Impact of Weather Predictions on COVID‐19 Infection Rate by Using Deep Learning Models
Author(s) -
Yogesh Gupta,
Ghanshyam Raghuwanshi,
Abdullah Ali H. Ahmadini,
Utkarsh Sharma,
Amit Kumar Mishra,
Wali Khan Mashwani,
Pınar Göktaş,
Shokrya S. Alshqaq,
Oluwafemi Samson Balogun
Publication year - 2021
Publication title -
complexity
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.447
H-Index - 61
eISSN - 1099-0526
pISSN - 1076-2787
DOI - 10.1155/2021/5520663
Subject(s) - covid-19 , virology , computer science , artificial intelligence , meteorology , medicine , geography , infectious disease (medical specialty) , outbreak , disease
Nowadays, the whole world is facing a pandemic situation in the form of coronavirus diseases (COVID-19). In connection with the spread of COVID-19 confirmed cases and deaths, various researchers have analysed the impact of temperature and humidity on the spread of coronavirus. In this paper, a deep transfer learning-based exhaustive analysis is performed by evaluating the influence of different weather factors, including temperature, sunlight hours, and humidity. To perform all the experiments, two data sets are used: one is taken from Kaggle consists of official COVID-19 case reports and another data set is related to weather. Moreover, COVID-19 data are also tested and validated using deep transfer learning models. From the experimental results, it is shown that the temperature, the wind speed, and the sunlight hours make a significant impact on COVID-19 cases and deaths. However, it is shown that the humidity does not affect coronavirus cases significantly. It is concluded that the convolutional neural network performs better than the competitive model.
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