Mining truck platooning patterns through massive trajectory data
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摘要
Truck platooning refers to a series of trucks driving in close proximity via communication technologies, and it is considered one of the most implementable systems of connected and automated vehicles, bringing huge energy savings and safety improvements. Properly planning platoons and evaluating the potential of truck platooning are crucial to trucking companies and transportation authorities. This study proposes a series of data mining approaches to learn spontaneous truck platooning patterns from massive trajectories. An enhanced map matching algorithm is developed to identify truck headings by using digital map data, followed by an adaptive spatial clustering algorithm to detect trucks’ instantaneous co-moving sets. These sets are then aggregated to find the network-wide maximum platoon duration and size through frequent itemset mining for computational efficiency. The GPS data were collected from truck fleeting systems in Liaoning Province, China for platooning performance measures and spatiotemporal platooning distribution visualization. Results show that approximately 36% spontaneous truck platoons can be coordinated by speed adjustment without changing routes and schedules. The average platooning distance and duration ratios for these platooned trucks are 9.6% and 9.9%, respectively, leading to a 2.8% reduction in total fuel consumption. This study also distinguishes the optimal platooning periods and space headways for national freeways and trunk roads, and prioritize the road segments with high possibilities of truck platooning. The derived results are reproducible, providing useful policy implications and operational strategies for large-scale truck platoon planning and roadside infrastructure construction.
论文关键词:Energy consumption,Trajectory mining,Truck platooning,Spatial clustering,Association rule learning
论文评审过程:Received 24 November 2020, Revised 10 February 2021, Accepted 17 March 2021, Available online 19 March 2021, Version of Record 24 March 2021.
论文官网地址:https://doi.org/10.1016/j.knosys.2021.106972