Modeling and Sensitivity Analysis of Coronavirus Disease (COVID-19) Outbreak Prediction

A. Sedaghat, S. A. A. Oloomi, Ashtian Malayer, A. Mosavi
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引用次数: 4

Abstract

Susceptible-infectious-recovered-deceased (SIRD) model is an essential model for outbreak prediction. This paper evaluates the performance of the SIRD model for the outbreak of COVID-19 in Kuwait, which initiated on 24 February 2020 by five patients in Kuwait. This paper investigates the sensitivity of the SIRD model for the development of COVID-19 in Kuwait based on the duration of the progressed days of data. For Kuwait, we have fitted the SIRD model to COVID-19 data for 20, 40, 60, 80, 100, and 116 days of data and assessed the sensitivity of the model with the number of days of data. The parameters of the SIRD model are obtained using an optimization algorithm (lsqcurvefit) in MATLAB. The total population of 50,000 is equally applied for all Kuwait time intervals. Results of the SIRD model indicate that after 40 days, the peak infectious day can be adequately predicted. Although error percentage from sensitivity analysis suggests that different exposed population sizes are not correctly predicted. SIRD type models are too simple to robustly capture all features of COVID-19, and more precise methods are needed to tackle the correct trends of a pandemic.
冠状病毒病(COVID-19)暴发预测建模及敏感性分析
易感-感染-恢复-死亡(SIRD)模型是疫情预测的重要模型。本文评估了SIRD模型在2020年2月24日由科威特5名患者引发的2019冠状病毒病暴发中的表现。本文基于数据进展天数的持续时间,研究了SIRD模型对科威特COVID-19发展的敏感性。对于科威特,我们将SIRD模型拟合到20、40、60、80、100和116天的COVID-19数据中,并根据数据天数评估了模型的敏感性。利用MATLAB中的优化算法(lsqcurvefit)获得了SIRD模型的参数。5万人口的总数同样适用于科威特的所有时间间隔。SIRD模型结果表明,40天后可以充分预测感染高峰日。虽然敏感性分析的误差百分比表明不同的暴露人群大小不能正确预测。SIRD类型的模型过于简单,无法可靠地捕捉COVID-19的所有特征,需要更精确的方法来应对大流行的正确趋势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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