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Short-Term Traffic Prediction Based on Genetic Algorithm Improved Neural Network

Yongsheng Qian, Junwei Zeng, Zhang, Shan-fu, Dejie Xu, Xuting Wei

2020Tehnicki vjesnik - Technical Gazette20 citationsDOIOpen Access PDF

Abstract

This paper takes the time series of short-term traffic flow as research object. The delay time and embedding dimension are calculated by C-C algorithm, and the chaotic characteristics of the time series are verified by small data sets method.Then based on the neural network prediction model and the chaotic phase space reconstruction theory, the network topology is determined, and the prediction is conducted by the wavelet neural network and RBF neural network using Lan-Hai expressway experimental data. The results show that the prediction effect of RBF neural network is better. Due to the poor stability of the network caused by the initial parameters randomness, the genetic algorithm is used to optimize the initial parameters. The results show that the prediction error of the optimized wavelet neural network or RBF neural network is reduced by more than 10%, and prediction accuracy of the latter is better.

Topics & Concepts

Term (time)Artificial neural networkComputer scienceGenetic algorithmAlgorithmArtificial intelligenceMachine learningPhysicsQuantum mechanicsAdvanced Computational Techniques and ApplicationsAdvanced Sensor and Control SystemsAdvanced Algorithms and Applications
Short-Term Traffic Prediction Based on Genetic Algorithm Improved Neural Network | Litcius