公共自行车系统的在线出行规划

Jiawei Mu, Jianhui Zhang, Tianyu Zhang, Bei Zhao, Wanqing Zhang
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引用次数: 0

摘要

公共自行车系统(PBS)不仅提供了便捷的出行服务,还缓解了最后一英里的问题。随着环保意识和绿色通勤意识的增强,人们更喜欢使用公共自行车作为短途旅行的交通工具。然而,PBS用户的爆炸式增长导致了新的拥塞问题。为了缓解PBS的压力,人们对系统预测、运行和行程规划进行了多种研究。然而,很少有研究关注在线旅行计划问题。为了研究这种情况,我们提出了一种在线匹配行程规划算法(OMTP),并证明了OMTP的理论下界为1 - 1/e。然后,考虑用户之间的短期冲突,设计了一种在线群游规划算法(OGTP)。我们设计了基于生成数据的实验和基于真实数据的实验。在基于生成数据的实验中,我们利用生成的行程数据揭示了不同参数的影响。在基于真实数据的实验中,我们用纽约市的真实旅行数据集验证了我们提出的算法。结果表明,OMTP和OGTP平均每次行程节省时间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Online Trip Planning for Public Bike Systems
Public Bike System (PBS) not only provides convenient travel service but also alleviates the last-mile problem. With the increasing awareness of environmental protection and green commuting, people prefer to use the public bike as transportation for short-distance travel. However, the explosion of users in PBS leads to new congestion problems. To relieve the pressure of PBS, there are many types of research on system prediction, operation, and trip planning. However, there is few work focusing on the online trip planning problem. To study the case, we propose an Online Matching Trip Planning algorithm (OMTP), and we prove the theoretical lower bound of OMTP is 1 - 1/e. And then, we consider the short-term conflicts among users and design an Online Group Trip Planning algorithm (OGTP). We design two kinds of experiments- Generated Data Based and Real Data Based. In the generated data based experiment, we reveal the impact of different parameters with the generated trip data. In the real data based experiment, we validate our proposed algorithms with the real trip data set in New York City. The results show that OMTP and OGTP save time per trip on average.
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