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首页> 外文期刊>Journal of advanced transportation >How Do Different Treatments of Catchment Area Affect the Station Level Demand Modeling of Urban Rail Transit?
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How Do Different Treatments of Catchment Area Affect the Station Level Demand Modeling of Urban Rail Transit?

机译:如何对城市轨道交通的不同治疗区分地区的需求建模?

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摘要

Direct demand modeling is a useful tool to estimate the demand of urban rail transit stations and to determine factors that significantly influence such demand. The construction of a direct demand model involves determination of the catchment area. Although there have been many methods to determine the catchment area, the choice of those methods is very arbitrary. Different methods will lead to different results and their effects on the results are still not clear. This paper intends to investigate this issue by focusing on three aspects related to the catchment area: size of the catchment area, processing methods of the overlapping areas, and whether to apply the distance decay function on the catchment area. Five catchment areas are defined by drawing buffers around each station with radius distance ranging from 300 to 1500 meters with the interval of 300 meters. Three methods to process the overlapping areas are tested, which are the na?ve method, Thiessen polygon, and equal division. The effect of distance decay is considered by applying lower weight to the outer catchment area. Data from five cities in the United States are analyzed. Built environment characteristics within the catchment area are extracted as explanatory variables. Annual average weekday ridership of each station is used as the response variable. To further analyze the effect of regression models on the results, three commonly used models, including the linear regression, log-linear regression, and negative binomial regression models, are applied to examine which type of catchment area yields the highest goodness-of-fit. We find that the ideal buffer sizes vary among cities, and different buffer sizes do not have a great impact on the model’s goodness-of-fit and prediction accuracy. When the catchment areas are heavily overlapping, dividing the overlapping area by the number of times of overlapping can improve model results. The application of distance decay function could barely improve the model results. The goodness-of-fit of the three models is comparable, though the log-linear regression model has the highest prediction accuracy. This study could provide useful references for researchers and planners on how to select catchment areas when constructing direct demand models for urban rail transit stations.
机译:直接需求建模是一个有用的工具来估算城市轨道交通站点的需求,并确定显着影响这些需求的因素。直接需求模型的构建涉及集水区的确定。虽然已经有许多方法来确定集水区,但这些方法的选择是非常任意的。不同的方法将导致不同的结果,它们对结果的影响尚不清楚。本文旨在通过专注于与集水区面积相关的三个方面来调查这个问题:集水区的大小,重叠区域的处理方法,以及是否将距离衰减功能应用于集水区。五个集水区由围绕每个车站的缓冲区定义,半径距离从300到1500米,间隔为300米。测试了三种处理重叠区域的方法,是Na ve方法,Thiessen多边形和等分。通过将较低的重量施加到外层区区域来考虑距离衰减的效果。分析了来自五个城市的数据。集水区内的内置环境特性被提取为解释变量。每站的年平均平均工作日乘积用作响应变量。为了进一步分析回归模型对结果的影响,应用了三种常用的模型,包括线性回归,逻辑线性回归和负二进制回归模型,用于检查哪种类型的集水区产生最高的适合度。我们发现,城市之间理想的缓冲区尺寸不同,不同的缓冲尺寸对模型的健康和预测准确性没有很大影响。当集水区区域严重重叠时,将重叠区域除以重叠的次数可以改善模型结果。距离衰减功能的应用几乎无法改善模型结果。三种型号的健康状况是可比的,尽管对数线性回归模型具有最高的预测精度。本研究可以为研究人员和规划人员提供关于如何在城市轨道交通站构建直接需求模型时选择集水区的有用参考。

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