Intelligence COVID-19 Monitoring Framework Based on Deep Learning and Smart Wearable IoT Sensors

Fadhil Mukhlif, Norafida Ithnin, Roobaea Alroobaea, Sultan Algarni, Wael Y. Alghamdi, Ibrahim Hashem
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Abstract

The World Health Organization (WHO) refers to the 2019 new coronavirus epidemic as COVID-19, and it has caused an unprecedented global crisis for several nations. Nearly every country around the globe is now very concerned about the effects of the COVID-19 outbreaks, which were previously only experienced by Chinese residents. Most of these nations are now under a partial or complete state of lockdown due to the lack of resources needed to combat the COVID-19 epidemic and the concern about overstretched healthcare systems. Every time the pandemic surprises them by providing new values for various parameters, all the connected research groups strive to understand the behavior of the pandemic to determine when it will stop. The prediction models in this research were created using deep neural networks and Decision Trees (DT). DT employs the support vector machine method, which predicts the transition from an initial dataset to actual figures using a function trained on a model. Extended short-term memory networks (LSTMs) are a special sort of recurrent neural network (RNN) that can pick up on long-term dependencies. As an added bonus, it is helpful when the neural network can both recall current events and recall past events, resulting in an accurate prediction for COVID-19. We provided a solid foundation for intelligent healthcare by devising an intelligence COVID-19 monitoring framework. We developed a data analysis methodology, including data preparation and dataset splitting. We examine two popular algorithms, LSTM and Decision tree on the official datasets. Moreover, we have analysed the effectiveness of deep learning and machine learning methods to predict the scale of the pandemic. Key issues and challenges are discussed for future improvement. It is expected that the results these methods provide for the Health Scenario would be reliable and credible.
基于深度学习和智能可穿戴物联网传感器的新型冠状病毒智能监测框架
世界卫生组织(WHO)将2019年新型冠状病毒流行病称为COVID-19,它给几个国家造成了前所未有的全球危机。全球几乎每个国家现在都非常关注COVID-19疫情的影响,而以前只有中国居民经历过这种影响。由于缺乏抗击COVID-19疫情所需的资源,以及对医疗系统过度紧张的担忧,这些国家中的大多数现在处于部分或完全的封锁状态。每次大流行通过为各种参数提供新值而使他们感到惊讶时,所有相关的研究小组都努力了解大流行的行为,以确定它何时会停止。本研究使用深度神经网络和决策树(DT)建立预测模型。DT采用支持向量机方法,该方法使用在模型上训练的函数来预测从初始数据集到实际图形的转换。扩展短期记忆网络(LSTMs)是一种特殊类型的递归神经网络(RNN),可以拾取长期依赖关系。另外,如果神经网络可以回忆当前事件和过去事件,从而准确预测COVID-19,这是有帮助的。我们设计了智能COVID-19监测框架,为智能医疗奠定了坚实的基础。我们开发了一种数据分析方法,包括数据准备和数据集分割。我们在官方数据集上研究了两种流行的算法,LSTM和决策树。此外,我们分析了深度学习和机器学习方法在预测大流行规模方面的有效性。讨论了未来改进的关键问题和挑战。预计这些方法为健康情景提供的结果将是可靠和可信的。
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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