作者
Anshuman Sharma, Zuduo Zheng, Ashish Bhaskar
发表日期
2018/11/1
期刊
Transportation research part C: emerging technologies
卷号
96
页码范围
432-457
出版商
Pergamon
简介
Vehicular trajectories are widely used for car-following (CF) model calibration and validation, as they embody characteristics of individual driving behaviour (each trajectory reflects an individual driver). Previous studies have highlighted that the trajectories should contain all the major vehicular interactions (driving regimes) between the leader and the follower for reliable CF model calibration and validation. Based on Dynamic Time Warping and Bottom-Up algorithms, this paper develops a pattern recognition algorithm for vehicle trajectories (PRAVT) to objectively, accurately, and automatically differentiate different driving regimes in a trajectory and then select the most complete trajectories (i.e. trajectories containing a maximum number of regimes). PRAVT is rigorously tested using synthetic data and then applied to the NGSIM data. We have observed that the NGSIM data are dominated by the trajectories which …
引用总数
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学术搜索中的文章
A Sharma, Z Zheng, A Bhaskar - Transportation research part C: emerging technologies, 2018