A Clustering Algorithm for Bi-Criteria Stop Location Design with Elastic Demand

This article proposes a bi‐criteria formulation to find the optimal location of light rapid transit stations in a network where demand is elastic and budget is constrained. Our model is composed of two competing objective functions seeking to maximize the total ridership and minimize the total budge...

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Bibliographic Details
Published inComputer-aided civil and infrastructure engineering Vol. 31; no. 2; pp. 117 - 131
Main Authors Hossein Rashidi, Taha, Rey, David, Jian, Sisi, Waller, Travis
Format Journal Article
LanguageEnglish
Published Blackwell Publishing Ltd 01.02.2016
Online AccessGet full text
ISSN1093-9687
1467-8667
DOI10.1111/mice.12162

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Summary:This article proposes a bi‐criteria formulation to find the optimal location of light rapid transit stations in a network where demand is elastic and budget is constrained. Our model is composed of two competing objective functions seeking to maximize the total ridership and minimize the total budget allocated. In this research, demand is formulated using the random utility maximization method with variables including access time and travel time. The transit station location problem of this study is formulated using mixed integer programming and we propose a heuristic solution algorithm to solve large‐scale instances which is inspired by the problem context. The elastic demand is integrated with the optimization problem in an innovative way which facilitates the solution process. The performance of our model is evaluated on two test problems and we carry out its implementation on a real‐world instance. Due to the special shape of the Pareto front function, significant practical policy implications, in particular budget allocation, are discussed to emphasize the fact that the trade‐off between cost and benefit may result in large investments with little outcomes and vice versa.
Bibliography:ark:/67375/WNG-P2X83PN6-8
istex:1414F27690058CC4625601DD6F740859C7B1CDB3
ArticleID:MICE12162
ISSN:1093-9687
1467-8667
DOI:10.1111/mice.12162