Low Power Wireless Body Area Networks with Compressed sensing theory

Mohammadreza Balouchestani, K. Raahemifar, S. Krishnan
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引用次数: 28

Abstract

Wireless Body Area Networks (WBANs) consist of small intelligent wireless sensors attached on or implanted in the body. These wireless sensors are responsible for collecting, processing, and transmitting vital information such as: blood pressure, heart rate, respiration rate, electrocardiographic (ECG), electroencephalography (EEG) and oxygenation signals to provide continuous health monitoring with real-time feedback to the users and medical centers. In order to fully exploit the benefits of WBANs for important applications such as Electronic Health (EH), Mobile Health (MH), and Ambulatory Health Monitoring (AHM), the power consumption must be minimized. Since Wireless Nodes (WNs) in WBANs are usually driven by battery power consumption is the most important factor to determine the life of WBANs. This paper presents the applications of Compressed Sensing (CS) theory in WBANs. We have achieved networks with low-sampling rate and low-power consumption on a number of applications. A combination of CS theory to WBANs is the optimal solution for achieving the networks with low-sampling rate and low-power consumption. Our simulation results in ECG signals show that sampling rate can be reduced t0 25% and power consumption to 35% without sacrificing performances by employing the CS theory to WBANs.
基于压缩感知理论的低功耗无线体域网络
无线体域网络(wban)由附着在身体上或植入体内的小型智能无线传感器组成。这些无线传感器负责收集、处理和传输重要信息,如血压、心率、呼吸频率、心电图(ECG)、脑电图(EEG)和氧合信号,提供持续的健康监测,并实时反馈给用户和医疗中心。为了充分利用wban在电子医疗(EH)、移动医疗(MH)和门诊健康监测(AHM)等重要应用中的优势,必须将功耗降至最低。由于无线宽带网络中的无线节点通常由电池功耗驱动,因此决定无线宽带网络寿命的最重要因素是电池功耗。本文介绍了压缩感知(CS)理论在宽带网络中的应用。我们已经在许多应用中实现了低采样率和低功耗的网络。将CS理论与wban相结合是实现低采样率、低功耗网络的最佳方案。我们对心电信号的仿真结果表明,在不牺牲性能的情况下,将CS理论应用于wban可以将采样率降低到25%,功耗降低到35%。
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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