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Efficient Dynamic Floor Field Methods for Microscopic Pedestrian Crowd Simulations

Published online by Cambridge University Press:  03 June 2015

Dirk Hartmann*
Affiliation:
Siemens AG, Corporate Technology, 80200 Munich, Germany
Peter Hasel*
Affiliation:
Siemens AG, Corporate Technology, 80200 Munich, Germany
*
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Abstract

Floor field methods are one of the most popular medium-scale navigation concepts in microscopic pedestrian simulators. Recently introduced dynamic floor field methods have significantly increased the realism of such simulations, i.e. agreement of spatio-temporal patterns of pedestrian densities in simulations with real world observations. These methods update floor fields continuously taking other pedestrians into account. This implies that computational times are mainly determined by the calculation of floor fields. In this work, we propose a new computational approach for the construction of dynamic floor fields. The approach is based on the one hand on adaptive grid concepts and on the other hand on a directed calculation of floor fields, i.e. the calculation is restricted to the domain of interest. Combining both techniques the computational complexity can be reduced by a factor of 10 as demonstrated by several realistic scenarios. Thus on-line simulations, a requirement of many applications, are possible for moderate realistic scenarios.

Type
Research Article
Copyright
Copyright © Global Science Press Limited 2014

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