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Implementation of a compressive sampling scheme for wireless sensors to achieve energy efficiency in a structural health monitoring system

机译:在结构健康监测系统中实现无线传感器压缩采样方案以实现能效

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Wireless sensors have emerged to offer low-cost sensors with impressive functionality (e.g., data acquisition, computing, and communication) and modular installations. Such advantages enable higher nodal densities than tethered systems resulting in increased spatial resolution of the monitoring system. However, high nodal density comes at a cost as huge amounts of data are generated, weighing heavy on power sources, transmission bandwidth, and data management requirements, often making data compression necessary. The traditional compression paradigm consists of high rate (>Nyquist) uniform sampling and storage of the entire target signal followed by some desired compression scheme prior to transmission. The recently proposed compressed sensing (CS) framework combines the acquisition and compression stage together, thus removing the need for storage and operation of the full target signal prior to transmission. The effectiveness of the CS approach hinges on the presence of a sparse representation of the target signal in a known basis, similarly exploited by several traditional compressive sensing applications today (e.g., imaging, MRI). Field implementations of CS schemes in wireless SHM systems have been challenging due to the lack of commercially available sensing units capable of sampling methods (e.g., random) consistent with the compressed sensing framework, often moving evaluation of CS techniques to simulation and post-processing. The research presented here describes implementation of a CS sampling scheme to the Narada wireless sensing node and the energy efficiencies observed in the deployed sensors. Of interest in this study is the compressibility of acceleration response signals collected from a multi-girder steel-concrete composite bridge. The study shows the benefit of CS in reducing data requirements while ensuring data analysis on compressed data remain accurate.
机译:无线传感器已经出现,以提供具有令人印象深刻的功能(例如,数据采集,计算和通信)和模块化安装的低成本传感器。与系留系统相比,这些优点可实现更高的节点密度,从而提高了监视系统的空间分辨率。但是,高节点密度的代价是要生成大量数据,从而给电源,传输带宽和数据管理要求带来沉重负担,通常需要进行数据压缩。传统的压缩范例包括对整个目标信号进行高速率(> Nyquist)均匀采样和存储,然后在传输之前进行一些所需的压缩方案。最近提出的压缩感测(CS)框架将采集和压缩阶段结合在一起,从而消除了在传输之前存储和操作完整目标信号的需求。 CS方法的有效性取决于在已知基础上目标信号的稀疏表示的存在,类似于当今几种传统的压缩感测应用(例如,成像,MRI)所利用的。由于缺乏可与压缩的感测框架相一致的采样方法(例如,随机的)的商业化感测单元,无线SHM系统中的CS方案的现场实现具有挑战性,经常将CS技术的评估转移到仿真和后处理中。此处介绍的研究描述了对Narada无线传感节点的CS采样方案的实现以及在部署的传感器中观察到的能效。在这项研究中,有趣的是从多梁钢混凝土组合桥收集的加速度响应信号的可压缩性。研究表明,CS可以减少数据需求,同时确保对压缩数据的数据分析保持准确,这是有益的。

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