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Epidemic monitoring in real-time based on dynamic grid search and Monte Carlo numerical simulation algorithm.


ABSTRACT: Building upon the foundational principles of the grid search algorithm and Monte Carlo numerical simulation, this article introduces an innovative epidemic monitoring and prevention plan. The plan offers the capability to accurately identify the sources of infectious diseases and predict the final scale and duration of the epidemic. The proposed plan is implemented in schools and society, utilizing computer simulation analysis. Through this analysis, the plan enables precise localization of infection sources for various demographic groups, with an error rate of less than 3%. Additionally, the plan allows for the estimation of the epidemic cycle duration, which typically spans around 14 days. Notably, higher population density enhances fault tolerance and prediction accuracy, resulting in smaller errors and more reliable simulation outcomes. Overall, this study provides highly valuable theoretical guidance for effective epidemic prevention and control efforts.

SUBMITTER: Chen X 

PROVIDER: S-EPMC10403190 | biostudies-literature | 2023

REPOSITORIES: biostudies-literature

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Epidemic monitoring in real-time based on dynamic grid search and Monte Carlo numerical simulation algorithm.

Chen Xin X   Ning Huijun H   Guo Liuwang L   Diao Dongming D   Zhou Xinru X   Zhang Xiaoliang X  

PeerJ. Computer science 20230712


Building upon the foundational principles of the grid search algorithm and Monte Carlo numerical simulation, this article introduces an innovative epidemic monitoring and prevention plan. The plan offers the capability to accurately identify the sources of infectious diseases and predict the final scale and duration of the epidemic. The proposed plan is implemented in schools and society, utilizing computer simulation analysis. Through this analysis, the plan enables precise localization of infe  ...[more]

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