分段crowi - amsaa法预测伊朗冠状病毒感染与死亡

P. Gholami, S. Elahian
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引用次数: 1

摘要

可靠性增长是指在一段时间内,由于设计或产品过程的变化,产品标准(或参数)的积极改进。通过分析系统的可靠性增长可以看出,在疫情的某一阶段,传播的增长和感染率随时间的变化而变化。在疾病传播期间,确定问题领域并增加对疾病的了解,然后可以重新设计或重新加工初始治疗和工具,以采取适当的纠正行动。换句话说,疾病传播的每个阶段都有不同程度的生长传播,这取决于适当的纠正行动。因此,根据这种情况,存在用非齐次泊松过程(NHPP)描述现象的条件。然而,基于指数分布的传统流行病学模型不能预测疫情不同阶段的疾病增长。为此,本文采用基于非齐次泊松过程的Piecewise crowi - amsaa (NHPP)模型对新冠肺炎疫情的感染人数增长和死亡人数进行预测。最初,将伊朗累计确诊病例和死亡数据在人工分离的基础上分成几个部分,以找出每个不同时间段的每个不同感染阶段。然后将crowo - amsaa (NHPP)模型应用于分割后的数据。在疫情的每个阶段,使用最大似然估计(MLE)技术独立估计模型参数。最后,对各阶段的生长参数进行了比较,并对外部和环境因素进行了识别和检验。关键词:冠状病毒,非均匀泊松过程(NHPP),分段crowwise - amsaa (NHPP),感染病例,死亡
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Use Piecewise Crow-AMSAA Method to Predict Infection and Death of Corona virus in Iran
Reliability growth is the positive improvement in a product’s criteria (or parameter) over a period of time due to changes in the design or product process. By analyzing the growth of reliability in a system, it can be seen that at a certain stage of the epidemic, the growth of the transmission and the rate of infection change over time. During the spread of disease, problem areas are identified and knowledge of the disease increased and then initial treatment and tools may be redesigned or reprocessed to take appropriate corrective action. In other words, each stage of the spread of the disease has a different level of growth transmission depending on appropriate corrective action. Therefore, according to this case, there are conditions under which phenomena can be described by Non-Homogeneous Poisson Process (NHPP). However, traditional epidemiological models based on exponential distribution are not able to predict disease growth during different stages of the outbreak. Therefore, in this paper, the Piecewise Crow-AMSAA (NHPP) model, which is based on the Non-Homogeneous Poisson process, is used to predict the growth of infected cases and deaths of Coronavirus outbreak. Initially, the Iran cumulative confirmed case and death data are divided into several sections based on the manual separation to find out each different infection phase at each different time period. Then Crow-AMSAA (NHPP) model is applied to the segmented data. At each stage of the outbreak, the model parameters are estimated independently using the maximum likelihood estimation (MLE) technique. Finally, the growth parameters in each stage are compared with each other and external and environmental factors are identified and examined. Keyword: Coronavirus, Non-Homogeneous Poisson Process (NHPP), Piecewise Crow-AMSAA (NHPP), Infected cases, Deaths.
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