Abstract

There is increasing demand for short-term urban link travel time prediction to build an advanced intelligent transportation system (ITS). With the development of data collection technology, probe data are receiving more attention but the penetration rate of probe vehicles capable of sending probe data is still limited. Most research pertaining to short-term travel time prediction tends to aggregate probe data to obtain useful samples when the penetration rate is low. However, as a result, the prediction can only provide a general description of the travel time and changes in travel time during a short time interval are neglected. To overcome this limitation, a non-parametric model using disaggregate probe data based on dynamic time warping (DTW) was developed in this study. Data from the crossing direction are introduced to separate the data into different signal phases instead of identifying the exact signal pattern. A classical k-nearest neighbor (KNN) model and a naive model were compared with the proposed model. The models were tested in three scenarios: a computer simulation and two real cases from Nagoya, Japan. The results showed that the proposed model outperforms the other two models under different data penetration rates because it can reflect changes in travel time during a traffic signal cycle. Moreover, the proposed model has wider applicability than the KNN model because it is free from the equal time interval constraint.

Highlights

  • Due to the rapid process of urbanization and motorization, traffic-related problems have become major social problems in many cities

  • The results demonstrated that the k-nearest neighbor (KNN) model outperforms the adaptive Kalman filter (KF) model and the seasonal autoregressive integrated moving average (ARIMA) model in real-time traffic control and management for freeways

  • WORK In this study, a pattern recognition model using the dynamic time warping (DTW) is developed to predict the short-term urban link travel time with disaggregate probe data based on traffic signals

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Summary

INTRODUCTION

Due to the rapid process of urbanization and motorization, traffic-related problems have become major social problems in many cities. Some aggregate models can provide travel time distributions for signalized sections of roadway, their assumptions about distributions might vary according to study site [22] Such distributions can provide a general description of travel time during the time interval, but they cannot reflect temporal changes in a short period, which play an important role in applications such as online personal car navigation. To overcome these constraints, this paper proposes a model based on dynamic time warping (DTW) to predict the short-term link travel time in urban networks using disaggregate probe data. The last section provides the conclusions of this paper and discusses future work

LITERATURE REVIEW
DTW ALGORITHM IN THE PROPOSED MODEL
PREDICTION
EXPERIMENTS
PARAMETER CALIBRATION
Findings
CONCLUSION AND FUTURE WORK
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