Waves of the dynamics of the rate of increase in the parameters of Covid-19 in Russia for 03/25/2020-12/31/2020 and the forecast of all cases until 08/31/2021

P. Mazurkin
{"title":"Waves of the dynamics of the rate of increase in the parameters of Covid-19 in Russia for 03/25/2020-12/31/2020 and the forecast of all cases until 08/31/2021","authors":"P. Mazurkin","doi":"10.17352/amp.000024","DOIUrl":null,"url":null,"abstract":"In applied mathematics and statistics, only linear equations are still used. The article proposes the sum of asymmetric wavelets with variable amplitudes and periods of oscillation. As a result, the behavior of any object or subject is given by the sum of vibrations. Using the identifi cation method based on statistical daily data on four indicators of the dynamics of the rate of Covid-19, quanta of the pandemic behavior in the territory of the Russian Federation from March 25 to December 31, 2020 were identifi ed. It is shown that the rates are infected, cured, died, and “all cases = infected + cured + died” in Russia got two superimposed bulges. Based on the computational capabilities of CurveExpert-1.40, 4-5 components were jointly identifi ed with an overall correlation coeffi cient above 0.86 for infected and over 0.99 for all cases. It has been proven that the spread of the virus has the form of a set of fi nite-dimensional wavelets with variable amplitudes and, as a rule, with a decreasing oscillation period. By modeling the standard deviation by the serial numbers of the wavelets, it was proved that the parameters of the Covid-19 pandemic have fractal distributions. For the velocity parameter “died”, the main bulge does not reach its maximum. And the second member of the trend peaked at 164 deaths on 06/18/2020, and it will leave the scene from 03/23/2021. The third member of the model, aimed at countering mortality, at the beginning of the time series on 03/25/2020 received a fl uctuation period of 355 days. By the date of December 31, 2020, the fl uctuation period became equal to 278 days. More often with constant half-periods of 3.5 and 16.1 days, fl uctuations occurred. In this case, the 70th term gives a constant oscillation period, even 1.88 days. The average relative modeling error in modulus is equal for speeds: 1) died 2.09; all cases 3.22; cured 17.17 and infected 29.91%. In this case, the range of error values changes in the following intervals: 1) died from -18.93 to 11.95%; all cases from -31.37 to 20.20%; cured from -248.8 to 396.0%; infected from -1934.0 to 779.7%. According to the distributions of the relative error after 1%, the following rating was obtained: 1) the correlation coeffi cient of 0.9807 for the speed died; 2) at 0.9768 the rate of all cases; 3) 0.8640 has been cured; 4) 0.8174 infected. The fractality coeffi cient is equal to the ratio of the standard deviations of the linear model to the last component: for infected 3572.76 / 310.97 = 11.5; cured 5.8; died 24.3 and all cases 9.6. Further, due to the high range of relative error, the rates of cured and infected are excluded from forecasting. The forecast for the rate of deaths was carried out until 02/14/2021. The right border at the forecast horizon was adopted due to the fact that negative values appear from 15.02.2021. For a longer time interval from 01.01.2021 to 31.08.2021 the model allows predicting the rate of change of all cases. To reduce the relative modeling error, it is recommended to re-identify the model of the dynamics of the parameters died and all cases every three weeks. The identifi cation method is applicable to any statistical series, and not only to dynamic ones. Research Article","PeriodicalId":430514,"journal":{"name":"Annals of Mathematics and Physics","volume":"16 1","pages":"0"},"PeriodicalIF":0.0000,"publicationDate":"2021-07-27","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"2","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"Annals of Mathematics and Physics","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.17352/amp.000024","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"","JCRName":"","Score":null,"Total":0}
引用次数: 2

