基于联邦传感器网络的非合作分布式检测

D. Ciuonzo, Apoorva Chawla, P. Rossi
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引用次数: 0

摘要

在本研究中,我们通过联合两个无线传感器网络来解决非合作目标检测的挑战。目标是利用从感知和报告阶段实现的多样性。目标的存在会产生未知信号,该信号受传感器与目标之间的未知距离以及对称和单峰噪声的影响。融合中心负责做出更准确的决策,通过容易出错的二进制对称通道接收量化的传感器观测。这就导致了一个双侧检验问题,其中干扰参数(目标位置)仅在备选假设下存在。为了解决这个问题,我们提出了一个广义似然比检验,并设计了一个基于广义Rao检验的融合规则来降低计算复杂度。我们的结果证明了Rao测试在检测/误报率和计算简单性方面的有效性,突出了使用联邦设计系统的优势。
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Non-cooperative Distributed Detection via Federated Sensor Networks
In this study, we address the challenge of non-cooperative target detection by federating two wireless sensor networks. The objective is to capitalize on the diversity achievable from both sensing and reporting phases. The target's presence results in an unknown signal that is influenced by unknown distances between the sensors and target, as well as by symmetrical and single-peaked noise. The fusion center, responsible for making more accurate decisions, receives quantized sensor observations through error-prone binary symmetric channels. This leads to a two-sided testing problem with nuisance parameters (the target position) only present under the alternative hypothesis. To tackle this challenge, we present a generalized likelihood ratio test and design a fusion rule based on a generalized Rao test to reduce the computational complexity. Our results demonstrate the efficacy of the Rao test in terms of detection/false-alarm rate and computational simplicity, highlighting the advantage of designing the system using federation.
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