Statistically-Enhanced Fine-Grained Diagnosis of Packet Losses

Daniele Midi, A. Tedeschi, F. Benedetto, E. Bertino
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引用次数: 3

Abstract

Packet losses are an important class of adverse events in Wireless Sensor Networks (WSNs), they can be caused by either a compromised or misbehaving node, or an attack focused on the wireless links of the network. Understanding the underlying cause is critical for the deployment of effective response measures aimed at restoring the network functionality. Shebaro et al. [9] proposed an initial approach for fine-grained analysis (FGA) of packet losses, and implemented and evaluated a tool based on it. Such approach profiles the wireless links between the nodes using resident metrics, such as the received signal strength indicator (RSSI) and the link quality indicator (LQI) for every packet, in order to achieve an accurate diagnosis of their root causes. The accuracy of their approach relies on the correct choice of some system parameters and thresholds, and empirically-determined values such as those proposed in their work might not always be optimal. Moreover, to reduce the burden on the network administrator, their approach uses a single threshold value set for the entire WSN, which can be suitable for some neighborhoods but not appropriate for others. In this work, we design an approach that builds a statistical model for determining optimal system thresholds by exploiting the variances of RSSI and LQI. Our model also has the advantage of allowing the setting of an individual threshold for each link. We have validated our approach through extensive MATLAB simulations based on real sensor data, showing that our model is accurate and its system parameters lead to an optimally-accurate fine-grained analysis of the underlying causes of packet losses.
统计增强的数据包丢失细粒度诊断
丢包是无线传感器网络(WSNs)中一类重要的不良事件,它们可能是由节点受损或行为不当引起的,也可能是由网络无线链路受到攻击引起的。了解潜在原因对于部署旨在恢复网络功能的有效响应措施至关重要。Shebaro等人[9]提出了一种对丢包进行细粒度分析(FGA)的初步方法,并在此基础上实现并评估了一个工具。这种方法使用常驻指标(如每个数据包的接收信号强度指标(RSSI)和链路质量指标(LQI))来描述节点之间的无线链路,以便准确诊断其根本原因。他们的方法的准确性依赖于一些系统参数和阈值的正确选择,并且经验确定的值,例如在他们的工作中提出的那些值可能并不总是最优的。此外,为了减轻网络管理员的负担,他们的方法为整个WSN设置一个单一的阈值,这可能适用于某些邻域,而不适用于其他邻域。在这项工作中,我们设计了一种方法,通过利用RSSI和LQI的方差来构建一个统计模型,以确定最优的系统阈值。我们的模型还具有允许为每个链接设置单独阈值的优点。我们已经通过基于真实传感器数据的广泛MATLAB模拟验证了我们的方法,表明我们的模型是准确的,其系统参数导致对数据包丢失的潜在原因进行最精确的细粒度分析。
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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