通过基于复杂网络聚类的空域分区实现高效空中交通监控的可能性:一种多目标离散粒子群优化方法

Aitichya Chandra, Sayan Hazra, Ashish Verma, K.P. Sooraj
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引用次数: 0

摘要

本研究将空域分区问题建模为多目标复杂网络聚类问题。然后使用基于分解的离散粒子群优化(DPSO)算法来解决该问题,接着应用最小边界几何方法来设计凸而紧凑的边界。为了验证所提出的框架,我们考虑了印度的一个空域区域。扇区内的航点和航线以网络图的形式表示,离散交通负荷被随机分配到顶点,以指导 DPSO。最大代数或迭代次数被设定为终止标准。所提议的方法生成的集群使所有子部门都具有中等流量负载,从而确保了难以实现的公平性。该框架提供了足够的灵活性,避免了若干严格的约束,从而降低了问题的复杂性。此外,由于认识到航空运输网络的分层特点,所提出的框架提高了分部门对网络演变和交通状况的适应性。本研究还为未来的空中交通管理系统提供了若干研究机会和可能性。
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On the Possibilities of Efficient Air Traffic Monitoring through Complex Network Clustering Based Airspace Sub-Sectorization: A Multi-Objective Discrete Particle Swarm Optimization Approach
This study models the airspace sub-sectorization problem as a multi-objective complex network clustering problem. A decomposition-based discrete particle swarm optimization (DPSO) algorithm is then used to solve the problem, followed by applying the minimum bounding geometry method to design convex and compact boundaries. An Indian airspace sector was considered to validate the proposed framework. The waypoints and routes within the sector were represented as a network graph, and discretized traffic loads were randomly allotted to the vertices to guide the DPSO. The maximum number of generations or iterations was set as the termination criteria. The proposed approach generates clusters that result in all sub-sectors having a medium traffic load, ensuring equity that is difficult to achieve. This framework offers enough flexibility to avoid several strict constraints, thereby reducing the problem’s complexity. Moreover, the proposed framework improves the adaptability of sub-sectors to network evolution and traffic conditions, recognizing the hierarchical characteristics of air transport networks. The present research also motivates several research opportunities and possibilities for future air traffic management systems.
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