基于粒子群优化的印度尼西亚COVID-19隔室模型参数估计

Raqqasyi Rahmatullah Musafir, S. Anam
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引用次数: 3

摘要

背景:印度尼西亚政府制定了一项疫苗接种计划,以应对高反应性COVID-19病例。为了准确预测COVID-19传播的室室模型动力学,需要良好的参数估计技术。目的:本研究旨在应用粒子群算法作为参数估计方法,从COVID-19病例易感-接种-感染-恢复的隔室模型中获取参数值。方法:本研究于2020年4 - 5月在印度尼西亚进行探索性设计研究。研究人员使用了印度尼西亚COVID-19病例的数据,该数据可在covid .go.id上访问。该数据集包含反应性病例、接种疫苗病例和康复病例的数量。该数据集用于估计COVID-19隔室模型的参数。结果表明,数值模拟结果适用于Matlab程序。结果:研究表明,使用粒子群优化方法估计的参数具有相当好的值,因为与使用的数据量相比,均方误差相对较小。到2021年8月21日,COVID-19反应性病例有所减少。接下来,到2021年底,COVID-19反应性病例将增加。这是因为接种疫苗人群的病毒感染率为阳性。如果发生在平稳点之前,那么COVID-19的反应性病例将在数学上减少。结论:粒子群优化方法可以基于均方误差和能描述未来COVID-19病例行为的图来估计参数。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
PARAMETER ESTIMATION OF COVID-19 COMPARTMENT MODEL IN INDONESIA USING PARTICLE SWARM OPTIMIZATION
Background: The government established a vaccination program to deal with highly reactive COVID-19 cases in Indonesia. In obtaining accurate predictions of the dynamics of the compartment model of COVID-19 spread, a good parameter estimation technique was required.. Purpose: This research aims to apply Particle Swarm Optimization as a parameter estimation method to obtain parameters value from the Susceptible-Vaccinated-Infected-Recovered compartment model of COVID-19 cases. Methods: This research was conducted in April-May 2020 in Indonesia with exploratory design research.  The researchers used the data on COVID-19 cases in Indonesia, which was accessed at covid19.go.id. The data set contained the number of reactive cases, vaccinated cases, and recovered cases. The data set was used to estimate the parameters of the COVID-19 compartment model. The results were shown by numerical simulations that apply to the Matlab program. Results: Research shows that the parameters estimated using Particle Swarm Optimization have a fairly good value because the mean square error is relatively small compared to the data size used. Reactive cases of COVID-19 have decreased until August 21, 2021. Next, reactive cases of COVID-19 will increase until the end of 2021. It is because the virus infection rate of the vaccinated population is positive . If  occurs before the stationary point, then the reactive cases of COVID-19 will decrease mathematically. Conclusion: Particle Swarm Optimization methods can estimate parameters well based on mean square error and the graphs that can describe the behavior of COVID-19 cases in the future.
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