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Predicting Trends of Coronavirus Disease (COVID-19) Using SIRD and Gaussian-SIRD Models

机译:使用SARD和GASSIAN-SARD模型预测冠状病毒疾病(Covid-19)的趋势

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Eruption of COVID-19 patients in 215 countries worldwide have urged for robust predictive methods that can detect as early as possible size and duration of the contagious disease and also providing precision predictions. In many recent literatures reported on COVID-19, one or more essential parts of such investigation were missed. One of crucial elements for any predictive method is that such methods should fit simultaneously as many data as possible; these data could be total infected cases, daily hospitalized cases, cumulative recovered cases and deceased cases and so on. Other crucial elements include sensitivity and precision of such predictive methods on amount of data as the contagious disease evolved day by day. To show importance of these aspects, we have evaluated the standard SIRD model and a newly introduced Gaussian-SIRD model on development of COVID-19 in Kuwait. It is observed that SIRD model quickly pick up main trends of COVID-19 development; but Gaussian-SIRD model provides precise prediction at longer period of time.
机译:全球215个国家的Covid-19患者的爆发促成了稳健的预测方法,可以尽早检测到传染病的可能大小和持续时间以及提供精确预测。在最近关于Covid-19报告的文献中,错过了这种调查的一个或多个基本部分。任何预测方法的重要元素之一是,这些方法应同时适合尽可能多的数据;这些数据可能是完全受感染的病例,日常住院病例,累积恢复案件和死者案件等。其他关键要素包括在日复一日地演变的传染病的数据量的这种预测方法的敏感性和精度。为了表现出这些方面的重要性,我们已经评估了标准的SIRD模型和新介绍了科威特Covid-19开发的高斯-SIRD模型。据观察,SIRD模型迅速挑选了Covid-19发展的主要趋势;但是高斯-SIRD模型在更长的时间内提供精确的预测。

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