working paper

Safety of High Occupancy Vehicle Lanes without Physical Separation

Publication Date

February 1, 1989

Author(s)

Thomas Golob, Will Recker, Douglas W. Levine

Working Paper

UCI-ITS-WP-89-5

Areas of Expertise

Abstract

This study addresses safety issues associated with the operation of freeway High Occupancy Vehicle (HOV) lanes that are not separated by physical barriers from adjacent, general-purpose traffic lanes. Accident frequencies and characteristics obtained from fourteen months operation of an HOV lane in the greater Los Angeles area, together with similar data for six years prior to opening of the lane, are analyzed to evaluate the safety impacts of the lane operation. The analyses rely on comparisons of accident characteristics associated with the HOV lane to those associated with both temporal and spatial control groups. Changes in accident characteristics are also related to existing patterns of freeway congestion. The results of the case study indicate no adverse effect on safety conditions that could logically be attributed to the HOV operation; all of the changes in the patterns of reported accidents can be explained by changes in the location and timing of traffic congestion. Although no overall change in the exposure to accidents was found, there is a significant migration of accident locations due to the combination of relief of congestion in the project area and a corresponding creation of more severe traffic bottlenecks downstream of the project. 

Suggested Citation
Thomas F. Golob, Will Recker and Douglas W. Levine (1989) Safety of High Occupancy Vehicle Lanes without Physical Separation. Working Paper UCI-ITS-WP-89-5. Institute of Transportation Studies, Irvine. Available at: https://escholarship.org/uc/item/0pw5j5d0.

published journal article

Risk, uncertainty and discrete choice models

Marketing letters

Publication Date

July 1, 2008

Author(s)

Andre de Palma, Moshe Ben-Akiva, David Brownstone, Charles Holt, Thierry Magnac, Daniel McFadden, Peter Moffatt, Nathalie Picard, Kenneth Train, Peter Wakker, Joan Walker
Suggested Citation
Andre de Palma, Moshe Ben-Akiva, David Brownstone, Charles Holt, Thierry Magnac, Daniel McFadden, Peter Moffatt, Nathalie Picard, Kenneth Train, Peter Wakker and Joan Walker (2008) “Risk, uncertainty and discrete choice models”, Marketing letters, 19(3-4), pp. 269–285. Available at: 10.1007/s11002-008-9047-0.

Phd Dissertation

Infrastructure-Based Sensing for Multimodal Freight Monitoring / Guoliang Feng.

Abstract

Multimodal freight transportation plays a vital role in supporting the U.S. economy. Truck and rail are the two most dominant modes, which are responsible for approximately 70 percent of national freight ton-miles over the past two decades and enable long-distance movement of goods across the country. As freight volumes continue to grow, they contribute to rising environmental pollution, public health risks, infrastructure deterioration, and safety concerns, especially in communities located near major freight corridors. These growing challenges highlight the urgent need for high-resolution monitoring systems that can accurately capture the complexity and movement of freight across different transportation modes. However, existing data sources present distinct limitations for both truck and rail freight. Truck freight data often relies on surveys or axle- and body-type-based datasets, which provide information related vehicle structure and physical characteristics and fail to capture key attributes such as maximum legal weight. Rail freight data is even more limited, which is often derived from aggregated reports that are delayed and typically lack detailed rail vehicle configuration information as well as spatiotemporal characteristics. To address major gaps in freight data, including the lack of weight-related classification in truck freight and the absence of detailed rail vehicle configuration in rail freight, this dissertation developed novel sensing and machine learning approaches that enable high-resolution monitoring of multimodal freight movements. It utilizes non-intrusive infrastructure-based sensors, such as advanced inductive loop sensors and roadside infrared cameras, to enable continuous freight activity monitoring. The modeling approach emphasizes accuracy and domain adaptability, which starts with supervised deep learning approaches and extends to investigation of label-free methods using emerging vision-language models (VLMs) to reduce reliance on manual annotations. First, a deep-learning approach was developed for direct classification of trucks by their maximum legal weight using data from advanced inductive loop sensors and side-view video cameras. This approach achieved highly accurate performance that surpasses the state-of-the-art mapping methods and enables the direct and accurate measurement of this type of data rather than inferring or mapping indirectly from other classification schemes. Second, a vision-based deep-learning approach was developed for real-time rail freight monitoring that integrates depth-aware background subtraction and a rail object detection model to identify locomotives and railcars across diverse environmental conditions. The method achieved counts errors of under 5 percent for rail vehicles in both day and night modes. While these supervised methods demonstrated strong performance, they require extensive labeled data. To address this limitation, the study investigated a zero-shot framework to eliminate the need for manual annotation and showed promising performance with an average F1 score of 0.99 in tests on truck classification based on engine types and cargo configurations using structured text prompts. Although effective, this approach depends heavily on hand-crafted descriptions of vehicle characteristics. To overcome this challenge, an automated elicited knowledge framework was designed to automatically improve VLM performance by refining its prompts based on errors, which improved the model performance compared without elicited knowledge, and allows the system to adapt to complex freight vehicle identification tasks without retraining. In summary, this dissertation presents advanced sensing and modeling approaches that achieve over 90 percent accuracy in addressing data gaps for high-resolution multimodal freight activity monitoring that supports sustainable freight transportation.

