论文标题
行人运动建模的现场方法
A field approach for pedestrian movement modelling
论文作者
论文摘要
有不同的基于物理学的方法来分析行人运动。基于物理学的方法(例如基于统计力学的模型)将物理定律应用于驱动方程以分析人群行为。本文将基于现场理论引入基于物理的方法,作为人群分析的新工具,以确定控制微分方程。用微分方程制定行人运动具有数据同化技术的主要优势,因为其中一些方法仅与具有分析过渡功能的模型一起使用,这些模型是通过合并现场方法而获得的。此外,由于字段可能是任何标量字段,因此该字段方法提供了更多的通用性。这项工作中介绍了几个拉格朗日人,主要目的是为这种新型思维奠定基础。此外,由于行人运动主要不受监管,因此论文中介绍的方法对于将来的发展可能很有价值,因为可以明确获得用于行人运动空间(例如火车站和购物中心)的拉格朗日。最后,我们讨论了一种预测动作以及神经网络如何发挥作用的一般方法,这为我们的方法带来了更大的灵活性和扩展性。
There are different physics-based approaches for analysing pedestrian movement. Physics-based methods like statistical mechanics-based models apply the laws of physics to drive equations for analysing crowd behaviour. This paper will introduce a physics-based approach based on field theory as a new tool for crowd analysis to determine governing differential equations. Formulating the pedestrian movement with differential equations has a primary advantage for data assimilation techniques because some of these methods only work with models with analytical transition functions, which are obtained by incorporating a field approach. Furthermore, the field approach provides more generality since the field could be any scalar field. Several Lagrangians are presented in this work, and the primary purpose was to lay the groundwork for this new type of thinking. Furthermore, as pedestrian movement is mainly unregulated, the approach presented in the paper can be valuable for future development since the Lagrangian could be explicitly obtained for pedestrian movement spaces such as train stations and shopping malls. Finally, we discuss a general approach for predicting the action and how neural networks might play a role, which brings more flexibility and extendibility to our approach.