Data Processing Using Edge Computing: A Case Study For The Remote Care Environment

Ian Chetcuti, Conrad Attard, Joseph Bonello
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引用次数: 1

Abstract

Falling is one of the most common concerns among caregivers [1]. For people with dementia and the elderly in remote care and hospitals, immediately informing caregivers of abnormal behaviour such as a fall can improve their quality of life [2] [3]. Latency occurs when processing massive amounts of continuous data from the Internet of Things devices in the cloud. Network latency impacts latency-sensitive critical real-time applications, such as those used in the healthcare sector [4]. This study seeks to reduce latency and network bandwidth when sending continuous data from wearable sensors in a remote care environment in order to meet the latency requirements of health applications. To reduce latency and network bandwidth, a framework is proposed that deploys edge computing using a geo-distributed intermediate layer of intelligence in the middle of the sensor and cloud layers. It includes raw collected data processing, early sensor fusion, missing data, data reduction and conversion and data storage. The case study is a remote care environment focused on fall detection. The research focuses on fall detection and analysis of sensor data for human fall detection using various activity recognition techniques, threshold-based and Machine Learning algorithms. As a result, a fall activity recorded from the wearable device to the edge server could be processed, predicted, and reported to the caregiver in 294 milliseconds.
使用边缘计算的数据处理:远程护理环境的案例研究
跌倒是护理人员最关心的问题之一。对于住在远程护理和医院的痴呆症患者和老年人,如果发现跌倒等异常行为,立即通知护理人员,可以提高他们的生活质量。当处理来自云中的物联网设备的大量连续数据时,会出现延迟。网络延迟会影响对延迟敏感的关键实时应用程序,例如医疗保健部门中使用的应用程序[4]。本研究旨在减少远程护理环境中可穿戴传感器发送连续数据时的延迟和网络带宽,以满足健康应用对延迟的需求。为了减少延迟和网络带宽,提出了一种框架,该框架使用传感器层和云层中间的地理分布式智能中间层来部署边缘计算。它包括原始采集数据处理、早期传感器融合、缺失数据、数据简化和转换以及数据存储。本案例研究是一个侧重于跌倒检测的远程护理环境。研究重点是跌倒检测和使用各种活动识别技术、基于阈值和机器学习算法分析人体跌倒检测的传感器数据。因此,从可穿戴设备记录到边缘服务器的跌倒活动可以在294毫秒内处理、预测并报告给护理人员。
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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