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Channel-Aware Decision Fusion With Unknown Local Sensor Detection Probability

机译:具有未知本地传感器检测概率的通道感知决策融合

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摘要

Existing channel-aware decision fusion schemes assume that the local detection probability is known at the fusion center (FC). However, this paradigm ignores the possibility of unknown sensor alarm responses to the occurrence of events. Accordingly, this correspondence examines the binary decision fusion problem under the assumption that the local detection probability is unknown. Treating the communication links between the nodes and the FC as binary symmetric channels and assuming that the sensor nodes transmit simple one-bit reports to the FC, the global fusion rule is formulated initially in terms of the generalized likelihood ratio test (GLRT). Adopting the assumption of a high SNR regime, an approximate maximum likelihood (ML) estimate is derived for the unknown parameter required to implement the GLRT that is affine in the received data. The GLRT-based formulation is intuitively straightforward, but does not permit a tractable performance analysis. Therefore, motivated by the affine nature of the approximate ML solution, a simple alternative fusion rule is proposed in which the test statistic remains affine in the received data. It is shown that the proposed fusion rule facilitates the analytic characterization of the channel effect on the global detection performance. In addition, given a reasonable range of the local detection probability, it is shown that the global detection probability can be improved by reducing the total link error. Thus, a sensor power allocation scheme is proposed for enhancing the detection performance by improving the link quality. Simulation results show that: 1) the alternative fusion rule outperforms the GLRT; and 2) the detection performance of the fusion rule is further improved when the proposed power loading method is applied.
机译:现有的感知信道的决策融合方案假定在融合中心(FC)知道本地检测概率。但是,这种范例忽略了未知传感器对事件发生的响应的可能性。因此,该对应关系在本地检测概率未知的假设下检查二进制决策融合问题。将节点和FC之间的通信链接视为二进制对称通道,并假定传感器节点将简单的一位报告发送给FC,则首先根据广义似然比测试(GLRT)制定全局融合规则。采用高SNR体制的假设,为实现在接收数据中仿射的GLRT所需的未知参数得出近似最大似然(ML)估计。基于GLRT的公式在直观上很简单,但不允许进行易处理的性能分析。因此,受近似ML解的仿射性质的启发,提出了一种简单的替代融合规则,其中测试统计量在接收到的数据中保持仿射。结果表明,所提出的融合规则有助于分析信道特征对全局检测性能的影响。另外,在给定局部检测概率合理范围的情况下,表明可以通过减小总链路误差来提高全局检测概率。因此,提出了一种传感器功率分配方案,以通过改善链路质量来增强检测性能。仿真结果表明:1)替代融合规则优于GLRT; 2)当采用提出的功率加载方法时,融合规则的检测性能进一步提高。

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