Large Scale Performance Assessment of the Lighthill-Whitham-Richards Model on a Smart Motorway

Kieran Kalair, C. Connaughton
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Abstract

In this work, we present a large scale assessment of the Lighthill-Whitham-Richards (LWR) model for a modern smart motorway. We use 36 days of loop-level sensor data from the National Traffic Information Service (NTIS) for 29 sections of the M25 motorway around London. The model is tested on 48,697 different test scenarios each consisting of a sequence of at least 3 consecutive loop sensors. Data from the first and last loop sensors are used as boundary data and the model is used to predict the data measured by the interior loops. We find consistent performance across different sections of road, with mean absolute percentage errors typically being below 10% for traffic density. Furthermore, we find accidents and obstructions lead to significantly greater uncertainty in performance when compared to other events. Changing a speed limit during the simulation typically leads a doubling of the prediction error. The relationship between domain length and error is also quantified. We see the smallest domains have around 4% error, whilst the largest have 12%. Finally, the model performs poorly in the extreme lows and highs of congestion and the distributions of errors have very heavy tails.
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智能高速公路lighhill - whitham - richards模型的大规模性能评估
在这项工作中,我们对现代智能高速公路的lighhill - whitham - richards (LWR)模型进行了大规模评估。我们使用了来自国家交通信息服务(NTIS)的36天环路水平传感器数据,用于伦敦周围M25高速公路的29个路段。该模型在48,697个不同的测试场景中进行了测试,每个测试场景由至少3个连续的环路传感器组成。采用第一环和最后环传感器的数据作为边界数据,并用该模型预测内环测量的数据。我们发现在不同路段的表现一致,交通密度的平均绝对百分比误差通常低于10%。此外,我们发现与其他事件相比,事故和障碍会导致更大的性能不确定性。在模拟过程中改变速度限制通常会导致预测误差加倍。还量化了域长度与误差之间的关系。我们看到最小的域大约有4%的误差,而最大的域有12%。最后,模型在拥塞的极端低点和高点表现不佳,误差分布具有非常重的尾部。
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