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Bus travel time prediction with real-time traffic information

机译:具有实时交通信息的公交车行驶时间预测

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An important aspect of Intelligent Public Transportation Systems (IPTS) is providing accurate travel time information. Knowing arrival times of public vehicles in advance can reduce waiting times of passengers and attract more people to take public transport. Existing approaches have two main limitations in the field of bus travel time prediction. First, influenced by increasingly complex real-time traffic factors and sparsity of real-time data, bus travel times can be difficult to predict accurately in modern cities. Second, bus dwelling and transit times are predominantly affected by different factors and hence have different patterns, but little research focuses on how to divide dwelling and transit areas and to build independent models for them. Consequently, we propose a novel segment-based approach to predict bus travel times using a combination of real-time taxi and bus datasets, that can automatically divide bus routes into dwelling and transit segments. Two models are built to predict them separately by incorporating different impact traffic factors. We evaluate our approach using real-world trajectory datasets, collected in Xi'an, China during June 2017. Compared to existing methods, the experimental results reveal that our approach improves the accuracy of bus travel time prediction, especially under abnormal traffic conditions.
机译:智能公共交通系统(IPTS)的一个重要方面是提供准确的旅行时间信息。提前知道公共交通工具的到达时间可以减少乘客的等待时间,并吸引更多的人乘坐公共交通工具。现有方法在公交车行驶时间预测领域有两个主要限制。首先,受日益复杂的实时交通因素和实时数据稀疏性的影响,在现代城市中,公交车出行时间可能难以准确预测。其次,公共汽车的居住和运输时间主要受不同因素的影响,因此具有不同的模式,但是很少有研究集中在如何划分居住和运输区域以及为它们建立独立的模型上。因此,我们提出了一种基于分段的新颖方法,结合了实时出租车和公交车数据集来预测公交车行驶时间,该方法可以自动将公交路线划分为居住和公交路线。建立了两个模型来通过合并不同的影响流量因素分别进行预测。我们使用2017年6月在中国西安收集的真实世界轨迹数据集评估了该方法。与现有方法相比,实验结果表明,该方法提高了公交车出行时间预测的准确性,尤其是在异常交通状况下。

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