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IoT Architectures for Noninvasive Blood Glucose and Blood Pressure Monitoring

机译:用于无创血糖和血压监控的IoT架构

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Continuous noninvasive blood glucose (sugar) and blood pressure (BP) monitoring using Photoplethysmogram (PPG) is an important research area. As the research in this area is in the beginning stages, there is a need to preserve the raw PPG signals for further analysis and improvement of the prediction models. The popular IoT data optimization techniques such as lossy data compression, extracting and transmitting the features and discarding the raw data are not applicable in this case. Transmitting and storing the massive raw PPG signals over the IoT infrastructure presents a major research challenge. Another research challenge is to ensure high availability of wearable health monitoring IoT edge device for user interaction irrespective of the network availability. In this paper we present an Adaptive IoT model which the existing cloud and fog computing architectures along with a new hybrid computing architecture to solve these research challenges. We also present our BP and sugar monitoring system which implements this Adaptive IoT model using the cloud, fog and hybrid computing architectures.
机译:使用光电容积描记法(PPG)连续进行非侵入性血糖(糖)和血压(BP)监测是一个重要的研究领域。由于该领域的研究尚处于起步阶段,因此有必要保留原始PPG信号以用于进一步分析和改进预测模型。在这种情况下,不适用于流行的物联网数据优化技术,例如有损数据压缩,提取和传输功能以及丢弃原始数据。通过物联网基础设施传输和存储大量原始PPG信号是一项重大的研究挑战。另一个研究挑战是,无论网络可用性如何,都要确保可穿戴式健康监控物联网边缘设备的高可用性以进行用户交互。在本文中,我们提出了一种自适应物联网模型,其中包括现有的云计算和雾计算架构以及新的混合计算架构,以解决这些研究挑战。我们还将介绍我们的BP和糖监测系统,该系统使用云,雾和混合计算架构来实现此自适应物联网模型。

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