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CN 34-1304/RISSN 1674-3679

Volume 27 Issue 6
Jun.  2023
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Article Contents
WU Jianqi, WANG Xilu, LIU Junwei, ZHANG Jianghui, LI Chuan, ZHU Qingming, LI Jiangyuan, SU Jijuan, LIU Chang. A dynamic epidemic prevention and control model based on cybernetics[J]. CHINESE JOURNAL OF DISEASE CONTROL & PREVENTION, 2023, 27(6): 621-626. doi: 10.16462/j.cnki.zhjbkz.2023.06.001
Citation: WU Jianqi, WANG Xilu, LIU Junwei, ZHANG Jianghui, LI Chuan, ZHU Qingming, LI Jiangyuan, SU Jijuan, LIU Chang. A dynamic epidemic prevention and control model based on cybernetics[J]. CHINESE JOURNAL OF DISEASE CONTROL & PREVENTION, 2023, 27(6): 621-626. doi: 10.16462/j.cnki.zhjbkz.2023.06.001

A dynamic epidemic prevention and control model based on cybernetics

doi: 10.16462/j.cnki.zhjbkz.2023.06.001
Funds:

Strategic Research and Consulting Project of Chinese Academy of Engineering 2022-XZ-43

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  • Corresponding author: LIU Junwei, E-mail: hfjwliu4@163.com
  • Received Date: 2023-03-16
  • Rev Recd Date: 2023-04-05
  • Available Online: 2023-07-10
  • Publish Date: 2023-06-10
  • Infectious diseases have been one of the greatest threats to human life since ancient times. The COVID-19 pandemic, which has had a full impact on the world since 2019, also shows that it is a long way to go in studying infectious disease transmission patterns. The spread of the epidemic is regarded as a dynamic system. The negative feedback mechanism is introduced into the infectious disease transmission model. This paper reveals the role of control measures and technological means in epidemic prevention, which can provide guidance to help effectively prevent both major epidemics such as COVID-19 and biological weapons in the future.
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