Title
Modeling arterial travel time distribution by accounting for link correlations: a copula-based approach
Abstract
The estimation of urban arterial travel time distribution (TTD) is critical to help implement Intelligent Transportation Systems (ITS) and provide travelers with timely and reliable route guidance. The state-of-practice procedure for arterial TTD estimation commonly assumes that the path travel time follows a certain distribution without considering link correlations. However, this approach appears inappropriate since travel times on successive links are essentially dependent along signalized arterials. In this study, a copula-based approach is proposed to model arterial TTD by accounting for spatial link correlations. First, TTDs on consecutive links along one arterial in Hangzhou, China are investigated. Link TTDs are estimated through the nonparametric kernel smoothing method. Link correlations are analyzed in both unfavorable and favorable coordination cases. Then, Gaussian copula models are introduced to model the dependent structure between link TTDs. The parameters of Gaussian copula are obtained by Maximum-Likelihood Estimation (MLE). Next, path TTDs covering consecutive links are estimated based on the estimated copula models. The results demonstrate the advantage of the proposed copula-based approach, compared with the convolution without capturing link correlations and the empirical distribution fitting methods in both unfavorable and favorable coordination cases.
Year
DOI
Venue
2019
10.1080/15472450.2018.1484738
Journal of Intelligent Transportation Systems
Keywords
Field
DocType
Copula,link correlations,signal coordination,travel time distribution,urban arterial
Accounting,Kernel smoother,Copula (linguistics),Copula (probability theory),Nonparametric statistics,Engineering,Intelligent transportation system,Travel time
Journal
Volume
Issue
ISSN
23
1
1547-2450
Citations 
PageRank 
References 
0
0.34
7
Authors
5
Name
Order
Citations
PageRank
Peng Chen1132.06
Weiliang Zeng215513.03
Min Chen358.48
Guizhen Yu44911.52
Yunpeng Wang519425.34