Abstract

Accurate prediction of traffic flow is an integral component in most of the Intelligent Transportation Systems (ITS) applications. The data driven approach using Box-Jenkins Autoregressive Integrated Moving Average (ARIMA) models reported in most studies demands sound database for model building. Hence, the applicability of these models remains a question in places where the data availability could be an issue. The present study tries to overcome the above issue by proposing a prediction scheme using Seasonal ARIMA (SARIMA) model for short term prediction of traffic flow using only limited input data. A 3-lane arterial roadway in Chennai, India was selected as the study stretch and limited flow data from only three consecutive days was used for the model development using SARIMA. After necessary differencing to make the input time series a stationary one, the autocorrelation function (ACF) and partial autocorrelation function (PACF) were plotted to identify the suitable order of the SARIMA model. The model parameters were found using maximum likelihood method in R. The developed model was validated by performing 24 hrs. ahead forecast and the predicted flows were compared with the actual flow values. A comparison of the proposed model with historic average and naive method was also attempted. The effect of increase in sample size of input data on prediction results was studied. Short term prediction of traffic flow during morning and evening peak periods was also attempted using both historic and real time data. The mean absolute percentage error (MAPE) between actual and predicted flow was found to be in the range of 4–10, which is acceptable in most of the ITS applications. The prediction scheme proposed in this study for traffic flow prediction could be considered in situations where database is a major constraint during model development using ARIMA.

Highlights

  • The exponential growth of personal vehicles, combined with increase in trips and trip lengths results in acute traffic congestion in most of the metropolitan cities around the world

  • The prediction scheme proposed in this study for traffic flow prediction could be considered in situations where database is a major constraint during model development using Autoregressive Integrated Moving Average (ARIMA)

  • It is reported that the time series analysis based techniques like the autoregressive integrated moving average (ARIMA) is one of the most precise methods for the prediction of traffic flow when compared to other available techniques as mentioned above [27]

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Summary

Introduction

The exponential growth of personal vehicles (cars and twowheelers), combined with increase in trips and trip lengths results in acute traffic congestion in most of the metropolitan cities around the world. Traffic forecasting, the process of predicting future traffic conditions in short-term or nearterm future, based on current and the past traffic observations is an important component of any of the Intelligent Transportation Systems (ITS) applications. Short-term traffic flow forecasting, which involves the prediction of traffic volume in the time interval usually in the range of five minutes to 1 h, is one of the important research problem in the field of ITS addressed by many researchers in the last two decades. Traffic flow or the number of vehicles crossing a

21 Page 2 of 9
Data collection and extraction
21 Page 4 of 9
Development of prediction scheme using SARIMA
Model identification
Model estimation and diagnostic checking
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Corroboration of the prediction scheme
Real time short term traffic prediction
Findings
Concluding remarks
Full Text
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