基于快速傅里叶变换的墨西哥塔巴斯科covid - 19疫情预测

Manuel Sandoval Martínez, Janette Moreno Sandoval, Claudia Morales Barrón, Luz Elba Castillo Izquierdo
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摘要

本文介绍了2020年3月至2022年2月在塔巴斯科州对covid - 19数据进行的分析结果。采用7天移动平均的方法对原始图进行平滑处理,从而更容易分析数据。应用快速傅里叶变换(FFT)来找到频率,使我们能够检测到新冠病毒感染增加的周期(以周为单位)。FFT使我们能够确定在14n周(n=1、3、5、7)期间将出现新的疫情。数据分析显示,在第一波期间,感染人数最多的一周是7月7日至12日(2751例),即第14周(n=1)。FFT提示第42周出现第二波感染,n=3,第40周感染最多(2122例)。下一个预测(变量Delta)是第70周(n=5),那里将有大量病例(第三波);实际数据显示,在第73周达到了这一数字(7,023例)。第四波(Omicron)预计在第98周出现,但在第94周达到了(12834例)。值得注意的是,由于Omicron的高传播性,2022年1月感染人数快速增长,因此在这种情况下,预测与现实之间的差异存在四周的差异,但在第94周病例数仍然很高(1265例)。FFT已经被证明是一个足够的工具来预测在塔巴斯科发生的四波。
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Outbreaks Predictions of Covid19 in Tabasco, Mexico, using Fast Fourier Transform
Results of analysis carried out on data of Covid19, in Tabasco State, are presented, from March 2020 to February 2022. The procedure named 7 day´s moving average was applied to smooth the original graph and, in this way, analyze the data more easily. Fast Fourier transform (FFT) was applied to find the frequency that allows us to detect the period (in weeks) of generation of greater Covid19 infections. FFT allows us to determine that for a period of 14n weeks (n=1,3,5,7) there will be a new outbreak. The analysis of data reveals, during the first wave, the week with the highest number of infections was July 7-12 (2751 cases), that is in week 14 ( n=1). FFT indicates that the second wave of infection would be in week 42 with n=3, the maximum was obtained at week 40 (2122 cases). The next prediction (variant Delta) was for week 70 (n=5), where there would be a high number of cases (thrid wave); real data indicates that it was reached in week 73 (7,023 cases). The four-wave (Omicron) is predicted for week 98, however, it was reached in week 94 (12,834 cases). It should be noted that due to the high transmissibility of Omicron, the number of infection grew fast during January 2022, so in this case, the difference between the prediction and the reality, present a difference of four week, however, for week 94 number of cases remains very high (1265 cases). FFT has turned out to be an adequate tool to make predictions of four waves that have occurred in Tabasco.
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