Prolonging Wireless Sensor Network Lifetime by Optimal Utilization of Compressive Sensing

Huseyin Ugur Yildiz, B. Tavlı
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引用次数: 3

Abstract

In a typical Wireless Sensor Network (WSN) application, sensor nodes gather data from the environment and convey the collected data towards the base station. It is possible to perform certain signal processing operations on raw data on each sensor node before transmission so that the amount of transmitted data bits is reduced. The amount of transmitted data usually depends on how much processing is performed on each node. Less processing results in more data to be transmitted and vice versa. However, more complex computation operations dissipate more energy. Hence, utilization of signal processing operations should be evaluated carefully by considering both their computation costs and the amount of data reduction they achieve. It is also possible to employ different signal processing techniques at different nodes, hence, optimal assignment of signal processing algorithms can be assessed at the network-level (i.e., all nodes adopts a single signal processing technique during the entire lifetime) or at the node-level (i.e., allowing different nodes to implement different solutions during lifetime). In this study, we develop a novel Mixed Integer Programming (MIP) framework to quantitatively investigate the effects of utilizing traditional transform coding (TC) based and compressive sensing (CS) based signal processing techniques (network-level and node- level) on WSN lifetime. We explore the parameter space consisting of network size, node density, and signal sparsity level through the numerical evaluations of the proposed novel MIP model.
优化利用压缩感知延长无线传感器网络寿命
在典型的无线传感器网络(WSN)应用中,传感器节点从环境中收集数据并将收集到的数据传输到基站。可以在传输之前对每个传感器节点上的原始数据执行某些信号处理操作,从而减少传输数据位的数量。传输的数据量通常取决于在每个节点上执行了多少处理。更少的处理导致更多的数据传输,反之亦然。然而,更复杂的计算操作消耗更多的能量。因此,应该仔细评估信号处理操作的利用率,同时考虑它们的计算成本和它们实现的数据减少量。也可以在不同节点采用不同的信号处理技术,因此可以在网络级(即所有节点在整个生命周期内采用单一信号处理技术)或节点级(即允许不同节点在生命周期内实现不同的解决方案)评估信号处理算法的最佳分配。在这项研究中,我们开发了一个新的混合整数规划(MIP)框架来定量研究利用传统的基于变换编码(TC)和基于压缩感知(CS)的信号处理技术(网络级和节点级)对WSN生存期的影响。通过对所提出的新型MIP模型的数值评估,我们探索了由网络大小、节点密度和信号稀疏度级别组成的参数空间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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