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Predicting COVID-19 confirmed cases in New York and DKI Jakarta by nonlinear fitting of a Bose–Einstein energy distribution and its implications on social restrictions

机译:通过非线性拟合Bose-Einstein能量分布的非线性拟合预测Covid-19在纽约和DKI雅加达的确认案件及其对社会限制的影响

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ObjectiveGlobal society pays huge economic toll and live loss due to COVID-19 (Coronavirus Disease 2019) pandemic. In order to have a better management of this pandemic, many institutions develop their own models to predict number of COVID-19 cases, hospitalizations and mortalities. These models, however, are shown to be unreliable and need to be revised on a daily basis.MethodsHere, we develop a Bose–Einstein (BE)-based statistical model to predict daily COVID-19 cases up to 14 days in advance. This fat-tailed model is chosen based on three reasons. First, it contains a peak and decaying phase. Second, it also has both accelerated and decelerated phases which are similarly observed in an epidemic curve. Third, the shape of both the BE energy distribution and the epidemic curve is controlled by a set of parameters. The BE model daily predictions are then verified against simulated data and confirmed COVID-19 daily cases from two epidemic centres, i.e. New York and DKI Jakarta.ResultOver- predictions occur at the earlier stage of the epidemic for all data sets. Models parameters for both simulated and New York data converge to a certain value only at the latest stage of the epidemic progress. At this stage, model's skill is high for both simulated and New York data, i.e. the predictability is greater than 80% with decreasing RMSE. On the other hand, at that stage, the DKI's model's predictability is still fluctuating with increasing RMSE.ConclusionThis implies that New York could leave the stay-at-home order, but DKI Jakarta should continue its large-scale social restriction order. There remains a great challenge in predicting the full course of an epidemic using small data collected during the earlier phase of the epidemic.
机译:由于Covid-19为了更好地管理这种大流行,许多机构都开发了自己的模型,以预测Covid-19案件,住院和死亡人数。然而,这些模型被证明是不可靠的,并且需要每天修改。方法,我们开发了一个基于统计模型的Bose-Einstein,预测每日Covid-19案件,提前14天。基于三个原因选择这种脂肪尾模型。首先,它包含峰值和衰减阶段。其次,它还具有在流行病曲线中类似地观察到的加速和减速的相。第三,通过一组参数控制是能量分布和流行病曲线的形状。然后是模型日常预测,对模拟数据验证,并确认了两个流行中心的Covid-19日案例,即纽约和DKI雅加达。所有数据集的疫情较早阶段发生了预测。模拟和纽约数据的模型参数仅在流行进步的最新阶段收敛到某个值。在这个阶段,模型的技能很高,因为模拟和纽约数据都是高的,即,随着RMSE的降低,可预测性大于80%。另一方面,在那个阶段,DKI的模型的可预测性仍然随着RMSE的增加而波动.Conclusionsthis意味着纽约可以留下留下的逗留订单,但DKI雅加达应该继续其大规模的社会限制性秩序。使用在疫情早期期间收集的小数据预测流行病的全部课程仍然存在巨大挑战。

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