Grey Models for Short-Term Queue Length Predictions for Adaptive Traffic Signal Control
Gurcan Comert, Zadid Khan, Mizanur Rahman, Mashrur Chowdhury

TL;DR
This study develops and compares Grey system models for short-term queue length prediction at signalized intersections, demonstrating their effectiveness in real-time adaptive traffic signal control and outperforming some machine learning models.
Contribution
The paper introduces four variations of Grey models for queue prediction, showing their advantages in speed, data efficiency, and adaptability over traditional statistical and AI models.
Findings
EGVM reduces RMSE by 40% compared to LSTM.
Grey models outperform time series and neural networks in accuracy.
Models are effective with limited data and adaptable to stochastic traffic changes.
Abstract
Traffic congestion at a signalized intersection greatly reduces the travel time reliability in urban areas. Adaptive signal control system (ASCS) is the most advanced traffic signal technology that regulates the signal phasing and timings considering the patterns in real-time in order to reduce congestion. Real-time prediction of queue lengths can be used to adjust the phasing and timings for different movements at an intersection with ASCS. The accuracy of the prediction varies based on the factors, such as the stochastic nature of the vehicle arrival rates, time of the day, weather and driver characteristics. In addition, accurate prediction for multilane, undersaturated and saturated traffic scenarios is challenging. Thus, the objective of this study is to develop queue length prediction models for signalized intersections that can be leveraged by ASCS using four variations of Grey…
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Taxonomy
MethodsSigmoid Activation · Tanh Activation · Long Short-Term Memory
