在一个孤立的偶然事件中感染传播和检测的确定性和随机模型

A. Chigarev, M. Zhuravkov, Vitaliy A. Chigarev
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引用次数: 1

摘要

考虑了通过添加测试模型来描述传染过程动力学发展的数学SIR模型的推广。由于无法直接测量的变量,拟议的程序需要扩展状态的空间维度,但允许您更充分地描述真实情况下发生的过程。SIR模型的进一步推广是通过考虑状态估计和预测中的随机性来考虑的,这是通过应用与后验概率的Fokker–Planck–Kolmogorov方程相关的随机微分方程方法来实现的。正如新冠肺炎实践所表明的那样,现代识别、诊断和监测手段的广泛使用并不能保证在人群中获得有关个人状况的足够信息。在最初阶段对真实的流行病过程进行建模时,建议使用启发式建模方法,然后使用数学建模方法,使用随机、不确定的模糊方法来完善模型,使您能够考虑到在信息不完整的系统中发生流、决策和控制的事实。为了开发更现实的模型,必须考虑空间动力学,这反过来又需要使用具有分布参数的系统模型(例如连续力学模型)。显然,流行病及其控制的现实模型应该包括经济和社会动力学模型。流行病及其发展的预测问题将不亚于气候变化预测、天气预报和地震预测问题。
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Deterministic and stochastic models of infection spread and testing in an isolated contingent
The mathematical SIR model generalisation for description of the infectious process dynamics development by adding a testing model is considered. The proposed procedure requires the expansion of states’ space dimension due to variables that cannot be measured directly, but allow you to more adequately describe the processes that occur in real situations. Further generalisation of the SIR model is considered by taking into account randomness in state estimates, forecasting, which is achieved by applying the stochastic differential equations methods associated with the application of the Fokker – Planck – Kolmogorov equations for posterior probabilities. As COVID-19 practice has shown, the widespread use of modern means of identification, diagnosis and monitoring does not guarantee the receipt of adequate information about the individual’s condition in the population. When modelling real epidemic processes in the initial stages, it is advisable to use heuristic modelling methods, and then refine the model using mathematical modelling methods using stochastic, uncertain-fuzzy methods that allow you to take into account the fact that flow, decision-making and control occurs in systems with incomplete information. To develop more realistic models, spatial kinetics must be taken into account, which, in turn, requires the use of systems models with distributed parameters (for example, models of continua mechanics). Obviously, realistic models of epidemics and their control should include models of economic, sociodynamics. The problems of forecasting epidemics and their development will be no less difficult than the problems of climate change forecasting, weather forecast and earthquake prediction.
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CiteScore
0.50
自引率
0.00%
发文量
21
审稿时长
16 weeks
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