Quantized fusion rules for energy-based distributed detection in wireless sensor networks

Edmond Nurellari, S. Aldalahmeh, M. Ghogho, D. McLernon
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引用次数: 11

Abstract

We consider the problem of soft decision fusion in a bandwidth-constrained wireless sensor network (WSN). The WSN is tasked with the detection of an intruder transmitting an unknown signal over a fading channel. A binary hypothesis testing is performed using the soft decision of the sensor nodes (SNs). Using the likelihood ratio test, the optimal soft fusion rule at the fusion center (FC) has been shown to be the weighted distance from the soft decision mean under the null hypothesis. But as the optimal rule requires a-priori knowledge that is difficult to attain in practice, suboptimal fusion rules are proposed that are realizable in practice. We show how the effect of quantizing the test statistic can be mitigated by increasing the number of SN samples, i.e., bandwidth can be traded off against increased latency. The optimal power and bit allocation for the WSN is also derived. Simulation results show that SNs with good channels are allocated more bits, while SNs with poor channels are censored.
基于能量的无线传感器网络分布式检测的量化融合规则
研究了带宽受限无线传感器网络中的软决策融合问题。无线传感器网络的任务是检测在衰落信道上传输未知信号的入侵者。利用传感器节点(SNs)的软判决进行二元假设检验。利用似然比检验,证明了融合中心(FC)的最优软融合规则为零假设下与软决策均值的加权距离。但由于最优规则需要先验知识,在实践中难以获得,因此提出了在实践中可实现的次最优融合规则。我们展示了如何通过增加SN样本的数量来减轻量化测试统计量的影响,也就是说,可以用带宽来抵消增加的延迟。给出了无线传感器网络的最佳功率和位分配方法。仿真结果表明,具有良好通道的SNs被分配了更多的比特,而具有较差通道的SNs被截除。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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