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A recurrent neural network for urban long-term traffic flow forecasting

Asma Belhadi, Youcef Djenouri, Djamel Djenouri, Jerry Chun‐Wei Lin

2020Applied Intelligence94 citationsDOIOpen Access PDF

Abstract

Abstract This paper investigates the use of recurrent neural network to predict urban long-term traffic flows. A representation of the long-term flows with related weather and contextual information is first introduced. A recurrent neural network approach, named RNN-LF , is then proposed to predict the long-term of flows from multiple data sources. Moreover, a parallel implementation on GPU of the proposed solution is developed ( GRNN-LF ), which allows to boost the performance of RNN-LF . Several experiments have been carried out on real traffic flow including a small city (Odense, Denmark) and a very big city (Beijing). The results reveal that the sequential version (RNN-LF) is capable of dealing effectively with traffic of small cities. They also confirm the scalability of GRNN-LF compared to the most competitive GPU-based software tools when dealing with big traffic flow such as Beijing urban data.

Topics & Concepts

Computer scienceBeijingRecurrent neural networkScalabilityTraffic flow (computer networking)Term (time)Big dataArtificial neural networkRepresentation (politics)Artificial intelligenceReal-time computingMachine learningData miningComputer networkDatabasePolitical scienceLawPoliticsPhysicsQuantum mechanicsChinaTraffic Prediction and Management TechniquesTransportation Planning and OptimizationAir Quality Monitoring and Forecasting
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