Optimality of expectation propagation based distributed estimation for wireless sensor network initialization

J. MacLaren Walsh, S. Ramanan, P. Regalia
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引用次数: 4

Abstract

We establish that expectation propagation (EP), under some mild requirements and when properly organized, provides sensors with optimal Bayes estimators during the initialization phase of a large randomly deployed wireless sensor network, regardless of the cost function chosen. We are considering the initialization phase to be the period during which the sensors do not yet know their locations and channel/interference strengths, and thus must use random sleep schedules until they have estimated them. During this initialization phase, any other scheme for distributed Bayesian estimation utilizing communication among the same nodes must have equal or worse performance to EP. We discuss the sub-optimality of some other proposed schemes for distributed estimation in sensor networks: consensus propagation and distributed adaptive filtering, arguing that these techniques may presently be seen as seeking suboptimal performance among particular cost functions and with a goal of reduced computation and complexity relative to EP.
基于期望传播的分布式估计无线传感器网络初始化的最优性
我们建立了期望传播(EP),在一些温和的要求和适当的组织下,在一个大型随机部署的无线传感器网络的初始化阶段为传感器提供最优的贝叶斯估计,而不管选择的代价函数是什么。我们认为初始化阶段是传感器还不知道它们的位置和信道/干扰强度的时期,因此必须使用随机睡眠时间表,直到它们估计它们。在此初始化阶段,任何其他利用相同节点之间通信的分布式贝叶斯估计方案必须具有与EP相同或更差的性能。我们讨论了传感器网络中分布式估计的其他一些提议方案的次优性:共识传播和分布式自适应滤波,认为这些技术目前可能被视为在特定成本函数中寻求次优性能,并以减少相对于EP的计算和复杂性为目标。
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