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New Methods for Monitoring Spatial Truck Travel Patterns in California Using Existing Detector Infrastructure

Status

Complete

Project Timeline

August 1, 2016 - July 31, 2017

Principal Investigator

Stephen Ritchie

Project Team

Andre (Yeow Chern) Tok

Sponsor, Program & Award Number

PTA: 2017-43
(Also see the UC ITS page)

Areas of Expertise

Freight, Logistics, & Supply Chain Intelligent Transportation Systems, Emerging Technologies, & Big Data

Team Departmental Affiliation

Civil and Environmental Engineering

Project Summary

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.

Related Publications

policy brief | Oct 2019

New Tool from UC Irvine Could Save the State Millions while Providing Better Data on Truck Activity in California

Read more

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Irvine, CA 92697
Phone: 949-824-5989 | Fax: 949-824-8385

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