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Prediction of the spread of Corona-virus carrying droplets in a bus-A computational based artificial intelligence approach
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Metadata
Document Title
Prediction of the spread of Corona-virus carrying droplets in a bus-A computational based artificial intelligence approach
Author
Mesgarpour M, Abad JMN, Alizadeh R, Wongwises S, Doranehgard MH, Ghaderi S, Karimi N
Name from Authors Collection
Affiliations
King Mongkuts University of Technology Thonburi; Islamic Azad University; Islamic Azad University; National Science & Technology Development Agency - Thailand; University of Alberta; Shahid Beheshti University Medical Sciences; University of London; Queen Mary University London; University of Glasgow
Type
Article
Source Title
JOURNAL OF HAZARDOUS MATERIALS
Year
2021
Volume
413
Open Access
Bronze, Green Published, Green Accepted
Publisher
ELSEVIER
DOI
10.1016/j.jhazmat.2021.125358
Format
Abstract
Public transport has been identified as high risk as the corona-virus carrying droplets generated by the infected passengers could be distributed to other passengers. Therefore, predicting the patterns of droplet spreading in public transport environment is of primary importance. This paper puts forward a novel computational and artificial intelligence (AI) framework for fast prediction of the spread of droplets produced by a sneezing passenger in a bus. The formation of droplets of salvia is numerically modelled using a volume of fluid methodology applied to the mouth and lips of an infected person during the sneezing process. This is followed by a large eddy simulation of the resultant two phase flow in the vicinity of the person while the effects of droplet evaporation and ventilation in the bus are considered. The results are subsequently fed to an AI tool that employs deep learning to predict the distribution of droplets in the entire volume of the bus. This combined framework is two orders of magnitude faster than the pure computational approach. It is shown that the droplets with diameters less than 250 micrometers are most responsible for the transmission of the virus, as they can travel the entire length of the bus.
Industrial Classification
Knowledge Taxonomy Level 1
Knowledge Taxonomy Level 2
Knowledge Taxonomy Level 3
Funding Sponsor
KMUTT; Research Chair Grant National Science and Technology Development Agency (NSTDA); King Mongkut's University of Technology Thonburi through the KMUTT 55th Anniversary Commemorative Fluid; Engineering and Physical Science Research Council, UK [EP/V036777/1]; EPSRC [EP/V036777/1] Funding Source: UKRI
Publication Source
WOS