Phd Dissertation

Trip Scheduling and Economic Analysis of Transportation Policies

Abstract

This dissertation seeks to understand how urban commuters adjust their schedules and modes to congestion, as well policy implications of this adjustment. An equilibrium simulation model of commuting traffic on a hypothetical, urban highway corridor is developed. The demand side is a discrete choice model of mode and time of day, estimated with data from the San Francisco Bay Area. The supply side is a speed-flow function that predicts travel time from flows leaving the corridor. The research has three objectives: to simulate the effects of capacity expansion, optimal toll, and six other pricing policies; to test hypotheses relating to schedule shifts in response to congestion and policy changes; and to estimate biases in policy effects when schedule shifts are ignored. An iterative procedure is developed to compute optimal tolls that vary with time of day. Policies are examined from five perspectives: welfare (consumer surplus, toll revenue, and total benefits), peaking (traffic counts and share in the peak 15-minute period), congestion (average and peak 15-minute travel delays), schedule delay (average variable schedule delay), and mode mix (mode shares, average occupancy, and total traffic). Five results emerge. First, although an optimal toll can achieve substantial benefits, savings in travel delay are accompanied by increases in schedule delay. Second, a toll equal to the marginal social externalities of an additional trip at different times of day at a base case can achieve benefits equivalent to those of optimal toll, which is equal to the marginal social externalities of an additional trip at different times of day at a social optimum. Third, schedule delay has variable and constant components. The constant component is the equilibrium level at a base case when travel is free-flow. The variable component changes with congestion and policies. Fourth, urban commuters shift their schedules in response to congestion and policy changes. Heavy congestion forces people away from the peak; capacity expansion attracts people back to the peak; an optimal toll discourages people driving alone in the peak. Fifth, the benefits of capacity expansion and an optimal toll are substantially overestimated if trip scheduling is ignored.

Suggested Citation
Xuehao Chu (1993) Trip Scheduling and Economic Analysis of Transportation Policies. PhD Dissertation. UC Irvine. Available at: https://uci.primo.exlibrisgroup.com/permalink/01CDL_IRV_INST/1go3t9q/alma991035093100104701.

Preprint Journal Article

LLM4CVE: Enabling Iterative Automated Vulnerability Repair with Large Language Models

Publication Date

January 7, 2025

Author(s)

Mohamad Fakih, Rahul Dharmaji, Halima Bouzidi, Gustavo Quiros Araya, Oluwatosin Ogundare, Mohammad Al Faruque

Abstract

Software vulnerabilities continue to be ubiquitous, even in the era of AI-powered code assistants, advanced static analysis tools, and the adoption of extensive testing frameworks. It has become apparent that we must not simply prevent these bugs, but also eliminate them in a quick, efficient manner. Yet, human code intervention is slow, costly, and can often lead to further security vulnerabilities, especially in legacy codebases. The advent of highly advanced Large Language Models (LLM) has opened up the possibility for many software defects to be patched automatically. We propose LLM4CVE an LLM-based iterative pipeline that robustly fixes vulnerable functions in real-world code with high accuracy. We examine our pipeline with State-of-the-Art LLMs, such as GPT-3.5, GPT-4o, Llama 38B, and Llama 3 70B. We achieve a human-verified quality score of 8.51/10 and an increase in groundtruth code similarity of 20% with Llama 3 70B. To promote further research in the area of LLM-based vulnerability repair, we publish our testing apparatus, fine-tuned weights, and experimental data on our website

Suggested Citation
Mohamad Fakih, Rahul Dharmaji, Halima Bouzidi, Gustavo Quiros Araya, Oluwatosin Ogundare and Mohammad Abdullah Al Faruque (2025) “LLM4CVE: Enabling Iterative Automated Vulnerability Repair with Large Language Models”. arXiv. Available at: 10.48550/arXiv.2501.03446.

conference paper

Hyperdimensional Uncertainty Quantification for Multimodal Uncertainty Fusion in Autonomous Vehicles Perception

Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition

Publication Date

January 1, 2025

Author(s)

Luke Chen, Jian Wang, Trier Mortlock, Pramod Khargonekar, Mohammad Al Faruque
Suggested Citation
Luke Chen, Junyao Wang, Trier Mortlock, Pramod Khargonekar and Mohammad Abdullah Al Faruque (2025) “Hyperdimensional Uncertainty Quantification for Multimodal Uncertainty Fusion in Autonomous Vehicles Perception”. Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition, pp. 22306–22316. Available at: https://openaccess.thecvf.com/content/CVPR2025/html/Chen_Hyperdimensional_Uncertainty_Quantification_for_Multimodal_Uncertainty_Fusion_in_Autonomous_Vehicles_CVPR_2025_paper.html (Accessed: August 21, 2025).

