探索大规模无线传感器网络中隐藏的瓶颈节点

Q. Ma, Kebin Liu, Tong Zhu, Wei Gong, Yunhao Liu
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引用次数: 13

摘要

在大型无线传感器网络中,数千个传感器节点周期性地生成数据并将数据转发回接收器。在我们最近的户外部署中,我们观察到一些瓶颈节点可以极大地决定其他节点的数据采集比例,从而影响整个网络的性能。为了确定节点在数据收集中的重要性,管理员需要了解父节点和子节点之间的交互行为。为了解决这个问题,我们提出了一个管理工具BOND(瓶颈节点检测器)。我们引入节点依赖的概念来描述节点对每个父节点的依赖程度。BOND将路由过程建模为隐马尔可夫模型,并使用机器学习方法根据观察到的轨迹来学习该模型中的状态转移概率。BOND利用节点依赖来探索网络中隐藏的瓶颈节点。此外,我们可以预测增加或删除传感器节点对数据流的影响,从而避免在重新部署时数据丢失和流拥塞。我们在实际硬件上实现我们的工具,并将其部署在室外系统中。我们的大量实验表明,BOND推断节点依赖的平均准确率超过85%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
BOND: Exploring Hidden Bottleneck Nodes in Large-Scale Wireless Sensor Networks
In a large-scale wireless sensor network, thousands of sensor nodes periodically generate and forward data back to the sink. In our recent outdoor deployment, we observe that some bottleneck nodes can greatly determine other nodes' data collection ratio, and thus affect the whole network performance. To figure out the importance of a node in data collection, the manager needs to understand the interactive behaviors among the parent and child nodes. To address this issue, we present a management tool BOND (Bottleneck Node Detector). We introduce the concept of Node Dependence to characterize how much a node relies on each of its parent nodes. BOND models the routing process as a Hidden Markov Model, and uses a machine learning approach to learn the state transition probabilities in this model based on the observed traces. BOND utilizes Node Dependence to explore the hidden bottleneck nodes in the network. Moreover, we can predict how adding or removing the sensor nodes would impact the data flow, thus avoid data loss and flow congestion in redeployment. We implement our tool on real hardware and deploy it in an outdoor system. Our extensive experiments show that BOND infers the Node Dependence with an average accuracy of more than 85%.
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