Abstract

Short-term traffic flow prediction is an important part of intelligent transportation systems research and applications. For further improving the accuracy of short-time traffic flow prediction, a novel hybrid prediction model (multivariate phase space reconstruction–combined kernel function-least squares support vector machine) based on multivariate phase space reconstruction and combined kernel function-least squares support vector machine is proposed. The C-C method is used to determine the optimal time delay and the optimal embedding dimension of traffic variables’ (flow, speed, and occupancy) time series for phase space reconstruction. The G-P method is selected to calculate the correlation dimension of attractor which is an important index for judging chaotic characteristics of the traffic variables’ series. The optimal input form of combined kernel function-least squares support vector machine model is determined by multivariate phase space reconstruction, and the model’s parameters are optimized by particle swarm optimization algorithm. Finally, case validation is carried out using the measured data of an expressway in Xiamen, China. The experimental results suggest that the new proposed model yields better predictions compared with similar models (combined kernel function-least squares support vector machine, multivariate phase space reconstruction–generalized kernel function-least squares support vector machine, and phase space reconstruction–combined kernel function-least squares support vector machine), which indicates that the new proposed model exhibits stronger prediction ability and robustness.

Highlights

  • It would enable them to plan their trips in advance and adjust their way at any moment with the dynamic short-term traffic prediction information

  • The MPSR–combined kernel function (CKF)-least squares support vector machine (LSSVM) model could further improve the accuracy of short-term traffic flow prediction

  • The performance of MPSR–CKF-LSSVM model is compared with the MPSR–GKF-LSSVM model, the phase space reconstruction (PSR)–CKF-LSSVM model, and the CKF-LSSVM model using the same real-world traffic data

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Summary

Introduction

One benefit of statistical methods is that they can make very good predictions when the traffic flow varies temporally These methods often assume several restrictive assumptions, such as the normality of residuals, the stationary of the time series, and a predefined model structure, which are seldom satisfied in the case of nonlinear traffic flow. To overcome this problem, numerous studies have used machine learning methods such as support vector machines (SVM)[8,9,10] and artificial neural networks (ANNs)[11,12,13] as alternative predictors. A machine learning method could approximate any degree of complexity of traffic flow without prior knowledge of problem-solving

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