Analysis of the acceptance of park-and-ride by users: A cumulative logistic regression approach

Huang, Kai
Liu, Zhiyuan
Zhu, Ting
Kim, Inhi
An, Kun
2019
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Analysis of the acceptance of park-and-ride by users: A cumulative logistic regression approach

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2019

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Journal of Transport and Land Use

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Article

Abstract

Park-and-ride (P&R) schemes are an important way of increasing the public transport mode share, which relieves the negative impact caused by excessive automobile usage. Several existing studies have been conducted in the past to explore the factors that can influence the acceptance of P&R by travelers. However, quantitative analyses of the pertinent factors and rates of traveler choice are quite rare. In this paper, the data collected from a survey in Melbourne, Australia, is used to analyze the acceptance of P&R by travelers going to the central business district (CBD). In particular, we explore the influence that specific factors have on the choice of travel by those who are currently using P&R. The results indicate that the parking fee in the CBD area, travel time on public transport, and P&R transfer time affect traveler use of P&R. A quantitative assessment of the impact of these three factors is conducted by using a cumulative logistic regression model. Results reveal that the P&R transfer time has the highest sensitivity while public transport travel time has the least. To maximize the use of P&R facilities and public transport, insights into setting parking fees and designing P&R stations are presented.

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10.5198/jtlu.2019.1390

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Huang, Kai; Liu, Zhiyuan; Zhu, Ting; Kim, Inhi; An, Kun. (2019). Analysis of the acceptance of park-and-ride by users: A cumulative logistic regression approach. Retrieved from the University Digital Conservancy, 10.5198/jtlu.2019.1390.

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