A Big-Data Driven Framework to Estimating Vehicle Volume based on Mobile Device Location Data
Mofeng Yang, Weiyu Luo, Mohammad Ashoori, Jina Mahmoudi, Chenfeng, Xiong, Jiawei Lu, Guangchen Zhao, Saeed Saleh Namadi, Songhua Hu, Aliakbar, Kabiri

TL;DR
This paper introduces a big-data framework that leverages mobile device location data to estimate vehicle volumes across large areas, offering a scalable and cost-effective alternative to traditional counting methods.
Contribution
The paper presents a novel big-data driven framework that processes terabytes of mobile device data to accurately estimate vehicle volumes over extensive geographic regions.
Findings
Framework produces reliable vehicle volume estimates
Demonstrates transferability and generalization ability
Implemented on Maryland's entire street network for 2019
Abstract
Vehicle volume serves as a critical metric and the fundamental basis for traffic signal control, transportation project prioritization, road maintenance plans and more. Traditional methods of quantifying vehicle volume rely on manual counting, video cameras, and loop detectors at a limited number of locations. These efforts require significant labor and cost for expansions. Researchers and private sector companies have also explored alternative solutions such as probe vehicle data, while still suffering from a low penetration rate. In recent years, along with the technological advancement in mobile sensors and mobile networks, Mobile Device Location Data (MDLD) have been growing dramatically in terms of the spatiotemporal coverage of the population and its mobility. This paper presents a big-data driven framework that can ingest terabytes of MDLD and estimate vehicle volume at a larger…
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Taxonomy
TopicsTraffic Prediction and Management Techniques · Automated Road and Building Extraction · Human Mobility and Location-Based Analysis
