working paper

Studying Road Pricing Policy with Panel Data Analysis: The San Diego I-15 HOT Lanes

Publication Date

September 1, 2002

Author(s)

Jacqueline Golob, Thomas Golob

Abstract

A three-year experiment is underway in San Diego County, California that allows solo drivers to pay a fee to use “Express Lanes” i.e. carpool lanes to avoid an eighty-mile highly congested stretch of freeway. These lanes are also commonly referred to as High Occupancy Toll (HOT) Lanes. The facility has two reversible lanes in the freeway median separated by concrete barriers from the I-15 main lanes with access available only at the two end points. Tolls charged commonly range from $.50 to $4.00 per trip but in exceptionally congested conditions can go as high as $8. Fees charged can change dynamically every six minutes to reflect changing traffic in the carpool lanes. Changeable message signs post the price. The algorithm controlling the prices is adjusted to maintain free flow conditions in the carpool lanes at all times. Carpools of two or more persons retain free travel. Subscribers who chose to use the lanes are charged the posted toll using transponder technology and monthly credit-card billing. The opening hours for the Express Lanes are 5:45 to 9:15 a.m. inbound to San Diego and 3:00 – 7:00 p.m. outbound from San Diego.

Suggested Citation
Jacqueline M Golob and Thomas F. Golob (2002) Studying Road Pricing Policy with Panel Data Analysis: The San Diego I-15 HOT Lanes. Working Paper UCI-ITS-WP-02-5, UCTC 574. Institute of Transportation Studies, Irvine. Available at: https://escholarship.org/uc/item/70k1j8v0.

published journal article

Intercity impacts of work-from-home with both remote and non-remote workers

Journal of Housing Economics

Publication Date

March 1, 2023

Author(s)

Jan Brueckner, S. Sayantani

Abstract

This paper generalizes the simple two-city work-from-home model of Brueckner et al. (2022) by adding a group of non-remote workers, who must live in the city where they work. The results show that the main qualitative conclusions of BKL regarding the intercity effects of WFH are unaffected by this modification, with WFH yielding the same aggregate population and employment changes in the two cities and the same house-price and wage effects as in the simpler model. Even though the aggregate population effects are the same, the population relocation of non-remote workers is in the opposite direction to that of remote workers, which matches the direction in BKL. These conclusions are useful because they establish the robustness of BKL’s highly parsimonious model. The paper also contains material surveying other theoretical research on WFH as well as empirical work in the area, including BKL’s empirical findings in support of their model.

Suggested Citation
Jan K. Brueckner and S. Sayantani (2023) “Intercity impacts of work-from-home with both remote and non-remote workers”, Journal of Housing Economics, 59, p. 101910. Available at: 10.1016/j.jhe.2022.101910.

published journal article

Private Autonomous Vehicles and Their Impacts on Near-Activity Location Travel Patterns: Integrated Mode Choice and Parking Assignment Model

Transportation Research Record: Journal of the Transportation Research Board

Abstract

The goal of this study was to analyze the impact of private autonomous vehicles (PAVs), specifically their near-activity location travel patterns, on vehicle miles traveled (VMT). The study proposes an integrated mode choice and simulation-based parking assignment model, along with an iterative solution approach, to analyze the impacts of PAVs on VMT, mode choice, parking lot usage, and other system performance measures. The dynamic simulation-based parking assignment model determines the parking location choice of each traveler as a function of the spatial–temporal demand for parking from the mode choice model, whereas the multinomial logit mode choice model determines mode splits based on the costs and service quality of each travel mode coming, in part, from the parking assignment model. The paper presents a case study to illustrate the power of the modeling framework. The case study varies the percentage of persons with a private vehicle (PV) who own a PAV versus a private conventional vehicle (PCV). The results indicated that PAV owners traveled an extra 0.11 to 1.51 mi compared with PCV owners on average, and the PV mode share was significantly higher for PAV owners. Therefore, as PCVs are converted into PAVs in the future, the results indicate substantial increases in VMT near activity destinations. However, the results also indicated that adjusting parking fees and redistributing parking lot capacities could reduce VMT. The significant increase in VMT from PAVs implies that planners should develop policies to reduce PAV deadheading miles near activity locations, as the automated era comes closer.

