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首页> 外文期刊>Neural computing & applications >DLRDG: distributed linear regression-based hierarchical data gathering framework in wireless sensor network
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DLRDG: distributed linear regression-based hierarchical data gathering framework in wireless sensor network

机译:DLRDG:无线传感器网络中基于分布式线性回归的分层数据收集框架

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摘要

For many applications in wireless sensor network (WSN), the gathering of the holistic sensor measurements is difficult due to stringent constraint on network resources, frequent link, indeterminate variations in sensor readings, and node failures. As such, sensory data extraction and prediction technique emerge to exploit the spatiotemporal correlation of measurements and represent samples of the true state of the monitoring area at a minimal communication cost. In this paper, we present DLRDG strategy, a distributed linear regression-based data gathering framework in clustered WSNs. The framework can realize the approximate representation of original sensory data by less than a prespecified threshold while significantly reducing the communication energy requirements. Cluster-head (CH) nodes in WSN maintain linear regression model and use historical sensory data to perform estimation of the actual monitoring measurements. Rather than transmitting original measurements to sink node, CH nodes communicate constraints on the model parameters. Relying on the linear regression model, we improved the CH node function of representative EADEEG (an energy-aware data gathering protocol for WSNs) protocol for estimating the energy consumption of the proposed strategy, under specific settings. The theoretical analysis and experimental results show that the proposed framework can implement sensory data prediction and extracting with tolerable error bound. Furthermore, the designed framework can achieve more energy savings than other schemes and maintain the satisfactory fault identification rate on case of occurrence of the mutation sensor readings.
机译:对于无线传感器网络(WSN)中的许多应用而言,由于对网络资源的严格限制,频繁的链接,传感器读数的不确定变化以及节点故障,很难收集整体传感器的测量结果。这样,感觉数据提取和预测技术应运而生,以利用测量值的时空相关性,并以最小的通信成本表示监视区域真实状态的样本。在本文中,我们提出了DLRDG策略,这是一种在集群WSN中基于分布式线性回归的数据收集框架。该框架可以以小于预定阈值的方式实现原始感官数据的近似表示,同时显着降低通信能量需求。 WSN中的簇头(CH)节点维护线性回归模型,并使用历史感官数据执行对实际监视测量的估计。 CH节点不传递原始测量值到汇聚节点,而是传达对模型参数的约束。依靠线性回归模型,我们改进了代表性EADEEG(用于WSN的能源感知数据收集协议)协议的CH节点功能,以便在特定设置下估算所提议策略的能耗。理论分析和实验结果表明,所提出的框架可以在容许误差范围内实现感觉数据的预测和提取。此外,与其他方案相比,所设计的框架可实现更多的节能效果,并在发生突变传感器读数的情况下保持令人满意的故障识别率。

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