Random sampling in collaborative and distributed mobile sensor networks utilizing compressive sensing for scalar field mapping

M. Nguyen, K. Teague
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引用次数: 14

Abstract

In this paper, we propose an algorithm supporting distributed mobile sensor networks (MSN) for scalar field mapping that has many applications such as environmental monitoring or battle field surveillance, etc. We exploit the integration between compressive sensing (CS) and the collaboration of the mobile sensors. In the algorithm each distributed mobile sensor measures at random positions in the sensing area to create one CS measurement and finally shares the measurement with others by communicating through its neighbors. The convergence time is considered while the sensors exchange their measurements. After all the sensors achieve the number of CS measurements needed, a CS recovery algorithm is applied at each mobile sensor to reconstruct sensory readings from all the positions in the sensing area that need to be observed. The total communication energy consumption is formulated, analyzed and simulated.
基于压缩感知的协同和分布式移动传感器网络中的随机抽样标量场映射
本文提出了一种支持分布式移动传感器网络(MSN)的标量场映射算法,该算法在环境监测或战场监视等领域具有广泛的应用。我们利用压缩感知(CS)和移动传感器协作之间的集成。在该算法中,每个分布式移动传感器在传感区域的随机位置进行测量,形成一个CS测量值,最后通过相邻传感器的通信与其他传感器共享测量值。考虑了传感器交换测量值时的收敛时间。在所有传感器达到所需的CS测量数量后,在每个移动传感器上应用CS恢复算法,从需要观察的传感区域的所有位置重建感官读数。对总通信能耗进行了计算、分析和仿真。
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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