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A Configurable 12–237 kS/s 12.8 mW Sparse-Approximation Engine for Mobile Data Aggregation of Compressively Sampled Physiological Signals

机译:可配置的12–237 kS / s 12.8 mW稀疏近似引擎,用于压缩采样的生理信号的移动数据聚合

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摘要

Compressive sensing (CS) is a promising technology for realizing low-power and cost-effective wireless sensor nodes (WSNs) in pervasive health systems for 24/7 health monitoring. Due to the high computational complexity (CC) of the reconstruction algorithms, software solutions cannot fulfill the energy efficiency needs for real-time processing. In this paper, we present a 12—237 kS/s 12.8 mW sparse-approximation (SA) engine chip that enables the energy-efficient data aggregation of compressively sampled physiological signals on mobile platforms. The SA engine chip integrated in 40 nm CMOS can support the simultaneous reconstruction of over 200 channels of physiological signals while consuming of a smartphone’s power budget. Such energy-efficient reconstruction enables two-to-three times energy saving at the sensor nodes in a CS-based health monitoring system as compared to traditional Nyquist-based systems, while providing timely feedback and bringing signal intelligence closer to the user.
机译:压缩感测(CS)是一种有前途的技术,可在普及型医疗系统中实现24/7全天候健康监控的低功耗且经济高效的无线传感器节点(WSN)。由于重建算法的计算复杂度(CC)高,软件解决方案无法满足实时处理的能效需求。在本文中,我们提出了一种12-237 kS / s 12.8 mW的稀疏逼近(SA)引擎芯片,该芯片可在移动平台上对压缩采样的生理信号进行节能的数据聚合。集成在40纳米CMOS中的SA引擎芯片可以支持同时重建200多个生理信号通道,同时消耗智能手机的功率预算。与传统的基于Nyquist的系统相比,这种节能高效的重构使基于CS的健康监控系统中传感器节点的能源节省了2-3倍,同时提供了及时的反馈并使信号智能更贴近用户。

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