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Proposal of a Machine Learning Approach for Traffic Flow Prediction

Mariaelena Berlotti, Sarah Di Grande, Salvatore Cavalieri

2024Sensors44 citationsDOIOpen Access PDF

Abstract

Rapid global urbanization has led to a growing urban population, posing challenges in transportation management. Persistent issues such as traffic congestion, environmental pollution, and safety risks persist despite attempts to mitigate them, hindering urban progress. This paper focuses on the critical need for accurate traffic flow forecasting, considered one of the main effective solutions for containing traffic congestion in urban scenarios. The challenge of predicting traffic flow is addressed by proposing a two-level machine learning approach. The first level uses an unsupervised clustering model to extract patterns from sensor-generated data, while the second level employs supervised machine learning models. Although the proposed approach requires the availability of data from traffic sensors to realize the training of the machine learning models, it allows traffic flow prediction in urban areas without sensors. In order to verify the prediction capability of the proposed approach, a real urban scenario is considered.

Topics & Concepts

Traffic congestionTraffic flow (computer networking)Cluster analysisComputer scienceUrbanizationUnsupervised learningMachine learningIntelligent transportation systemPopulationArtificial intelligenceTransport engineeringEngineeringComputer securitySociologyEconomicsEconomic growthDemographyTraffic Prediction and Management TechniquesTraffic control and managementTransportation Planning and Optimization
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