###
计算机系统应用英文版:2021,30(3):256-261
←前一篇   |   后一篇→
本文二维码信息
码上扫一扫!
基于时段客流特征聚类的地铁运营时段划分
(1.福州大学 数学与计算机科学学院, 福州 350108;2.福州大学 智慧地铁福建省高校重点实验室, 福州 350108)
Division of Metro Operation Periods Based on Feature Clustering of Passenger Flow
(1.College of Mathematics and Computer Science, Fuzhou University, Fuzhou 350108, China;2.Key Laboratory of Intelligent Metro of Universities in Fujian Province, Fuzhou University, Fuzhou 350108, China)
摘要
图/表
参考文献
相似文献
本文已被:浏览 738次   下载 1801
Received:July 02, 2020    Revised:July 30, 2020
中文摘要: 准确合理的运营时段划分方案是制定地铁列车开行方案的前提和基础, 也是提高地铁运营效率的重要方式. 为了合理划分地铁运营时段, 本文构建时段客流特征向量以划分地铁运营时段. 以10 min为时间间隔对全日运营时段进行分段, 并根据时段内的客流变化特点构建各时段的特征向量. 并以此为基础采用K-means算法进行聚类, 同时以肘部法则、轮廓系数等聚类评估指标对结果进行评价, 以确定最优聚类数, 进而得到最优的运营时段划分方案. 最后以福州地铁一号线为例, 给出了该路线的运营时段划分方案, 验证了该方法的可行性.
中文关键词: 地铁  客流  运营时段划分  聚类  K-means算法
Abstract:An accurate and reasonable division scheme of operation periods is the premise and foundation for formulating metro train operation plans, and it is also an important way to improve metro operation efficiency. The feature vectors of passenger flow are constructed to divide metro operation periods. At an interval of 10 min, the operation period in a day is segmented, and the feature vectors of all the periods are constructed according to the characteristics of passenger flow changes in their corresponding periods. The K-means algorithm is used for clustering, and the results are evaluated by cluster evaluation indicators such as elbow method and silhouette coefficient to determine the optimal number of clusters, obtaining the optimal division scheme of operational periods. Finally, the division scheme of operation periods of Line 1 of Fuzhou Metro is given as an example, which verifies the feasibility of this method.
文章编号:     中图分类号:    文献标志码:
基金项目:国家自然科学基金面上项目(61976055); 智慧地铁福建省高校重点实验室建设项目(53001703, 50013203)
引用文本:
陈东洋,陈德旺,江世雄,徐宁.基于时段客流特征聚类的地铁运营时段划分.计算机系统应用,2021,30(3):256-261
CHEN Dong-Yang,CHEN De-Wang,JIANG Shi-Xiong,XU Ning.Division of Metro Operation Periods Based on Feature Clustering of Passenger Flow.COMPUTER SYSTEMS APPLICATIONS,2021,30(3):256-261