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Robust Calibration of Macroscopic Traffic Simulation Models using Stochastic Collocation

机译:随机配置的宏观交通仿真模型的稳健标定

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The predictions of a well-calibrated traffic simulation model are much more valid if made for various conditions. Variation in traffic can arise due to many factors such as time of day, work zones, weather, etc. Calibration of traffic simulation models for traffic conditions requires larger datasets to capture the stochasticity in traffic conditions. In this study we use datasets spanning large time periods to incorporate variability in traffic flow, speed for various time periods. However, large data poses a challenge in terms of computational effort. With the increase in number of stochastic factors, the numerical methods suffer from the curse of dimensionality. In this study, we propose a novel methodology to address the computational complexity due to the need for the calibration of simulation models under highly stochastic traffic conditions. This methodology is based on sparse grid stochastic collocation, which, treats each stochastic factor as a different dimension and uses a limited number of points where simulation and calibration are performed. A computationally efficient interpolant is constructed to generate the full distribution of the simulated flow output. We use real-world examples to calibrate for different times of day and conditions and show that this methodology is much more efficient that the traditional Monte Carlo-type sampling. We validate the model using a hold out dataset and also show the drawback of using limited data for the calibration of a macroscopic simulation model. We also discuss the drawbacks of using a single calibrated model for all the data.
机译:如果针对各种条件进行,经过良好校准的交通模拟模型的预测将更为有效。由于许多因素(例如一天中的时间,工作区域,天气等),交通量会发生变化。针对交通状况的交通模拟模型的校准需要较大的数据集以捕获交通状况中的随机性。在这项研究中,我们使用跨越较大时间段的数据集来整合不同时间段的交通流量,速度的可变性。但是,大数据在计算工作量方面提出了挑战。随着随机因素数量的增加,数值方法遭受了维数的诅咒。在这项研究中,我们提出了一种新颖的方法来解决计算复杂性,这是由于在高度随机交通状况下需要对仿真模型进行校准。该方法基于稀疏的网格随机配置,该方法将每个随机因素视为不同的维度,并使用执行模拟和校准的有限点数。构建了计算上有效的插值器,以生成模拟流量输出的完整分布。我们使用实际示例对一天中的不同时间和条件进行校准,并表明此方法比传统的蒙特卡洛型采样更为有效。我们使用保留数据集验证模型,并且还显示了使用有限的数据进行宏观仿真模型校准的缺点。我们还将讨论对所有数据使用单个校准模型的弊端。

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