Accurate forecasting of traffic flow provides a powerful traffic decision-making basis for an intelligent transportation system.However,the traffic data's complexity and fluctuation,as well as the noise produced during collecting information and summarizing original data of traffic flow,cause large errors in the traffic flow forecasting results.This article suggests a solution to the above mentioned issues and proposes a fully connected time-gated neural network based on wavelet reconstruction(WT-FCTGN).To eliminate the potential noise and strengthen the potential traffic trend in the data,we adopt the methods of wavelet reconstruction and periodic data introduction to preprocess the data.The model introduces fully connected time-series blocks to model all the information including time sequence information and fluctuation information in the flow of traffic,and establishes the time gate block to comprehend the periodic characteristics of the flow of traffic and predict its flow.The performance of the WT-FCTGN model is validated on the public PeMS data set.The experimental results show that the WT-FCTGN model has higher accuracy,and its mean absolute error(MAE),mean absolute percentage error(MAPE)and root mean square error(RMSE)are obviously lower than those of the other algorithms.The robust experimental results prove that the WT-FCTGN model has good anti-noise ability.
School of Computer Science and Engineering,Central South University,Changsha 410083,China
National Engineering Research Center of High-speed Railway Construction Technology,Changsha 410075,China
School of Civil Engineering,Central South University,Changsha 410075,China
School of Traffic & Transportation Engineering,Central South University,Changsha 410083,China
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Science and Technology Research and Development Program Project of China Railway Group LtdScience and Technology Research and Development Program Project of China Railway Group LtdChina Railway Group