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首页> 外文期刊>SIAM Journal on Applied Mathematics >PARAMETER ESTIMATION FOR MACROSCOPIC PEDESTRIAN DYNAMICS MODELS FROM MICROSCOPIC DATA
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PARAMETER ESTIMATION FOR MACROSCOPIC PEDESTRIAN DYNAMICS MODELS FROM MICROSCOPIC DATA

机译:显微数据宏观行人动力学模型的参数估计

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In this paper we develop a framework for parameter estimation in macroscopic pedestrian models using individual trajectories-microscopic data. We consider a unidirectional flow of pedestrians in a corridor and assume that the velocity decreases with the average density according to the fundamental diagram. Our model is formed from a coupling between a density dependent stochastic differential equation and a nonlinear partial differential equation for the density, and is hence of McKean-Vlasov type. We discuss identifiability of the parameters appearing in the fundamental diagram from trajectories of individuals, and we introduce optimization and Bayesian methods to perform the identification. We analyze the performance of the developed methodologies in various situations, such as for different in- and outflow conditions, for varying numbers of individual trajectories, and for differing channel geometries.
机译:在本文中,我们使用单独的轨迹 - 微观数据在宏观行人模型中开发参数估计框架。 我们考虑走廊中的行人的单向流动,并假设速度随着基本图的平均密度而降低。 我们的模型由密度相关随机微分方程与密度的非线性偏微分方程之间的耦合形成,因此是McKean-Vlasov类型。 我们讨论从个人轨迹的基本图表中出现的参数的可识别性,我们引入了优化和贝叶斯方法来执行识别。 我们在各种情况下分析开发方法的性能,例如用于不同的内流条件,用于不同的单个轨迹,以及不同的通道几何形状。

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