Density-Based Clustering and Performance Enhancement of Aeronautical Ad Hoc Networks

M. Shahbazi, Murat Simsek, B. Kantarci
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引用次数: 1

Abstract

In-Flight Entertainment and Connectivity (IFEC) is becoming a key trend and an essential need. A grand challenge is to provide in-flight connectivity in high altitudes, and particularly in isolated locations, such as the oceans, where establishing an air-to-ground link is not possible. Aeronautical Ad-Hoc Networking (AANET) intends to cope with this challenge by forming a network of airplanes having air-to-air (A2A) connections. However, the dynamic nature of such a network is likely to lead to unstable connections. The primary cause of the majority of these stability issues is known to be poor clustering of aircrafts. Consequently, concentrating on aircraft clustering and making them more stable can improve connection. This paper aims to unveil the benefits of density-based clustering to improve the AANET performance. To do so, the paper employs a multi-feature DBSCAN algorithm for the clustering problem that exploits several features of real flight datasets, including latitude, longitude, altitude, direction, and velocity. Instead of a typical distance metric such as Euclidean or Haversine, the technique produces a precomputed distance matrix and feeds it to DBSCAN. This method also includes a weighted scheme to reflect the relative importance of each component of the distance calculation. Simulations under OMNET++ by using real-time flight data point out that packet delivery ratio and end-to-end latency of the state of the art clustering-based AANET solutions can be improved by 40 % and 30 %, respectively. Furthermore, the proposed method achieves a 20% reduction in cluster changes and the number of clusters.
基于密度的航空自组织网络聚类与性能增强
机上娱乐和连接(IFEC)正在成为一种关键趋势和基本需求。一个巨大的挑战是在高海拔地区提供空中连接,特别是在海洋等偏远地区,在那里建立空对地连接是不可能的。航空自组织网络(AANET)旨在通过形成具有空对空(A2A)连接的飞机网络来应对这一挑战。但是,这种网络的动态性很可能导致连接不稳定。大多数这些稳定性问题的主要原因是已知的飞机群集不良。因此,专注于飞机集群并使它们更稳定可以改善连接。本文旨在揭示基于密度的聚类对提高AANET性能的好处。为此,本文采用一种多特征DBSCAN算法来解决聚类问题,该算法利用了真实飞行数据集的几个特征,包括纬度、经度、高度、方向和速度。与典型的距离度量(如欧几里得或哈弗辛)不同,该技术产生一个预先计算的距离矩阵,并将其提供给DBSCAN。该方法还包括一个加权方案,以反映距离计算的各个组成部分的相对重要性。利用实时飞行数据在omnet++下进行的仿真表明,基于集群的AANET解决方案的分组传送率和端到端延迟分别提高了40%和30%。此外,该方法将聚类变化和聚类数量减少了20%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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