Fine-Grained Loss Tomography in Dynamic Sensor Networks

Chenhong Cao, Yi Gao, Wei Dong, Jiajun Bu
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引用次数: 1

Abstract

Wireless Sensor Networks (WSNs) have been successfully applied in many application areas. Understanding the wireless link performance is very helpful for both protocol designers and network managers. Loss tomography is a popular approach to inferring the per-link loss ratios from end-to-end delivery ratios. Previous studies, however, are usually targeted for networks with static or slowly changing routing paths. In this work, we propose Dophy, a Dynamic loss tomography approach specifically designed for dynamic WSNs where each node dynamically selects the forwarding nodes towards the sink. The key idea of Dophy is based on an observation that most existing protocols use retransmissions to achieve high data delivery ratio. Dophy employs arithmetic encoding to compactly encode the number of retransmissions along the paths. Dophy incorporates two mechanisms to optimize its performance. First, Dophy intelligently reduces the size of symbol set by aggregating the number of retransmissions, reducing the encoding overhead significantly. Second, Dophy periodically updates the probability model to minimize the overall transmission overhead. We implement Dophy on the Tiny OS platform and evaluate its performance extensively using large-scale simulations. Results show that Dophy achieves both high encoding efficiency and high estimation accuracy. Comparative studies show that Dophy significantly outperforms traditional loss tomography approaches in terms of accuracy.
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动态传感器网络中的细粒度损耗层析成像
无线传感器网络(WSNs)已经成功地应用于许多应用领域。了解无线链路的性能对协议设计者和网络管理者都很有帮助。损耗层析成像是从端到端传输比推断每链路损耗比的一种流行方法。然而,先前的研究通常针对具有静态或缓慢变化路由路径的网络。在这项工作中,我们提出了Dophy,这是一种专门为动态wsn设计的动态损耗层析成像方法,其中每个节点动态选择朝向汇聚的转发节点。Dophy的关键思想是基于对大多数现有协议使用重传来实现高数据传输率的观察。多菲采用算术编码对沿路径重传的次数进行紧凑编码。Dophy采用两种机制来优化其性能。首先,Dophy通过聚合重传次数,智能地减小了符号集的大小,显著降低了编码开销。其次,Dophy定期更新概率模型以最小化总体传输开销。我们在Tiny OS平台上实现了Dophy,并通过大规模仿真对其性能进行了广泛的评估。结果表明,该算法具有较高的编码效率和估计精度。对比研究表明,Dophy在精度方面明显优于传统的损失层析成像方法。
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