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Optimization of decentralized random field estimation networks under communication constraints through Monte Carlo methods

机译:蒙特卡罗方法在通信约束下的分散随机场估计网络优化

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摘要

We propose a new methodology for designing decentralized random field estimation schemes that takes the tradeoff between the estimation accuracy and the cost of communications into account. We consider a sensor network in which nodes perform bandwidth limited two-way communications with other nodes located in a certain range. The in-network processing starts with each node measuring its local variable and sending messages to its immediate neighbors followed by evaluating its local estimation rule based on the received messages and measurements. Local rule design for this two-stage strategy can be cast as a constrained optimization problem with a Bayesian risk capturing the cost of transmissions and penalty for the estimation errors. A similar problem has been previously studied for decentralized detection. We adopt that framework for estimation, however, the corresponding optimization schemes involve integral operators that are impossible to evaluate exactly, in general. We employ an approximation framework using Monte Carlo methods and obtain an optimization procedure based on particle representations and approximate computations. The procedure operates in a message-passing fashion and generates results for any distributions if samples can be produced from, e.g., the marginals. We demonstrate graceful degradation of the estimation accuracy as communication becomes more costly. (C) 2014 Elsevier Inc. All rights reserved.
机译:我们提出了一种设计分散式随机场估计方案的新方法,该方法考虑了估计精度和通信成本之间的折衷。我们考虑一个传感器网络,其中节点与位于一定范围内的其他节点执行带宽受限的双向通信。网络内处理从每个节点测量其局部变量并将消息发送到其直接邻居开始,然后根据接收到的消息和测量结果评估其局部估计规则。这种两阶段策略的本地规则设计可以被视为具有贝叶斯风险的约束优化问题,该贝叶斯风险捕获了传输成本和估计误差的损失。先前已经对分散检测研究了类似的问题。我们采用该框架进行估算,但是,相应的优化方案通常涉及无法精确评估的积分算子。我们使用蒙特卡洛方法采用近似框架,并基于粒子表示和近似计算获得优化过程。如果可以从例如边际产生样本,则该过程以消息传递的方式进行操作并产生任何分布的结果。随着通信变得越来越昂贵,我们证明了估计精度的适度下降。 (C)2014 Elsevier Inc.保留所有权利。

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