Inverse problem for parameters identification in a modified SIRD epidemic model using ensemble neural networks
Marian Petrica, Ionel Popescu

TL;DR
This paper introduces an ensemble neural network approach for short-term parameter estimation in a modified SIRD epidemic model, enabling more accurate predictions of COVID-19 dynamics in Romania and other countries.
Contribution
It presents a novel ensemble neural network methodology for real-time parameter identification in a modified SIRD model, accounting for short-term variations and unreported cases.
Findings
Effective parameter estimation for COVID-19 in Romania and other countries.
Ensemble neural networks improve short-term epidemic predictions.
Theoretical guarantee for parameter recovery from data.
Abstract
In this paper, we propose a parameter identification methodology of the SIRD model, an extension of the classical SIR model, that considers the deceased as a separate category. In addition, our model includes one parameter which is the ratio between the real total number of infected and the number of infected that were documented in the official statistics. Due to many factors, like governmental decisions, several variants circulating, opening and closing of schools, the typical assumption that the parameters of the model stay constant for long periods of time is not realistic. Thus our objective is to create a method which works for short periods of time. In this scope, we approach the estimation relying on the previous 7 days of data and then use the identified parameters to make predictions. To perform the estimation of the parameters we propose the average of an ensemble of…
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Taxonomy
TopicsCOVID-19 epidemiological studies
MethodsBalanced Selection
