Journal of Transportation Systems Engineering and Information Technology ›› 2021, Vol. 21 ›› Issue (5): 91-101.
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GAN Mia, b, c, QING San-donga, b, LIU Xiao-bo* a, b, c, LI Dan-dana, b
Received:
2021-04-07
Revised:
2021-04-20
Accepted:
2021-05-07
Online:
2021-10-25
Published:
2021-10-21
Supported by:
甘蜜a, b, c,卿三东a, b,刘晓波* a, b, c,李丹丹a, b
作者简介:
甘蜜(1984- ),女,湖南湘阴人,副教授,博士。
基金资助:
CLC Number:
GAN Mi, QING San-dong, LIU Xiao-bo, LI Dan-dan. Review on Application of Truck Trajectory Data in Highway Freight System[J]. Journal of Transportation Systems Engineering and Information Technology, 2021, 21(5): 91-101.
甘蜜, 卿三东, 刘晓波, 李丹丹. 货车轨迹数据在公路货运系统中应用研究综述[J]. 交通运输系统工程与信息, 2021, 21(5): 91-101.
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URL: http://www.tseit.org.cn/EN/abstract/abstract30311.shtml
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