Research on short-term traffic flow prediction model based on RNN-LSTM

Author:

Liu Shuying,Li Zhang,Li Hangfu

Abstract

Abstract With the rapid development of economy and the increasing number of cars, it is the first task to effectively predict the traffic flow of road traffic to alleviate road congestion and reduce traffic accidents. Aiming at the uncertainty and nonlinearity of traffic flow data, the traffic flow prediction model based on long-term and short-term memory is designed and compared with the traditional BP model and RNN model. The simulation results show that the LSTM model has a higher prediction accuracy and better prediction effect on traffic flow.

Publisher

IOP Publishing

Subject

General Medicine

Reference10 articles.

1. Considering the short-term traffic flow prediction of the upstream and downstream LSTM;Man;Journal of Harbin University of technology,2019

2. Short term traffic flow prediction by improved supp ort vector regression;Fu;Transportation system engineering and information,2019

3. Long short-term memory neural network for traffic speed prediction using remote microwave sensor data;Ma;Transportation Research,2015

4. Research on short-term traff ic flow prediction method based on GA-SVR model;Han;Highway traffic technology,2017

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