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Intelligent Highway Traffic Forecast Based on Deep Learning and Restructured Road Models

机译:基于深度学习和重组道路模型的智能公路交通预测

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We propose a highway traffic forecasting system that informs the traffic condition of highways from a few minutes to several months ahead. It can reflect the weather information of the regions of roads in the traffic data computation. We develop various road models to represent separate points of the highways based on traffic characteristics such as interchange, exit, endpoint, etc. Experimental results show our system outperforms a generic convolutional network model with 97.6% accuracy of travel-time prediction and the reduction by 30% of computing time for a moderate sized highway network.
机译:我们提出了一个公路交通预测系统,通知了公路的交通状况从几分钟到未来几个月。它可以反映交通数据计算中道路区域的天气信息。我们开发各种道路模型,基于交流,退出,终点等的交通特性代表公路的单独点。实验结果表明我们的系统优于通用卷积网络模型,具有97.6%的旅行时间预测准确性和减少适用于适度大小的公路网络的30%的计算时间。

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