Distributed Detection in Ad Hoc Networks Through Quantized Consensus
Shengyu Zhu, Biao Chen

TL;DR
This paper demonstrates that in large sensor networks, nodes using simple one-bit quantizers and a consensus algorithm can asymptotically match the detection performance of a centralized system across multiple detection frameworks.
Contribution
It introduces a novel one-bit quantizer design and consensus approach that achieves optimal asymptotic detection performance in distributed sensor networks.
Findings
Achieves optimal asymptotic detection performance with one-bit quantizers.
Designs a deterministic quantizer with controllable threshold for consensus.
Non-asymptotic error probabilities can be made arbitrarily close to centralized ones.
Abstract
We study 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: the Bayesian criterion where the maximum a posteriori detector is optimal, the Neyman-Pearson criterion with a constant type-I error probability constraint, and the Neyman-Pearson criterion with an exponential type-I error probability constraint. Leveraging recent development in…
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