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Aircraft re-routing optimization and performance assessment under uncertainty

机译:不确定条件下的飞机改航优化与性能评估

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The need for aircraft re-routing arises when there is disruption in the system, such as when an airport is closed due to extreme weather. In this paper, we investigate a simulation-based approach to optimize the aircraft re-routing process, by considering multiple sources of uncertainty. The proposed approach has four main components: system simulation, uncertainty representation, aircraft re-routing algorithm, and system performance assessment. Several sources of uncertainty are accounted for in this approach, related to incoming aircraft, space availability in neighboring airports, radar performance, and communication delays. An aircraft re-routing optimization model is formulated to make periodic re-routing decisions with the objective of minimizing the overall distance travelled by all the aircraft, subject to the system resources. We analyze the performance of this aircraft re-routing system using system failure time as the metric. Since the simulation time is limited, right-censored data arises with respect to system failure time. A novel methodology is developed to compute the lower bound of system failure time in the presence of right-censored data, and to analyze the sensitivity of the system performance metric to the uncertain variables relating to the aircraft, radars, nearby airports, and communication system. Since the simulation is time-consuming, we build a Support Vector Regression (SVR) surrogate model to efficiently construct the system failure time distribution. (C) 2017 Elsevier B.V. All rights reserved.
机译:当系统出现故障时,例如由于极端天气导致机场关闭时,便需要重新安排飞机的航线。在本文中,我们通过考虑多种不确定性来源,研究了一种基于仿真的方法来优化飞机的重新航线过程。所提出的方法具有四个主要组成部分:系统仿真,不确定性表示,飞机重新路由算法和系统性能评估。这种方法考虑了不确定性的多种来源,这些因素与进来的飞机,邻近机场的空间可用性,雷达性能以及通信延迟有关。制定了飞机重新航线优化模型,以做出定期的重新航线决策,目的是根据系统资源,使所有飞机的总行驶距离最小化。我们以系统故障时间为度量标准,分析了该飞机改航系统的性能。由于模拟时间有限,因此有关系统故障时间的数据会经过右删失。开发了一种新颖的方法来计算在存在右删失数据的情况下系统故障时间的下限,并分析系统性能指标对与飞机,雷达,附近机场和通信系统有关的不确定变量的敏感性。由于仿真非常耗时,因此我们建立了支持向量回归(SVR)替代模型来有效地构建系统故障时间分布。 (C)2017 Elsevier B.V.保留所有权利。

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