Preprint / Version 1

An uncertainty quantification framework for a Zika virus epidemic model

##article.authors##

  • Eber Dantas Rio de Janeiro State University
  • Michel Tosin Rio de Janeiro State University
  • Americo Cunha Jr Rio de Janeiro State University https://orcid.org/0000-0002-8342-0363

DOI:

https://doi.org/10.31224/3920

Keywords:

nonlinear dynamics, epidemic model, Zika Virus, uncertainty quantification, maximum entropy principle

Abstract

Uncertainty quantification is an important procedure when dealing with errors and discrepancies that are present in any modeling effort. This work presents a consistent uncertainty quantification framework for an epidemiological dynamical system, which is able to construct robust descriptions given a calibrated model. Since arbitrary choices of distributions for the input parameters can provide biased estimates and results, the maximum entropy principle is employed in the construction of the stochastic model to infer the most possibly unbiased probability density functions affected by the lack of information. The framework is applied on a SEIR-SEI compartmental system for the Brazilian Zika virus outbreak to study a stochastic scenario.  

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Posted

2024-09-16