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Distributed two-step quantized fusion rules via consensus algorithm for distributed detection in wireless sensor networks

机译:通过共识算法的分布式两步量化融合规则,用于无线传感器网络中的分布式检测

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摘要

We consider the problem of distributed soft decision fusion in a bandwidth-constrained spatially uncorrelated wireless sensor network (WSN). The WSN is tasked with the detection of an intruder transmitting an unknown signal over a fading channel. Existing distributed consensus-based fusion rules algorithms only ensure equal combining of local data and in the case of bandwidth-constrained WSNs, we show that their performance is poor and does not converge across the sensor nodes (SNs). Motivated by this fact, we propose a two-step distributed quantized fusion rule algorithm where in the first step the SNs collaborate with their neighbors through error-free, orthogonal channels (the SNs exchange quantized information matched to the channel capacity of each link). In the second step, local 1-bit decisions generated in the first step are shared among neighbors to yield a consensus. A binary hypothesis testing is performed at any arbitrary SN to optimally declare the global decision. Simulations show that our proposed quantized two-step distributed detection algorithm approaches the performance of the unquantized centralized (with a fusion center) detector and its power consumption is shown to be 50% less than the existing (unquantized) conventional algorithm.
机译:我们考虑在带宽受限的空间不相关的无线传感器网络(WSN)中的分布式软决策融合问题。 WSN的任务是检测入侵者是否在衰落信道上传输未知信号。现有的基于分布式共识的融合规则算法只能确保本地数据的均等合并,并且在带宽受限的WSN情况下,我们证明了它们的性能很差,并且无法在传感器节点(SN)上收敛。基于这一事实,我们提出了一种两步分布式量化融合规则算法,其中第一步是SN通过无错误的正交信道与其邻居协作(SN交换与每个链路的信道容量匹配的量化信息)。在第二步中,第一步中生成的本地1位决策将在邻居之间共享,以产生共识。在任意任意SN处执行二进制假设检验,以最佳地声明全局决策。仿真表明,我们提出的量化的两步分布式检测算法接近未量化的集中式(带有融合中心)检测器的性能,并且其功耗比现有的(未量化的)常规算法低50%。

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