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Bus Arrival Time Prediction Using Recurrent Neural Network with LSTM Architecture

机译:使用LSTM架构的经常性神经网络的总线到达时间预测

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Abstract Arrival time of public vehicles to transport stops is a key point of information systems for passengers. Accurate information on the arrival time is important for travel arrangements since it helps to decrease the wait time at a stop and to choose an optimal alternate route. Recently, such information has been included to mobile navigation applications too. In the present paper, we analyze the abilities of the LSTM neural network to predict the arrival time of public vehicles. This model accounts for heterogeneous information about transport situation that directly or indirectly has an impact on the travel time prediction and includes statistical and real-time data of traffic flow. We examined the model experimentally using traffic data on bus routes in the city of Samara, Russia. The obtained results confirm that the predictions provided by our model are of a high quality and it can be used for real-time arrival time prediction of public transport in the case of a large-scale transportation network.
机译:摘要公共车辆到运输停止的到达时间是乘客信息系统的关键点。准确的信息有关到达时间的信息对于旅行安排很重要,因为它有助于减少停止并选择最佳备用路线。最近,这些信息也被包括在移动导航应用程序中。在本文中,我们分析了LSTM神经网络的能力,以预测公共车辆的到来。该模型占关于传输情况的异质信息,直接或间接对旅行时间预测产生影响,包括交通流量的统计和实时数据。我们通过在俄罗斯市萨马拉市的公交线路上使用交通数据进行了实验研究了模型。所获得的结果证实,我们的模型提供的预测具有高质量,并且可以用于大规模运输网络的情况下公共交通的实时到达时间预测。

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