Bandwidth-Constrained MAP Estimation for Wireless Sensor Networks

S.F.A. Shah, A. Ribeiro, G. Giannakis
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引用次数: 23

Abstract

We deal with distributed parameter estimation algorithms for use in wireless sensor networks (WSNs) with a fusion center when only quantized observations are available due to power/bandwidth constraints. The main goal of the paper is to design efficient estimators when the parameter can be modelled as random with a priori information. In particular, we develop maximum a posteriori (MAP) estimators for distributed parameter estimation and formulate the problem under different scenarios. We show that the pertinent objective function is concave and hence, the corresponding MAP estimator can be obtained efficiently through simple numerical maximization algorithms
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基于带宽约束的无线传感器网络MAP估计
我们处理了分布式参数估计算法,用于具有融合中心的无线传感器网络(WSNs),当由于功率/带宽限制只有量化观测可用时。本文的主要目标是设计有效的估计器,当参数可以用先验信息随机建模时。特别是,我们开发了用于分布参数估计的最大后验估计器(MAP),并在不同场景下阐述了问题。我们证明了相关的目标函数是凹的,因此,通过简单的数值最大化算法可以有效地获得相应的MAP估计量
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