IOT-Based Generic Health Monitoring with Cardiac Classification Using Edge Computing

Q2 Computer Science
Dr.K. Vimal Kumar Stephen, Mathivanan Dr.V., Antonio Rutaf Manalang, Prajith Udinookkaran, Rudiardo Percival Niñalga De Vera, Mohammed Tariq Shaikh, Faiza Rashid Ammar Al-Harthy
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Abstract

Background: The current environment of modern computation can offer a smart healthcare monitoring for the early prediction of disease detection. For the domain of healthcare services, the Internet of Things (IoT) has a vital role, and also aids in the enhancement of the data’s processing as well as predictions. The transfer of data or reports from one location to another will consume a lot of energy as well as time, and also does result in issues of high energy as well as latency. With edge computing, the disadvantages can be easily resolved. Objectives: This work presents a Convolutional Neural Network (CNN)-based model of prediction which employs edge computing as well as IoT paradigms. The term edge computing will refer to a distributed environment framework that facilitates swift resource accessibility and response times by means of the local edge servers for processing at the end of the IoT devices. With this model, there can be an analysis of the health data which has been gathered by the IoT devices. Additionally, the edge devices will employ the edge servers for offering the patients as well as the doctors health-prediction reports in a timely manner. Methods: This work has proposals of an optimized CNN with Tabu Search (TS), Artificial Bee Colony (ABC) as well as the hybrid TS-ABC algorithms. Results: Analysis of these proposed algorithms is done with the parameters of performance such as the rate of error and the accuracy. Also, these algorithms’ simulated outcomes have been able to demonstrate their superior performance in comparison to the other technologically advanced approaches.
基于物联网的基于边缘计算的心脏分类通用健康监测
背景:当前的现代计算环境可以为疾病检测的早期预测提供智能的医疗保健监测。对于医疗保健服务领域,物联网(IoT)发挥着至关重要的作用,也有助于增强数据的处理和预测。从一个位置到另一个位置的数据或报告传输将消耗大量的能量和时间,还会导致高能量和延迟问题。使用边缘计算,缺点可以很容易地解决。目标:这项工作提出了一个基于卷积神经网络(CNN)的预测模型,该模型采用了边缘计算和物联网范式。术语边缘计算是指分布式环境框架,通过本地边缘服务器在物联网设备末端进行处理,有助于快速访问资源和响应时间。有了这个模型,就可以对物联网设备收集的健康数据进行分析。此外,边缘设备将采用边缘服务器,以便及时向患者和医生提供健康预测报告。方法:本文提出了一种基于禁忌搜索(TS)、人工蜂群(ABC)以及混合TS-ABC算法的优化CNN。结果:对这些算法进行了性能参数分析,如误差率和精度。此外,与其他技术先进的方法相比,这些算法的模拟结果已经能够证明其优越的性能。
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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来源期刊
Journal of Internet Services and Information Security
Journal of Internet Services and Information Security Computer Science-Computer Science (miscellaneous)
CiteScore
3.90
自引率
0.00%
发文量
0
审稿时长
8 weeks
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