客车速度建模的贝叶斯时空方法*

Bin Hu, Kun Xie, Haipeng Cui, Hangfei Lin
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引用次数: 3

摘要

公交速度建模是公共交通系统有效运行和管理的基础。在对公交车速度进行建模时,忽略了时空相互作用模式,这将导致有偏差的统计推断。本文利用大规模公交GPS数据,提出了一种时空贝叶斯模型来表征路段间的时空交互模式,并在此基础上进一步建立了公交速度预测模型。结果表明,数据存在II型相互作用模式,测试集的平均绝对百分比误差(mape)在AM峰为11.3%,PM峰为22.5%。结果进一步与已有工作进行了比较。结果表明,该模型在保持因素可解释性和时空交互模式可解释性的前提下,具有较好的预测性能。
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A Bayesian Spatiotemporal Approach for Bus Speed Modeling*
Bus speed modeling is essential for effective operation and management of public transit systems. Space-time interaction patterns are being ignored when modeling bus speed, and this would lead to biased statistical inferences. This paper proposed a spatiotemporal Bayesian model to characterize space-time interaction patterns among road segments using large-scale bus GPS data and to further develop the bus speed prediction model based on that. Results showed that a type II interaction pattern existed in the data, and the mean absolute percentage errors (MAPEs) of the test sets were 11.3% for the AM peak and 22.5% for the PM peak. Results were further compared with existing work. It was found that the proposed model presented a superior predictive performance while keeping the interpretability of contributing factors and space-time interaction patterns.
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