We consider a centralized detection problem where sensors experience noisy measurements and intermittent connectivity to a centralized fusion center. The sensors collaborate locally within predefined sensor clusters and fuse their noisy sensor data to reach a common local estimate of the detected event in each cluster. The connectivity of each sensor cluster is intermittent and depends on the available communication opportunities of the sensors to the fusion center. Upon receiving the estimates from all the connected sensor clusters the fusion center fuses the received estimates to make a final determination regarding the occurrence of the event across the deployment area. We refer to this hybrid communication scheme as a \emph{cloud-cluster} architecture. We propose a method for optimizing the decision rule for each cluster and analyzing the expected detection performance resulting from our hybrid scheme. Our method is tractable and addresses the high computational complexity caused by heterogeneous sensors' and clusters' detection quality, heterogeneity in their communication opportunities, and non-convexity of the loss function. Our analysis shows that clustering the sensors provides resilience to noise in the case of low sensor communication probability with the cloud. For larger clusters, a steep improvement in detection performance is possible even for a low communication probability by using our cloud-cluster architecture.
翻译:传感器在预定的传感器集群内进行当地协作,并结合其噪音传感器数据,以达到每个集群中检测到的事件的共同局部估计。每个传感器集群的连接是间歇的,取决于传感器与聚合中心的通信机会。收到所有连接的传感器集群的估计数后,聚变中心将所收到的估计数结合在一起,以便最终确定整个部署区发生的事件。我们把这一混合通信计划称为“hemph{cloud-集束”结构。我们提出了优化每个集群的决策规则的方法,并分析了我们混合计划产生的预期探测性能。我们的方法是可移植的,并解决了由于多式传感器和集集探测质量造成的高计算复杂性、其通信机会的异质性以及损失功能的非共性。我们的分析表明,如果传感器与云的传感通信概率较低,传感器的组合能够对噪音产生弹性。对于更大的集群而言,即使使用云层结构的通信概率低,探测性能也有可能大幅改进。