Spatial Modeling of Travel Demand Accounting for Multicollinearity and Different Sampling Strategies: A Stop-Level Case Study

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS
Samuel de França Marques, Cira Souza Pitombo, J. Jaime Gómez-Hernández
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Abstract

Stop-level ridership data serve as a basis for various studies toward increasing bus patronage and promoting sustainable land use planning. To address limitations found in previous studies, this study proposes a novel approach based on Geographically Weighted Principal Component Analysis (GWPCA) and Ordinary Kriging to predict the stop-level boarding or alighting data along bus lines in São Paulo (Brazil), considering four different sampling methods. The main contributions are as follows: by accounting for the spatial heterogeneity of the predictor dataset, the GWPCA can identify the most important factor affecting transit ridership even in bus stops with no information on boarding and alighting; the spatial modeling of stop-level ridership data using GWPCA components as explanatory variables allows visualizing the spatially varying effects from predictors on ridership, supporting the land use planning at a local level; GWPCA coupled with kriging simultaneously addresses the multicollinearity of predictor data, its spatial heterogeneity, and the spatial dependence of the stop-level ridership variable, thus enhancing the goodness-of-fit measures of the transit ridership prediction in unsampled stops; and a balanced sample on predictor data and well-spread in the geographic space might be preferred to accurately estimate missing stop-level ridership data. In addition to solve the lack of stop-level ridership data, supporting a reliable bus system planning, the proposed method indicates what predictors should be addressed by policymakers to stimulate a transit-oriented development. The method can be successfully applied to other travel demand variables facing a lack of data such as traffic volume in road segments and mode choice at the household level.

Abstract Image

考虑多重共线性和不同采样策略的旅行需求空间建模:停止水平案例研究
站级乘客数据是各种研究的基础,这些研究旨在提高公交乘客量并促进可持续土地利用规划。针对以往研究中发现的局限性,本研究提出了一种基于地理加权主成分分析(GWPCA)和普通克里金法的新方法,以预测圣保罗(巴西)公交线路沿线的站台乘客上下车数据,并考虑了四种不同的采样方法。主要贡献如下通过考虑预测数据集的空间异质性,GWPCA 可以识别影响公交乘客量的最重要因素,即使在没有上下车信息的公交站点也是如此;使用 GWPCA 成分作为解释变量对站点级乘客量数据进行空间建模,可以直观地显示预测因素对乘客量的空间变化影响,从而为地方层面的土地利用规划提供支持;GWPCA 与克里金法相结合,可同时解决预测数据的多重共线性、空间异质性和站点级乘客量变量的空间依赖性问题,从而提高未采样站点的公交乘客量预测的拟合优度;同时,为准确估计缺失的站点级乘客量数据,可优先选择预测数据均衡且在地理空间上分布均匀的样本。除了解决缺少站点级乘客数据的问题,为可靠的公交系统规划提供支持外,所提出的方法还指出了政策制定者应关注哪些预测因素,以刺激公交导向型发展。该方法还可成功应用于其他缺乏数据的出行需求变量,如路段交通量和家庭层面的模式选择。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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