摘要
针对目前对BRT站点简单的分类及步行吸引距离的粗泛定义,以济南市1~3 号快速公交作
为研究背景,开展了关于快速公交站点分类方法及各类站点对步行吸引范围的研究。以在19 个快
速公交站点中进行的RP(Revealed Preference Survey)调查及济南ArcGIS 数据库为数据基础,选取
了9 个站点步行吸引距离的影响因素,借助聚类分析法并利用Matlab 工具箱拟合正态分布模型,
最终总结归纳出5 类快速公交站点,并计算得到各类型站点的步行吸引距离。结果表明:终端型
站点的步行吸引距离最长,为1 300m;其次是交通枢纽型站点,为1 100m;城市次中心型与城
市中心型站点步行吸引距离相差不多,平均为750m;一般型站点步行吸引距离最短,约为
630m。不同类型站点的步行吸引距离相差较大,不能以单一经验值解释所有BRT站点,其中城
市次中心型与城市中心型站点步行吸引距离适中,是理想的站点类型。
Abstract
Aiming at the simple classification and the rough definition on walking attractive distance of
BRT stations, Jinan BRT Line 1 to Line 3 were selected as the research background to make an explora⁃
tion on the types of BRT stations and their walking attractive distances. 9 influencing factors were ex⁃
tracted basing on the RP Survey of 19 stations and Jinan ArcGIS database. By the use of cluster analysis
method and Matlab toolbox, 5 kinds of BRT stations were summarized and their walking attractive dis⁃
tances were calculated. The result shows that the attractive distance of walking to the terminal stations is
the longest, more than 1 300 meters, followed by that of walking to the transport hub stations with a value
of 1 100 meters; the attractive distance of walking to the urban sub-center stations is similar with that of
the urban center stations, with an average of 750 meters; for general stations, the attractive distance of
walking is the shortest, only about 630 meters. Obviously, there are great differences among walking at⁃
tracting distances of different types of stations and a single experience value could not explain all the
types. The urban sub-center stations and urban center stations with moderate values are the ideal types.
关键词
公共交通 /
BRT站点 /
聚类分析 /
步行吸引距离 /
正态分布
Key words
public transport /
BRT station /
cluster analysis /
walking attractive distance /
normal distribution
朱宏,谢云侠,张汝华,姜洋.
快速公交站点类别及步行吸引范围研究[J]. 交通运输研究. 2015, 1(4): 22-29
ZHU Hong,XIE Yun-xia,ZHANG Ru-hua and JIANG Yang.
Classification andWalking Attractive Distance of BRT Stations[J]. Transport Research. 2015, 1(4): 22-29
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