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Using ensemble Kalman filter to determine parameters for computational crowd dynamics simulations

Fumiya Togashi (Applied Simulations, Inc., Potomac, Maryland, USA)
Takashi Misaka (Frontier Research Institute for Interdisciplinary Science, Tohoku University, Sendai, Japan)
Rainald Löhner (Department of Computational and Data Sciences, George Mason University, Fairfax, Virginia, USA)
Shigeru Obayashi (Institute of Fluid Science, Tohoku University, Sendai, Japan)

Engineering Computations

ISSN: 0264-4401

Article publication date: 22 October 2018

Issue publication date: 25 October 2018

191

Abstract

Purpose

It is of paramount importance to ensure safe and fast evacuation routes in cities in case of natural disasters, environmental accidents or acts of terrorism. The same applies to large-scale events such as concerts, sport events and religious pilgrimages as airports and to traffic hubs such as airports and train stations. The prediction of pedestrian is notoriously difficult because it varies depending on circumstances (age group, cultural characteristics, etc.). In this study, the Ensemble Kalman Filter (EnKF) data assimilation technique, which uses the updated observation data to improve the accuracy of the simulation, was applied to improve the accuracy of numerical simulations of pedestrian flow.

Design/methodology/approach

The EnKF, one of the data assimilation techniques, was applied to the in-house numerical simulation code for pedestrian flow. Two cases were studied in this study. One was the simplified one-directional experimental pedestrian flow. The other was the real pedestrian flow at the Kaaba in Mecca. First, numerical simulations were conducted using the empirical input parameter sets. Then, using the observation data, the EnKF estimated the appropriate input parameter sets. Finally, the numerical simulations using the estimated parameter sets were conducted.

Findings

The EnKF worked on the numerical simulations of pedestrian flow very effectively. In both cases: simplified experiment and real pedestrian flow, the EnKF estimated the proper input parameter sets which greatly improved the accuracy of the numerical simulation. The authors believe that the technique such as EnKF could also be used effectively in other fields of computational engineering where simulations and data have to be merged.

Practical implications

This technique can be used to improve both design and operational implementations of pedestrian and crowd dynamics predictions. It should be of high interest to command and control centers for large crowd events such as concerts, airports, train stations and pilgrimage centers.

Originality/value

To the authors’ knowledge, the data assimilation technique has not been applied to a numerical simulation of pedestrian flow, especially to the real pedestrian flow handling millions pedestrian such as the Mataf at the Kaaba. This study validated the capability and the usefulness of the data assimilation technique to numerical simulations for pedestrian flow.

Keywords

Citation

Togashi, F., Misaka, T., Löhner, R. and Obayashi, S. (2018), "Using ensemble Kalman filter to determine parameters for computational crowd dynamics simulations", Engineering Computations, Vol. 35 No. 7, pp. 2612-2628. https://doi.org/10.1108/EC-03-2018-0115

Publisher

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Emerald Publishing Limited

Copyright © 2018, Emerald Publishing Limited

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