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How could the station-based bike sharing system and the free-floating bike sharing system be coordinated?

机译:如何协调基于站的自行车共享系统和自由浮动自行车共享系统?

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摘要

The station-based bike sharing system (SBBSS) and the free-floating bike sharing system (FFBSS) have been adopted on a large scale in China. However, the overlap between the services provided by these two systems often makes bike sharing inefficient. By comparing the factors that affect the usage of the two systems, this paper aims to propose appropriate strategies to promote their coordinated development. Using data collected in Nanjing, a predictive model is built to determine which system is more suitable at a given location. The influences of infrastructure, demand distribution, and land use attributes at the station level are examined via the support vector machine (SVM) approach. Our results show that the SBBSS tends to be favored in areas where there is a high concentration of travel demand, and close proximity to metro stations and commercial properties, whereas locations with a higher density of major roads and residential properties are associated with more frequent use of the FFBSS. With regard to the methods used, a comparison of several machine learning approaches shows that the SVM has the best predictive performance. Our findings could be used to help policy makers and transportation planners to optimize the deployment and redistribution of docked and dockless bikes.
机译:基于车站的自行车分享系统(SBBS)和自由浮动自行车分享系统(FFBS)已在中国大规模采用。然而,这两个系统提供的服务之间的重叠通常会使自行车共享低效。通过比较影响两种系统使用的因素,本文旨在提出适当的策略来促进其协调发展。使用在南京收集的数据,建立了一种预测模型,以确定哪个系统在给定位置更适合。通过支持向量机(SVM)方法检查基础设施,需求分布和土地利用属性的影响。我们的研究结果表明,SBBS倾向于在具有高浓度的旅行需求和地铁站和商业地区附近的地区受到青睐,而具有更高密度的主要道路密度和住宅物业的位置与更频繁的使用相关FFBSS。关于所用方法,多种机器学习方法的比较表明SVM具有最佳的预测性能。我们的调查结果可用于帮助政策制定者和运输计划人员优化码头和码头自行车的部署和再分配。

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