Overview of Traffic Flow Forecasting Techniques

Forecasting traffic conditions is critical for modern mobility management. With urbanization and motorization rates rising globally, accurate traffic flow prediction plays a vital role in mitigating congestion, optimizing traffic strategies, and reducing environmental impacts. This paper provides a...

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Main Authors: Annarita Carianni, Andrea Gemma
Format: Article
Language:English
Published: IEEE 2025-01-01
Series:IEEE Open Journal of Intelligent Transportation Systems
Subjects:
Online Access:https://ieeexplore.ieee.org/document/11042911/
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author Annarita Carianni
Andrea Gemma
author_facet Annarita Carianni
Andrea Gemma
author_sort Annarita Carianni
collection DOAJ
description Forecasting traffic conditions is critical for modern mobility management. With urbanization and motorization rates rising globally, accurate traffic flow prediction plays a vital role in mitigating congestion, optimizing traffic strategies, and reducing environmental impacts. This paper provides a comprehensive review of traffic forecasting methods, bridging traditional techniques and innovative approaches driven by computational intelligence and abundant data. The study classifies forecasting methods into four categories: naïve techniques, parametric methods, simulation-based approaches, and nonparametric models such as machine learning and deep learning. Each category is analyzed for its historical development, theoretical foundations, and practical applications, with special emphasis on artificial intelligence’s transformative role in enabling dynamic and accurate predictions. The review evaluates traditional models like ARIMA and Kalman filters, alongside nonparametric techniques such as neural networks, and explores hybrid approaches that integrate multiple forecasting methods. It also assesses the complementary role of traffic simulation, from macroscopic to microscopic scales, in capturing complex traffic dynamics. The methodology synthesizes insights from foundational works and recent influential studies, examining metrics for prediction accuracy and identifying contextual factors shaping method effectiveness. The paper highlights strengths, limitations, and opportunities for advancement across forecasting approaches. Concluding with a forward-looking perspective, the review underscores trends such as spatiotemporal modeling and real-time data integration, which promise smarter, more adaptive traffic management solutions. This survey serves as a valuable resource for researchers, policymakers, and practitioners in navigating the evolving field of traffic flow forecasting.
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spelling doaj-art-122de8c70a0a41d28fcb0b74dbe9b8f02025-07-14T23:01:01ZengIEEEIEEE Open Journal of Intelligent Transportation Systems2687-78132025-01-01684888210.1109/OJITS.2025.358080211042911Overview of Traffic Flow Forecasting TechniquesAnnarita Carianni0https://orcid.org/0009-0006-3817-5916Andrea Gemma1https://orcid.org/0000-0002-6177-382XDepartment of Civil, Computer Science and Aeronautical Technologies Engineering, Roma Tre University, Rome, ItalyDepartment of Civil, Computer Science and Aeronautical Technologies Engineering, Roma Tre University, Rome, ItalyForecasting traffic conditions is critical for modern mobility management. With urbanization and motorization rates rising globally, accurate traffic flow prediction plays a vital role in mitigating congestion, optimizing traffic strategies, and reducing environmental impacts. This paper provides a comprehensive review of traffic forecasting methods, bridging traditional techniques and innovative approaches driven by computational intelligence and abundant data. The study classifies forecasting methods into four categories: naïve techniques, parametric methods, simulation-based approaches, and nonparametric models such as machine learning and deep learning. Each category is analyzed for its historical development, theoretical foundations, and practical applications, with special emphasis on artificial intelligence’s transformative role in enabling dynamic and accurate predictions. The review evaluates traditional models like ARIMA and Kalman filters, alongside nonparametric techniques such as neural networks, and explores hybrid approaches that integrate multiple forecasting methods. It also assesses the complementary role of traffic simulation, from macroscopic to microscopic scales, in capturing complex traffic dynamics. The methodology synthesizes insights from foundational works and recent influential studies, examining metrics for prediction accuracy and identifying contextual factors shaping method effectiveness. The paper highlights strengths, limitations, and opportunities for advancement across forecasting approaches. Concluding with a forward-looking perspective, the review underscores trends such as spatiotemporal modeling and real-time data integration, which promise smarter, more adaptive traffic management solutions. This survey serves as a valuable resource for researchers, policymakers, and practitioners in navigating the evolving field of traffic flow forecasting.https://ieeexplore.ieee.org/document/11042911/Categorizationintelligent transportation systemssurveytraffic flow forecasting
spellingShingle Annarita Carianni
Andrea Gemma
Overview of Traffic Flow Forecasting Techniques
IEEE Open Journal of Intelligent Transportation Systems
Categorization
intelligent transportation systems
survey
traffic flow forecasting
title Overview of Traffic Flow Forecasting Techniques
title_full Overview of Traffic Flow Forecasting Techniques
title_fullStr Overview of Traffic Flow Forecasting Techniques
title_full_unstemmed Overview of Traffic Flow Forecasting Techniques
title_short Overview of Traffic Flow Forecasting Techniques
title_sort overview of traffic flow forecasting techniques
topic Categorization
intelligent transportation systems
survey
traffic flow forecasting
url https://ieeexplore.ieee.org/document/11042911/
work_keys_str_mv AT annaritacarianni overviewoftrafficflowforecastingtechniques
AT andreagemma overviewoftrafficflowforecastingtechniques