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1.
Journal of Experimental and Theoretical Artificial Intelligence ; 35(3):377-393, 2023.
Article in English | ProQuest Central | ID: covidwho-2272557

ABSTRACT

A catastrophic epidemic of Severe Acute Respiratory Syndrome-Coronavirus, commonly recognised as COVID-19, introduced a worldwide vulnerability to human community. All nations around the world are making enormous effort to tackle the outbreak towards this deadly virus through various aspects such as technology, economy, relevant data, protective gear, lives-risk medications and all other instruments. The artificial intelligence-based researchers apply knowledge, experience and skill set on national level data to create computational and statistical models for investigating such a pandemic condition. In order to make a contribution to this worldwide human community, this paper recommends using machine-learning and deep-learning models to understand its daily accelerating actions together with predicting the future reachability of COVID-19 across nations by using the real-time information from the Johns Hopkins dashboard. In this work, a novel Exponential Smoothing Long-Short-Term Memory Networks Model (ESLSTM) learning model is proposed to predict the virus spread in the near future. The results are evaluated using RMSE and R-Squared values.

2.
Journal of Experimental and Theoretical Artificial Intelligence ; 2022.
Article in English | Scopus | ID: covidwho-1839679

ABSTRACT

A catastrophic epidemic of Severe Acute Respiratory Syndrome-Coronavirus, commonly recognised as COVID-19, introduced a worldwide vulnerability to human community. All nations around the world are making enormous effort to tackle the outbreak towards this deadly virus through various aspects such as technology, economy, relevant data, protective gear, lives-risk medications and all other instruments. The artificial intelligence-based researchers apply knowledge, experience and skill set on national level data to create computational and statistical models for investigating such a pandemic condition. In order to make a contribution to this worldwide human community, this paper recommends using machine-learning and deep-learning models to understand its daily accelerating actions together with predicting the future reachability of COVID-19 across nations by using the real-time information from the Johns Hopkins dashboard. In this work, a novel Exponential Smoothing Long-Short-Term Memory Networks Model (ESLSTM) learning model is proposed to predict the virus spread in the near future. The results are evaluated using RMSE and R-Squared values. © 2022 Informa UK Limited, trading as Taylor & Francis Group.

3.
Turkish Journal of Physiotherapy and Rehabilitation ; 32(3):8343-8348, 2021.
Article in English | EMBASE | ID: covidwho-1323676

ABSTRACT

In the fast-paced world, Pandemic like Covid-19, people must take care of themselves and others. Personal care has been ignored in the world and mainly in India. “Virtual Health Assistance System” tries to become a health assistant in these times when people can contract disease very easily. It is also found out that obesity has increased during the lockdown. This can be a potential threat in the future as “too much of anything is good for nothing”. This is also amplified by the fact that people have stopped being afraid of the Covid-19. This must be resolved immediately. People should lead a healthy and disease-free life. This can be controlled by a device that is used the most – Smartphone. People using smartphones can be notified about proper diet and hydration, proper hygiene and exercise and a new way to lead a healthy lifestyle.

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