An Article: A hybrid approach of traffic simulation and machine learning techniques for enhancing real-time traffic prediction

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A hybrid approach of traffic simulation and machine learning techniques for enhancing real-time traffic prediction

Yeeun Kim, Hye-Young Tak, Sunghoon Kim, Hwasoo Yeo, A hybrid approach of traffic simulation and machine learning techniques for enhancing real-time traffic prediction, Transportation Research Part C (2024) https://doi.org/10.1016/j.trc.2024.104490

Accurate traffic prediction is important for efficient traffic operation, management, and user convenience. It enables traffic management authorities to allocate traffic resources efficiently, reducing traffic congestion and minimizing travel time for commuters. With the increase in data sources, traffic prediction methods have shifted from traditional model-based approaches to more data-driven methods. However, accurately predicting traffic under unforeseen events, such as crashes, adverse weather conditions, and road works, remains a challenging task. Hybrid traffic prediction models that combine data-driven and model-based approaches have emerged as promising solutions, considering the advantage of the model-based approach that can replicate unobserved scenarios. This paper proposes a hybrid traffic prediction framework named SMURP (Simulation and Machine-learning Utilization for Real-time Prediction), which overcomes the limitations of the existing methods. The SMURP is a framework that can be applied to any data-driven prediction method. When an event is detected during prediction, the SMURP complements the prediction outcomes with an additional predictor that uses simulated traffic data. The proposed framework is applied to various data-driven prediction models and evaluated in the actual road section. The results show that applying the SMURP to data-driven prediction methods can improve prediction accuracy.

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