增强大规模传感器网络中网络性能的可见性

Xiaoxu Li, Q. Ma, Zhichao Cao, Kebin Liu, Yunhao Liu
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引用次数: 9

摘要

无线传感器网络(WSNs)嵌入到物理世界中,由于环境条件、硬件限制和软件不确定性等原因,存在着各种各样的故障。一旦部署,WSN的交互性大大降低,这导致管理人员对网络性能的可见性有限,无法调查传感器的行为。现有的循证方法旨在基于专家知识和启发式经验来解释特定的网络症状,这降低了诊断的准确性并且执行不可靠。这些诊断模型只定义了有限的一组网络故障,过于强调专家知识,无法适用于不同的应用。在这项工作中,我们提出了一种新的工具VN2来增强网络性能的可见性。VN2根据43个指标的变化来量化节点的状态,并使用非负矩阵分解(NMF)模型训练网络异常的代表性矩阵。有了这个矩阵,当出现新的网络状态时,VN2自动将异常症状归因于一个或多个根本原因。我们在试验台和实际系统跟踪上实现了VN2。实验结果表明,VN2模型的网络异常涉及到小子集的根本原因,对根本原因的解释有助于我们更详细地理解网络行为。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enhancing Visibility of Network Performance in Large-Scale Sensor Networks
Being embedded in the physical world, wireless sensor networks (WSNs) present a wide range of failures, due to environment conditions, hardware limitations and software uncertainties, and so on. Once deployed, the interactivity of a WSN greatly decreases, which leads to limited visibility of network performance for managers to investigate sensor behaviors. Existing evidence-based approaches aim to explain particular network symptoms based on expert knowledge and heuristic experiences, which degrade diagnosis accuracy and perform unreliably. These diagnosis models define a limited group of network failures, emphasizing on expert knowledge too much, and thus fail to be adopted to different applications. In this work, we propose VN2, a novel tool to enhance the visibility of network performance. VN2 quantifies a node's state in terms of variation of 43 metrics, and trains a representative matrix of network exceptions with Non-negative Matrix Factorization (NMF) model. With this matrix, when a new network state coming up, VN2 automatically attributes abnormal symptoms to one or more root causes. We implement VN2 on test bed and real system traces. Experimental results show that VN2 models network exceptions involving small subsets of root causes, and the interpretation of root causes help us understand network behaviors in details.
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