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Deep-Learning-Based Real-Time Road Traffic Prediction Using Long-Term Evolution Access Data

机译:使用长期演进访问数据的基于深度学习的实时道路交通预测

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摘要

In this paper, we propose a method for deep-learning-based real-time road traffic predictions using long-term evolution (LTE) access data. The proposed system generates a road traffic speed learning model based on road speed data and historical LTE data collected from a plurality of base stations located within a predetermined radius from the road. Real-time LTE data were the input for the generated learning model in order to predict the real-time speed of traffic. Since the system was developed using a time-series-based road traffic speed learning model based on LTE data from the past, it is possible for it to be used for a road where the environment has changed. Moreover, even on roads where the collection of traffic data is invalid, such as a radio shadow area, it is possible to directly enter real-time wireless communications data into the traffic speed learning model to predict the traffic speed on the road in real time, and in turn, raise the accuracy of real-time road traffic predictions.
机译:在本文中,我们提出了一种使用长期演进(LTE)访问数据进行基于深度学习的实时道路交通预测的方法。所提出的系统基于从位于距道路预定半径之内的多个基站收集的道路速度数据和历史LTE数据来生成道路交通速度学习模型。实时LTE数据是生成的学习模型的输入,以便预测流量的实时速度。由于该系统是使用过去基于LTE数据的基于时间序列的道路交通速度学习模型开发的,因此有可能将其用于环境变化的道路。此外,即使在交通数据收集无效的道路上(例如无线电阴影区域),也可以将实时无线通信数据直接输入到交通速度学习模型中,以实时预测道路上的交通速度,进而提高实时道路交通预测的准确性。

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