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An Evolutionary Multi-objective Approach for Stochastic Air Traffic Network Flow Optimization

机译:随机空中交通网络流量优化的进化多目标方法

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The Stochastic Air Traffic Network Flow Optimization (SATNFO) problem aims to seek a set of optimum and robust flight plans to ensure a safe, orderly and expeditious air traffic flow in the presence of uncertainties. Due to the very natures of multi-objective, large-scale and non-separable in the SATNFO problem, this paper sparks an evolutionary multi-objective optimization way for solving it. Firstly, we formulate it as a multi-objective problem, with performance and robustness as separate goals. In this model, robustness, which indicates the ability of a flight plan to cope with negative effects of uncertainty, is quantified and introduced as an objective. And, two conflicting performance objectives, i.e., minimizing the workload as well as the flight delays over the network, are involved. Then, we present an adaptive metaheuristic algorithm, termed as aNSGA-II, to solve the SATNFO problem. In aNSGA-II, a parameter adaptive mechanism is designed to dynamically adjust the probability of crossover and mutation based on problem context and evolution mechanism. It helps to balance exploitation and exploration during the evolutionary process, and thus maintain diversity of solutions and improve the convergence performance of the algorithm. Empirical studies using real data of flights and network in China are carried out, and show ability of our approach in providing efficient and robust flight plans and supporting better decision-making for air traffic controllers in a stochastic scenario.
机译:随机空中交通网络流量优化(SATNFO)问题旨在寻求一套最佳而稳健的飞行计划,以在存在不确定性的情况下确保安全,有序和迅速的空中交通流量。由于SATNFO问题具有多目标,大规模和不可分离的本质,因此本文提出了一种进化的多目标优化方法来求解。首先,我们将其表述为一个多目标问题,将性能和健壮性作为单独的目标。在该模型中,将表示飞行计划应对不确定性负面影响的能力的稳健性进行量化,并将其作为目标。并且,涉及两个相互矛盾的性能目标,即,最小化工作负载以及网络上的飞行延迟。然后,我们提出了一种自适应元启发式算法,称为aNSGA-II,以解决SATNFO问题。在aNSGA-II中,设计了一种参数自适应机制,以根据问题背景和演化机制动态调整交叉和变异的可能性。它有助于在进化过程中平衡开发和探索,从而保持解决方案的多样性并提高算法的收敛性能。进行了使用中国航班和网络实际数据的实证研究,表明了我们的方法能够在随机场景中提供有效,可靠的航班计划并为空中交通管制员提供更好的决策支持。

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