Download this article
 Download this article For screen
For printing
Recent Issues
Volume 12, Issue 4
Volume 12, Issue 3
Volume 12, Issue 3
Volume 12, Issue 2
Volume 12, Issue 1
Volume 11, Issue 4
Volume 11, Issue 3
Volume 11, Issue 2
Volume 11, Issue 1
Volume 10, Issue 4
Volume 10, Issue 3
Volume 10, Issue 2
Volume 10, Issue 1
Volume 9, Issue 4
Volume 9, Issue 3
Volume 9, Issue 2
Volume 9, Issue 1
Volume 8, Issue 4
Volume 8, Issue 3
Volume 8, Issue 2
Volume 8, Issue 1
Volume 7, Issue 4
Volume 7, Issue 3
Volume 7, Issue 2
Volume 7, Issue 1
Volume 6, Issue 4
Volume 6, Issue 3
Volume 6, Issue 2
Volume 6, Issue 1
Volume 5, Issue 3-4
Volume 5, Issue 2
Volume 5, Issue 1
Volume 4, Issue 3-4
Volume 4, Issue 2
Volume 4, Issue 1
Volume 3, Issue 4
Volume 3, Issue 3
Volume 3, Issue 2
Volume 3, Issue 1
Volume 2, Issue 2
Volume 2, Issue 1
Volume 1, Issue 2
Volume 1, Issue 1
The Journal
About the journal
Ethics and policies
Peer-review process
 
Submission guidelines
Submission form
Editorial board
 
Subscriptions
 
ISSN 2325-3444 (online)
ISSN 2326-7186 (print)
 
Author index
To appear
 
Other MSP journals
This article is available for purchase or by subscription. See below.
A new virus-centric epidemic modeling approach, 2: Simulation of deceased of SARS CoV 2 in several countries

Jean Rémond, Daniel George, Saïd Ahzi and Yves Rémond

Vol. 12 (2024), No. 2, 135–155
Abstract

We recently published a macroscopic virus-centric model to simulate the evolution of the SARS CoV 2 epidemic (COVID 19) at the level of a country or a geographical entity using a new decomposition modeling and machine learning optimization. The approach assumes that an epidemic can be analyzed as the combination of several elementary epidemics representing each different parts of the population with different behaviors through time, different locations, or different phases of the virus propagation like emergence of new variants. In part 1 of the paper, published in 2020, we presented the details of the model and its application for new cases through different countries. In this second part, we develop and analyze an application of this modeling to the number of deceased cases among 22 different countries in Europe. The proposed modeling is still based on the finite superposition of Verhulst equations commonly known as logistic functions and used in population dynamics. The novelty comes from the new decomposition of a complex event and the use of machine learning algorithm. The results show that this approach enables to well simulate the evolution of the number of deaths for the different analyzed countries, population, or age. It also shows that the epidemic kinetic can be well simulated whether you consider the overall epidemic kinetic as one epidemic or as the sum of independent epidemics, as is presented here regarding the age of the population. The modeling prediction quality was also studied as a function of the amount of available data.

PDF Access Denied

We have not been able to recognize your IP address 18.117.71.239 as that of a subscriber to this journal.
Online access to the content of recent issues is by subscription only.

Please contact your institution's librarian suggesting a subscription, for example by using our journal-recom­mendation form. Or, visit our subscription page for instructions on purchasing a subscription.

You may also contact us at contact@msp.org
or by using our contact form.

Keywords
COVID-19, epidemic, simulation, machine learning, verhulst
Mathematical Subject Classification
Primary: 92-10, 92D25
Milestones
Received: 24 January 2023
Revised: 17 November 2023
Accepted: 10 February 2024
Published: 7 May 2024

Communicated by Francesco dell'Isola
Authors
Jean Rémond
ICube Laboratory
University of Strasbourg / CNRS
Strasbourg
France
Daniel George
ICube Laboratory
University of Strasbourg / CNRS
Strasbourg
France
Saïd Ahzi
ICube Laboratory
University of Strasbourg / CNRS
Strasbourg
France
Yves Rémond
ICUBE Laboratory
University of Strasbourg / CNRS
Strasbourg
France