Framework for Dynamic OD Matrix Estimation Based on Multi-Source Traffic Data Fusion

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Abstract:

The advanced transportation management and information systems (ATMIS) are strengthening the capability of collecting multi-source traffic data constantly from the road networks. Considering the fundamental role of dynamic Origin-Destination data for many advanced traffic management systems, it is promising to apply the multi-source traffic data to improve the dynamic OD estimation. Targeting dynamic OD data estimation, the classical OD data estimation approaches are discussed, and a framework of dynamic OD estimation based on multi-source traffic data is proposed and analyzed. Future researches are recommended in the end.

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1153-1156

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January 2014

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© 2014 Trans Tech Publications Ltd. All Rights Reserved

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