Abstract

Urban road intersection bottleneck has become an important factor in causing traffic delay and restricting traffic efficiency. It is essential to explore the prediction of the operating performance at intersections in real-time and formulate corresponding strategies to alleviate intersection delay. However, because of the sophisticated intersection traffic condition, it is difficult to capture the intersection traffic Spatio-temporal features by the traditional data and prediction methods. The development of big data technology and the deep learning model provides us a good chance to address this challenge. Therefore, this paper proposes a multi-task fusion deep learning (MFDL) model based on massive floating car data to effectively predict the passing time and speed at intersections over different estimation time granularity. Moreover, the grid model and the fuzzy C-means (FCM) clustering method are developed to identify the intersection area and derive a set of key Spatio-temporal traffic parameters from floating car data. In order to validate the effectiveness of the proposed model, the floating car data from ten intersections of Beijing with a sampling rate of 3s are adopted for the training and test process. The experiment result shows that the MFDL model enables us to capture the Spatio-temporal and topology feature of the traffic state efficiently. Compared with the traditional prediction method, the proposed model has the best prediction performance. The interplay between these two targeted prediction variables can significantly improve prediction accuracy and efficiency. Thereby, this method predicts the intersection operation performance in real-time and can provide valuable insights for traffic managers to improve the intersection’s operation efficiency.

Highlights

  • Intersections are the sites of collection and turn of vehicles, which can be the bottlenecks of restricting the entire road network operation efficiency fully

  • It is necessary to carry out a correlation analysis between the passing time and the speed to enhance the interpretability of the model and improve the accuracy of the model [41]

  • It is noted that when the time granularity is 10 min, the training time is reduced by 8.3 min and the efficiency increases by 46.42%, which means that the multi-task fusion deep learning (MFDL) is more efficient

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Summary

Introduction

Intersections are the sites of collection and turn of vehicles, which can be the bottlenecks of restricting the entire road network operation efficiency fully. The main traffic parameters of intersections, including the passing time, traffic speed and waiting time, etc., are used to detect the intersection’s operating performance. Among these parameters, the passing time and traffic speed can intuitively reflect the intersection’s overall operating performance [1]. The mobile sensors-equipped vehicles (i.e., the floating car) can monitor the traffic operation performance of large-scale intersection groups at low cost [2]. It can transfer the real-time traffic information to the database by the Global Positioning

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