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A Low-Power Architecture for Punctured Compressed Sensing and Estimation in Wireless Sensor-Nodes

机译:无线传感器节点中用于穿刺压缩感知和估计的低功耗架构

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In wireless sensor nodes with a tight power budget, minimizing both the amount of transmitted data and the complexity of the algorithms used for data compression are fundamental in achieving long battery life-time. Compressed Sensing (CS) has been proposed to process incoming samples and produce a smaller amount of data sufficient to reconstruct the original signal. We show that the architecture implementing parallel projection-based CS can be reused to realize a linear estimator able to minimize the transmitted data when the primary interest is the acquisition of a scalar feature of the signal rather than its entire profile. Further, we increase the energy-efficiency of the architecture by puncturing the sample stream which allows the duty-cycle of both the analog front-end and the analog-to-digital converter to be reduced. We found that conventional CS acquisition can be made more energy-efficient as it tolerates a certain amount of random puncturing, and also that more substantial power savings can be achieved when estimation is the target and undersampling is optimized by a suitable algorithm. In the latter case, the power consumption of all circuit blocks in the signal chain can be reduced by more than one order of magnitude with respect to the standard solution that samples and transmits raw data for off-board processing. The effectiveness of optimized undersampling is demonstrated in two case studies; first, the estimation of the amplitude of an electrical signal, and second, the estimation of the maximum solar radiation measured by a real-world sensor.
机译:在功率预算紧张的无线传感器节点中,最大限度地减少传输数据量和数据压缩算法的复杂性对于延长电池使用寿命至关重要。已经提出了压缩感测(CS)来处理进入的样本并产生足以重建原始信号的少量数据。我们表明,当主要关注的是获取信号的标量特征而不是整个轮廓时,可以重用实现基于并行投影的CS的体系结构,以实现能够将传输数据最小化的线性估计器。此外,我们通过对样本流进行打孔来提高体系结构的能源效率,这可以降低模拟前端和模数转换器的占空比。我们发现,传统的CS采集可以忍受一定数量的随机穿孔,因此可以提高能源效率,并且当以估计为目标并且通过适当的算法优化欠采样时,可以节省更多的电能。在后一种情况下,相对于采样和传输原始数据以进行车外处理的标准解决方案,信号链中所有电路块的功耗可以降低一个数量级以上。在两个案例研究中证明了优化欠采样的有效性。首先,估算电信号的幅度,其次,估算实际传感器测得的最大太阳辐射。

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