Optimal pricing and design of station-based bike-sharing systems: A microeconomic model

IF 2.2 3区 工程技术 Q2 ECONOMICS Economics of Transportation Pub Date : 2022-09-01 DOI:10.1016/j.ecotra.2022.100273
Sergio Jara-Díaz, André Latournerie, Alejandro Tirachini, Félix Quitral
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引用次数: 3

Abstract

Carefully collected data of nine station-based Bike Sharing Systems (BSS) observed during several years, feed the theoretical formulation of three (aggregated) strategic models representing BSS operation from which the optimal design and pricing is derived. The models include both the operator's costs (investment and operation) and users' costs (time to walk to-from a station, waiting at a station, and time while cycling). The design variables are station spacing, number and capacity of stations, number of bicycles and bike repositioning. Once optimized, the design variables lead to cost functions and optimal pricing. In the first model, a permanent equilibrium without waiting times is assumed. In the second model, waiting at stations (due to a lack of bicycles or docking sites) is introduced in an aggregate form, which results in an increase in the optimal number of bikes and docking sites, making the optimal money price per trip to increase. The third and final model introduces repositioning of bicycles in order to diminish waiting time, making the optimal price grow even further. We obtain an optimal subsidy per trip that grows with the area covered by the BSS, which has implications for its actual implementation in large cities and their spatial and social equity. The optimal pricing scheme is caused by economies of scale due to the reduction in users' access and egress times as the density of stations increases (positive externality) in addition to a fixed operator cost.

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基于站点的共享单车系统的最优定价与设计:一个微观经济模型
仔细收集了9个基于站点的共享单车系统(BSS)几年来的观测数据,为代表BSS运行的三个(聚合)战略模型提供理论公式,并从中得出最优设计和定价。这些模型既包括运营商的成本(投资和运营),也包括用户的成本(从车站步行到车站的时间、在车站等待的时间和骑自行车的时间)。设计变量包括车站间距、车站数量和容量、自行车数量和自行车重新定位。一旦优化,设计变量导致成本函数和最优定价。在第一个模型中,假设一个不需要等待时间的永久均衡。在第二种模型中,以聚合形式引入车站等待(由于缺乏自行车或停靠点),导致最优自行车数量和停靠点数量增加,使得每次出行的最优货币价格增加。第三种也是最后一种模型引入了自行车的重新定位,以减少等待时间,使最优价格进一步增长。我们得到了随着BSS覆盖面积的增加而增加的最佳每次出行补贴,这对其在大城市的实际实施及其空间和社会公平具有重要意义。最优定价方案是由规模经济引起的,因为随着车站密度的增加,用户进出时间减少(正外部性),此外还有固定的运营商成本。
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来源期刊
CiteScore
5.50
自引率
7.10%
发文量
19
审稿时长
69 days
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