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首页> 外文期刊>IEEE Transactions on Aerospace and Electronic Systems >Multibit Decentralized Detection Through Fusing Smart and Dumb Sensors Based on Rao Test
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Multibit Decentralized Detection Through Fusing Smart and Dumb Sensors Based on Rao Test

机译:基于RAO测试的熔化智能和哑光传感器多维测分散检测

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摘要

We consider decentralized detection of an unknown signal corrupted by zero-mean unimodal noise via wireless sensor networks. We assume the presence of both smart and dumb sensors: the former transmit unquantized measurements, whereas the latter employ multilevel quantizations (before transmission through binary symmetric channels) in order to cope with energy and/or bandwidth constraints. The data are received by a fusion center, which relies on a proposed Rao test, as a simpler alternative to the generalized likelihood ratio test (GLRT). The asymptotic performance analysis of the multibit Rao test is provided and exploited to propose a (signal-independent) quantizer design approach by maximizing the noncentrality parameter of the test-statistic distribution. Since the latter is a nonlinear and nonconvex function of the quantization thresholds, we employ the particle swarm optimization algorithm for its maximization. Numerical results are provided to show the effectiveness of the Rao test in comparison to the GLRT and the boost in performance obtained by (multiple) threshold optimization. Asymptotic performance is also exploited to define detection gain measures allowing to assess gain arising from use of dumb sensors and increasing their quantization resolution.
机译:我们考虑通过无线传感器网络通过无线传感器网络的零均匀噪声损坏的未知信号的分散检测。我们假设存在智能和哑的传感器:前者传输不调节的测量,而后者采用多级量化(在通过二进制对称通道传输之前)以便应对能量和/或带宽约束。数据由融合中心接收,融合中心依赖于提出的RAO测试,作为广义似然比测试(GLRT)的更简单替代方案。提供了多维特RAO测试的渐近性能分析,并利用了通过最大化测试统计分布的非中心分参数来提出(信号独立于信号)量化器设计方法。由于后者是量化阈值的非线性和非凸起函数,因此我们采用粒子群优化算法的最大化。提供了数值结果以显示RAO试验的有效性与GLRT和通过(多)阈值优化获得的性能的增压和升压相比。还利用渐近性能来定义检测增益措施,允许评估使用哑传道器产生的增益并增加其量化分辨率。

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