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A new method for short-term traffic congestion forecasting based on LSTM

机译:基于LSTM的短期交通拥堵预测的一种新方法

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Traffic congestion in metropolitan areas such as Shenzhen, has become more and more serious. Over the past decades, many academic and industrial efforts have been made to alleviate this issue. In this paper, we propose a novel approach to predicting short-term traffic congestion. At first, we pre-process the data to get the speed, traffic, lane number of these parameters. Second, we carry out statistical data and create training samples. Third, We establish a hybrid neural network prediction model based on LSTM and substitute the generated samples into training. Finally, we use the model to predict the future congestion situation. The experimental results show that our model achieves good predictive results.
机译:深圳市等大都市地区的交通拥堵已越来越严重。 在过去的几十年中,已经取得了许多学术和工业努力来缓解这个问题。 在本文中,我们提出了一种预测短期交通拥堵的新方法。 首先,我们预先处理数据以获取这些参数的速度,流量,车道数。 其次,我们执行统计数据并创建培训样本。 第三,我们基于LSTM建立混合神经网络预测模型,并将所产生的样品替换为训练。 最后,我们使用模型来预测未来拥塞情况。 实验结果表明,我们的模型实现了良好的预测结果。

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