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A Self-learning algorithm for predicting bus arrival time based on historical data model

机译:基于历史数据模型的公交到站时间预测自学习算法

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The provision of timely and accurate bus arrive time information is very important. It helps to attract additional ridership and increase the satisfaction of transit users. In this paper, a self-learning prediction algorithm is proposed based on historical data model. Locations and speeds of the bus are periodically obtained from GPS senor installed on the bus and stored in database. Historical travel time in all road sections is collected. These historical data are trained using BP neural network to predict the average speed and arrival time of the road sections. Experimental results indicate that the proposed algorithm achieves outstanding prediction accuracy compared with general solutions based on historical travel time.
机译:提供及时准确的公交车到站时间信息非常重要。它有助于吸引更多的乘客,并提高过境用户的满意度。本文提出了一种基于历史数据模型的自学习预测算法。定期从安装在公交车上的GPS传感器获取公交车的位置和速度,并将其存储在数据库中。收集所有路段的历史旅行时间。这些历史数据使用BP神经网络进行训练,以预测路段的平均速度和到达时间。实验结果表明,与基于历史旅行时间的一般解决方案相比,该算法具有较高的预测精度。

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