AILGOCNov 27, 2023

Machine Learning-Enhanced Aircraft Landing Scheduling under Uncertainties

arXiv:2311.16030v112 citationsh-index: 16
Originality Incremental advance
AI Analysis

It addresses aircraft delays for air traffic control, offering an incremental improvement by integrating machine learning predictions into scheduling.

This paper tackles aircraft landing scheduling under uncertainties to reduce delays and improve safety, achieving a 17.2% reduction in total landing time compared to First-Come-First-Served using real-world data from Atlanta ARTCC ZTL.

This paper addresses aircraft delays, emphasizing their impact on safety and financial losses. To mitigate these issues, an innovative machine learning (ML)-enhanced landing scheduling methodology is proposed, aiming to improve automation and safety. Analyzing flight arrival delay scenarios reveals strong multimodal distributions and clusters in arrival flight time durations. A multi-stage conditional ML predictor enhances separation time prediction based on flight events. ML predictions are then integrated as safety constraints in a time-constrained traveling salesman problem formulation, solved using mixed-integer linear programming (MILP). Historical flight recordings and model predictions address uncertainties between successive flights, ensuring reliability. The proposed method is validated using real-world data from the Atlanta Air Route Traffic Control Center (ARTCC ZTL). Case studies demonstrate an average 17.2% reduction in total landing time compared to the First-Come-First-Served (FCFS) rule. Unlike FCFS, the proposed methodology considers uncertainties, instilling confidence in scheduling. The study concludes with remarks and outlines future research directions.

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