Abstract

Accurate prediction of traffic information (i.e., traffic flow, travel time, traffic speed, etc.) is a key component of Intelligent Transportation System (ITS). Traffic speed is an important indicator to evaluate traffic efficiency. Up to date, although a few studies have considered the periodic feature in traffic prediction, very few studies comprehensively evaluate the impact of periodic component on statistical and machine learning prediction models. This paper selects several representative statistical models and machine learning models to analyze the influence of periodic component on short-term speed prediction under different scenarios: (1) multi-horizon ahead prediction (5, 15, 30, 60 minutes ahead predictions), (2) with and without periodic component, (3) two data aggregation levels (5-minute and 15-minute), (4) peak hours and off-peak hours. Specifically, three statistical models (i.e., space time (ST) model, vector autoregressive (VAR) model, autoregressive integrated moving average (ARIMA) model) and three machine learning approaches (i.e., support vector machines (SVM) model, multi-layer perceptron (MLP) model, recurrent neural network (RNN) model) are developed and examined. Furthermore, the periodic features of the speed data are considered via a hybrid prediction method, which assumes that the data consist of two components: a periodic component and a residual component. The periodic component is described by a trigonometric regression function, and the residual component is modeled by the statistical models or the machine learning approaches. The important conclusions can be summarized as follows: (1) the multi-step ahead prediction accuracy improves when considering the periodic component of speed data for both three statistical models and three machine learning models, especially in the peak hours; (2) considering the impact of periodic component for all models, the prediction performance improvement gradually becomes larger as the time step increases; (3) under the same prediction horizon, the prediction performance of all models for 15-minute speed data is generally better than that for 5-minute speed data. Overall, the findings in this paper suggest that the proposed hybrid prediction approach is effective for both statistical and machine learning models in short-term speed prediction.

Highlights

  • To alleviate the tra c congestion in large cities, it is important to make full use of existing infrastructure resources such as the application of Intelligent Transportation System (ITS) [1,2,3,4,5,6,7,8,9,10]

  • The prediction performance of space time (ST), vector autoregressive (VAR), autoregressive integrated moving average (ARIMA), support vector machine (SVM), MLP, Recurrent neural network (RNN), and hybrid models is compared using the speed data at station . e data samples collected during 6:00 AM–8:00 PM from April 2nd to April 30th (21 weekdays) are selected as the testing period

  • A trigonometric regression function is selected to construct the periodic component of daily similarity, while three statistical models and three machine learning models (SVM model, MLP model, and RNN model) are used to describe the residual component

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Summary

Introduction

To alleviate the tra c congestion in large cities, it is important to make full use of existing infrastructure resources such as the application of Intelligent Transportation System (ITS) [1,2,3,4,5,6,7,8,9,10]. Real-time and accurate prediction of tra c parameter, such as tra c ow, travel time, and travel speed, is an important input of ITS. Advanced Traveller Information System (ATIS) and Advanced Tra c Management System (ATMS) are essential parts of ITS, while dynamic tra c assignment (DTA) is a signi cant task for the operation of ATIS and ATMS. For the purpose of DTA, tra c ow and travel time were estimated and predicted to describe the tra c conditions in DynaMIT (Dynamic Network Assignment for the Management of Information to Travelers) system [10]. When tra c incidents occurred, the predicted travel time was used to evaluate the performance of the application of ITS based on DTA [11].

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