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Research Reports
Hybrid Traffic Data Collection Roadmap: Objectives and Methods
Bayen, Alexandre
keywords: Automatic data collection, Algorithms, Cost effectiveness, Data fusion, Data quality, Detection, Traffic speed, Traffic density, Traffic volume;   
Publisher: California Partners for Advanced Transportation Technolog
Subject:工程和技术(综合)
美国
【 摘 要 】
Traffic data is used to estimate current traffic conditions so that travelers and agencies can make better decisions about how to use and manage the transportation network. This research explores the fusion of probe data (vehicle speed and direction) with loop data (density, speed, and count) in the context of producing overall network speed and travel time estimates. Speed and travel time estimates are useful in many circumstances, but current system control strategies (ramp metering, for example) require density data. While it is difficult to significantly increase the quantity of loop detectors on state highways, the penetration rate of probe data is continually increasing. Multiple data sources with various characteristics were fused by running probe and loop data through the Mobile Millennium highway model, generating velocity maps and travel times. The performance of data sources both individually and when fused was evaluated. It was found that the highest quality estimates are achieved by combining probe data and loop detector data.
【 授权许可】

   

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