TY - JOUR T1 - Forecasting crowd dynamics through coarse-grained data analysis JF - bioRxiv DO - 10.1101/175760 SP - 175760 AU - Sebastien Motsch AU - Mehdi Moussaïd AU - Elsa G. Guillot AU - Mathieu Moreau AU - Julien Pettré AU - Guy Theraulaz AU - Cécile Appert-Rolland AU - Pierre Degond Y1 - 2017/01/01 UR - http://biorxiv.org/content/early/2017/08/30/175760.abstract N2 - Understanding and predicting the collective behaviour of crowds is essential to improve the efficiency of pedestrian flows in urban areas and minimize the risks of accidents at mass events. We advocate for the development of a & “crowd forecasting system„whereby real-time observations of crowds are coupled to fast and reliable models to produce rapid predictions of the crowd movement and eventually help crowd managers choose between tailored optimization strategies. Here, we propose a Bi-directional Macroscopic (BM) model as the core of such a system. Its key input is the fundamental diagram for bi-directional flows, i.e. the relation between the pedestrian fluxes and densities. We design and run a laboratory experiments involving a total of 119 participants walking in opposite directions in a circular corridor and show that the model is able to accurately capture the experimental data in a typical crowd forecasting situation. Finally, we propose a simple segregation strategy for enhancing the traffic efficiency, and use the BM model to determine the conditions under which this strategy would be beneficial. The BM model, therefore, could serve as a building block to develop on the fly prediction of crowd movements and help deploying real-time crowd optimization strategies. ER -