working paper

On Activity-based Network Design Problems

Publication Date

September 5, 2012

Working Paper

UCI-ITS-WP-12-3

Areas of Expertise

Abstract

This paper examines network design where OD demand is not known a priori, but is the subject of responses in household or user itinerary choices that depend on subject infrastructure improvements. Using simple examples, we show that falsely assuming that household itineraries are not elastic can result in a lack in understanding of certain phenomena; e.g., increasing traffic even without increasing economic activity due to relaxing of space-time prism constraints, or worsening of utility despite infrastructure investments in cases where household objectives may conflict. An activity-based network design problem is proposed using the location routing problem (LRP) as inspiration. The bilevel formulation includes an upper level network design and shortest path problem while the lower level includes a set of disaggregate household itinerary optimization problems, posed as household activity pattern problem (HAPP) (or in the case with location choice, as generalized HAPP) models. As a bilevel problem with an NP-hard lower level problem, there is no algorithm for solving the model exactly. Simple numerical examples show optimality gaps of as much as 5% for a decomposition heuristic algorithm derived from the LRP. A large numerical case study based on Southern California data and setting suggest that even if infrastructure investments do not result in major changes in itineraries the results provide much higher resolution information to a decision-maker. Whereas a conventional model would output the best set of links to invest given an assumed OD matrix, the proposed model can output the same best set of links, the same OD matrix, and a detailed temporal distribution of activity participation and travel, given a set of desired destinations and schedules.

Suggested Citation
Jee Eun Kang, Joseph Y.J. Chow and Will W. Recker (2012) On Activity-based Network Design Problems. Working Paper UCI-ITS-WP-12-3. Institute of Transportation Studies, Irvine. Available at: https://escholarship.org/uc/item/8g615878.

research report

New Methods for Monitoring Spatial Truck Travel Patterns in California Using Exisiting Dectector Infrastructure

Research Report

UC-ITS-2017-36

Areas of Expertise

Abstract

This study developed a methodology to accurately estimate network-wide truck flows by leveraging existing point detection infrastructure, namely inductive loop detectors. The tracking model identifies individual trucks at detector locations using advanced inductive signatures and matches vehicle pairs at detector locations, using an extended form of the Bayesian classification model to estimate matching and non-matching probabilities of the vehicle pairs Several vehicle feature selection and weighting methods including Self Organizing Map and K-means clustering were applied to better identify individual vehicles from signature data. It was shown that the proposed extensive feature processing enhanced vehicle identification performance even among vehicle pools sharing similar physical configurations. The developed model was tested along an approximately 5.5-mile freeway segment on I-5 and CA-78 in San Diego, California where only 67 percent of the total trucks were observed at both up- and down-stream detector sites. Results showed balanced performances in exactness and completeness of matching with 91 percent of correct outcomes for multi-unit trucks

Suggested Citation
Stephen G. Ritchie, Kyung Hyun and Andre Tok (2017) New Methods for Monitoring Spatial Truck Travel Patterns in California Using Exisiting Dectector Infrastructure. Research Report UC-ITS-2017-36. UC ITS / ITS-Irvine. Available at: https://doi.org/10.7922/g29p2zvj.

published journal article

Receding horizon trajectory optimization in opportunistic navigation environments

IEEE Transactions on Aerospace and Electronic Systems

Publication Date

April 1, 2015

Author(s)

Zaher Kassas, Todd E. Humphreys
Suggested Citation
Zaher M. Kassas and Todd E. Humphreys (2015) “Receding horizon trajectory optimization in opportunistic navigation environments”, IEEE Transactions on Aerospace and Electronic Systems, 51(2), pp. 866–877. Available at: 10.1109/taes.2014.140022.

conference paper

Drift with devil: Security of {Multi-Sensor} fusion based localization in {High-Level} autonomous driving under {GPS} spoofing

29th USENIX Security Symposium (USENIX Security 20)

Publication Date

January 1, 2020

Author(s)

Junjie Shen, Jun Yeon Won, Zeyuan Chen, Qi Alfred Chen
Suggested Citation
Junjie Shen, Jun Yeon Won, Zeyuan Chen and Qi Alfred Chen (2020) “Drift with devil: Security of {Multi-Sensor} fusion based localization in {High-Level} autonomous driving under {GPS} spoofing”, in 29th USENIX Security Symposium (USENIX Security 20), pp. 931–948. Available at: https://www.usenix.org/conference/usenixsecurity20/presentation/shen (Accessed: October 11, 2023).

conference paper

Defining Public Transit Commuters Based on Their Work Tour Choice

100th Transportation Research Board (TRB) Annual Meeting

Publication Date

January 1, 2021
Suggested Citation
Rezwana Rafiq and Michael G McNally (2021) “Defining Public Transit Commuters Based on Their Work Tour Choice”. 100th Transportation Research Board (TRB) Annual Meeting, Washington, DC.

