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Efficient In-Network Processing Through Local Ad-Hoc Information Coalescence

机译:通过本地Ad-Hoc信息合并进行有效的网络内处理

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We consider in-network processing via local message passing. The considered setting involves a set of sensors each of which can communicate with a subset of other sensors. There is no designated fusion center; instead sensors exchange messages on the associated communication graph to obtain a global estimate. We propose an asynchronous distributed algorithm based on local fusion between neighboring sensors. The algorithm differs from other related schemes such as gossip algorithms in that after each local fusion one of the associated sensors ceases its activity until it is re-activated by reception of messages from a neighboring sensor. This leads to substantial gains in energy expenditure over existing local ad-hoc messaging algorithms such as gossip and belief propagation algorithms. Our results are general and we focus on some explicit graphs, namely geometric random graphs, which have been successfully used to model wireless networks, and d-dimensional lattice torus with n nodes, which behave exactly like mesh networks as n gets large. We quantify the time, message and energy scaling of the algorithm, where the analysis is built upon the coalescing random walks. In particular, for the planar torus the completion time of the algorithm is Θ(n log n) and energy requirement per sensor node is O((log n)~2) and for 3-d torus these quantities are Θ(n) and O(log n) respectively. The energy requirement of the algorithm is thus scalable, and interestingly there appears little practical incentive to consider higher dimensions. Furthermore, for the planar torus the algorithm exhibits a very favorable tradeoff relative to gossip algorithms whose time and energy requirements are shown here to be Ω(n). Also, the proposed algorithm can be generalized to robus-tify against packet losses and permanent node failures without entailing significant energy overhead. The paper concludes with numerical results.
机译:我们考虑通过本地消息传递进行网络内处理。所考虑的设置涉及一组传感器,每个传感器可以与其他传感器的子集通信。没有指定的融合中心;相反,传感器在关联的通信图上交换消息以获得全局估计。我们提出了一种基于相邻传感器之间局部融合的异步分布式算法。该算法与诸如闲话算法之类的其他相关方案的不同之处在于,在每次局部融合之后,关联的传感器之一停止其活动,直到通过接收来自相邻传感器的消息将其重新激活为止。与现有的本地临时消息传递算法(例如八卦和信念传播算法)相比,这导致了能源支出的大幅增长。我们的结果是一般性的,我们将重点放在一些显式图上,即已成功用于无线网络建模的几何随机图,以及具有n个节点的d维晶格环面,当n变大时,其行为就像网格网络。我们对算法的时间,消息和能量缩放进行了量化,其中分析是基于合并的随机游动进行的。特别是,对于平面环面,算法的完成时间为Θ(n log n),每个传感器节点的能量需求为O((log n)〜2),对于3-d环面,这些量为Θ(n)和O(log n)分别。因此,算法的能量需求是可扩展的,有趣的是,几乎没有实际的动机去考虑更高的维度。此外,对于平面环面,该算法相对于八卦算法表现出非常有利的折衷,而八卦算法的时间和能量需求在此处显示为Ω(n)。而且,所提出的算法可以被普遍化以针对分组丢失和永久节点故障进行鲁棒化,而不会导致大量的能量开销。本文以数值结果作为结论。

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