How to optimize the supply and allocation of medical emergency resources during public health emergencies
The solutions to the supply and allocation of medical emergency resources during public health emergencies greatly affect the efficiency of epidemic prevention and control. Currently, the main problem in computational epidemiology is how the allocation scheme should be adjusted in accordance with ep...
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sg-ntu-dr.10356-1453592023-03-04T17:11:58Z How to optimize the supply and allocation of medical emergency resources during public health emergencies Wang, Chunyu Deng, Yue Yuan, Ziheng Zhang, Chijun Zhang, Fan Cai, Qing Gao, Chao Kurths, Jurgen School of Mechanical and Aerospace Engineering Engineering::Mechanical engineering COVID-19 Computational Epidemiology The solutions to the supply and allocation of medical emergency resources during public health emergencies greatly affect the efficiency of epidemic prevention and control. Currently, the main problem in computational epidemiology is how the allocation scheme should be adjusted in accordance with epidemic trends to satisfy the needs of population coverage, epidemic propagation prevention, and the social allocation balance. More specifically, the metropolitan demand for medical emergency resources varies depending on different local epidemic situations. It is therefore difficult to satisfy all objectives at the same time in real applications. In this paper, a data-driven multi-objective optimization method, called as GA-PSO, is proposed to address such problem. It adopts the one-way crossover and mutation operations to modify the particle updating framework in order to escape the local optimum. Taking the megacity Shenzhen in China as an example, experiments show that GA-PSO effectively balances different objectives and generates a feasible allocation strategy. Such a strategy does not only support the decision-making process of the Shenzhen center in terms of disease control and prevention, but it also enables us to control the potential propagation of COVID-19 and other epidemics. Published version 2020-12-18T04:00:33Z 2020-12-18T04:00:33Z 2020 Journal Article Wang, C., Deng, Y., Yuan, Z., Zhang, C., Zhang, F., Cai, Q., . . . Kurths, J. (2020). How to optimize the supply and allocation of medical emergency resources during public health emergencies. Frontiers in Physics, 8, 383-. doi:10.3389/fphy.2020.00383 2296-424X https://hdl.handle.net/10356/145359 10.3389/fphy.2020.00383 8 en Frontiers in Physics © 2020 Wang, Deng, Yuan, Zhang, Zhang, Cai, Gao and Kurths. This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms. application/pdf |
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Engineering::Mechanical engineering COVID-19 Computational Epidemiology Wang, Chunyu Deng, Yue Yuan, Ziheng Zhang, Chijun Zhang, Fan Cai, Qing Gao, Chao Kurths, Jurgen How to optimize the supply and allocation of medical emergency resources during public health emergencies |
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The solutions to the supply and allocation of medical emergency resources during public health emergencies greatly affect the efficiency of epidemic prevention and control. Currently, the main problem in computational epidemiology is how the allocation scheme should be adjusted in accordance with epidemic trends to satisfy the needs of population coverage, epidemic propagation prevention, and the social allocation balance. More specifically, the metropolitan demand for medical emergency resources varies depending on different local epidemic situations. It is therefore difficult to satisfy all objectives at the same time in real applications. In this paper, a data-driven multi-objective optimization method, called as GA-PSO, is proposed to address such problem. It adopts the one-way crossover and mutation operations to modify the particle updating framework in order to escape the local optimum. Taking the megacity Shenzhen in China as an example, experiments show that GA-PSO effectively balances different objectives and generates a feasible allocation strategy. Such a strategy does not only support the decision-making process of the Shenzhen center in terms of disease control and prevention, but it also enables us to control the potential propagation of COVID-19 and other epidemics. |
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School of Mechanical and Aerospace Engineering |
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School of Mechanical and Aerospace Engineering Wang, Chunyu Deng, Yue Yuan, Ziheng Zhang, Chijun Zhang, Fan Cai, Qing Gao, Chao Kurths, Jurgen |
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Article |
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Wang, Chunyu Deng, Yue Yuan, Ziheng Zhang, Chijun Zhang, Fan Cai, Qing Gao, Chao Kurths, Jurgen |
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Wang, Chunyu |
title |
How to optimize the supply and allocation of medical emergency resources during public health emergencies |
title_short |
How to optimize the supply and allocation of medical emergency resources during public health emergencies |
title_full |
How to optimize the supply and allocation of medical emergency resources during public health emergencies |
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How to optimize the supply and allocation of medical emergency resources during public health emergencies |
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How to optimize the supply and allocation of medical emergency resources during public health emergencies |
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how to optimize the supply and allocation of medical emergency resources during public health emergencies |
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2020 |
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https://hdl.handle.net/10356/145359 |
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