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Spatiotemporal characteristics of green travel: A classification study on a public bicycle system

机译:绿色旅行的时空特征:公共自行车系统的分类研究

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Understanding the characteristics of users and stations provides the foundation for a more efficient public bicycle system. Based on the real-time data of the Nanjing public bicycle system, we presented the spatiotemporal characteristics of users and stations combining data mining and geographic visualization. First, we analyzed users' gender, age, weekly flow, and time-segment flow, and classified the users into different types. In addition, we studied the cycling chains of certain users in details to understand the differences. Second, we analyzed the station distribution, station flow, station time-segment flow, and the surrounding environment, and studied the specific stations of different types to reveal the diverse characteristics. Moreover, we also explored the relationship between the user types and the station types. The results showed that public bicycles were mainly used for commuting or transferring, and social and economic activities around stations greatly influenced the use of public bicycles. However, the usage of the public bicycle system was still at a low level. Furthermore, different types of users had different cycling purposes, and different types of stations showed different characteristics of renting flow and returning flow. At last, we proposed different incentives and management measures for different types of users and stations. (C) 2019 Elsevier Ltd. All rights reserved.
机译:了解用户和站点的特征为更有效的公共自行车系统奠定了基础。基于南京市公共自行车系统的实时数据,结合数据挖掘和地理可视化,提出了用户和站点的时空特征。首先,我们分析了用户的性别,年龄,每周流量和时间段流量,并将用户分为不同类型。此外,我们详细研究了某些用户的自行车链,以了解它们之间的差异。其次,我们分析了站点分布,站点流量,站点时间段流量和周围环境,并研究了不同类型的特定站点,以揭示其多样性。此外,我们还探讨了用户类型和站点类型之间的关系。结果表明,公共自行车主要用于通勤或转移,车站周围的社会经济活动极大地影响了公共自行车的使用。但是,公共自行车系统的使用率仍然很低。此外,不同类型的用户具有不同的骑车目的,不同类型的车站表现出不同的租赁流量和回流流量特征。最后,针对不同类型的用户和站点提出了不同的激励和管理措施。 (C)2019 Elsevier Ltd.保留所有权利。

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