Suggested Citation
Guoliang Feng (2025) Infrastructure-Based Sensing for Multimodal Freight Monitoring / Guoliang Feng.. University of California, Irvine. Available at: https://uci.primo.exlibrisgroup.com/permalink/01CDL_IRV_INST/17uq3m8/alma9923591519706531.

published journal article

High-coverage point-to-point transit. Study of Path-Based Vehicle Routing Through Multiple Hubs

Transportation Research Record

Abstract

This study focuses on the optimization and simulation modeling associated with the design of alternative transportation, the high-coverage point-to-point transit (HCPPT), which involves a sufficient number of deployed small vehicles with advanced-information supply schemes. This paper identifies the inefficiency of the existing heuristic rules for vehicle routing and proposes a new optimization approach for an HCPPT solution. A path-based model for routing through multiple hubs as opposed to a single pair of hubs is formulated to improve HCPPT operational schemes. This study also develops a simulation framework for the application of the proposed algorithm. To illustrate the system and computational performances of the proposed model, simulations are conducted with different sets of scenarios and model parameters. The path-based model shows reasonable performance over the various demand patterns in level of service and ride time index. It is also shown that, with the use of constraint-driven schemes and model parameters, the scale of the problem is reduced. The computational times are shown to be quite small, and demonstrate the viability in real-time operations.

Suggested Citation
Jaeyoung Jung and R. Jayakrishnan (2011) “High-coverage point-to-point transit. Study of Path-Based Vehicle Routing Through Multiple Hubs”, Transportation Research Record, 2218(1), pp. 78–87. Available at: 10.3141/2218-09.

working paper

Transportation Energy Use

Publication Date

January 1, 2003

Abstract

This chapter forecasts transportation energy demand, for both the U.S. and California, for the next 20 years. Our guiding principle has been to concentrate our efforts on the most important segments of the market. We therefore provide detailed projections for gasoline (58 % of California transportation energy in 1988), jet fueI (17%), distillate (diesel) fuel (13%), and residual bunker) fuel (10%). We ignore the remaining 2%–natural gas, aviation gasoIine, liquefied petroleum gas, lubricants, and electricity. Although we discuss prospects for the use of alternative fuels such as methanoI and natural gas, we do not believe that these will be significant factors in the next 20 years. Table 2-1 gives an overview of transportation energy use in California and the U.S.

conference paper

Energy policies for passenger transportation: A comparison of costs and effectiveness

Proceedings of the kuhmo-nectar conference on transport economics, valencia, spain

Publication Date

July 1, 2020

Author(s)

Suggested Citation
D. Brownstone (2020) “Energy policies for passenger transportation: A comparison of costs and effectiveness”, in Proceedings of the kuhmo-nectar conference on transport economics, valencia, spain.

conference paper

EcoFusion: energy-aware adaptive sensor fusion for efficient autonomous vehicle perception

Proceedings of the 59th ACM/IEEE Design Automation Conference

Publication Date

August 23, 2022

Author(s)

Arnav Vaibhav Malawade, Trier Mortlock, Mohammad Al Faruque

Abstract

Autonomous vehicles use multiple sensors, large deep-learning models, and powerful hardware platforms to perceive the environment and navigate safely. In many contexts, some sensing modalities negatively impact perception while increasing energy consumption. We propose EcoFusion: an energy-aware sensor fusion approach that uses context to adapt the fusion method and reduce energy consumption without affecting perception performance. EcoFusion performs up to 9.5% better at object detection than existing fusion methods with approximately 60% less energy and 58% lower latency on the industry-standard Nvidia Drive PX2 hardware platform. We also propose several context-identification strategies, implement a joint optimization between energy and performance, and present scenario-specific results.

