Improving wireless link delivery ratio classification with packet SNR

Yunqian Ma
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引用次数: 26

Abstract

Accurate link delivery ratio prediction is crucial to routing protocols in wireless mesh network. Since predicting delivery ratio directly usually requires excessive probing packets, it has been suggested to use packet SNR to predict delivery ratio, as SNR is a measure easy to obtain and "free" with every received packet. Unfortunately, several previous studies have shown that a simple direct mapping between SNR and delivery ratio values is often impossible. In this paper, we formulate the delivery ratio prediction problem as a classification problem (predicting link to be "good" or "bad), and apply various statistical classification algorithms (k-NN, kernel methods, and support vector machines) to it. We obtain the temporal data of link delivery ratios and SNR's from a measurement trace of a live wireless mesh network, and analyze the effectiveness of using SNR to enhance delivery ratio classification. Contrary to the pessimistic conclusion of previous works, we find that by incorporating SNR information in addition to historical delivery ratio data, the classification accuracy is improved in all the algorithms we used, with an average reduction of 8-10% of errors compared with using delivery ratio data alone. We therefore conclude that adding SNR can be an attractive alternative when designing a wireless link delivery ratio prediction protocol
利用分组信噪比改进无线链路传输比分类
准确的链路投递率预测是无线网状网络中路由协议的关键。由于直接预测投递比通常需要过多的探测包,因此建议使用包的信噪比来预测投递比,因为信噪比是一个易于获得且与每个接收到的包“免费”的度量。不幸的是,之前的一些研究表明,信噪比和传递比值之间的简单直接映射通常是不可能的。在本文中,我们将交付率预测问题表述为一个分类问题(预测链接是“好”还是“坏”),并将各种统计分类算法(k-NN,核方法和支持向量机)应用于该问题。从实时无线网状网络的测量轨迹中获得了链路投递比和信噪比的时间数据,并分析了利用信噪比增强投递比分类的有效性。与以往工作的悲观结论相反,我们发现除了历史交付率数据外,通过结合信噪比信息,我们使用的所有算法的分类精度都得到了提高,与单独使用交付率数据相比,平均减少了8-10%的错误。因此,我们得出结论,在设计无线链路传输比预测协议时,添加信噪比可能是一个有吸引力的替代方案
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