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A bayesian multilevel modeling approach for data query in wireless sensor networks

机译:一种用于无线传感器网络中数据查询的贝叶斯多级建模方法

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摘要

In power-limited Wireless Sensor Network (WSN), it is important to reduce the communication load in order to achieve energy savings. This paper applies a novel statistic method to estimate the parameters based on the realtime data measured by local sensors. Instead of transmitting large real-time data, we proposed to transmit the small amount of dynamic parameters by exploiting both temporal and spatial correlation within and between sensor clusters. The temporal correlation is built on the level-1 Bayesian model at each sensor to predict local readings. Each local sensor transmits their local parameters learned from historical measurement data to their cluster heads which account for the spatial correlation and summarize the regional parameters based on level-2 Bayesian model. Finally, the cluster heads transmit the regional parameters to the sink node. By utilizing this statistical method, the sink node can predict the sensor measurements within a specified period without directly communicating with local sensors. We show that this approach can dramatically reduce the amount of communication load in data query applications and achieve significant energy savings.
机译:在功率受限的无线传感器网络(WSN)中,重要的是减少通信负载以实现节能。本文采用一种新颖的统计方法,根据本地传感器测得的实时数据估算参数。代替传输大量的实时数据,我们建议通过利用传感器集群内部和集群之间的时间和空间相关性来传输少量的动态参数。时间相关性建立在每个传感器的1级贝叶斯模型上,以预测本地读数。每个本地传感器将从历史测量数据中学到的本地参数传输到它们的簇头,这些簇头负责空间相关性,并基于2级贝叶斯模型总结区域参数。最后,簇头将区域参数传输到宿节点。通过使用这种统计方法,接收器节点可以在指定时段内预测传感器测量,而无需直接与本地传感器通信。我们证明了这种方法可以大大减少数据查询应用程序中的通信负载,并可以节省大量能源。

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