Suggested Citation
Arnav Vaibhav Malawade, Trier Mortlock and Mohammad Abdullah Al Faruque (2022) “EcoFusion: energy-aware adaptive sensor fusion for efficient autonomous vehicle perception”, in Proceedings of the 59th ACM/IEEE Design Automation Conference. New York, NY, USA: Association for Computing Machinery (DAC '22), pp. 481–486. Available at: 10.1145/3489517.3530489.

conference paper

Eve, You Shall Not Get Access! A Cyber-Physical Blockchain Architecture for Electronic Toll Collection Security

2020 IEEE 23rd International Conference on Intelligent Transportation Systems (ITSC)

Publication Date

September 1, 2020

Author(s)

Ahmed Didouh, Anthony Lopez, Yassin El Hillali, Atika Rivenq, Mohammad Al Faruque

Abstract

Cooperative intelligent transportation system (C-ITS) applications are generally susceptible to position spoofing-dependent attacks such as Sybil and DDoS attacks due to a lack of established solutions. This paper presents a novel cyber-physical blockchain cryptographic architecture to help prevent position spoofing attackers from becoming validated nodes in C-ITS applications. The solution also guarantees security requirements including the non-trivial non-repudiation in light of these and other attacks. With a use case of electronic toll collection (ETC), our architecture implements techniques based on Received Signal Strength Indication (RSSI) measurements in conjunction with blockchain authentication methods such as Proof-of-Location and smart contracts to determine the legitimacy of a node. We demonstrate our solution in experiments using ITS-G5 Cohda Wireless technology (a Road Side Unit and two On-Board Units programmed with the ITS Vanetza stack) with functionalities specified by the European Telecommunications Standardization Institute (ETSI). From our experimental results from several driving-based data gathering tests, we discovered that our solution is able to cope with noise and relative velocity challenges because it incorporates both OBUs and RSUs in the Proof of Location computation steps. In light of this, the proposed architecture may also be applicable to govern V2X in general.

Suggested Citation
Ahmed Didouh, Anthony Bahadir Lopez, Yassin El Hillali, Atika Rivenq and Mohammad Abdullah Al Faruque (2020) “Eve, You Shall Not Get Access! A Cyber-Physical Blockchain Architecture for Electronic Toll Collection Security”, in 2020 IEEE 23rd International Conference on Intelligent Transportation Systems (ITSC). 2020 IEEE 23rd International Conference on Intelligent Transportation Systems (ITSC), pp. 1–7. Available at: 10.1109/ITSC45102.2020.9294334.

conference paper

Can We Trust Embodied Agents? Exploring Backdoor Attacks against Embodied LLM-based Decision-Making Systems

The Thirteenth International Conference on Learning Representations (ICLR) 2025

Publication Date

April 30, 2025

Author(s)

Ruochen Jiao, Shaoyuan Xie, Justin Yue, Takami Sato, Lei Wang, Yu-Han (Doris) Wang, Qi Alfred Chen, Qi Zhu

Abstract

Large Language Models (LLMs) have shown significant promise in real-world decision-making tasks for embodied artificial intelligence, especially when fine-tuned to leverage their inherent common sense and reasoning abilities while being tailored to specific applications. However, this fine-tuning process introduces considerable safety and security vulnerabilities, especially in safety-critical cyber-physical systems. In this work, we propose the first comprehensive framework for Backdoor Attacks against LLM-based Decision-making systems (BALD) in embodied AI, systematically exploring the attack surfaces and trigger mechanisms. Specifically, we propose three distinct attack mechanisms: word injection, scenario manipulation, and knowledge injection, targeting various components in the LLM-based decision-making pipeline. We perform extensive experiments on representative LLMs (GPT-3.5, LLaMA2, PaLM2) in autonomous driving and home robot tasks, demonstrating the effectiveness and stealthiness of our backdoor triggers across various attack channels, with cases like vehicles accelerating toward obstacles and robots placing knives on beds. Our word and knowledge injection attacks achieve nearly 100% success rate across multiple models and datasets while requiring only limited access to the system. Our scenario manipulation attack yields success rates exceeding 65%, reaching up to 90%, and does not require any runtime system intrusion. We also assess the robustness of these attacks against defenses, revealing their resilience. Our findings highlight critical security vulnerabilities in embodied LLM systems and emphasize the urgent need for safeguarding these systems to mitigate potential risks.

Suggested Citation
Ruochen Jiao, Shaoyuan Xie, Justin Yue, Takami Sato, Lixu Wang, Yixuan Wang, Qi Alfred Chen and Qi Zhu (2025) “Can We Trust Embodied Agents? Exploring Backdoor Attacks against Embodied LLM-based Decision-Making Systems”, in The Thirteenth International Conference on Learning Representations (ICLR) 2025. Available at: https://ics.uci.edu/~alfchen/pubs/shaoyuan_iclr25.pdf (Accessed: August 21, 2025).