LSTM在短期交通流预测中的应用

Chuanli Kang, Zhenyu Zhang
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引用次数: 8

摘要

随着城市化进程的加剧,交通态势预测的地位越来越突出。城市交通流受多种因素的影响,具有较强的随机性。本文结合MSE和Adam构造线性LSTM,实现了基于时间序列的短期交通流预测。实验结果表明,LSTM可以获得交通流的周期性特征。基于时间序列的交通流短期预测误差小、精度高,验证了LSTM方法的有效性。
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Application of LSTM in Short-term Traffic Flow Prediction
As urbanization intensifies, the status of the traffic situation predict is becoming more and more prominent. The urban traffic flow is influenced by many factors and is characterized by strong randomness. This paper combines MSE and Adam to construct a linear LSTM to realize the prediction of short-term traffic flow based on time series. The experiment result shows that LSTM can gain the periodic features of the traffic flow. It has small error and high precision for the short-term prediction of the traffic flow based on time series, which verifies the validity of LSTM.
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