Incremental, Probabilistic Decision Making for En Route Traffic Management

C. Wanke, D. Greenbaum
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引用次数: 34

Abstract

This paper provides a method of incremental decision making using prediction uncertainty as a more efficient and effective means of aircraft congestion resolution. Standard manual en route airspace congestion planning often suffers from unplanned variables such as convective weather and thus systemic delays result. The proposed scheme uses a Monte Carlo decision method simulation technique to provide support for incremental probabilistic decision making. Researchers aim to have this simulation assist air traffic control (ATC) in solving various air traffic congestion contingencies by showing cost-benefit analyses of various decisions involved. All decisions made by the simulation method take into account quantitative evaluations that are based upon expected delay cost distributions for certain actions based on individual flight paths as opposed to the more standard approach based upon flows. It is noted that the best approach solves problems at increments of 90 minutes and 30 minutes prior to a congestion problem.
道路交通管理的增量概率决策
本文提出了一种利用预测不确定性的增量决策方法,作为一种更有效的飞机拥堵解决方法。标准的手动航路空域拥堵规划经常受到诸如对流天气等计划外变量的影响,从而导致系统性延误。该方案采用蒙特卡罗决策方法模拟技术,为增量概率决策提供支持。研究人员的目标是通过展示各种决策的成本效益分析,帮助空中交通管制(ATC)解决各种空中交通拥堵突发事件。模拟方法做出的所有决策都考虑了定量评估,这些评估是基于基于单个飞行路径的某些动作的预期延迟成本分布,而不是基于流的更标准的方法。值得注意的是,最好的方法是在拥堵问题之前90分钟和30分钟的增量解决问题。
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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