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Advanced models for centroidal particle dynamics: short-range collision avoidance in dense crowds

机译:质心粒子动力学的先进模型:密集人群中的短程碰撞避免

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Computer simulation of dense crowds is finding increased use in event planning, congestion prediction, and threat assessment. State-of-the-art particle-based crowd methods assume and aim for collision-free trajectories. That is an idealistic yet not overly realistic expectation, as near-collisions increase in dense and rushed settings compared with typically sparse pedestrian scenarios. Centroidal particle dynamics (CPD) is a method we defined that explicitly models the compressible personal space area surrounding each entity to inform its local pathing and collision-avoidance decisions. We illustrate how our proposed agent-based method for local dynamics can reproduce several key emergent dense crowd phenomena at the microscopic level with higher congruence to real trajectory data and with more visually convincing collision-avoidance paths than the existing state of the art. We present advanced models in which we consider distraction of the pedestrians in the crowd, flocking behavior, interaction with vehicles (ambulances, police) and other advanced models that show that emergent behavior in the simulated crowds is similar to the behavior observed in reality. We discuss how to increase confidence in CPD, potentially making it also suitable for use in safety-critical applications, including urban design, evacuation analysis, and crowd-safety planning.
机译:密集人群的计算机模拟正在寻找在事件规划,拥塞预测和威胁评估中使用的增加。最先进的基于粒子的人群方法假设和瞄准无碰撞轨迹。这是一个理想主义但没有过于现实的期望,因为与典型稀疏的行人情景相比,近乎碰撞的近乎碰撞增加。质心粒子动力学(CPD)是一种我们定义的方法,该方法明确地模拟了每个实体周围的可压缩个人空间区域,以通知其当地的曲线和碰撞决策。我们说明了我们所提出的基于代理的局部动态方法如何在显微镜水平上重现几个关键的紧急致密人群现象,其具有更高的实际轨迹数据,并且具有比现有技术的现有技术更高的攻击避免路径。我们展示了先进的模型,其中我们考虑在人群中分心行人,植绒行为,与车辆的互动(救护车,警察)和其他先进模型,表明模拟人群中的紧急行为类似于现实所观察到的行为。我们讨论如何增加CPD的信心,潜在地使其适用于安全关键型应用,包括城市设计,疏散分析和人群安全规划。

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