Airport Ground Optimizer (AGO): A decision support system initiative for air traffic controllers with optimization and decision-aid algorithms

IF 3.9 2区 工程技术 Q2 TRANSPORTATION Journal of Air Transport Management Pub Date : 2024-08-01 DOI:10.1016/j.jairtraman.2024.102648
Kadir Dönmez
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Abstract

The growing global air traffic has necessitated more efficient ground management in airports, especially during peak hours. Current approaches mainly consist of radar-based systems and radio communications, which provide limited visual assistance. Hence, Decision Support Systems (DSS) are designed to assist human Air Traffic Controllers (ATCos) by providing reliable recommendations based on current data and situations. The Airport Ground Optimizer (AGO) is a DSS designed for ATCos to manage the complexities of ground traffic in airports. It is based on advanced optimization algorithms and intuitive user interfaces, offering an enhanced operational experience. AGO uses mixed-integer programming (AGO-MIP) and stochastic programming (AGO-STC) to detect conflicts based on expected gate release and taxi times, and then optimizes the entire schedule to minimize hold fuels, resolve conflicts, and reduce fuel consumption, emissions, and delay times. Its key strength lies in translating complex mathematical solutions into user-friendly visual representations. AGO's core functionality includes comprehensive visualizations such as position charts, delay graphs, and potential conflict maps, providing a clear, real-time picture of ground operations for informed decision-making. AGO's queue and gate occupancy analysis calculates and visualizes the maximum queue length and concurrent number of aircraft at gates, enhancing airport capacity, reducing aircraft waiting times, and streamlining ground traffic flow. Simulated in a high-traffic Turkish airport layout, AGO-MIP demonstrated significant improvement in operational efficiency compared to traditional First Come First Served (FCFS) approach. AGO outperformed the traditional FCFS approach, reducing hold fuel by 27.9%, cutting delay time by 21.6%, lowering HC, CO, and NOx emissions by 16.4%, 22.5%, and 29.3% respectively, and decreasing the maximum queue length and its duration by 15.3% and 26.6%, as well as decreasing the number of delayed aircraft by 4.8%. The AGO-STC is also tested using pushback release uncertainties in the case airport, providing robust and feasible sequences, clear feedback for all possible scenarios, and detailed outcomes for each scenario. The study concludes by discussing potential developments and current issues of the tool in detail.

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机场地面优化器 (AGO):采用优化和决策辅助算法的空中交通管制员决策支持系统举措
随着全球航空交通量的不断增长,有必要提高机场地面管理的效率,尤其是在高峰时段。目前的方法主要包括基于雷达的系统和无线电通信,它们只能提供有限的视觉辅助。因此,设计了决策支持系统(DSS)来协助人类空中交通管制员(ATCos),根据当前数据和情况提供可靠的建议。机场地面优化器(AGO)是专为空管员设计的 DSS,用于管理机场复杂的地面交通。它以先进的优化算法和直观的用户界面为基础,提供更佳的操作体验。AGO 采用混合整数编程(AGO-MIP)和随机编程(AGO-STC),根据预期的登机口放行和滑行时间检测冲突,然后优化整个航班时刻表,最大限度地减少滞留燃料,解决冲突,减少燃料消耗、排放和延误时间。其主要优势在于将复杂的数学解决方案转化为用户友好的可视化表示。AGO 的核心功能包括位置图、延误图和潜在冲突图等综合可视化功能,可提供清晰、实时的地面运营情况,以便做出明智的决策。AGO 的队列和登机口占用率分析可计算并可视化登机口的最大队列长度和并发飞机数量,从而提高机场容量、减少飞机等待时间并简化地面交通流。通过对土耳其高流量机场布局的模拟,AGO-MIP 与传统的 "先到先服务"(FCFS)方法相比,显著提高了运营效率。AGO 的表现优于传统的 FCFS 方法,减少了 27.9% 的滞留燃料,缩短了 21.6% 的延误时间,降低了 16.4%、22.5% 和 29.3% 的碳氢化合物、一氧化碳和氮氧化物排放量,减少了 15.3% 和 26.6% 的最大排队长度和持续时间,并减少了 4.8% 的延误飞机数量。AGO-STC 还利用案例机场的反推放行不确定性进行了测试,提供了稳健可行的序列、所有可能情况的明确反馈以及每种情况的详细结果。研究最后详细讨论了该工具的潜在发展和当前问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
12.40
自引率
11.70%
发文量
97
期刊介绍: The Journal of Air Transport Management (JATM) sets out to address, through high quality research articles and authoritative commentary, the major economic, management and policy issues facing the air transport industry today. It offers practitioners and academics an international and dynamic forum for analysis and discussion of these issues, linking research and practice and stimulating interaction between the two. The refereed papers in the journal cover all the major sectors of the industry (airlines, airports, air traffic management) as well as related areas such as tourism management and logistics. Papers are blind reviewed, normally by two referees, chosen for their specialist knowledge. The journal provides independent, original and rigorous analysis in the areas of: • Policy, regulation and law • Strategy • Operations • Marketing • Economics and finance • Sustainability
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