Abstract:
Traffic congestion is a widely recognized challenging problem that is increasingly growing around the world. This paper leverages ARIMA-based modeling to study some facto...Show MoreMetadata
Abstract:
Traffic congestion is a widely recognized challenging problem that is increasingly growing around the world. This paper leverages ARIMA-based modeling to study some factors that significantly affect the rate of traffic congestion. We present a short-term time series model for non-Gaussian traffic data. The model helps decision-makers to better manage traffic congestion by capturing and predicting any abnormal status. We begin by highlighting the characteristics and structure of the dataset that negatively impact the performance of time series analysis. We use R to preprocess and prepare the dataset for the modeling phase. We use the widely adopted ARIMA model to analyze and predict the traffic flow observations, measured at an hourly-basis, in a designated area of study in California, USA. Several ARIMA models are built using ACF and PACF analysis of the traffic time series to compare with the model suggested by the auto.arima function provided by the R language that uses random walk with drift. The residual obtained from our model demonstrates high performance in predicting future traffic status.
Date of Conference: 24-28 June 2019
Date Added to IEEE Xplore: 22 July 2019
ISBN Information: