城市规模动态拼车服务中出租车均衡分配:基于需求学习的混合解决方案

Jiyao Li, V. Allan
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引用次数: 4

摘要

在本文中,我们研究了一个具有挑战性的问题,即在动态拼车服务中如何平衡出租车在城市中的分布。首先,我们介绍了动态拼车系统的架构,并正式定义了表明系统效率的性能指标。然后,我们提出了一个包含一系列算法的混合解决方案:关联池收集相关的乘客请求,基于需求学习的邻接乘车匹配为乘客分配出租车并平衡出租车在当地的分布,贪婪空闲运动旨在将没有当前分配的出租车引导到有乘客需要服务的区域。在实验中,我们使用来自芝加哥市的城市规模数据集,并完成了一个案例研究,分析了相关骑手请求的阈值和每种算法的平均在线运行时间。我们还将混合解决方案与其他多种方法进行了比较。我们的实验结果表明,我们的混合解决方案在不增加出租车数量的情况下提高了客户服务率,使司机和乘客每趟都能赚更多的钱,节省更多的钱,而且呼叫和额外的行程时间都有小幅增加。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Balancing Taxi Distribution in A City-Scale Dynamic Ridesharing Service: A Hybrid Solution Based on Demand Learning
In this paper, we study the challenging problem of how to balance taxi distribution across a city in a dynamic ridesharing service. First, we introduce the architecture of the dynamic ridesharing system and formally define the performance metrics indicating the efficiency of the system. Then, we propose a hybrid solution involving a series of algorithms: the Correlated Pooling collects correlated rider requests, the Adjacency Ride-Matching based on Demand Learning assigns taxis to riders and balances taxi distribution locally, the Greedy Idle Movement aims to direct taxis without a current assignment to the areas with riders in need of service. In the experiment, we apply city-scale data sets from the city of Chicago and complete a case study analyzing the threshold of correlated rider requests and the average online running time of each algorithm. We also compare our hybrid solution with multiple other methods. The results of our experiment show that our hybrid solution improves customer serving rate without increasing the number of taxis in operation, allows both drivers to earn more and riders to save more per trip, and all with a small increase in calling and extra trip time.
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