Abstract
In this chapter we review some of the most important models at microscopic, macroscopic, and mesoscopic scale, which, in our opinion, represent milestones in their respective fields or are of particular interest for this book. We also report some models for rational pedestrians, which make use of techniques from optimal control theory. For the sake of convenience, we present all models in two space dimensions.
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Cristiani, E., Piccoli, B., Tosin, A. (2014). An Overview of the Modeling of Crowd Dynamics. In: Multiscale Modeling of Pedestrian Dynamics. MS&A, vol 12. Springer, Cham. https://doi.org/10.1007/978-3-319-06620-2_4
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