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A novel hybrid deep learning model with ARIMA Conv-LSTM networks and shuffle attention layer for short-term traffic flow prediction

Ali Reza Sattarzadeh, Ronny Kutadinata, Pubudu N. Pathirana, Van Thanh Huynh

2023Transportmetrica A Transport Science64 citationsDOIOpen Access PDF

Abstract

Traffic flow prediction requires learning of nonlinear spatio-temporal dynamics which becomes challenging due to its inherent nonlinearity and stochasticity. Addressing this shortfall, we propose a new hybrid deep learning model based on an attention mechanism that uses multi-layered hybrid architectures to extract spatial–temporal, nonlinear characteristics. Firstly, by designing the autoregressive integral moving average (ARIMA) model, trends and linear regression are extracted; then, integration of convolutional neural network (CNN) and long short-term memory (LSTM) networks leads to better understanding of the model's correlations, serving for more accurate traffic prediction. Secondly, we develop a shuffle attention-based (SA) Conv-LSTM module to determine significance of flow sequences by allocating various weights. Thirdly, to effectively analyse short-term temporal dependencies, we utilise bidirectional LSTM (Bi-LSTM) components to capture periodic features. Experimental results illustrate that our Shuffle Attention ARIMA Conv-LSTM (SAACL) model provides better prediction than other comparable methods, particularly for short-term forecasting, using PeMS datasets.

Topics & Concepts

Autoregressive integrated moving averageComputer scienceDeep learningTerm (time)Artificial intelligenceAutoregressive modelTraffic flow (computer networking)Convolutional neural networkArtificial neural networkMachine learningNonlinear systemTime seriesRecurrent neural networkData miningEconometricsMathematicsPhysicsQuantum mechanicsComputer securityTraffic Prediction and Management TechniquesTraffic control and managementTime Series Analysis and Forecasting