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Multiobjective Calibration Framework for Pedestrian Simulation Models: A study on the Effect of Movement Base Cases, Metrics, and Density Levels

机译:用于行人仿真模型的多目标校准框架:运动基础案例,度量和密度水平效果的研究

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Ideally, a multitude of steps has to be taken before a commercial implementation of a pedestrian model is used in practice. Calibration, the main goal of which is to increase the accuracy of the predictions by determining the set of values for the model parameters that allows for the best replication of reality, has an important role in this process. Yet, up to recently, calibration has received relatively little attention within the field of pedestrian modelling. Most studies focus only on one specific movement base case and/or use a single metric. It is questionable how generally applicable a pedestrian simulation model is that has been calibrated using a limited set of movement base cases and one metric. The objective of this research is twofold, namely, to (1) determine the effect of the choice of movement base cases, metrics, and density levels on the calibration results and (2) to develop a multiple-objective calibration approach to determine the aforementioned effects. In this paper a multiple-objective calibration scheme is presented for pedestrian simulation models, in which multiple normalized metrics (i.e., flow, spatial distribution, effort, and travel time) are combined by means of weighted sum method that accounts for the stochastic nature of the model. Based on the analysis of the calibration results, it can be concluded that (1) it is necessary to use multiple movement base cases when calibrating a model to capture all relevant behaviours, (2) the level of density influences the calibration results, and (3) the choice of metric or combinations of metrics influence the results severely.
机译:理想地,在实践中使用行人模型的商业实施之前必须采取多种步骤。校准,主要目的是通过确定允许最佳现实复制的模型参数的值来提高预测的准确性,在此过程中具有重要作用。然而,最近,校准在行人建模领域内得到了相对较少的关注。大多数研究只关注一个特定的运动基础案例和/或使用单个度量。它是如何使用有限的一组运动基箱和一个度量来校准的行人仿真模型。这项研究的目的是双重的,即(1)确定运动基本情况,度量和密度水平的选择对校准结果和(2)来开发多目标校准方法来确定上述前述方法效果。在本文中,为行人仿真模型提供了一种多目标校准方案,其中通过对随机性质的加权和方法组合了多种归一化度量(即,流量,空间分布,努力和行驶时间)该模型。基于对校准结果的分析,可以得出结论,(1)在校准模型以捕获所有相关行为时,必须使用多个运动基础情况,(2)密度水平影响校准结果,并( 3)测量的度量或指标组合严重影响结果。

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