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Fog Computing and Edge Computing Architectures for Processing Data From Diabetes Devices Connected to the Medical Internet of Things

机译:雾计算和边缘计算架构用于处理连接到医疗物联网的糖尿病设备的数据

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摘要

The Internet of Things (IoT) is generating an immense volume of data. With cloud computing, medical sensor and actuator data can be stored and analyzed remotely by distributed servers. The results can then be delivered via the Internet. The number of devices in IoT includes such wireless diabetes devices as blood glucose monitors, continuous glucose monitors, insulin pens, insulin pumps, and closed-loop systems. The cloud model for data storage and analysis is increasingly unable to process the data avalanche, and processing is being pushed out to the edge of the network closer to where the data-generating devices are. Fog computing and edge computing are two architectures for data handling that can offload data from the cloud, process it nearby the patient, and transmit information machine-to-machine or machine-to-human in milliseconds or seconds. Sensor data can be processed near the sensing and actuating devices with fog computing (with local nodes) and with edge computing (within the sensing devices). Compared to cloud computing, fog computing and edge computing offer five advantages: (1) greater data transmission speed, (2) less dependence on limited bandwidths, (3) greater privacy and security, (4) greater control over data generated in foreign countries where laws may limit use or permit unwanted governmental access, and (5) lower costs because more sensor-derived data are used locally and less data are transmitted remotely. Connected diabetes devices almost all use fog computing or edge computing because diabetes patients require a very rapid response to sensor input and cannot tolerate delays for cloud computing.
机译:物联网(IoT)产生了大量数据。借助云计算,医疗传感器和执行器数据可以由分布式服务器进行远程存储和分析。然后可以通过Internet传递结果。物联网中的设备包括无线糖尿病设备,例如血糖监测仪,连续血糖监测仪,胰岛素笔,胰岛素泵和闭环系统。用于数据存储和分析的云模型越来越无法处理数据雪崩,并且处理被推向了网络边缘,更靠近数据生成设备所在的位置。雾计算和边缘计算是用于数据处理的两种体系结构,可以从云中卸载数据,在患者附近对其进行处理,并在几毫秒或几秒钟内在机器对机器或机器对人类之间传输信息。传感器数据可以通过雾计算(具有本地节点)和边缘计算(在传感设备内)在传感和致动设备附近进行处理。与云计算相比,雾计算和边缘计算具有五个优点:(1)更快的数据传输速度;(2)更少的对有限带宽的依赖;(3)更大的隐私和安全性;(4)更好地控制在国外产生的数据法律可能会限制使用或允许不必要的政府访问,并且(5)降低成本,因为更多的传感器派生数据在本地使用,而更少的数据远程传输。相连的糖尿病设备几乎全部使用雾计算或边缘计算,因为糖尿病患者需要对传感器输入的非常快速的响应,并且不能容忍云计算的延迟。

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