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LST-GCN: Long Short-Term Memory Embedded Graph Convolution Network for Traffic Flow Forecasting

Xu Han, Shi-Cai Gong

2022Electronics34 citationsDOIOpen Access PDF

Abstract

Traffic flow prediction is an important part of the intelligent transportation system. Accurate traffic flow prediction is of great significance for strengthening urban management and facilitating people’s travel. In this paper, we propose a model named LST-GCN to improve the accuracy of current traffic flow predictions. We simulate the spatiotemporal correlations present in traffic flow prediction by optimizing GCN (graph convolutional network) parameters using an LSTM (long short-term memory) network. Specifically, we capture spatial correlations by learning topology through GCN networks and temporal correlations by embedding LSTM networks into the training process of GCN networks. This method improves the traditional method of combining the recurrent neural network and graph neural network in the original spatiotemporal traffic flow prediction, so it can better capture the spatiotemporal features existing in the traffic flow. Extensive experiments conducted on the PEMS dataset illustrate the effectiveness and outperformance of our method compared with other state-of-the-art methods.

Topics & Concepts

Computer scienceGraphTraffic flow (computer networking)Convolutional neural networkEmbeddingLong short term memoryConvolution (computer science)Flow networkRecurrent neural networkTerm (time)Artificial intelligenceData miningArtificial neural networkTheoretical computer scienceComputer networkMathematicsMathematical optimizationQuantum mechanicsPhysicsTraffic Prediction and Management TechniquesTransportation Planning and OptimizationTraffic control and management
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