利用大型被动数据集衡量出行时间可靠性的新指标与估计

New metrics and estimates of travel time reliability using large passive datasets

Transportation Research Part A Policy and Practice · 2026
被引 0 · 同刊同年前 10%
ABS 3

中文导读

本文利用收费公路通行记录和车辆轨迹大数据,分析了出行时间价值与可靠性价值在疫情前后的变化,发现用户更愿为减少时间波动付费,且可靠性价值在疫情期间显著上升。

Abstract

This paper presents a comprehensive modeling framework and empirical analysis of the Value of Travel Time (VOT) and the Value of Travel Time Reliability (VOR) on Express Lanes. Using a large dataset from transponder-recorded trips, complemented by vehicle probe data, we explore the variability of travel time across different dimensions: day-to-day, intra-day, and intra-peak. Our study spans two distinct timeframes: pre-pandemic (January 2020 to mid-March 2020) and during the pandemic (mid-March 2020 to the end of May 2020), providing insights into travel behavior under both routine and unpredictable conditions. Our findings indicate that Express Lane users are more willing to pay for reduced travel time variability than for actual time savings. Additionally, both the Value of Time (VOT) and the Value of Reliability (VOR) increased during the pandemic, with VOR experiencing a particularly sharp rise. Furthermore, the results suggest that Express Lane users would show an even greater willingness to pay to reduce travel time variability if they were aware of the true value of reliability. The proposed methods and resulting analysis can assist toll operators and agencies in managing infrastructure effectively, without the need for survey data collection.

交通经济学出行行为收费公路时间价值