A Bike-sharing Optimization Framework Combining Dynamic Rebalancing and User Incentives

Federico Chiariotti, Chiara Pielli, A. Zanella, M. Zorzi
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引用次数: 28

Abstract

Bike-sharing systems have become an established reality in cities all across the world and are a key component of the Smart City paradigm. However, the unbalanced traffic patterns during rush hours can completely empty some stations, while filling others, and the service becomes unavailable for further users. The traditional approach to solve this problem is to use rebalancing trucks, which take bikes from full stations and deposit them at empty ones, reducing the likelihood of system outages. Another paradigm that is gaining steam is gamification, i.e., incentivizing users to fix the system by influencing their behavior with rewards and prizes. In this work, we combine the two efforts and show that a joint optimization considering both rebalancing and incentives results in a higher service quality for a lower cost than using simple rebalancing. We use simulations based on the New York CitiBike usage data to validate our model and analyze several schemes to optimize the bike-sharing system.
结合动态再平衡和用户激励的共享单车优化框架
自行车共享系统在世界各地的城市已经成为现实,是智慧城市范例的关键组成部分。然而,高峰时段不平衡的交通模式可能会使一些车站完全空了,而另一些车站却满了,这样就无法为更多的用户提供服务。解决这一问题的传统方法是使用再平衡卡车,将自行车从满站运走,存放在空站,减少系统中断的可能性。另一种流行的模式是游戏化,即通过奖励和奖品影响用户的行为来激励他们修复系统。在这项工作中,我们将两种努力结合起来,并表明考虑再平衡和激励的联合优化比使用简单的再平衡可以以更低的成本获得更高的服务质量。以纽约CitiBike的使用数据为例,对模型进行了仿真验证,并分析了几种优化共享单车系统的方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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