Authors
Keiran Suchak, Minh Kieu, Yannick Oswald, Jonathan A Ward, Nick Malleson
Publication date
2024/4/10
Journal
Royal Society Open Science
Volume
11
Issue
4
Pages
231553
Publisher
The Royal Society
Description
Agent-based modelling has emerged as a powerful tool for modelling systems that are driven by discrete, heterogeneous individuals and has proven particularly popular in the realm of pedestrian simulation. However, real-time agent-based simulations face the challenge that they will diverge from the real system over time. This paper addresses this challenge by integrating the ensemble Kalman filter (EnKF) with an agent-based crowd model to enhance its accuracy in real time. Using the example of Grand Central Station in New York, we demonstrate how our approach can update the state of an agent-based model in real time, aligning it with the evolution of the actual system. The findings reveal that the EnKF can substantially improve the accuracy of agent-based pedestrian simulations by assimilating data as they evolve. This approach not only offers efficiency advantages over existing methods but also presents …
Scholar articles
K Suchak, M Kieu, Y Oswald, JA Ward, N Malleson - Royal Society Open Science, 2024