无线传感器网络中的无源干扰测量

Shucheng Liu, G. Xing, Hongwei Zhang, Jianping Wang, Jun Huang, M. Sha, Liusheng Huang
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引用次数: 61

摘要

干扰建模对于许多WSN协议的性能至关重要,例如拥塞控制、链路/通道调度和可靠路由。特别是,随着无线传感器网络(wsn)被部署到许多数据密集型应用(如结构健康监测)中,理解和减轻干扰变得越来越重要。然而,以前的工作广泛采用了简单的干扰模型,这些模型无法捕捉诸如概率分组接收性能等无线现实。近年来的研究表明,物理干涉模型(即PRR-SINR模型)的精度明显高于现有的干涉模型。然而,现有的物理干扰建模方法完全依赖于主动测量数据包的使用,这对带宽有限的wsn施加了过高的开销。在本文中,我们提出了被动干涉测量(PIM)方法来解决精确物理干涉表征的复杂性。PIM利用数据流量的时空多样性进行无线电性能分析,只需要收集有关网络的少量统计信息。我们通过在13节点和40节点的TelosB motes测试平台上进行大量实验来评估PIM的效率。研究结果表明,与主动测量方法相比,PIM方法可以实现较高的PRR-SINR建模精度,且开销显著降低。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Passive interference measurement in Wireless Sensor Networks
Interference modeling is crucial for the performance of numerous WSN protocols such as congestion control, link/channel scheduling, and reliable routing. In particular, understanding and mitigating interference becomes increasingly important for Wireless Sensor Networks (WSNs) as they are being deployed for many data-intensive applications such as structural health monitoring. However, previous works have widely adopted simplistic interference models that fail to capture the wireless realities such as probabilistic packet reception performance. Recent studies suggested that the physical interference model (i.e., PRR-SINR model) is significantly more accurate than existing interference models. However, existing approaches to physical interference modeling exclusively rely on the use of active measurement packets, which imposes prohibitively high overhead to bandwidth-limited WSNs. In this paper, we propose the passive interference measurement (PIM) approach to tackle the complexity of accurate physical interference characterization. PIM exploits the spatiotemporal diversity of data traffic for radio performance profiling and only needs to gather a small amount of statistics about the network. We evaluate the efficiency of PIM through extensive experiments on both a 13-node and a 40-node testbeds of TelosB motes. Our results show that PIM can achieve high accuracy of PRR-SINR modeling with significantly lower overhead compared with the active measurement approach.
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