Xu Dong CAO
School of Automotive and Transportation Engineering, Hefei University of Technology
Qin SHI
School of Automotive and Transportation Engineering & Key Laboratory for Automated Vehicle Safety Technology of Anhui Province, Hefei University of Technology
Yi Kai CHEN
School of Automotive and Transportation Engineering, Hefei University of Technology
Chen Chen CHEN
College of Civil Engineering, Anhui Jianzhu University
Anticipating uncertainty in short-term traffic flow is crucial for effective traffic management within intelligent transportation systems. Various methods for predicting uncertainty have been proposed and implemented. However, conventional techniques struggle to provide accurate forecasts when confronted with sparse data. Hence, this study focuses on developing an uncertainty prediction model for short-term traffic flow under limited data conditions. A novel grey model that considers the volatility of the traffic data is proposed, which extends the grey model (GM) by integrating two techniques: smooth pre-processing and background value construction. The performance of the proposed novel grey model is mainly illustrated by comparing the novel grey model with the traditional GM model. Our results, in terms of uncertainty quantification, demonstrate that the proposed model outperforms the GM model regarding mean kick-off percentage (KP), width interval (WI) and width amplitude.
Guest Editor: Eleonora Papadimitriou, PhD
Editors: Marko Matulin, PhD, Dario Babić, PhD, Marko Ševrović, PhD
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