Publication | Open Access
Low-Dimensional Models for Compressed Sensing and Prediction of Large-Scale Traffic Data
46
Citations
23
References
2015
Year
Traffic InformationAdvanced SensingEngineeringMachine LearningIntelligent Traffic ManagementData SciencePattern RecognitionTraffic PredictionSignal ReconstructionTransportation EngineeringMachine VisionCompressed SensingSurveillance TechnologiesPredictive AnalyticsComputer ScienceTraffic EngineeringLarge-scale Traffic DataTraffic MonitoringSignal ProcessingComputer VisionSparse RepresentationCompressive SensingLow-dimensional ModelsTraffic Management
Advanced sensing and surveillance technologies often collect traffic information with high temporal and spatial resolutions. The volume of the collected data severely limits the scalability of online traffic operations. To overcome this issue, we propose a low-dimensional network representation where only a subset of road segments is explicitly monitored. Traffic information for the subset of roads is then used to estimate and predict conditions of the entire network. Numerical results show that such approach provides 10 times faster prediction at a loss of performance of 3% and 1% for 5- and 30-min prediction horizons, respectively.
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