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Agent-based simulation of collective cooperation: from experiment to model

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Version 2 2023-06-12, 09:31
Version 1 2023-06-09, 21:44
journal contribution
posted on 2023-06-12, 09:31 authored by Benedikt Kleinmeier, Gerta Köster, John DruryJohn Drury
Simulation models of pedestrian dynamics have become an invaluable tool for evacuation planning. Typically, crowds are assumed to stream unidirectionally towards a safe area. Simulated agents avoid collisions through mechanisms that belong to each individual, such as being repelled from each other by imaginary forces. But classic locomotion models fail when collective cooperation is called for, notably when an agent, say a first-aid attendant, needs to forge a path through a densely packed group. We present a controlled experiment to observe what happens when humans pass through a dense static crowd. We formulate and test hypotheses on salient phenomena. We discuss our observations in a psychological framework. We derive a model that incorporates: agents’ perception and cognitive processing of a situation that needs cooperation; selection from a portfolio of behaviours, such as being cooperative; and a suitable action, such as swapping places. Agents’ ability to successfully get through a dense crowd emerges as an effect of the psychological model.

History

Publication status

  • Published

File Version

  • Published version

Journal

Journal of the Royal Society, Interface

ISSN

1742-5689

Publisher

The Royal Society

Issue

171

Volume

17

Page range

1-12

Department affiliated with

  • Psychology Publications

Full text available

  • Yes

Peer reviewed?

  • Yes

Legacy Posted Date

2020-10-02

First Open Access (FOA) Date

2020-10-02

First Compliant Deposit (FCD) Date

2020-10-01

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