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BiLSTM- and GNN-Based Spatiotemporal Traffic Flow Forecasting with Correlated Weather Data

Abdullah Alourani, Farzeen Ashfaq, N. Z. Jhanjhi, Navid Ali Khan

2023Journal of Advanced Transportation13 citationsDOIOpen Access PDF

Abstract

The timely and accurate forecasting of urban road traffic is crucial for smart city traffic management and control. It can assist both drivers and traffic controllers in selecting efficient routes and diverting traffic to less congested roads. However, estimating traffic volume while taking into account external factors such as weather and accidents is still a challenge. In this research, we propose a hybrid deep learning framework, double attention graph neural network BiLSTM (DAGNBL), that utilizes a graph neural network to represent spatial characteristics and bidirectional LSTM units to capture temporal dependencies between features. Attention modules are added to the GNN and BLSTM to find high-impact attention weight values for the chosen road section. Our model offers the best prediction accuracy with a mean absolute percentage error of 5.21% and a root mean squared error of 4. It can be utilized as a useful tool for predicting traffic flow on certain stretches of road.

Topics & Concepts

Computer scienceTraffic flow (computer networking)Artificial neural networkMean squared errorGraphData miningTraffic volumeTransport engineeringArtificial intelligenceStatisticsEngineeringMathematicsComputer securityTheoretical computer scienceTraffic Prediction and Management TechniquesTraffic control and managementTransportation Planning and Optimization
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