conference paper

Trip length distribution of TNC trips: based on empirical data in Chicago

ISTDM 2021

Publication Date

January 24, 2021

Abstract

Submission: Trip Length Distribution of TNC Trips: Based on Empirical Data in ChicagoPresenter: Irene MartinezAuthors: Irene Martínez (University of California, Irvine)*; Wen-Long Jin (University of California, Irvine)

Suggested Citation
Irene Martinez and Wen-long Jin (2021) “Trip length distribution of TNC trips: based on empirical data in Chicago”, in ISTDM 2021. Available at: https://limos.engin.umich.edu/istdm2021/session/th-6-lightning-session-shared-mobility-irene-martinez/ (Accessed: October 11, 2023).

published journal article

Gender differences in elderly mobility in the United States

Transportation Research Part A: Policy and Practice

Abstract

Mobility is a critical element of one’s quality of life regardless of one’s age. Although the challenges for women are more significant than those for men as they age, far less is known about the gender differences in mobility patterns of older adults, especially in the United States (US) context. This paper reports on a study that examined potential gender gaps in mobility patterns of older adults (aged 65 years and over) in the US by analyzing data from the 2017 National Household Travel Survey. Elderly respondents were first classified into one of six clusters based on socio-demographic variables. A Structural Equation Model (SEM) was then estimated and showed that gender gaps existed in the mobility patterns of the elderly, and the differences were diverse across the different clusters. The most substantial gender gap was found in the Senior Elder with Medical Condition(s) cluster, followed by the High-income Workers cluster and the Middle-income Urban Residents cluster. In contrast, females in the Low-Income Single Elder cluster enjoyed statistically significant positive mobility differences with their male counterparts. Our results also found that female elderly in the Senior Elder with Medical Condition(s) and the Low-income Family Elder clusters suffered most after the cessation of driving, with the largest mobility gender gap in the Middle-income Urban Resident cluster. This study will help transportation planners and policymakers understand gender and other socio-demographic differences in elderly mobility. Thus, it will facilitate the development of measures to improve elderly mobility and reduce gender gaps by recognizing and addressing specific target groups’ mobility characteristics and needs rather than treating the elderly as a single potential user group.

Suggested Citation
Suman Mitra, Mingqi Yao and Stephen G. Ritchie (2021) “Gender differences in elderly mobility in the United States”, Transportation Research Part A: Policy and Practice, 154, pp. 203–226. Available at: 10.1016/j.tra.2021.10.015.

published journal article

Structural equation modeling for travel behavior research

Transportation Research Part B: Methodological

Publication Date

January 1, 2003

Author(s)

Abstract

Structural equation modeling (SEM) is an extremely flexible linear-in-parameters multivariate statistical modeling technique. It has been used in modeling travel behavior and values since about 1980, and its use is rapidly accelerating, partially due to the availability of improved software. The number of published studies, now known to be more than 50, has approximately doubled in the past three years. This review of SEM is intended to provide an introduction to the field for those who have not used the method, and a compendium of applications for those who wish to compare experiences and avoid the pitfall of reinventing previous research.

Suggested Citation
Thomas F Golob (2003) “Structural equation modeling for travel behavior research”, Transportation Research Part B: Methodological, 37(1), pp. 1–25. Available at: 10.1016/S0191-2615(01)00046-7.

conference paper

A Deep Ensemble Neural Network Approach for FHWA Axle-based Vehicle Classification using Advanced Single Inductive Loops

100th Annual Meeting of the Transportation Research Board (TRB)

Suggested Citation
Yiqiao Li, Andre Tok and Stephen Ritchie (2021) “A Deep Ensemble Neural Network Approach for FHWA Axle-based Vehicle Classification using Advanced Single Inductive Loops”. 100th Annual Meeting of the Transportation Research Board (TRB). Available at: https://escholarship.org/uc/item/4sf4v88g (Accessed: October 11, 2023).

conference paper

Optimal parameter settings for adaptive traffic-actuated signal control

2008 11th international IEEE conference on intelligent transportation systems

Publication Date

October 1, 2008

Author(s)

Abstract

This paper proposes a real-time adaptive control model for signalized intersections that decides optimal control parameters commonly found in modern actuated controllers, aiming to exploit the adaptive functionality of traffic-actuated control and to improve the performance of traffic-actuated signal system. This model incorporates a flow prediction process that estimates the future arrival rates and turning proportions at target intersections based on the available signal timing plan and detector information. Signal control parameters are optimized dynamically cycle-by-cycle to satisfy these estimated demands. The proposed adaptive control strategy is tested on a network consisting of thirty-eight actuated signals using microscopic simulation. Simulation results show that the proposed adaptive model is able to improve the performance of the study network, especially under off-peak traffic conditions.

Suggested Citation
Xing Zheng and Lianyu Chu (2008) “Optimal parameter settings for adaptive traffic-actuated signal control”, in 2008 11th international IEEE conference on intelligent transportation systems. IEEE, p. 12p. Available at: 10.1109/itsc.2008.4732676.