基于压缩感知的无线传感器网络节能随机路由

M. Nguyen, K. Teague
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引用次数: 14

摘要

在无线传感器网络(WSN)中,使用随机漫步(RW)进行数据采集已被证明是一种节能的方法。压缩感知(CS)与RW的融合为无线传感器网络的数据采集提供了一些不同的观点。基于少量的CS测量(M),可以在基站(M≪N)中恢复来自N个节点的所有原始传感器读数。在本文中,我们从理论和实践的角度分析了RW。我们研究了探索测量矩阵和设置RWs长度之间的权衡,以实现wsn的能量消耗最小。此外,我们还制定了总功耗,其中包含每个RW的平均消耗能量和RW通过中间节点以多跳方式将测量值发送到基站(BS)的平均消耗能量。我们分析并提出了网络消耗最低能量的最佳情况,以帮助传感器延长其使用寿命或网络连接。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Compressive sensing based energy-efficient random routing in wireless sensor networks
Using random walk (RW) to collect data in wireless sensor networks (WSN) has been proven to be an energy-efficient method. The integration between compressive sensing (CS) and RW provides some different points of view about data collection in WSNs. Based on a small certain number of CS measurements (M), all raw sensor readings from N nodes can be recovered at the base-station (M ≪ N). In this paper, we analyze RW based on theory and practice. We investigate the trade-off between exploring the measurement matrix and setting up the length for RWs to achieve the energy consumption smallest for WSNs. In addition, we formulate the total power consumption that contains the average consumed energy of each RW and the average consumed energy to send measurements in multi-hop through intermediate nodes from RWs to the base-station (BS). We analyze and suggest the optimal case for the networks to spend the lowest energy that helps sensors to prolong their lifetime or the network connection.
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