Suggested Citation
Younghun Bahk, Michael F. Hyland and Sunghi An (2022) “Private Autonomous Vehicles and Their Impacts on Near-Activity Location Travel Patterns: Integrated Mode Choice and Parking Assignment Model”, Transportation Research Record: Journal of the Transportation Research Board, 2676(7), pp. 276–295. Available at: 10.1177/03611981221077982.

published journal article

The influence of hazard maps and trust of flood controls on coastal flood spatial awareness and risk perception

Environment and Behavior

Publication Date

December 1, 2017

Author(s)

Doug Houston, Wing Cheung, Victoria Basolo, David Feldman, Richard Matthew, Brett F. Sanders, Beth Karlin, Jochen E. Schubert, Kristen A. Goodrich, Seth Contreras, Adam Luke
Suggested Citation
Douglas Houston, Wing Cheung, Victoria Basolo, David Feldman, Richard Matthew, Brett F. Sanders, Beth Karlin, Jochen E. Schubert, Kristen A. Goodrich, Santina Contreras and Adam Luke (2017) “The influence of hazard maps and trust of flood controls on coastal flood spatial awareness and risk perception”, Environment and Behavior, 51(4), pp. 347–375. Available at: 10.1177/0013916517748711.

conference paper

RS2G: Data-Driven Scene-Graph Extraction and Embedding for Robust Autonomous Perception and Scenario Understanding

Proceedings of the IEEE/CVF Winter Conference on Applications of Computer Vision

Publication Date

January 1, 2024

Author(s)

Jian Wang, Arnav Vaibhav Malawade, Junhong Zhou, Shih-Yuan Yu, Mohammad Al Faruque
Suggested Citation
Junyao Wang, Arnav Vaibhav Malawade, Junhong Zhou, Shih-Yuan Yu and Mohammad Abdullah Al Faruque (2024) “RS2G: Data-Driven Scene-Graph Extraction and Embedding for Robust Autonomous Perception and Scenario Understanding”. Proceedings of the IEEE/CVF Winter Conference on Applications of Computer Vision, pp. 7493–7502. Available at: https://openaccess.thecvf.com/content/WACV2024/html/Wang_RS2G_Data-Driven_Scene-Graph_Extraction_and_Embedding_for_Robust_Autonomous_Perception_WACV_2024_paper.html (Accessed: September 13, 2024).

published journal article

Path flow estimator for planning applications in small communities

Transportation Research Part A: Policy and Practice

Suggested Citation
Seungkyu Ryu, Anthony Chen, H. Michael Zhang and Will Recker (2014) “Path flow estimator for planning applications in small communities”, Transportation Research Part A: Policy and Practice, 69(8), pp. 212–242. Available at: 10.1016/j.tra.2014.08.019.

conference paper

Multicommodity kinematic wave simulation model for network traffic flow

TRAFFIC FLOW THEORY AND HIGHWAY CAPACITY AND QUALITY OF SERVICES 2004

Publication Date

January 1, 2004

Author(s)

Wenlong Jin, HM Zhang

Abstract

A multicommodity discrete kinematic wave model that possesses the theoretical rigor and computational efficiency inherent in the kinematic wave theory is proposed for simulating network traffic flow. In this model, fluxes through boundaries and junctions are computed systematically under the supply-demand framework. In addition, traffic is modeled by commodity type so that the effects of geometric characteristics of a road network on traffic dynamics can be captured. Although traffic is not ordered down to the vehicle level as in existing kinematic wave simulation models, the noncompliance with the first-in-first-out property in this model is still of the order of At, the time increment. Hence travel times in the average sense can be defined from cumulative curves. Finally, the evolution of traffic dynamics in a sample road network is shown to demonstrate the stability, numerical convergence, and soundness of the proposed network kinematic wave model.

