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Travel time estimation in congested urban networks using point detectors data.

机译:使用点检测器数据估算拥挤城市网络中的旅行时间。

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摘要

A model for estimating travel time on short arterial links of congested urban networks, using currently available technology, is introduced in this thesis. The objective is to estimate travel time, with an acceptable level of accuracy for real-life traffic problems, such as congestion management and emergency evacuation. To achieve this research objective, various travel time estimation methods, including highway trajectories, multiple linear regression (MLR), artificial neural networks (ANN) and K -- nearest neighbor (K-NN) were applied and tested on the same dataset. The results demonstrate that ANN and K-NN methods outperform linear methods by a significant margin, also, show particularly good performance in detecting congested intervals. To ensure the quality of the analysis results, set of procedures and algorithms based on traffic flow theory and test field information, were introduced to validate and clean the data used to build, train and test the different models.
机译:本文介绍了一种使用当前可用技术估算拥挤城市网络的短动脉链路上的旅行时间的模型。目的是估计旅行时间,并针对实际交通问题(例如拥堵管理和紧急疏散)提供可接受的准确度。为了实现此研究目标,在同一数据集上应用了各种行驶时间估算方法,包括高速公路轨迹,多元线性回归(MLR),人工神经网络(ANN)和K-最近邻(K-NN)。结果表明,ANN和K-NN方法在很大程度上优于线性方法,并且在检测拥塞区间方面表现出特别好的性能。为了确保分析结果的质量,引入了一套基于交通流理论和测试现场信息的程序和算法,以验证和清除用于构建,训练和测试不同模型的数据。

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