地理路由拓扑表征中基于分布的分组转发距离不相似学习

G. Oladeji-Atanda, Dimane Mpoeleng
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引用次数: 0

摘要

我们之前已经证明了地理路由的贪婪数据包转发距离(PFD),在其平均度量的不同值中,根据节点大小表征了移动自组网(MANET)的拓扑结构。在本文中,我们演示了由两个代表性贪婪算法(即greedy和ELLIPSOID)生成的PFD度量的基于分布的分析。结果显示了基于分布的PFD不相似学习在拓扑表征方面的潜力。表征动态MANET拓扑支持基于位置或地理分组路由的上下文感知性能优化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Distribution-based packet forwarding distance dissimilarity learning for topology characterizing in geographic routing
Abstract We have previously shown that the geographic routing’s greedy packet forwarding distance (PFD), in dissimilarity values of its average measures, characterizes a mobile ad hoc network’s (MANET) topology by node size. In this article, we demonstrate a distribution-based analysis of the PFD measures that were generated by two representative greedy algorithms, namely GREEDY and ELLIPSOID. The result shows the potential of the distribution-based dissimilarity learning of the PFD in topology characterizing. Characterizing dynamic MANET topology supports context-aware performance optimization in position-based or geographic packet routing.
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