首页> 外文会议>Information Processing in Sensor Networks, 2006. IPSN 2006. The Fifth International Conference on >Near-optimal sensor placements: maximizing information while minimizing communication cost
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Near-optimal sensor placements: maximizing information while minimizing communication cost

机译:接近最佳的传感器放置:在最大化信息的同时,将通信成本降至最低

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When monitoring spatial phenomena with wireless sensor networks, selecting the best sensor placements is a fundamental task. Not only should the sensors be informative, but they should also be able to communicate efficiently. In this paper, we present a data-driven approach that addresses the three central aspects of this problem: measuring the predictive quality of a set of sensor locations (regardless of whether sensors were ever placed at these locations), predicting the communication cost involved with these placements, and designing an algorithm with provable quality guarantees that optimizes the NP-hard tradeoff. Specifically, we use data from a pilot deployment to build non-parametric probabilistic models called Gaussian Processes (GPs) both for the spatial phenomena of interest and for the spatial variability of link qualities, which allows us to estimate predictive power and communication cost of un-sensed locations. Surprisingly, uncertainty in the representation of link qualities plays an important role in estimating communication costs. Using these models, we present a novel, polynomial-time, data-driven algorithm, pSPIEL, which selects Sensor Placements at Informative and cost-Effective Locations. Our approach exploits two important properties of this problem: submodularity, formalizing the intuition that adding a node to a small deployment can help more than adding a node to a large deployment; and locality, under which nodes that are far from each other provide almost independent information. Exploiting these properties, we prove strong approximation guarantees for our pSPlEL approach. We also provide extensive experimental validation of this practical approach on several real-world placement problems, and built a complete system implementation on 46 Tmote Sky motes, demonstrating significant advantages over existing methods.
机译:当使用无线传感器网络监视空间现象时,选择最佳传感器位置是一项基本任务。传感器不仅应该提供信息,而且还应该能够有效地进行通信。在本文中,我们提出了一种数据驱动的方法,该方法解决了此问题的三个主要方面:测量一组传感器位置的预测质量(无论传感器是否曾经放置在这些位置),预测与之相关的通信成本这些位置,并设计一种具有可证明质量的算法,可以优化NP硬性折衷。具体来说,我们使用试点部署中的数据来构建称为高斯过程(GPs)的非参数概率模型,以用于关注的空间现象和链路质量的空间变异性,这使我们能够估算网络的预测能力和通信成本感应的位置。出乎意料的是,链路质量表示中的不确定性在估计通信成本中起着重要作用。使用这些模型,我们提出了一种新颖的,多项式时间,数据驱动的算法pSPIEL,该算法选择了信息位置和成本有效位置的传感器位置。我们的方法利用了此问题的两个重要属性:次模块化,将直觉形式化为:将节点添加到小型部署中,可以比将节点添加到大型部署中有更多帮助;和局部性,彼此相距较远的节点可提供几乎独立的信息。利用这些特性,我们证明了我们的pSPlEL方法具有很强的近似保证。我们还针对几种实际的放置问题对这种实用方法进行了广泛的实验验证,并在46个Tmote Sky微粒上构建了完整的系统实现,证明了与现有方法相比的显着优势。

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