Predictability of road traffic and congestion in urban areas
Jingyuan Wang, Yu Mao, Jing Li, Chao Li, Zhang Xiong, Wen-Xu Wang

TL;DR
This study demonstrates that urban traffic patterns are highly predictable using GPS data and entropy analysis, enabling better congestion mitigation strategies despite diverse driver behaviors.
Contribution
It introduces a novel entropy-based method to quantify urban traffic predictability and explores the limits of predictability across different speeds and segments.
Findings
High daily predictability of traffic despite diverse behaviors
Intermediate speeds are hardest to predict
Traffic conditions can be inferred for inaccessible segments
Abstract
Mitigating traffic congestion on urban roads, with paramount importance in urban development and reduction of energy consumption and air pollution, depends on our ability to foresee road usage and traffic conditions pertaining to the collective behavior of drivers, raising a significant question: to what degree is road traffic predictable in urban areas? Here we rely on the precise records of daily vehicle mobility based on GPS positioning device installed in taxis to uncover the potential daily predictability of urban traffic patterns. Using the mapping from the degree of congestion on roads into a time series of symbols and measuring its entropy, we find a relatively high daily predictability of traffic conditions despite the absence of any a priori knowledge of drivers' origins and destinations and quite different travel patterns between weekdays and weekends. Moreover, we find a…
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