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Wireless Body Area Networks Based on Compressed Sensing Theory.

机译:基于压缩传感理论的无线人体局域网。

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摘要

In this research, the effective sampling method known as Compressed Sensing (CS) theory is applied to Wireless Body Area Networks (WBANs) to provide low power and low sampling-rate wireless healthcare systems and intelligent emergency care management systems. The fundamental contribution of this work can be divided into three areas. 1) We propose two new algorithms in the sensing, measurement, and processing area to compress biomedical data. 2) In the communication area, one new channel model based on CS theory is defined to transmit compressed data to the receiver side. 3) In the receiver side or reconstruction area, two new algorithms for recovering the original biomedical data are presented to recover the original data. Our results will be divided into three areas. 1) We employ the proposed algorithms to WBANs with a single biomedical signal (i.e. Electroencephalography [ECG] signals as a sample signal). In this area, the simulation results illustrate an increment of 10% improved for sensitivity in receiving compressed ECG signals. The simulation results also illustrate a 25% reduction of Percentage Root-mean-square Difference (PRD) for ECG signals on the receiver side. In addition, they confirm the ability of CS to maximize the prediction level for received the ECG signal at either Gate Ways (GWs) or Access Points (APs). 2) We illustrate that the proposed algorithms can be employed in WBANs with multiple biomedical signals to enhance current health care systems into low-power wireless healthcare systems. In this area, the simulation results confirm that for a particular WBAN, including N biomedical signals, the sampling-rate can be reduced by 25-35% and power consumption by 35-40%, without sacrificing the network's performance. 3) Here improvements for wireless channel feature between BWSs and either GWs or APs are shown. In this area, the results demonstrate that CS is able to maximize signal amplitude to 25-30% at the receiver as well as distance between transmitter and receiver BWS to 30%. Moreover, these results confirm that path loss can be reduced to 25%.
机译:在这项研究中,一种称为压缩感知(CS)理论的有效采样方法被应用于无线人体局域网(WBAN),以提供低功耗,低采样率的无线医疗系统和智能紧急护理管理系统。这项工作的基本贡献可以分为三个领域。 1)我们在传感,测量和处理领域提出了两种新算法来压缩生物医学数据。 2)在通信领域,定义了一种基于CS理论的新信道模型,用于将压缩数据发送到接收方。 3)在接收方或重建区域,提出了两种用于恢复原始生物医学数据的新算法来恢复原始数据。我们的结果将分为三个领域。 1)我们将提出的算法应用于具有单个生物医学信号(即脑电图[ECG]信号作为样本信号)的WBAN。在该区域中,仿真结果表明,接收压缩的ECG信号的灵敏度提高了10%。仿真结果还表明,接收器端ECG信号的均方根差百分比(PRD)降低了25%。此外,他们还确认了CS能够最大化在网关(GW)或接入点(AP)接收到的ECG信号的预测水平的能力。 2)我们说明了所提出的算法可用于具有多种生物医学信号的WBAN中,以将当前的医疗保健系统增强为低功耗无线医疗保健系统。在该区域,仿真结果证实,对于包括N个生物医学信号的特定WBAN,采样率可以降低25-35%,功耗可以降低35-40%,而不会牺牲网络的性能。 3)这里显示了BWS与GW或AP之间的无线信道功能的改进。在该区域中,结果表明CS能够将接收器处的信号幅度最大化至25-30%,并将发送器与接收器BWS之间的距离最大化至30%。而且,这些结果证实了路径损耗可以减少到25%。

著录项

  • 作者单位

    Ryerson University (Canada).;

  • 授予单位 Ryerson University (Canada).;
  • 学科 Engineering Electronics and Electrical.;Engineering General.;Engineering Computer.
  • 学位 Ph.D.
  • 年度 2013
  • 页码 179 p.
  • 总页数 179
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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