Adopting proactive results by developing the Shrewd model of pandemic COVID-19
- 28 April 2022
- journal article
- Published by Peertechz Publications Private Limited in Archives of Community Medicine and Public Health
- Vol. 8 (2), 062-067
- https://doi.org/10.17352/2455-5479.000175
Abstract
The unavoidable pandemic situation seems uncontrolled over the past two years. In this aggravated situation, it seems crucial to take inescapable measures to deal with such a defiant disease and it is only possible if the actual pandemic propagation ratio is to be acquainted. Therefore, a shrewd pandemic model is being developed that will generate real-time infection statistics on an hourly, weekly, and monthly basis. This shrewd model utilizes the well-known dataset and when this dataset will be applied to determine the status of three types of infection the number of infected people, the time when the pandemic begins, and the time when the pandemic disappears. The time-based results are generated by conducting simulation in python Simpy framework and the generated results are the hallmark of real-time infection spreading ratio it shows that when the extraordinary measures for infection ratio are indispensable and when it becomes plausible.Keywords
This publication has 32 references indexed in Scilit:
- Diverging Mysterious in Green Supply Chain ManagementOriental journal of computer science and technology, 2020
- SLM-OJ: Surrogate Learning Mechanism during Outbreak JunctureAugust 2022, 2020
- Underwater Routing Protocols Analysis of Intrepid Link Selection Mechanism, Challenges and StrategiesInternational Journal of Scientific Research in Computer Science and Engineering, 2020
- CHALLENGING STRATEGIC TRENDS IN GREEN SUPPLY CHAIN MANAGEMENTJournal of Research in Engineering and Applied Sciences, 2020
- USPF: Underwater Shrewd Packet Flooding Mechanism through Surrogate Holding TimeWireless Communications and Mobile Computing, 2020
- Design of Shrewd Underwater Routing Synergy Using Porous Energy ShellsSmart Cities, 2020
- Deep Learning for RF-Based Drone Detection and Identification: A Multi-Channel 1-D Convolutional Neural Networks ApproachPublished by Institute of Electrical and Electronics Engineers (IEEE) ,2020
- Underwater Resurrection Routing Synergy using Astucious Energy PodsJournal of Robotics and Control (JRC), 2020
- Efficient Node Monitoring Mechanism in WSN using Contikimac ProtocolInternational Journal of Advanced Computer Science and Applications, 2017
- Mathematical models of infectious disease transmissionNature Reviews Microbiology, 2008