Abstract

From the end of 2019, the world has been facing the threat of COVID-19. It is predicted that, before herd immunity is achieved globally via vaccination, people around the world will have to tackle the COVID-19 pandemic using precautionary steps. This paper suggests a COVID-19 identification and control system that operates in real-time. The proposed system utilizes the Internet of Things (IoT) platform to capture users’ time-sensitive symptom information to detect potential cases of coronaviruses early on, to track the clinical measures adopted by survivors, and to gather and examine appropriate data to verify the existence of the virus. There are five key components in the framework: symptom data collection and uploading (via communication technology), a quarantine/isolation center, an information processing core (using artificial intelligent techniques), cloud computing, and visualization to healthcare doctors. This research utilizes eight machine/deep learning techniques—Neural Network, Decision Table, Support Vector Machine (SVM), Naive Bayes, OneR, K-Nearest Neighbor (K-NN), Dense Neural Network (DNN), and the Long Short-Term Memory technique—to detect coronavirus cases from time-sensitive information. A simulation was performed to verify the eight algorithms, after selecting the relevant symptoms, on real-world COVID-19 data values. The results showed that five of these eight algorithms obtained an accuracy of over 90%. Conclusively, it is shown that real-world symptomatic information would enable these three algorithms to identify potential COVID-19 cases effectively with enhanced accuracy. Additionally, the framework presents responses to treatment for COVID-19 patients.

Highlights

  • Introduction185,390,254 cases of COVID-19 have been confirmed in 222 countries as of July2021 since its discovery in late December 2019 (Source: https://www.worldometers.info/coronavirus (accessed on 30 May 2021))

  • 185,390,254 cases of COVID-19 have been confirmed in 222 countries as of July2021 since its discovery in late December 2019 (Source: https://www.worldometers.info/coronavirus)

  • An Internet of Things (IoT)–fog–cloud-based prediction and data analysis framework to reduce the spread of COVID-19 diseases has been presented

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Summary

Introduction

185,390,254 cases of COVID-19 have been confirmed in 222 countries as of July2021 since its discovery in late December 2019 (Source: https://www.worldometers.info/coronavirus (accessed on 30 May 2021)). 185,390,254 cases of COVID-19 have been confirmed in 222 countries as of July. 2021 since its discovery in late December 2019 Nearly 4,009,218 deaths have been registered, which represents a 4%. The novel coronavirus was classified by the World Health Organization (WHO) as a pandemic in March 2020 [4,5]. As of July 2021, the vaccination procedure is ongoing, and it will take a long time to induce herd immunity globally [6,7]. By following procedures including regular hand washing, adhering to social distancing, and wearing face masks, the control of COVID-19 is achieved by reducing the progress of new mutants such as Delta and Delta+ [8,9]

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