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Clustering Vehicle Temporal and Spatial Travel Behavior Using License Plate Recognition Data

机译:使用牌照识别数据的聚类车辆时间和空间旅行行为

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摘要

Understanding travel patterns of vehicle can support the planning and design of better services. In addition, vehicle clustering can improve management efficiency through more targeted access to groups of interest and facilitate planning by more specific survey design. This paper clustered 854,712 vehicles in a week using K-means clustering algorithm based on license plate recognition (LPR) data obtained in Shenzhen, China. Firstly, several travel characteristics related to temporal and spatial variability and activity patterns are used to identify homogeneous clusters. Then, Davies-Bouldin index (DBI) and Silhouette Coefficient (SC) are applied to capture the optimal number of groups and, consequently, six groups are classified in weekdays and three groups are sorted in weekends, including commuting vehicles and some other occasional leisure travel vehicles. Moreover, a detailed analysis of the characteristics of each group in terms of spatial travel patterns and temporal changes are presented. This study highlights the possibility of applying LPR data for discovering the underlying factor in vehicle travel patterns and examining the characteristic of some groups specifically.
机译:了解车辆的旅行模式可以支持更好的服务的规划和设计。此外,车辆聚类可以通过更具针对性的访问和通过更具体的调查设计方便规划来提高管理效率。本文在中国深圳获得的牌照识别(LPR)数据中,在一周内聚集了854,712辆车辆。首先,使用与时间和空间变异性和活动模式相关的几个旅行特性来识别均匀的簇。然后,应用Davies-Bouldin指数(DBI)和剪影系数(SC)来捕获最佳组,因此,在平日,三组在周末进行分类,包括通勤车辆和其他一些偶尔的休闲。旅行车辆。此外,介绍了在空间旅行模式和时间变化方面的每个组特征的详细分析。本研究强调了应用LPR数据以发现车辆旅行模式中的底层因子以及检查某些群体的特征的可能性。

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