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D-DSC: Decoding Delay-based Distributed Source Coding for Internet of Sensing Things

机译:D-DSC:用于感知物联网的基于延迟的解码分布式源编码

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摘要

Spatial correlation between densely deployed sensor nodes in a wireless sensor network (WSN) can be exploited to reduce the power consumption through a proper source coding mechanism such as distributed source coding (DSC). In this paper, we propose the Decoding Delay-based Distributed Source Coding (D-DSC) to improve the energy efficiency of the classical DSC by employing the decoding delay concept which enables the use of the maximum correlated portion of sensor samples during the event estimation. In D-DSC, network is partitioned into clusters, where the clusterheads communicate their uncompressed samples carrying the side information, and the cluster members send their compressed samples. Sink performs joint decoding of the compressed and uncompressed samples and then reconstructs the event signal using the decoded sensor readings. Based on the observed degree of the correlation among sensor samples, the sink dynamically updates and broadcasts the varying compression rates back to the sensor nodes. Simulation results for the performance evaluation reveal that D-DSC can achieve reliable and energy-efficient event communication and estimation for practical signal detection/estimation applications having massive number of sensors towards the realization of Internet of Sensing Things (IoST).
机译:可以利用无线传感器网络(WSN)中密集部署的传感器节点之间的空间相关性,通过适当的源代码编码机制(例如分布式源代码编码(DSC))来降低功耗。在本文中,我们提出了基于解码延迟的分布式源编码(D-DSC),以通过采用解码延迟概念来提高经典DSC的能量效率,该解码延迟概念使得能够在事件估计期间使用传感器样本的最大相关部分。在D-DSC中,网络被划分为多个群集,在这些群集中,群集头传送其附带边信息的未压缩样本,而群集成员发送其压缩样本。 Sink对压缩和未压缩样本执行联合解码,然后使用解码后的传感器读数重建事件信号。根据观察到的传感器样本之间的相关程度,接收器会动态更新并向传感器节点广播变化的压缩率。性能评估的仿真结果表明,对于具有大量传感器的实际信号检测/估计应用,D-DSC可以实现可靠且节能的事件通信和估计,以实现传感物联网(IoST)。

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