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Short-Term Traffic Forecasting using LSTM-based Deep Learning Models

Dilantha Haputhanthri, Adeesha Wijayasiri

202120 citationsDOI

Abstract

Accurate short-term traffic volume forecasting has become a component with growing importance in traffic management in intelligent transportation systems (ITS). A significant amount of related works on short-term traffic forecasting has been proposed based on traditional learning approaches, and deep learning-based approaches have also made significant strides in recent years. In this paper, we explore several deep learning models that are based on long-short term memory (LSTM) networks to automatically extract inherent features of traffic volume data for forecasting. A simple LSTM model, LSTM encoder-decoder model, CNN-LSTM model and a Conv-LSTM model were designed and evaluated using a real-world traffic volume dataset for multiple prediction horizons. Finally, the experimental results are analyzed, and the Conv-LSTM model produced the best performance with a MAPE of 9.03% for the prediction horizon of 15 minutes. Also, the paper discusses the behavior of the models with the traffic volume anomalies due to the Covid-19 pandemic.

Topics & Concepts

Computer scienceDeep learningArtificial intelligenceTerm (time)Long short term memoryVolume (thermodynamics)EncoderTraffic volumeMachine learningData modelingComponent (thermodynamics)Artificial neural networkAutoencoderRecurrent neural networkEngineeringDatabaseQuantum mechanicsThermodynamicsTransport engineeringOperating systemPhysicsTraffic Prediction and Management TechniquesTransportation Planning and OptimizationTraffic control and management