Using agent-based simulation to assess disease prevention measures during pandemics

Yunhe Tong, Christopher King, Yanghui Hu

Research output: Contribution to journalArticlepeer-review

Abstract

Despite the growing interest in macroscopic epidemiological models to deal with threats posed by pandemics such as COVID-19, little has been done regarding the assessment of disease spread in day-to-day life, especially within buildings such as supermarkets where people must obtain necessities at the risk of exposure to disease. Here, we propose an integrated customer shopping simulator including both shopper movement and choice behavior, using a force-based and discrete choice model, respectively. By a simple extension to the force-based model, we implement the following preventive measures currently taken by supermarkets; social distancing and one-way systems, and different customer habits, assessing them based on the average individual disease exposure and the time taken to complete shopping (shopping efficiency). Results show that maintaining social distance is an effective way to reduce exposure, but at the cost of shopping efficiency. We find that the one-way system is the optimal strategy for reducing exposure while minimizing the impact on shopping efficiency. Customers should also visit supermarkets less frequently, but buy more when they do, if they wish to minimize their exposure. We hope that this work demonstrates the potential of pedestrian dynamics simulations in assessing preventative measures during pandemics, particularly if it is validated using empirical data.
Original languageEnglish
Article number098903
JournalChinese Physics B
Volume30
Issue number9
Early online date28 Jun 2021
DOIs
Publication statusPublished - Sept 2021

Keywords / Materials (for Non-textual outputs)

  • pedestrian dynamics
  • occupant exposure
  • COVID-19
  • simulation study

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