Abstract

In applied mathematics and statistics, only linear equations are still used. The article proposes the sum of asymmetric wavelets with variable amplitudes and periods of oscillation. As a result, the behavior of any object or subject is given by the sum of vibrations. Using the identifi cation method based on statistical daily data on four indicators of the dynamics of the rate of Covid-19, quanta of the pandemic behavior in the territory of the Russian Federation from March 25 to December 31, 2020 were identifi ed. It is shown that the rates are infected, cured, died, and “all cases = infected + cured + died” in Russia got two superimposed bulges. Based on the computational capabilities of CurveExpert-1.40, 4-5 components were jointly identifi ed with an overall correlation coeffi cient above 0.86 for infected and over 0.99 for all cases. It has been proven that the spread of the virus has the form of a set of fi nite-dimensional wavelets with variable amplitudes and, as a rule, with a decreasing oscillation period. By modeling the standard deviation by the serial numbers of the wavelets, it was proved that the parameters of the Covid-19 pandemic have fractal distributions. For the velocity parameter “died”, the main bulge does not reach its maximum. And the second member of the trend peaked at 164 deaths on 06/18/2020, and it will leave the scene from 03/23/2021. The third member of the model, aimed at countering mortality, at the beginning of the time series on 03/25/2020 received a fl uctuation period of 355 days. By the date of December 31, 2020, the fl uctuation period became equal to 278 days. More often with constant half-periods of 3.5 and 16.1 days, fl uctuations occurred. In this case, the 70th term gives a constant oscillation period, even 1.88 days. The average relative modeling error in modulus is equal for speeds: 1) died 2.09; all cases 3.22; cured 17.17 and infected 29.91%. In this case, the range of error values changes in the following intervals: 1) died from -18.93 to 11.95%; all cases from -31.37 to 20.20%; cured from -248.8 to 396.0%; infected from -1934.0 to 779.7%. According to the distributions of the relative error after 1%, the following rating was obtained: 1) the correlation coeffi cient of 0.9807 for the speed died; 2) at 0.9768 the rate of all cases; 3) 0.8640 has been cured; 4) 0.8174 infected. The fractality coeffi cient is equal to the ratio of the standard deviations of the linear model to the last component: for infected 3572.76 / 310.97 = 11.5; cured 5.8; died 24.3 and all cases 9.6. Further, due to the high range of relative error, the rates of cured and infected are excluded from forecasting. The forecast for the rate of deaths was carried out until 02/14/2021. The right border at the forecast horizon was adopted due to the fact that negative values appear from 15.02.2021. For a longer time interval from 01.01.2021 to 31.08.2021 the model allows predicting the rate of change of all cases. To reduce the relative modeling error, it is recommended to re-identify the model of the dynamics of the parameters died and all cases every three weeks. The identifi cation method is applicable to any statistical series, and not only to dynamic ones. Research Article
2020年3月25日至12月31日期间俄罗斯Covid-19参数增长率的动态波动,以及2021年8月31日之前所有病例的预测
在应用数学和统计学中,只使用线性方程。本文提出了具有可变振幅和周期振荡的非对称小波的和。因此,任何物体或主体的行为都是由振动的总和给出的。采用基于2019冠状病毒病发病率动态4项指标统计日数据的识别方法,对2020年3月25日至12月31日俄罗斯联邦境内的大流行行为进行了定量识别,结果表明,俄罗斯境内的感染率为感染、治愈、死亡,“所有病例=感染+治愈+死亡”出现了两个叠加凸起。基于CurveExpert-1.40的计算能力,4-5个成分被联合识别,感染的总体相关系数大于0.86,所有病例的总体相关系数大于0.99。已经证明,病毒的传播具有一组可变振幅的有限维小波的形式,并且通常具有逐渐减小的振荡周期。通过对小波序列的标准差进行建模,证明了新冠肺炎大流行的参数具有分形分布。对于速度参数“死亡”,主凸起没有达到最大值。这一趋势的第二个成员在2020年6月18日达到164人死亡的峰值,并将从2021年3月23日离开。该模型的第三个成员旨在消除死亡率,在时间序列开始时,即2020年3月25日,其波动期为355天。截至2020年12月31日,波动周期为278天。更常见的是,在3.5天和16.1天的固定半衰期,出现了波动。在这种情况下,第70项给出了一个恒定的振荡周期,甚至是1.88天。模量的平均相对建模误差对速度相等:1)为2.09;所有病例3.22;治愈17.17%,感染29.91%。在这种情况下,误差值的范围在以下区间内变化:1)从-18.93到11.95%;所有病例为- 31.37% ~ 20.20%;固化范围-248.8 ~ 396.0%;感染率从-1934.0到779.7%。根据1%后相对误差的分布,得到以下评级:1)速度死亡的相关系数为0.9807;2)所有病例的发生率为0.9768;3) 0.8640已固化;4)感染人数0.8174人。分形系数等于线性模型的标准差与最后一个分量的比值:对于感染的3572.76 / 310.97 = 11.5;治愈5.8;死亡24.3例,全部病例9.6例。此外,由于相对误差范围较大,在预测中不包括治愈率和感染率。对死亡率的预测一直进行到2021年2月14日。由于从2021年2月15日开始出现负值,因此采用了预测地平线的右侧边界。在2021年1月1日至2021年8月31日的较长时间间隔内,该模型可以预测所有情况的变化率。为了减少相对建模误差,建议每三周重新识别模型中死亡和所有情况下的动力学参数。该识别方法不仅适用于动态序列,而且适用于任何统计序列。研究文章
本文章由计算机程序翻译,如有差异,请以英文原文为准。
求助全文
约1分钟内获得全文 求助全文
来源期刊
自引率
0.00%
发文量
0
×
引用
GB/T 7714-2015
复制
MLA
复制
APA
复制
导出至
BibTeX EndNote RefMan NoteFirst NoteExpress
×
提示
您的信息不完整,为了账户安全,请先补充。
现在去补充
×
提示
您因"违规操作"
具体请查看互助需知
我知道了
×
提示
确定
请完成安全验证×
copy
已复制链接
快去分享给好友吧!
我知道了
右上角分享
点击右上角分享
0
联系我们:info@booksci.cn Book学术提供免费学术资源搜索服务,方便国内外学者检索中英文文献。致力于提供最便捷和优质的服务体验。 Copyright © 2023 布克学术 All rights reserved.
京ICP备2023020795号-1
ghs 京公网安备 11010802042870号
Book学术文献互助
Book学术文献互助群
群 号:481959085
Book学术官方微信