基于潜变量张量分解的传感器网络高效能量管理和数据恢复

B. Milosevic, Jinseok Yang, Nakul Verma, S. Tilak, P. Zappi, Elisabetta Farella, L. Benini, T. Simunic
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引用次数: 7

摘要

成功部署传感器网络的一个关键因素是在最大化测量次数(以保持良好的采样率)和最小化总体能耗(以延长网络生命周期)之间找到一个良好的平衡。在这项工作中,我们提出了一个数据驱动的统计模型来优化这种权衡。我们的方法利用了异构传感器网络收集的数据的多变量特性来学习时空模式。这些模式使我们能够在单个传感器节点上采用积极的占空比策略,从而降低总体能耗。我们使用omnet++网络模拟器在真实的无线信道条件下,对两个真实传感器网络收集的数据进行了实验,结果表明,我们可以对20%的数据进行采样,并且可以以小于9%的平均误差重建剩余80%的数据,优于类似的技术,如分布式压缩采样。此外,根据采样率和节点硬件配置的不同,节能幅度可达76%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Efficient energy management and data recovery in sensor networks using latent variables based tensor factorization
A key factor in a successful sensor network deployment is finding a good balance between maximizing the number of measurements taken (to maintain a good sampling rate) and minimizing the overall energy consumption (to extend the network lifetime). In this work, we present a data-driven statistical model to optimize this tradeoff. Our approach takes advantage of the multivariate nature of the data collected by a heterogeneous sensor network to learn spatio-temporal patterns. These patterns enable us to employ an aggressive duty cycling policy on the individual sensor nodes, thereby reducing the overall energy consumption. Our experiments with the OMNeT++ network simulator using realistic wireless channel conditions, on data collected from two real-world sensor networks, show that we can sample just 20% of the data and can reconstruct the remaining 80% of the data with less than 9% mean error, outperforming similar techniques such is distributed compressive sampling. In addition, energy savings ranging up to 76%, depending on the sampling rate and the hardware configuration of the node.
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