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CDAS: A Cognitive Decision-Making Architecture for Dynamic Airspace Sectorization for Efficient Operations

机译:CDAS:用于有效运营的动态空域部门化的认知决策体系结构

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摘要

In this paper, a cognitive decision-making architecture for dynamic airspace sectorization (CDAS) to handle increasing traffic flow and provide an efficient decision making process for operations is presented. The main objective of CDAS is to determine optimal 3-D sector shapes such that the conflicting workloads of air traffic controllers are balanced along with marginal changes to sector shapes over a time horizon. CDAS broadly comprises two major components, namely, a cognitive engine and a metacognitive decision maker. The cognitive engine includes an airspace sectorization model and a multi-objective optimization solver. The problem of 3-D dynamic airspace resectorization is cast as a multi-objective optimization problem with safety constraints and is solved using the non-dominated sorting genetic algorithm II. The metacognitive decision maker utilizes the Pareto-optimal solutions obtained from the cognitive engine along with the air traffic control requirements and predicted traffic pattern to identify the best solution that can be implemented along with a rule to decide on when-to-do a resectorization when needed. A detailed performance evaluation of CDAS is presented using the actual flight data over the Singapore flight information region. The results clearly indicate that CDAS provides an efficient dynamic sectorization solution over the existing solution of split-and-merge of a specific sector to handle heavy traffic.
机译:在本文中,提出了一种用于动态空域划分(CDAS)的认知决策体系结构,以处理不断增加的交通流量并为运营提供有效的决策过程。 CDAS的主要目标是确定最佳的3D扇区形状,以使空中交通管制员相互冲突的工作负载以及一段时间内扇区形状的边际变化得到平衡。 CDAS大致包括两个主要部分,即认知引擎和元认知决策者。认知引擎包括空域分区模型和多目标优化求解器。 3-D动态空域修复的问题被视为具有安全约束的多目标优化问题,并使用非支配排序遗传算法II解决。元认知决策者利用从认知引擎获得的帕累托最优解决方案以及空中交通管制要求和预测的交通模式来识别可实施的最佳解决方案,并制定规则以决定何时进行重组。需要。使用新加坡航班信息区域上的实际航班数据,对CDAS进行了详细的性能评估。结果清楚地表明,CDAS提供了一种有效的动态扇区化解决方案,该解决方案超过了特定扇区拆分合并的现有解决方案来处理大量流量。

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