CEE Ph.D. Defense Announcement: Infrastructure-Based Sensing for Multimodal Freight Monitoring
Guoliang Feng, Ph.D. Candidate
UC Irvine, 2025
Chancellor's Professor Stephen Ritchie
Abstract: Multimodal freight transportation moves most goods across the United States with trucks and railroads as the dominant modes. However, growing freight activity has raised concerns about environmental impacts, infrastructure strain, and public health, especially in communities near major corridors. Existing data systems often lack the spatial and temporal detail as well as timeliness needed to monitor truck and rail freight operations effectively. This dissertation developed advanced sensing and machine learning methods for high-resolution freight monitoring. It introduces approaches that combine infrastructure-based sensors with deep learning for accurate freight vehicle identification. To further reduce reliance on manual annotations, the study investigated an automated prompt refinement technique using vision-language models. These contributions will help fill critical data gaps and advance the development of more sustainable and intelligent freight systems.
Share
Upcoming Events
-
MSE 298 Seminar: Ionic Correlations in Polymer Nanostructures - From Block Copolymers to End-Charged Blends
-
MAE 298 SEMINAR: Co-Designing Mutual Aid Transportation for Disaster Resilience
-
CBE 298 Seminar: Engineering Strategies for Structural Heart Disease
-
MSE 298 Seminar: Radiation Resistance and Mechanical Response of Ceramics in Extreme Environments
-
MAE 298 SEMINAR: Stretchable Electronics for Soft Biological and Robotic Systems