In-Network Iterative Distributed Estimation for Power-Constrained Wireless Sensor Networks

Santosh Shah, B. Beferull-Lozano
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引用次数: 8

Abstract

In this paper, we consider the problem of power-efficient distributed estimation of a localized event in the large-scale Wireless Sensor Networks (WSNs). In order to increase the power efficiency in these networks, we develop a joint optimization problem that involves both selecting a subset of active sensors and the routing structure so that the quality of estimation at a given querying node is the best possible subject to a total imposed communication cost. We first formulate our problem as an optimization problem and show that it is NP-Hard. Then, we design two algorithms: a fixed-tree relaxation-based and a novel and very efficient iterative distributed to optimize jointly the sensor selection and the routing structure. We also provide a lower bound for our optimization problem and show that our iterative distributed algorithm provides a performance that is close to this bound. Although there is no guarantee that the gap between this lower bound and the optimal solution of the main problem is always small, our numerical experiments support that this gap is actually very small in many cases. An important result from our work is the fact that because of the interplay between communication cost and gain in estimation when fusing measurements from different sensors, the traditional Shortest Path Tree (SPT) routing structure, widely used in practice, is no longer optimal, that is, our routing structures provide a better trade-off between the overall communication cost and estimation accuracy. Comparing to more conventional sensor selection and fixed routing algorithms, our proposed joint sensor selection and routing algorithms yield a significant amount of energy saving.
功率受限无线传感器网络的网络内迭代分布式估计
本文研究了大规模无线传感器网络(WSNs)中局部事件的高效分布式估计问题。为了提高这些网络的功率效率,我们开发了一个联合优化问题,包括选择有源传感器的子集和路由结构,以便在给定的查询节点上估计的质量在总强加的通信成本下是最好的。我们首先将我们的问题表述为一个优化问题,并证明它是np困难的。然后,我们设计了两种算法:一种基于固定树松弛的算法和一种新颖且非常高效的迭代分布算法,以共同优化传感器选择和路由结构。我们还为优化问题提供了一个下界,并表明我们的迭代分布式算法提供了接近这个下界的性能。虽然不能保证这个下界和主要问题的最优解之间的差距总是很小,但我们的数值实验表明,在许多情况下,这个差距实际上非常小。我们工作的一个重要结果是,当融合来自不同传感器的测量值时,由于通信成本和估计增益之间的相互作用,在实践中广泛使用的传统最短路径树(SPT)路由结构不再是最优的,也就是说,我们的路由结构在总体通信成本和估计精度之间提供了更好的权衡。与更传统的传感器选择和固定路由算法相比,我们提出的联合传感器选择和路由算法产生了大量的节能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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