the Terminal Manoeuvring Area (TMA) is imperative for mitigating delays, minimizing fuel consumption, and reducing emissions in the aviation sector. While existing research has predominantly focused on optimizing runway sequencing, the Terminal Airspace Scheduling Problem (TASP) has been relatively understudied. This work addresses this gap by proposing an innovative matheuristic algorithm (TMAOpt) that concurrently optimizes both runway aircraft sequencing and decisions within the TMA, including runway selection, speed control, utilization of holding patterns, vectoring, and point merges. The proposed approach combines a Linear Programming (LP) model with metaheuristic algorithms, providing a unique solution approach that balances rapid generation of feasible solutions (within 1 s of computation) and convergence (within 5 min of computation). Validation of our approach involved extensive evaluations using real-world data from the congested terminal airspace of Changi Airport in Singapore. Comparative analyses with existing methods, including commercial microsimulation models like AirTOP, showcase the superior performance of our algorithm, yielding sequences that reduce delays by up to 27%. A sensitivity analysis, exploring varying degrees of permitted TMA interventions, underscores the benefits of their balanced utilization.
Idioma original | Inglês |
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Número do artigo | 104856 |
Revista | Transportation Research Part C: Emerging Technologies |
Volume | 169 |
DOIs | |
Estado da publicação | Publicadas - 1 dez. 2024 |
Publicado externamente | Sim |
Nota bibliográfica
Publisher Copyright:© 2024 The Authors
Financiamento
Financiadoras/-es | Número do financiador |
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National Research Foundation Singapore | |
Civil Aviation Authority of Singapore | |
Resilient Airspace Operations for Singapore | NRASI-00001-R0101 |