Suggested Citation
WL Jin and HM Zhang (2004) “Multicommodity kinematic wave simulation model for network traffic flow”, in TRAFFIC FLOW THEORY AND HIGHWAY CAPACITY AND QUALITY OF SERVICES 2004. TRANSPORTATION RESEARCH BOARD NATL RESEARCH COUNCIL, pp. 59–67.

published journal article

Promoting peer-to-peer ridesharing services as transit system feeders

Transportation Research Record

Abstract

Peer-to-peer (P2P) ridesharing is a recently emerging travel alternative that can help accommodate the growth in urban travel demand and at the same time alleviate problems such as excessive vehicular emissions. Prior ridesharing projects suggest that the demand for ridesharing is usually shifted from transit, but its true benefits are realized when the demand shifts from single-occupancy vehicles. This study investigated the potential of shifting demand from private autos to transit by providing a general modeling framework that found routes for private vehicle users that were a combination of P2P ridesharing and transit. The Los Angeles Metro Red Line in California was considered for a case study because it has recently shown declining ridership trends. For successful implementation of a ridesharing system, strategically selecting locations for individuals to get on and off the rideshare vehicles is crucial, along with an appropriate pricing structure for the rides. The study conducted a parametric analysis of the application of real-time P2P ridesharing to feed the Los Angeles Metro Red Line with simulated demand. A mobile application with an innovative ride-matching algorithm was developed as a decision support tool that suggested transit-rideshare and rideshare routes.

Suggested Citation
Neda Masoud, Daisik Nam, Jiangbo Yu and R. Jayakrishnan (2017) “Promoting peer-to-peer ridesharing services as transit system feeders”, Transportation Research Record, 2650(1), pp. 74–83. Available at: 10.3141/2650-09.

published journal article

roadscene2vec: A tool for extracting and embedding road scene-graphs

Knowledge-Based Systems

Publication Date

April 22, 2022

Author(s)

Arnav Vaibhav Malawade, Shih-Yuan Yu, Brandon Hsu, Harsimrat Kaeley, Anurag Karra, Mohammad Al Faruque

Abstract

Recently, road scene-graph representations used in conjunction with graph learning techniques have been shown to outperform state-of-the-art deep learning techniques in tasks including action classification, risk assessment, and collision prediction. To enable the exploration of applications of road scene-graph representations, we introduce roadscene2vec: an open-source tool for extracting and embedding road scene-graphs. The goal of roadscene2vec is to enable research into the applications and capabilities of road scene-graphs by providing tools for generating scene-graphs, graph learning models to create spatio-temporal scene-graph embeddings, and tools for visualizing and analyzing scene-graph-based methodologies. The capabilities of roadscene2vec include (i) customized scene-graph generation from either video clips or data from the CARLA simulator, (ii) multiple configurable spatio-temporal graph embedding models and baseline CNN-based models, (iii) built-in functionality for using graph and sequence embeddings for risk assessment and collision prediction applications, (iv) tools for evaluating transfer learning, and (v) utilities for visualizing scene-graphs and analyzing the explainability of graph learning models. We demonstrate the utility of roadscene2vec for these use cases with experimental results and qualitative evaluations for both graph learning models and CNN-based models. roadscene2vec is available at https://github.com/AICPS/roadscene2vec.

Suggested Citation
Arnav Vaibhav Malawade, Shih-Yuan Yu, Brandon Hsu, Harsimrat Kaeley, Anurag Karra and Mohammad Abdullah Al Faruque (2022) “roadscene2vec: A tool for extracting and embedding road scene-graphs”, Knowledge-Based Systems, 242, p. 108245. Available at: 10.1016/j.knosys.2022.108245.

published journal article

Local labor markets, job matching, and urban location*

Int Economic Rev

Publication Date

February 1, 2002

Author(s)

Jan Brueckner, Jacques-Francois Thisse, Yves Zenou

Abstract

We present a new way of modeling local labor markets by linking the space of workers’ skills and the physical space of cities. The key lesson of our analysis is that firms exploit workers in these two spaces by setting wages that are below the competitive level. The degree of monopsony power depends on the elasticity of the firm’s labor pool, which is inversely related to the costs workers incur in commuting and acquiring skills. Our analysis thus shows how socioeconomic ghettos emerge as workers with poor skill matches are also those who incur the highest commuting costs.

Suggested Citation
Jan K. Brueckner, Jacques-Francois Thisse and Yves Zenou (2002) “Local labor markets, job matching, and urban location*”, Int Economic Rev, 43(1), pp. 155–171. Available at: 10.1111/1468-2354.t01-1-00007.