Distributed detection of correlated random processes under energy and bandwidth constraints

Sensor Array and Multichannel Signal Processing Workshop(2014)

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摘要
We analyze a binary hypothesis testing problem built on a wireless sensor network (WSN). Using Large Deviation Theory (LDT), we compute the probability error exponents of a distributed scheme for detecting a correlated circularly-symmetric complex Gaussian process under the Neyman-Pearson framework. Using an analog scheme, the sensors transmit scaled versions of their measurements several times through a multiple access channel (MAC) to reach the fusion center (FC), whose task is to decide whether the process is present or not. In the analysis, we consider the energy constraint on each node transmission. We show that the proposed distributed scheme requires relatively few MAC channel uses to achieve the centralized error exponents when detecting correlated Gaussian processes.
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关键词
Gaussian processes,error statistics,multi-access systems,wireless sensor networks,FC,LDT,MAC,MAC channel,Neyman-Pearson framework,WSN,analog scheme,bandwidth constraint,binary hypothesis testing problem,centralized error exponent,correlated circularly-symmetric complex Gaussian process detection,correlated random process,distributed detection,distributed scheme,energy constraint,fusion center,large-deviation theory,multiple-access channel,node transmission,probability error exponent,wireless sensor network
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