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首页> 外文期刊>IEEE Transactions on Information Theory >Distributed Detection in Ad Hoc Networks Through Quantized Consensus
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Distributed Detection in Ad Hoc Networks Through Quantized Consensus

机译:Ad Hoc网络中通过量化共识进行分布式检测

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摘要

We study the asymptotic performance of distributed detection in large scale connected sensor networks. Contrasting to the canonical parallel network where a single node has access to local decisions from all other nodes, each node can only exchange information with its direct neighbors in the present setting. We establish that, with each node employing an identical one-bit quantizer for local information exchange, a novel consensus reaching approach can achieve the optimal asymptotic performance of centralized detection as the network size scales. The statement is true under three different detection frameworks: 1) the Bayesian criterion where the maximum a posteriori detector is optimal; 2) the Neyman-Pearson criterion with a constant type-I error probability constraint; and 3) the Neyman-Pearson criterion with an exponential type-I error probability constraint. Leveraging recent development in distributed consensus reaching using bounded quantizers with possibly unbounded data (which are log-likelihood ratios of local observations in the context of distributed detection), we design a one-bit deterministic quantizer with a controllable threshold that leads to desirable consensus error bounds. The obtained bounds are key to establishing the optimal asymptotic detection performance. In addition, we examine the non-asymptotic performance of the proposed approach and show that the type-I and type-II error probabilities at each node can be made arbitrarily close to the centralized ones simultaneously when a continuity condition is satisfied.
机译:我们研究了大规模连接传感器网络中分布式检测的渐近性能。与单个节点可以访问所有其他节点的本地决策的规范并行网络相反,在当前设置下,每个节点只能与其直接邻居交换信息。我们确定,在每个节点采用相同的一位量化器进行本地信息交换的情况下,随着网络规模的扩大,一种新颖的共识达成方法可以实现集中检测的最佳渐近性能。该陈述在三个不同的检测框架下是正确的:1)最大后验检测器最优的贝叶斯准则; 2)具有恒定I型错误概率约束的Neyman-Pearson准则; 3)具有指数I型错误概率约束的Neyman-Pearson准则。利用最近的发展,即使用有界量化器和可能无界的数据(在分布式检测的情况下,局部观测的对数似然比)来实现分布式共识,我们设计了一个可确定阈值的一比特确定性量化器,该阈值导致了理想的共识误差界限。获得的边界是建立最佳渐近检测性能的关键。另外,我们研究了所提方法的非渐近性能,并表明,当满足连续性条件时,可以同时使每个节点的I型错误和II型错误概率接近集中式错误概率。

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