Research on urban public bicycle dispatching optimization method

Fei Lin, Yang Yang, Shihua Wang, Yudi Xu, Hong Ma
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Abstract

Unreasonable public bicycle dispatching area division seriously affects the operational efficiency of the public bicycle system. To solve this problem, this paper innovatively proposes an improved community discovery algorithm based on multi-objective optimization (CDoMO). The data set is preprocessed into a lease/return relationship, thereby it calculated a similarity matrix, and the community discovery algorithm Fast Unfolding is executed on the matrix to obtain a scheduling scheme. For the results obtained by the algorithm, the workload indicators (scheduled distance, number of sites, and number of scheduling bicycles) should be adjusted to maximize the overall benefits, and the entire process is continuously optimized by a multi-objective optimization algorithm NSGA2. The experimental results show that compared with the clustering algorithm and the community discovery algorithm, the method can shorten the estimated scheduling distance by 20%-50%, and can effectively balance the scheduling workload of each area. The method can provide theoretical support for the public bicycle dispatching department, and improve the efficiency of public bicycle dispatching system.
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城市公共自行车调度优化方法研究
公共自行车调度区域划分不合理,严重影响了公共自行车系统的运行效率。针对这一问题,本文创新性地提出了一种改进的基于多目标优化(CDoMO)的社区发现算法。将数据集预处理成租赁/返回关系,从而计算出相似度矩阵,对矩阵执行社团发现算法Fast展开,得到调度方案。对于算法得到的结果,需要对工作量指标(调度距离、站点数量、调度自行车数量)进行调整,使整体效益最大化,并通过多目标优化算法NSGA2对整个过程进行持续优化。实验结果表明,与聚类算法和社区发现算法相比,该方法可将估计调度距离缩短20% ~ 50%,并能有效地平衡各区域的调度工作量。该方法可以为公共自行车调度部门提供理论支持,提高公共自行车调度系统的效率。
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