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Short-term Traffic Flow Prediction Based on Deep Learning Model

机译:基于深度学习模型的短期交通流量预测

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In order to improve the prediction accuracy of the intelligent transportation system and provide effective support for the dynamic control and guidance of the highway management department, with the goal of minimizing the short-term traffic flow prediction error, the long-term short-term memory (LSTM) model is trained, fitted and adjusted based on the deep learning framework. In addition, the established model is used to predict the short-term traffic flow of the expressway during holidays and working days. At the same time, the traffic flow was simulated by microscopic simulation software to further verify the feasibility of the LSTM algorithm.
机译:为了提高智能运输系统的预测准确性,为公路管理部门的动态控制和指导提供有效支持,实现最大限度地减少短期交通流预测误差,长期短期记忆 (LSTM)模型培训,基于深入学习框架拟合和调整。 此外,已建立的模型用于预测节日和工作日期间高速公路的短期交通流量。 同时,通过微观模拟软件模拟了业务流量,以进一步验证LSTM算法的可行性。

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