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A comprehensive study of speed prediction in transportation system: From vehicle to traffic

Zewei Zhou, Ziru Yang, Yuanjian Zhang, Yanjun Huang, Hong Chen, Zhuoping Yu

2022iScience88 citationsDOIOpen Access PDF

Abstract

In the intelligent transportation system (ITS), speed prediction plays a significant role in supporting vehicle routing and traffic guidance. Recently, a considerable amount of research has been devoted to a single-level (e.g., traffic or vehicle) prediction. However, a systematic review of speed prediction in and between different levels is still missing. In this article, existing research is comprehensively analyzed and divided into three levels, i.e. macro traffic, micro vehicles, and meso lane. In addition, this article summarizes the influencing factors and reviews the prediction methods based on how those methods utilize the available information to meet the challenges of the prediction at different levels. This is followed by a summary of evaluation metrics, public datasets, and open-source codes. Finally, future directions in this field are discussed to inspire and guide readers. This article aims to draw a complete picture of speed prediction and promote the development of ITS.

Topics & Concepts

Computer scienceIntelligent transportation systemField (mathematics)Transport engineeringMacroPredictive modellingRoad trafficData scienceOperations researchMachine learningEngineeringPure mathematicsProgramming languageMathematicsTraffic Prediction and Management TechniquesTraffic control and managementTransportation Planning and Optimization
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