Route-based mobility performance metrics using probe vehicle travel times

被引:0
|
作者
Talukder M. [1 ]
Hainen A. [1 ]
Remias S. [2 ]
Bullock D. [3 ]
机构
[1] Department of Civil Construction & Environmental Engineering, University of Alabama, P.O. Box 870205, Tuscaloosa, 35487-0205, AL
[2] Department of Civil & Environmental Engineering, Wayne State University, 5050 Anthony Wayne Drive, Detroit, 48202, MI
[3] Department of Civil Engineering, Purdue University, 550 Stadium Mall Drive, West Lafayette, 47907-2051, IN
来源
| 2018年 / Aracne Editrice卷 / 46期
关键词
Kolmogorov-smirnov; Mobility; Performance measures; Probe data; Travel time reliability;
D O I
10.4399/97882551864111
中图分类号
学科分类号
摘要
This study proposes a new methodology to use route-based travel time observations to characterize transportation networks. Over 1.3 million travel time records were reduced to provide continuous network observation, comparisons in mobility between 15 cities in Alabama, and comparisons between the 50 largest cities in the United States. The Peak Hour Travel Time Reliability metric (PHTTR) was used to compute AM and PM ranking of the 50 largest cities in the United States. Those ranking were compared with the travel time index used in the Texas Transportation Institute Urban Mobility Report. The paper concludes by explaining how this technique can be used in multi-modal focused cities such as Portland, Oregon, to include modes such as transit, biking, and walking so that transportation investment decision makers can be provided with a less automobile-centric view of regional mobility. The Kolmogorov-Smirnov is then used to quantitatively identify statistically similar transportation networks useful in self-assessment of performance. © 2018, Gioacchino Onorati Editore. All rights reserved.
引用
收藏
页码:135 / 152
页数:17
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