基于碰撞风险模式的空域容量过载识别

Chunyao Ma, Qing Cai, S. Alam, V. Duong
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引用次数: 1

摘要

不断增长的航空旅行需求可能导致航路空域容量超载,危及飞行安全,引发空中交通拥堵。了解空域容量过载对于空中交通流管理和飞行计划在不影响空域安全水平的情况下缓解空中交通拥堵具有重要意义。由于空中交通管制员的主要任务是在安全要求的约束下管理交通流,即保证碰撞风险处于较低水平,因此本文使用给定空域的飞机空中碰撞风险作为空域容量过载的指标。在给定空中交通数据和空域配置的情况下,通过碰撞风险建模确定空域内的碰撞风险分布。基于碰撞风险的密度和强度,将碰撞风险分布转换为热图,利用图像处理技术从热图中进一步识别碰撞风险模式。根据这些模式可以确定空域工作负荷的三种主要状态:正常状态、过渡状态和过载状态。对于给定时间段内的新交通数据,通过将其碰撞风险分布与最近的碰撞风险模式进行匹配,我们能够识别空域是否过载。在新加坡空域航路扇区的实验研究表明,该方法具有碰撞风险模式识别和容量过载识别的能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Airspace Capacity Overload Identification Using Collision Risk Patterns
The ever increasing demand for air travel may induce en-route airspace capacity overload which endangers flight safety and elicit air traffic congestion. Knowledge of airspace capacity overload is important for air traffic flow management and flight planning to mitigate air traffic congestion without compromising airspace safety level. Since the primary task of air traffic controllers is to manage traffic flow within the constraints imposed by safety requirements, i.e., to warrant the collision risk at a low level, in this paper, we use the aircraft mid-air collision risk for a given airspace as the indicator of airspace capacity overload. With given air traffic data and airspace configurations, the collision risk distributions inside an airspace is determined through collision risk modelling. Based on the density and intensity of collision risk, the collision risk distributions are converted into heatmaps and collision risk patterns are further recognized from the heatmaps using image processing technique. Three major states of airspace workload can be identified from theses patterns: normal state, transition state and overload state. For new traffic data during a given time period, by matching its collision risk distribution to the closest collision risk pattern, we are able to identify whether the airspace is overloaded or not. The experimental study in an en-route sector of the Singapore airspace has manifested the ability of the proposed method in collision risk pattern recognition and capacity overload identification.
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