基于车辆行程链特征的短期交通流预测

Xiaoqing Wang, Feng Sun, Xiaolong Ma, Fangtong Jiao, Benxing Liu, Pengsheng Zhao
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引用次数: 0

摘要

短期交通流量预测可以提高交通运营效率。历史数据驱动的预测方法已被证明性能良好。然而,饱和或过饱和的交通流量预测会导致交通堵塞。
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Short-term traffic flow prediction based on vehicle trip chain features
Short-term traffic flow prediction can improve the efficiency of transportation operations. Historical data-driven prediction methods have been proved to perform well. However, saturated or oversat...
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