基于BP神经网络的城市主干道交通流预测

Hongmei Cao, F. Han
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引用次数: 3

摘要

交通流预测分析越来越受到交通工程专家和相关部门的重视。然而,如何预测交通量仍然是影响交通理论和实际分析的一个重要问题。首先,本文根据实际情况构建了一个三层BP神经网络,详细介绍了神经网络的建模过程,并采用滚动预测的方法对短期交通量进行了预测。其次,以呼和浩特市海拉尔街为例,对不同天数同一时间和同一天后续时间的两组测试数据进行训练和预测。并将预测结果与实际结果进行了比较,并对试验数据与预测结果的相关性进行了分析和公开。最后的结论表明,在预测精度不太高的情况下,所构建的BP神经网络的误差是可以接受的。
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The Urban Arterial Traffic Flow Forecasting Based on BP Neural Network
Predictive analytics of the traffic flow is paid more attention by the traffic engineering experts and relevant departments. However, how to forecast traffic volume still is an important problem affecting the traffic theoretical and practical analysis. Firstly, this paper set up a three layers BP neural network basing on the actual situation to introduce the modeling process of the neural network in detail, and forecast the short-term traffic volume by the means of rolling forecast. Secondly, taking the Hailar Street in Hohhot for example, two groups of test data from the same time of different days and sequent time of the same day were trained and forecast. In addition, predicting results and actual results were compared, and the correlations between test data and predicting result was analyzed and disclosed. Finally, the conclusion shows the error is acceptable and BP Neural Network constructed is practical when prediction accuracy is not very high.
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