Preprint Journal Article

Physics-Informed Deep Learning to Reduce the Bias in Joint Prediction of Nitrogen Oxides

Publication Date

August 14, 2023

Author(s)

Lianfa Li, Roxana Khalili, Frederick Lurmann, Nathan Pavlovic, Jun Wu, Yan Xu, Yisi Liu, Karl O'Sharkey, Beate Ritz, Luke Oman, Meredith Franklin, Theresa Bastain, Shohreh F. Farzan, Carrie Breton, Rima Habre

Abstract

Atmospheric nitrogen oxides (NOx) primarily from fuel combustion have recognized acute and chronic health and environmental effects. Machine learning (ML) methods have significantly enhanced our capacity to predict NOx concentrations at ground-level with high spatiotemporal resolution but may suffer from high estimation bias since they lack physical and chemical knowledge about air pollution dynamics. Chemical transport models (CTMs) leverage this knowledge; however, accurate predictions of ground-level concentrations typically necessitate extensive post-calibration. Here, we present a physics-informed deep learning framework that encodes advection-diffusion mechanisms and fluid dynamics constraints to jointly predict NO2 and NOx and reduce ML model bias by 21-42%. Our approach captures fine-scale transport of NO2 and NOx, generates robust spatial extrapolation, and provides explicit uncertainty estimation. The framework fuses knowledge-driven physicochemical principles of CTMs with the predictive power of ML for air quality exposure, health, and policy applications. Our approach offers significant improvements over purely data-driven ML methods and has unprecedented bias reduction in joint NO2 and NOx prediction.

Suggested Citation
Lianfa Li, Roxana Khalili, Frederick Lurmann, Nathan Pavlovic, Jun Wu, Yan Xu, Yisi Liu, Karl O'Sharkey, Beate Ritz, Luke Oman, Meredith Franklin, Theresa Bastain, Shohreh F. Farzan, Carrie Breton and Rima Habre (2023) “Physics-Informed Deep Learning to Reduce the Bias in Joint Prediction of Nitrogen Oxides”. arXiv. Available at: 10.48550/arXiv.2308.07441.

published journal article

An elementary mechanism for simultaneously modeling discrete decisions and decision times

System Dynamics Review

Publication Date

July 1, 2022

Author(s)

Abstract

Abstract In the field of system dynamics (SD), there has been a missing set of theoretically sound techniques for explicitly modeling dynamics during discrete decision‐making processes across varying levels and types of decision pressures. Purchasing a property, filing a divorce, approving a merger, imposing a tariff, and launching a war are examples of actions that have broader ramifications; in these cases, the decisions and timing of those decisions are crucial in understanding and predicting the interactions between the decision‐makers and their environments. Sequential Sampling Models (SSMs) have remained commonplace in cognitive psychology (CP) for decades because of their utility in simultaneously capturing individual decisions and decision‐time distributions. This article reviews existing SSM literature and proposes a generalized, elementary mechanism distilled from existing SSMs, which establishes a connection between SD and CP in the hope of benefiting both fields. © 2022 System Dynamics Society.

Suggested Citation
Jiangbo Yu (2022) “An elementary mechanism for simultaneously modeling discrete decisions and decision times”, System Dynamics Review, 38(3), pp. 215–245. Available at: 10.1002/sdr.1712.

conference paper

Household Activity Pattern Problem with Automated Vehicle-Enabled Intermodal Trips

Transportation Research Board 103rd Annual Meeting

Publication Date

January 1, 2024
Suggested Citation
Youngyun Bahk, Michael Hyland and Sunghi An (2024) “Household Activity Pattern Problem with Automated Vehicle-Enabled Intermodal Trips”. Transportation Research Board 103rd Annual Meeting.

Phd Dissertation

Modeling Commute Behavior Dynamics in Response to Policy Changes: A Case Study from the COVID-19 Pandemic

Abstract

This dissertation introduces a novel model intended for integration within an Agent-Based Model (ABM) framework to dynamically estimate and predict workers’ commuting behaviors under various policy scenarios. The model is designed to aid policy-making by providing insight into commuting patterns and their potential responsiveness to policy interventions. In particular, the focus is on changes in Working from Home behavior due to the COVID-19 pandemic. The methodology encompasses a three-step process, starting with the identification of worker commuting preference classes. Employing an unconditional latent class analysis model, the study categorizes workers into distinct groups based on their telecommuting preferences and behaviors. This classification is foundational for understanding diverse work-related travel patterns. The second step is predicting class membership. Post-classification, the study considers demographic features to determine their impact on class membership. This analysis is critical for predicting shifts in commuting behavior in relation to demographic changes. Third, estimating commuter type within each commuter type class: This concluding step uses logistic regression to estimate the likelihood of an individual being a commuter, a hybrid commuter, or a telecommuter, with adaptability to policy changes for exploring varied outcomes. The study produced several key findings. First, diverse worker classes were identified: The analysis of the ASU Covid Future Panel Survey data revealed several distinct worker classes based on telecommuting experiences and preferences. These include a telecommuter class, a regular commuter class, pre-Covid home remote worker class, and a class exhibiting significant demographic changes during the pandemic. Particularly noteworthy is a class that shows a strong propensity to shift to high-frequency telecommuting under supportive policies, despite an initial preference for hybrid or regular commuting. Distinct class characteristics and predictors were identified within each class, serving as predictors for class membership. This finding is essential for understanding and predicting changes in commuting behaviors. The study also included an intra-class commuter type estimation and factor analysis to identify the factors influencing these classifications. This provides deeper insights into the motivations and constraints affecting commuting choices.

Suggested Citation
Chenying Qin (2023) Modeling Commute Behavior Dynamics in Response to Policy Changes: A Case Study from the COVID-19 Pandemic. UC Irvine. Available at: https://uci.primo.exlibrisgroup.com/permalink/01CDL_IRV_INST/17uq3m8/alma991035582365304701 (Accessed: October 23, 2024).

published journal article

Anger and depression among incarcerated male youth: Predictors of violent and nonviolent offending during adjustment to incarceration.

Journal of Consulting and Clinical Psychology

Publication Date

August 1, 2019

Author(s)

Erin L. Kelly, Raymond Novaco, Elizabeth Cauffman
Suggested Citation
Erin L. Kelly, Raymond W. Novaco and Elizabeth Cauffman (2019) “Anger and depression among incarcerated male youth: Predictors of violent and nonviolent offending during adjustment to incarceration.”, Journal of Consulting and Clinical Psychology, 87(8), pp. 693–705. Available at: 10.1037/ccp0000420.

research report

California ATMS Testbed : PHASE III: Operational Research Implementation : Final Report

Abstract

This report presents a summary of research and development focusing on the prototype deployment and evaluation of an Advanced Transportation Management Systems (ATMS) Testbed. Located in Orange County, California, the Testbed, which is based on real-time, computer-assisted traffic management and communication, is designed to: 1) accelerate deployment through advanced technology research; 2) demonstrate the readiness of advanced systems; and 3) implement and evaluate operations of an integrated multi-jurisdictional, multi-agency transportation operations system. The transportation operations system that forms the backbone of the Testbed is structured to provide intelligent computer-assisted decision support to traffic management personnel by integrating network-wide traffic information in a real-time environment. This study identified research activities that, accompanied by Testbed support, might lead to candidate products for deployment. The work accomplished is divided into three primary categories: 1) Testbed Resources/Technical Assistance/ Management; 2) Testbed Deployment; and 3) Testbed Research and Development.

Suggested Citation
Will Recker (2006) California ATMS Testbed : PHASE III: Operational Research Implementation : Final Report. Available at: https://rosap.ntl.bts.gov/view/dot/27514.

published journal article

Infrastructure-based sensor fusion for acquiring gross vehicle weight rating classifications

Transportation Research Interdisciplinary Perspectives

Suggested Citation
Guoliang Feng, Yiqiao Li, Andre Y.C. Tok and Stephen G. Ritchie (2025) “Infrastructure-based sensor fusion for acquiring gross vehicle weight rating classifications”, Transportation Research Interdisciplinary Perspectives, 32, p. 101535. Available at: 10.1016/j.trip.2025.101535.